Category: Covid-19

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‘All the hospitals are full’: In Houston, overwhelmed ICUs leave COVID-19 patients waiting in ER – NBC News

July 11, 2020

But he warned that theres a limit to what Houston hospitals can do to respond to the crisis.

We are adding more capacity, but we are absolutely stretched now, and if it keeps going this way, were going to run out of room. Were going to look like New York, McCarthy said, emphasizing the need for Houston residents to stay home and avoid crowds to slow the viruss spread.

One of Houstons largest hospital systems, HCA Healthcare, also has been caring for dozens of COVID-19 patients in its emergency departments. In a statement, HCA spokeswoman Debra Burbridge said hospital officials have taken steps to reduce the impact on patients, including sending staff members who would normally be performing or assisting with elective surgeries which have been suspended under an order by the governor to treat patients with COVID-19.

Dr. Kusum Mathews, an assistant professor of critical care and emergency medicine at the Icahn School of Medicine at Mount Sinai in New York, said hospitals can take steps to reduce the risks of overcrowded ERs, including some of those described by Memorial Hermann and HCA officials.

Treating patients sickened by the virus has outstripped every stretch of our imagination, Mathews said. We have had to put beds in hallways, double up patient rooms just to allow for offloading the emergency department to get more patients in.

While Houstons top hospital executives have repeatedly said they can add hundreds of new intensive care beds to meet the demand, at least for the next couple of weeks, the number of patients being treated in emergency rooms demonstrates the difficulty of executing those plans in the midst of a rapidly growing crisis, officials say.

Those things are not like a switch-key type of activity, said Porsa, the Harris Health System CEO, noting that his hospitals have had to send patients to hospitals outside of Houston to make room. The bottleneck to do that is really staffing. As you can imagine, ICU nurses are not a dime a dozen. They are very hard to come by, and it takes time to actually be able to do that.

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The logjam of patients being treated in ERs has also led to delayed emergency response times across the city, according to Houston Fire Department officials.

When hospitals get overloaded, they ask regional authorities to divert ambulances elsewhere. For example, Memorial Hermanns northeast hospital was on diversion status just 2 percent of the time during an eight-day period in late June and early July last year; it was on diversion status 58 percent of the time during the same time period this year. At Houstons busiest public hospital, Ben Taub, the number jumped to 81 percent from 58 percent.

The problem, said Houston Fire Department Assistant Chief Matt White, is that when every hospital is maxed out, ambulance crews have no choice but to take patients to emergency departments that are too busy to quickly receive them. And by law, hospitals must screen and stabilize any patient who arrives.

When everyone is on diversion, White said, nobody is on diversion.

Earlier coronavirus outbreaks inundated emergency rooms in New York City and Detroit, but lockdown orders in those cities led to fewer car accidents and a reduction in violent crime, freeing more space in ERs for COVID patients.

With most Texas businesses still open and no mandatory stay-at-home order, hospitals in Houston and other COVID-19 hot spots face the added challenge of making room for COVID patients while still dealing with a steady flow of patients seeking care for other medical emergencies.

And across the country, people with chronic health problems who delayed seeking care earlier in the pandemic are now showing up for treatment, taking up beds, said Dr. Marc Eckstein, medical director of the Los Angeles Fire Department and a professor of emergency medicine at Keck School of Medicine of the University of Southern California.

Despite these challenges, McCarthy, the Memorial Hermann executive, said its essential that people continue to come to the hospital for medical emergencies. He pointed to an NBC News and ProPublica report this week that showed a growing number of people are dying suddenly at home, before emergency responders can reach them.

If a patient believes they have a serious medical issue, they still need to come to the emergency department, McCarthy said. We will make the capacity to take care of them. Delaying care for time-sensitive emergencies is time we dont get back. If they wait to call for help when they are having a heart attack, it will be worse than if they come in early."

Mike Hixenbaugh is a national investigativereporter for NBC News, based in Houston.

Charles Ornstein, ProPublica

Charles Ornstein is a deputy managing editor at ProPublica.

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'All the hospitals are full': In Houston, overwhelmed ICUs leave COVID-19 patients waiting in ER - NBC News

COVID-19 Daily Update 7-10-2020 – 5 PM – West Virginia Department of Health and Human Resources

July 11, 2020

The West Virginia Department of Health andHuman Resources (DHHR) reports as of 5:00 p.m., on July 10,2020, there have been 201,092 total confirmatorylaboratory results received for COVID-19, with 3,983 totalcases and 95 deaths.

Inalignment with updated definitions from the Centers for Disease Control andPrevention, the dashboard includes probable cases which are individuals that havesymptoms and either serologic (antibody) or epidemiologic (e.g., a link to aconfirmed case) evidence of disease, but no confirmatory test.

CASESPER COUNTY (Case confirmed by lab test/Probable case):Barbour(18/0), Berkeley (504/19), Boone (31/0), Braxton (4/0), Brooke (24/1), Cabell(188/6), Calhoun (4/0), Clay (11/0), Fayette (79/0), Gilmer (13/0), Grant(18/1), Greenbrier (69/0), Hampshire (42/0), Hancock (35/3), Hardy (45/1),Harrison (109/0), Jackson (148/0), Jefferson (248/5), Kanawha (381/12), Lewis (19/1),Lincoln (10/0), Logan (35/0), Marion (95/3), Marshall (57/1), Mason (23/0),McDowell (8/0), Mercer (62/0), Mineral (62/2), Mingo (27/2), Monongalia(454/14), Monroe (14/1), Morgan (19/1), Nicholas (15/1), Ohio (138/0),Pendleton (15/1), Pleasants (4/1), Pocahontas (36/1), Preston (79/16), Putnam(78/1), Raleigh (68/3), Randolph (184/2), Ritchie (2/0), Roane (12/0), Summers(2/0), Taylor (22/1), Tucker (6/0), Tyler (9/0), Upshur (22/1), Wayne (121/1),Webster (1/0), Wetzel (30/0), Wirt (6/0), Wood (159/9), Wyoming (7/0).

Ascase surveillance continues at the local health department level, it may revealthat those tested in a certain county may not be a resident of that county, oreven the state as an individual in question may have crossed the state borderto be tested. Such is the case of Pleasants and Putnamcounties in this report.

Please visit the dashboard at http://www.coronavirus.wv.gov for more detailed information.

Additional report:

Toincrease COVID-19 testing opportunities, the Governor's Office, the HerbertHenderson Office of Minority Affairs, WV Department of Health and HumanResources, WV National Guard, local health departments,and community partners today provided freeCOVID-19 testing for residents in counties with high minority populations andevidence of COVID-19 transmission.

Todays testing resulted in 2,589 individuals tested: 323in Marshall County; 1,368 in Monongalia County; 407 in Preston County; 51 inWayne County; and 440 in Upshur County. Please note these are consideredpreliminary numbers.

Testingin the same counties will continue tomorrow in these locations.

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COVID-19 Daily Update 7-10-2020 - 5 PM - West Virginia Department of Health and Human Resources

COVID-19 Daily Update 7-9-2020 – 5 PM – West Virginia Department of Health and Human Resources

July 11, 2020

TheWest Virginia Department of Health and Human Resources (DHHR)reports as of 5:00 p.m., on July 9, 2020, there have been 197,081 total confirmatory laboratory results receivedfor COVID-19, with 3,826 total cases and 95 deaths.

In alignment with updated definitions fromthe Centers for Disease Control and Prevention, the dashboard includes probablecases which are individuals that have symptoms and either serologic (antibody)or epidemiologic (e.g., a link to a confirmed case) evidence of disease, but noconfirmatory test.

CASESPER COUNTY (Case confirmed by lab test/Probable case):Barbour(17/0), Berkeley (499/18), Boone (29/0), Braxton (3/0), Brooke (18/1), Cabell(180/6), Calhoun (4/0), Clay (11/0), Fayette (79/0), Gilmer (13/0), Grant(15/1), Greenbrier (68/0), Hampshire (42/0), Hancock (32/3), Hardy (45/1),Harrison (104/0), Jackson (149/0), Jefferson (247/5), Kanawha (372/12), Lewis (19/1),Lincoln (10/0), Logan (31/0), Marion (93/3), Marshall (54/1), Mason (23/0),McDowell (8/0), Mercer (61/0), Mineral (60/2), Mingo (25/2), Monongalia(405/14), Monroe (14/1), Morgan (19/1), Nicholas (15/1), Ohio (122/0),Pendleton (13/1), Pleasants (5/1), Pocahontas (36/1), Preston (78/16), Putnam(77/1), Raleigh (66/2), Randolph (174/2), Ritchie (2/0), Roane (12/0), Summers(2/0), Taylor (19/1), Tucker (6/0), Tyler (7/0), Upshur (22/1), Wayne (120/1),Webster (1/0), Wetzel (26/0), Wirt (5/0), Wood (154/8), Wyoming (7/0).

As case surveillance continues at thelocal health department level, it may reveal that those tested in a certaincounty may not be a resident of that county, or even the state as an individualin question may have crossed the state border to be tested.Such is the case of Mineral, Monroe, and Nicholas counties in this report.

Please visit thedashboard at http://www.coronavirus.wv.gov for more detailed information.

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COVID-19 Daily Update 7-9-2020 - 5 PM - West Virginia Department of Health and Human Resources

COVID-19 UPDATE: Gov. Justice, WVSSAC director discuss plans for fall sports and activities; Amjad appointed as new State Health Officer – West…

July 11, 2020

HIGH SCHOOL & MIDDLE SCHOOL FALL SPORTS AND OTHER ACTIVITIES With the daily number of new COVID-19 cases continuing to climb, Gov. Justice joined West Virginia Secondary School Activities Commission (WVSSAC) Executive Director Bernie Dolan during his briefing on Friday to discuss current plans for high school and middle school sports, cheerleading, and marching band activities for the fall season.

No one wants sports and activities to be going on more than Bernie and I do, Gov. Justice said. We absolutely want our kids back in school. But we want to do it in a way that we know is as safe as we can possibly make it for our students, as well as those who are working with our students like our teachers and service personnel.

Bernie and I surely recognize the importance of sports, Gov. Justice continued. They give us so much. They teach us so many life lessons. Theyre important to our communities, they bring us together. But, at the same time, we need to be safe.

In accordance with the Governors announcement Wednesday that the beginning of the school year would be adjusted to Sept. 8, 2020, Dolan announced Friday that the fall sports and activities calendar would also be adjusted.

We are pushing back our practice dates, Dolan said. Instead of starting on August 3rd the date most fall sports practices wouldve started except volleyball were moving the start of all of our practice activities to August 17th.

Dolan announced that, under the current plan, golf would be the first sport to resume competition because its participants are adequately able to socially distance from one another during matches. There is also less practice time required to resume competition for golf. As a result, golf is currently scheduled to tee off its season on Monday, Aug. 24, 2020.

Competitions for volleyball, cheerleading, cross-country, and soccer are currently scheduled to begin on Wednesday, Sept. 2, 2020.

Football games would be able to start as early as Thursday, Sept. 3, 2020, under the WVSSACs current plan.

Dolan added that competition attendees will have to follow additional safety guidelines, which will vary based on the type of sport and the facility in which it is being played but will likely include social distancing and the wearing of masks, to keep all participants and visitors as safe as possible.

Any additional WVSSAC guidelines will be provided on onlineas soon as they become available.

I tell people, its up to the public to decide whether or not we are going to have athletics come this fall, Dolan said. Because youre the one who will wear the masks.

It sounds like its an easy thing to do for everybody to get on board, Dolan continued. So, if you are the one whos not socially distancing, not wearing a mask, you very well could be the one you are setting an example for somebody not to follow and then that hurts all of our chances of participating.

Click to read more: Statewide Indoor Face Covering Requirement

We all know that we may have to change again, Gov. Justice said. We do not know what this is going to do. There is no playbook here.

But we hope and pray that well be ready to go and weve got to have a plan of what were going to be able to do...if we can, Gov. Justice continued. I want to emphasize if we can. Were going to do it safely. Were going to do it right. Were going to protect our kids in every way.

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COVID-19 UPDATE: Gov. Justice, WVSSAC director discuss plans for fall sports and activities; Amjad appointed as new State Health Officer - West...

Growing COVID-19 Hotspots in the U.S. South and West will Likely Widen Disparities for People of Color – Kaiser Family Foundation

July 11, 2020

The number of COVID-19 cases in the U.S. is expanding rapidly, particularly in many states in the South and West. While the locations of outbreaks continue to move across the country, surging in some states and falling in others, much of the recent case growth has been occurring in the South and West. As of July 8th, we identified 33 states as hotspots (experiencing recent increases in cases and an increasing positivity rate or positivity rate over 10%), 23 of which were in the South and West. The shifting surge in outbreaks to the South and West will likely exacerbate the disparate effects of COVID-19 for people of color, who already are facing a higher burden of cases, hospitalizations, and deaths as well as a larger economic toll compared to their White counterparts. Hispanic people may be particularly hard hit as outbreaks rise in these areas.

Just over half (51%) of people in the U.S. reside in these 23 Southern and Western hotspot states, but these states are home to seven in ten of all Hispanic individuals (71%) (Figure 1). Moreover, roughly six in ten Asian (59%) and American Indian and Alaska Native (AIAN) (57%) people live in these states, as do over half (51%) of Black people. Overall, nearly two-thirds of people of color (62%) reside in these states, compared to less than half of White people (43%).

In addition, people of color account for a larger share of the population compared to their share of the total U.S. population in a number of these states. For example, in 9 of the 23 Southern and Western hotspot states, Black people make up a larger share of the population compared to their share of the total U.S. population (12%). These states include Georgia (31%), Louisiana (32%), and Mississippi (38%), where more than three in ten residents are Black. AIAN people also make up a larger share of the population in 9 of these 23 states, including Montana (6%), New Mexico (9%), and Alaska (16%), compared to their share of the total U.S. population (<1%). Similarly, while 18% of the total U.S. population is Hispanic, they make up a higher share of the population in 7 of these 23 states, including roughly a third or more of the population in Arizona (32%), California (39%), Texas (40%), and New Mexico (49%). Asian people also account for a higher share of the population in Nevada (8%), Washington (9%), California (15%), and Hawaii (38%) compared to the U.S. overall (6%).

Moreover, within many of these states, COVID-19 has already disproportionately affected people of color. Based on data reported as of July 6, Black people accounted for a higher share of COVID-19 related deaths compared to their share of the population in 13 of these states that were reporting deaths by race/ethnicity. Similarly, Hispanic people made up a larger share of cases compared to their share of the population in 13 states, including in Tennessee and Arkansas, where their share of cases is over three times higher than their share of the population. There are also striking disparities for AIAN and Asian people in some of these states. For example, in Arizona, AIAN people made up 7% of cases and 16% of deaths compared to just 4% of the population and, in Nevada, Asian people made up 14% of deaths compared to 8% of the population.

The large number of people of color living in COVID-19 hotspots coupled with the already disproportionate impact for people of color will likely lead to further growth in disparities as the outbreak shifts to the South and West. Potential growing impacts for the large shares of Hispanic and Asian people living in these areas heighten the importance of providing information and services in linguistically and culturally appropriate ways and addressing potential fears that could make those who have an immigrant family member hesitant to access services. Prior to the pandemic, growing research showed that many immigrant families were increasingly fearful of accessing services, including health care services, due to recent immigration policy changes. Rising cases will likely compound the major challenges AIAN people already are facing due to the pandemic and widen disproportionate impacts for Black individuals, as these groups are at increased risk of experiencing serious illness if they contract the virus due to high rates of underlying health conditions. People of color also are at increased risk of exposure to the virus, face increased barriers to testing and treatment, and are more vulnerable to financial challenges due to the pandemic due to social and economic circumstances.

As discussed in previous work, the disparate impacts of COVID-19 mirror and compound existing racial and ethnic disparities in health and health care that are driven by broader underlying structural and systemic barriers, including racism and discrimination. For example, people of color are more likely to be uninsured, report poorer access to health care, and face increased economic and social challenges compared to their White counterparts. Further, 8 of these 23 hotspot states have not yet implemented the ACA Medicaid expansion to low-income adults, leaving a gap in coverage for poor adults in these states.

Together the findings point to the importance of prioritizing health equity as part of response and relief efforts and directing resources to communities who are at the highest risk and experiencing disproportionate effects. Such efforts include collecting data to monitor the impact across communities; working with trusted community members and leaders and providing information in linguistically and culturally appropriate ways to effectively reach individuals; making testing and care readily accessible within communities to facilitate access to services, including for those who are uninsured; and providing adequate resources and support to help prevent spread of the virus. At the same time, broader efforts to address systemic and structural barriers both within and outside the health care system remain pivotal to addressing the underlying health inequities that have been highlighted and exacerbated by the COVID-19 pandemic.

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Growing COVID-19 Hotspots in the U.S. South and West will Likely Widen Disparities for People of Color - Kaiser Family Foundation

Sarasota-Manatee Publix and Whole Foods employees test positive for COVID-19 – Sarasota Herald-Tribune

July 11, 2020

Positive cases have emerged up at 12 Sarasota-Manatee Publix stores within the past 14 days. See a list of the stores affected.

This content is being provided for free as a public service to our readers during the coronavirus outbreak. Sign up for our daily or breaking newsletters to stay informed. If local news is important to you, consider becoming a digital subscriber to the Sarasota Herald-Tribune.***

Employees have tested positive for COVID-19 at 12 Publix stores in Sarasota-Manatee within the past two weeks.

Publix spokeswoman Maria Brous confirmed positive cases of COVID-19 at 15 Publix stores in Sarasota and Manatee counties. Cases at 12 of those 15 stores have happened within the past 14 days.

Of those 12 stores, four are in Sarasota, one is on Longboat Key, one is in Nokomis, two are in Bradenton, one is in Parrish and three are in Venice, including the store in the West Villages.

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The three stores where employees have tested positive, but not within the past 14 days, are the Broadway Promenade store at 1044 N. Tamiami Trail in Sarasota, the Shops at Silver Leaf at 11245 US Highway 301 N in Parrish, and Lockwood Commons at 4240 53rd Ave. E in Bradenton.

Like other essential service providers, we have seen our own associates and their families personally impacted by COVID-19, Brous said. Unfortunately, as public health officials have indicated, we expect to see an increase in cases as the virus spreads in our communities.

In late April, there was just one confirmed positive case at a Publix store in Sarasota-Manatee at the Venice Village Shoppes store at Tamiami Trail and Jacaranda Boulevard in Venice.

The Sarasota-Manatee Publix stores where employees have tested positive for COVID-19 within the past two weeks are:

Sarasota Commons, 935 N. Beneva Road, Sarasota.

Centergate Village, 5804 Bee Ridge Road, Sarasota.

Venice Village Shoppes, 4173 S. Tamiami Trail, Venice.

Twelve Oaks Plaza, 7290 55th Ave. E., Bradenton.

Venice Shopping Center, 535 S. Tamiami Trail, Venice.

Beachway Plaza, 7310 Manatee Ave. W., Bradenton.

Parkwood Square, 9005 U.S. Highway 301 N., Parrish.

Publix at Bay Street, 2031 Bay St., Sarasota.

Nokomis Village, 1091 N. Tamiami Trail, Nokomis.

Shoppes of Bay Isles, 525 Bay Isles Parkway, Longboat Key.

Beneva Village Shoppes, 3428 Clark Road, Sarasota.

West Village Marketplace, 12165 Mercado Drive, Venice.

Sarasota County has had 2,548 people test positive for COVID-19. There have been 235 hospitalizations and 100 deaths, according to Florida Department of Health data Friday.

Manatee County has had 4,432 people test positive. It has also had 332 hospitalizations and 138 deaths.

Publix gives 14 days paid leave to any employee who tests positive for COVID-19. Workers who were in close contact with the sick employee are notified, quarantined and also given up to 14 days of paid leave, Brous said.

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While on the job, associates are required to wear face coverings, and theres a heightened disinfection program focusing on frequently touched surfaces like touchpads, door and drawer handles, phones and computers.

Social distancing is also encouraged at Publix. One-way shopping aisles have been put in place, and six-foot distances are marked at registers. Plexiglass has also been installed at checkout counters.

We are proud of how our dedicated associates are taking care of our customers and each other through this unprecedented and challenging time, Brous said. And, we thank our customers for continuing to trust us with providing them with the goods and services they need.

Whole Foods Market has also confirmed that employees at its downtown Sarasota store have tested positive for COVID-19.

The Austin, Texas-based grocery chain did not disclose how many employees have tested positive or when but it did say that there have been confirmed cases.

Anytime there is a presumed or confirmed COVID-19 diagnosis in any Whole Foods store, a set plan is activated involving comprehensive cleaning, contact tracing and a formal notification processes for those working in the stores, according to the company.

The safety of our team members and customers is our top priority, and we are diligently following all guidance from local healthand food safety authorities. Weve been working closely with our store team membersand are supporting the diagnosed team members who are in quarantine, the company said in a statement. Out of an abundance of caution, the store has performed a professional deep cleaning and disinfection, on top of our current enhanced sanitation measures.

Employees placed into quarantine receive up to an additional two weeks of paid time off.

Like Publix, Whole Foods stores also have social distancing and crowd control procedures in place.

There are also required temperature checks and face masks for employees, daily cleanliness procedures and disinfection protocols and plexiglass barriers at checkout.

See more here:

Sarasota-Manatee Publix and Whole Foods employees test positive for COVID-19 - Sarasota Herald-Tribune

COVID-19 Daily Update 7-10-2020 – 10 AM – West Virginia Department of Health and Human Resources

July 11, 2020

TheWest Virginia Department of Health and Human Resources (DHHR)reports as of 10:00 a.m., on July 10, 2020, there have been 199,383 totalconfirmatory laboratory results receivedfor COVID-19, with 3,882 total cases and 95 deaths.

In alignment with updated definitions fromthe Centers for Disease Control and Prevention, the dashboard includes probablecases which are individuals that have symptoms and either serologic (antibody)or epidemiologic (e.g., a link to a confirmed case) evidence of disease, but noconfirmatory test.

CASESPER COUNTY (Case confirmed by lab test/Probable case):Barbour(18/0), Berkeley (502/18), Boone (30/0), Braxton (4/0), Brooke (18/1), Cabell(184/6), Calhoun (4/0), Clay (11/0), Fayette (79/0), Gilmer (13/0), Grant(17/1), Greenbrier (69/0), Hampshire (42/0), Hancock (32/3), Hardy (45/1),Harrison (108/0), Jackson (148/0), Jefferson (247/5), Kanawha (377/12), Lewis(19/1), Lincoln (10/0), Logan (33/0), Marion (95/3), Marshall (54/1), Mason(23/0), McDowell (7/0), Mercer (61/0), Mineral (60/2), Mingo (25/2), Monongalia(416/14), Monroe (14/1), Morgan (19/1), Nicholas (15/1), Ohio (125/0),Pendleton (13/1), Pleasants (5/1), Pocahontas (36/1), Preston (78/16), Putnam(80/1), Raleigh (68/3), Randolph (175/2), Ritchie (2/0), Roane (12/0), Summers(2/0), Taylor (20/1), Tucker (6/0), Tyler (9/0), Upshur (22/1), Wayne (121/1),Webster (1/0), Wetzel (28/0), Wirt (6/0), Wood (157/9), Wyoming (7/0).

As case surveillance continues at thelocal health department level, it may reveal that those tested in a certaincounty may not be a resident of that county, or even the state as an individualin question may have crossed the state border to be tested.Such is the case of Jackson and McDowell counties in this report.

Please visit thedashboard at http://www.coronavirus.wv.gov for more detailed information.

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COVID-19 Daily Update 7-10-2020 - 10 AM - West Virginia Department of Health and Human Resources

COVID-19 and blood type: What’s the link? – Los Angeles Times

July 11, 2020

If theres one thing we want to know about COVID-19, its probably this: Whats my risk of getting it?

Researchers have identified certain things that make some people more vulnerable than others. Men are at greater risk than women. Older people are at greater risk than younger people. Those with chronic health problems like Type 2 diabetes, obesity and serious heart conditions are faring worse than those without them. Black and Latino Americans are at greater risk than Asian Americans and whites.

Now theres evidence that blood type could be a risk factor too.

A handful of studies have suggested that people with some blood types are more likely to be hospitalized with COVID-19, while those with other blood types are less likely to require that level of care. The most recent evidence was published last month in the New England Journal of Medicine.

Heres a look at what scientists have learned about blood type and its role in the COVID-19 pandemic.

Eight. Yours is determined in part by the presence (or absence) of A and B antigens on your red blood cells. If you have only A antigens, your blood type is A. If you have only B antigens, your blood type is B. If you have both, your blood type is AB, and if you have neither, your blood type is O.

In addition, red blood cells may have a protein called Rh factor. If you have it, youre Rh positive; if not, youre Rh negative.

The combination of A and B antigens and the Rh factor produces the eight major blood types: A-positive, A-negative, B-positive, B-negative, AB-positive, AB-negative, O-positive and O-negative.

Researchers analyzed genetic data from more than 1,600 patients hospitalized with severe cases of COVID-19 in Italy and Spain and compared them with about 2,200 others who didnt have the disease. After making adjustments to account for the effects of age and sex on COVID-19 risk, the researchers found striking differences in blood types of the sick patients compared with the controls.

In this population, having Type A blood was associated with a 45% increased risk of having severe COVID-19. On the other hand, having Type O blood was associated with a 35% reduced risk of the disease. Those relationships held up whether the Italian and Spanish patients were analyzed separately or together.

No other blood groups were associated with a greater or lesser risk of the disease. In addition, blood type did not seem to be linked to the risk of needing to be put on a mechanical ventilator.

The study design did not allow researchers to make any determination about whether blood type was associated with the risk of coronavirus infection, or, if infected, the risk of becoming severely ill.

The hope is that these and other findings yet to come will point the way to a more thorough understanding of the biology of COVID-19, Dr. Francis Collins, a geneticist and director of the National Institutes of Health, wrote on his blog. They also suggest that a genetic test and a persons blood type might provide useful tools for identifying those who may be at greater risk of serious illness.

At least two other groups have looked for links between blood type and COVID-19 risk and found similar results.

The first inkling that blood type might have something to do with disease risk came in March from researchers in China, who compared 2,173 COVID-19 patients in three hospitals in Wuhan and Shenzhen to more than 27,000 normal people. They found that people with Type A blood had a 21% greater risk of the disease than their counterparts with other blood types, and that people with Type O blood had a 33% lower risk.

The following month, a team from Columbia University examined 1,559 people in the New York City area who were tested to see whether they were infected with the coronavirus that causes COVID-19. They found that having Type A blood was associated with a 34% greater chance of testing positive, while having Type O blood was associated with a 20% lower chance of testing positive. In addition, people with Type AB blood were 44% less likely to test positive, although only 21 of the 682 people who tested positive for the coronavirus had AB blood.

The Columbia researchers noted that their findings about the risks associated with Type A and Type O blood were consistent with the results from China, even though the distribution of blood types was significantly different in the populations of New York, Wuhan and Shenzhen.

Both of these reports were posted to the MedRxiv website, where researchers share preliminary data before it has been subjected to peer review.

Thats not clear. Perhaps different combinations of A and B antigens change the immune systems production of infection-fighting antibodies or have some other unknown biologic effect, the authors of the New England Journal of Medicine study wrote.

Another possibility is that the genes associated with blood type also affect the ACE2 receptor on human cells, which the coronavirus seeks out and latches onto, they wrote.

Your doctor may have it on file if its been tested in the past.

If not, you can test it at home with a kit that includes an Eldoncard. The kit will require you to prick your finger to obtain a small blood sample, then mix it with antibodies to the A and B antigens that come on the card. If your red blood cells contain A or B antigens, they will react with the antibodies and clump up on the card.

If you only see a reaction to A antibodies, your blood type is A. Ditto for the B antibodies. If you see a reaction to both, your blood type is AB, and if theres no reaction, your blood type is O.

An additional circle on the card contains antibodies to the protein called Rh factor. A reaction there indicates you are Rh-positive; if nothing happens, youre Rh-negative.

If that sounds like too much trouble, you can donate blood. If go to the Red Cross, theyll send you a donor card that indicates your blood type.

Everyone should be as careful as possible all the time, regardless of blood type. (That goes for those with Type O blood too.)

If youve been outside or came in contact with high-touch surfaces, wash your hands for at least 20 seconds. Wear a mask if you leave home and maintain at least six feet of distance between yourself and others who are not members of your household. Try not to touch your face so the virus cant sneak into your body through your eyes, nose or mouth. And be sure to clean doorknobs, faucets, phones and other frequently touched surfaces every day.

For more tips on staying safe, follow this advice from Centers for Disease Control and Prevention.

Originally posted here:

COVID-19 and blood type: What's the link? - Los Angeles Times

Immunophenotyping of COVID-19 and influenza highlights the role of type I interferons in development of severe COVID-19 – Science

July 11, 2020

Abstract

Although most SARS-CoV-2-infected individuals experience mild coronavirus disease 2019 (COVID-19), some patients suffer from severe COVID-19, which is accompanied by acute respiratory distress syndrome and systemic inflammation. To identify factors driving severe progression of COVID-19, we performed single-cell RNA-seq using peripheral blood mononuclear cells (PBMCs) obtained from healthy donors, patients with mild or severe COVID-19, and patients with severe influenza. Patients with COVID-19 exhibited hyper-inflammatory signatures across all types of cells among PBMCs, particularly up-regulation of the TNF/IL-1-driven inflammatory response as compared to severe influenza. In classical monocytes from patients with severe COVID-19, type I IFN response co-existed with the TNF/IL-1-driven inflammation, and this was not seen in patients with milder COVID-19. Interestingly, we documented type I IFN-driven inflammatory features in patients with severe influenza as well. Based on this, we propose that the type I IFN response plays a pivotal role in exacerbating inflammation in severe COVID-19.

Currently, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), which causes coronavirus disease 2019 (COVID-19), is spreading globally (1, 2), and the World Health Organization (WHO) has declared it a pandemic. As of June 2, 2020, more than 6.1 million confirmed cases and more than 376,000 deaths have been reported worldwide (3).

SARS-CoV-2 infection usually results in a mild disease course with spontaneous resolution in the majority of infected individuals (4). However, some patients, particularly elderly patients develop severe COVID-19 infection that requires intensive care with mechanical ventilation (4, 5). The mortality rate for COVID-19 in Wuhan, China, is estimated to be 1.4% (5). Although this rate is lower than that of severe acute respiratory syndrome (SARS) and Middle East respiratory syndrome (MERS), which are caused by other human pathogenic coronaviruses (6), it is much higher than that of influenza, a common respiratory viral disease requiring hospitalization and intensive care in severe cases.

In severe cases of COVID-19, a hyper-inflammatory response, also called a cytokine storm, has been observed and is suspected of causing the detrimental progression of COVID-19 (7). Circulating levels of pro-inflammatory cytokines, including TNF and IL-6, are increased in severe cases (8). Gene expression analyses have also shown that IL-1-related pro-inflammatory pathways are highly up-regulated in severe cases (9). In a murine model of SARS-CoV infection, a delayed, but considerable type I IFN (IFN-I) response promotes the accumulation of monocytes-macrophages and the production of pro-inflammatory cytokines, resulting in lethal pneumonia with vascular leakage and impaired virus-specific T-cell responses (10).

Immune dysfunction is also observed in patients with COVID-19. In severe cases, the absolute number of T cells is reduced (8, 11), and the T cells exhibit functional exhaustion with the expression of inhibitory receptors (12, 13). However, hyper-activation of T cells as reflected in the up-regulation of CD38, HLA-DR, and cytotoxic molecules was also reported in a lethal case of COVID-19 (14). Immune dysfunction in patients with severe COVID-19 has been attributed to pro-inflammatory cytokines (15).

In the present study, we performed single-cell RNA-seq (scRNA-seq) using peripheral blood mononuclear cells (PBMCs) to identify factors associated with the development of severe COVID-19 infection. By comparing COVID-19 and severe influenza, we report that the TNF/IL-1-driven inflammatory response was dominant in COVID-19 across all types of cells among PBMCs, whereas the up-regulation of various interferon-stimulated genes (ISGs) was prominent in severe influenza. When we compared the immune responses from patients with mild and severe COVID-19 infections, we found that classical monocytes from severe COVID-19 exhibit IFN-I-driven signatures in addition to TNF/IL-1-driven inflammation.

PBMCs were collected from healthy donors (n=4), hospitalized patients with severe influenza (n=5), and patients with COVID-19 of varying clinical severity, including severe, mild, and asymptomatic (n=8). PBMCs were obtained twice from three (the subject C3, C6, and C7) of the eight COVID-19 patients at different time points during hospitalization. PBMC specimens from COVID-19 patients were assigned to severe or mild COVID-19 groups according to the National Early Warning Score (NEWS; mild < 5, severe 5) evaluated on the day of whole blood sampling (16). In NEWS scoring, respiratory rate, oxygen saturation, oxygen supplement, body temperature, systolic blood pressure, heart rate, and consciousness were evaluated (16). Severe influenza was defined when hospitalization was required irrespective of NEWS score. Patients with severe influenza were enrolled from December 2015 to April 2016, prior to the emergence of COVID-19. The severe COVID-19 group was characterized by significantly lower lymphocyte count and higher serum level of C-reactive protein than the mild COVID-19 group on the day of blood sampling (Fig. S1A). Multiplex real-time PCR for N, RdRP, and E genes of SARS-CoV-2 was performed, and there was no statistical difference in Ct values for all three genes between two groups (Fig. S1B). Demographic information is provided with experimental batch of scRNA-seq in Table S1 and clinical data in Table S2 and S3.

Employing the 10X Genomics scRNA-seq platform, we analyzed a total of 59,572 cells in all patients after filtering the data with stringent high quality, yielding a mean of 6,900 UMIs per cell and detecting 1,900 genes per cell on average (Table S4). The transcriptome profiles of biological replicates (PBMC specimens in the same group) were highly reproducible (Fig. S1C), ensuring the high quality of the scRNA-seq data generated in this study.

To examine the host immune responses in a cell type-specific manner, we subjected 59,572 cells to t-distributed stochastic neighbor embedding (tSNE) based on highly variable genes using the Seurat package (17) and identified 22 different clusters unbiased by patients or experimental batches of scRNA-seq (Fig. 1A, Fig. S1D). These clusters were assigned to 13 different cell types based on well-known marker genes and two uncategorized clusters (Fig. 1B and C, and Table S5). In downstream analysis, we only focused on 11 different immune cell types, including IgG- B cell, IgG+ B cell, effector memory (EM)-like CD4+ T cell, non-EM-like CD4+ T cell, EM-like CD8+ T cell, non-EM-like CD8+ T cell, natural killer (NK) cell, classical monocyte, intermediate monocyte, non-classical monocyte, and dendritic cell (DC) after excluding platelets, red blood cells (RBCs), and two uncategorized clusters. The subject C8 (asymptomatic case) was also excluded due to a lack of replicates. In hierarchical clustering, most transcriptome profiles from the same cell type tended to cluster together, followed by disease groups, suggesting that both immune cell type and disease biology, rather than technical artifacts, are the main drivers of the variable immune transcriptome (Fig. S1E).

(A) tSNE projections of 59,572 PBMCs from healthy donors (HDs) (4 samples, 17,590 cells), severe influenza (FLU) patients (5 samples, 10,519 cells), COVID-19 patients (asymptomatic: 1 sample, 4,425 cells; mild COVID-19: 4 samples, 16,742 cells; severe COVID-19: 6 samples, 10,296 cells) colored by group information. (B) Normalized expression of known marker genes on a tSNE plot. (C) tSNE plot colored by annotated cell types. EM: effector memory, NK cell: natural killer cell, DC: dendritic cell, RBC: red blood cell. (D) Proportion of cell types in each group excluding Uncategorized 1, Uncategorized 2, RBC, and Platelet. The colors indicate cell type information. (E) Boxplots showing the fold enrichment in cell type proportions from mild COVID-19 (n=4), severe COVID-19 (n=6), and FLU (n=5) patients compared to the HD group (mild COVID-19 vs. HD: n=16, severe COVID-19 vs. HD: n=24, FLU vs. HD: n=20). For the boxplots, the box represents the interquartile range (IQR) and the whiskers correspond to the highest and lowest points within 1.5IQR. Uncategorized 1 (relatively high UMIs per cells and presence of multiple marker genes), Uncategorized 2 (B cell-like and high expression of ribosomal protein genes), RBC, and Platelet were excluded. Two-sided KolmogorovSmirnov (KS) tests were conducted for each cell type between the disease and HD group. *p<0.05, **p<0.01, and ***p<0.001.

As a feature of immunological changes, we investigated the relative proportions of immune cells among PBMCs in the disease groups compared to the healthy donor group (Fig. 1D and E, and Fig. S1F). Unlike the limited changes in mild COVID-19, significant changes were observed in both influenza and severe COVID-19 across multiple cell types among PBMCs. In severe COVID-19, the proportion of classical monocytes significantly increased whereas those of DCs, non-classical monocytes, intermediate monocytes, NK cells, EM-like CD8+ T cells, and EM-like CD4+ T cells significantly decreased (Fig. 1E). In severe influenza, the proportion of classical monocytes significantly increased whereas those of DCs, non-EM-like CD4+ T cells, EM-like CD4+ T cells, IgG+ B cells, and IgG- B cells significantly decreased. We validated the proportions of immune cell subsets from scRNA-seq by flow cytometry analysis. The relative proportions of total lymphocytes, B cells, CD4+ T cells, CD8+ T cells, NK cells, and total monocytes from scRNA-seq significantly correlated with those from flow cytometry analysis (Fig. S1G).

In order to compare the effect of infection between diseases, we performed hierarchical clustering based on relative gene expression changes against the healthy donor group. Unexpectedly, all types of cells among PBMCs were clustered together according to the disease groups instead of cell-types (Fig. 2A). Further investigation of the variable genes based on K-means clustering supported COVID-19-specific up- or down-regulated gene expression patterns across all types of cells among PBMCs (Fig. S2A). These results indicate that, in COVID-19, peripheral blood immune cells may be influenced by common inflammatory mediators regardless of cell type. Despite distinct transcriptional signatures between COVID-19 and influenza, severe COVID-19 and influenza shared transcriptional signatures in all types of monocytes and DCs (black boxed region in Fig. 2A), possibly reflecting common mechanisms underlying the innate immune responses in severe influenza and severe COVID-19.

(A) Hierarchical clustering using the Pearson correlation coefficient (PCC) of a normalized transcriptome between diseases in cell type resolution (n = 33). The color intensity of the heat map indicates the PCC values. The color bars above the heat map indicate the cell type and disease group. The black box indicates the cell types that highly correlate between the severe COVID-19 and FLU groups. (B) Illustration of the enrichment p-values for the select GO biological pathways (n = 49) of differentially expressed genes (DEGs) in COVID-19 and FLU patients (left 6 columns: DEGs for COVID-19 and FLU groups compared to HD, right 2 columns: DEGs between COVID-19 and FLU groups). (C) tSNE plot of representative gene expression patterns for GBP1 (FLU specific), CREM (COVID-19 specific), and CCL3 (COVID-19/FLU common). (D) Top, dendrogram from WGCNA analysis performed using relative normalized gene expression between the COVID-19 and FLU groups for the genes belonging to the select biological pathways in (B) (n=316). Bottom, heat map of relative normalized gene expression between the COVID-19 and FLU groups. The color bar (left) indicates cell type information clustered by hierarchical clustering based on the PCC for relative normalized gene expression. Modularized gene expression patterns by WGCNA are shown together (G1, n=10; G2, n=147; G3, n=27; G4, n=17; G5, n=12; G6, n=64; G7, n=34; G8, n=5).

Next, we sought to identify relevant biological functions in disease-specific up- or down-regulated genes in terms of the GO biological pathways. First, we combined both mild and severe COVID-19 as a COVID-19 group and identified disease-specific changes in genes for each cell type compared to the healthy donor group using model-based analysis of single cell transcriptomics (MAST) (18). NFKB1, NFKB2, IRF1, and CXCR3 were specifically up-regulated in COVID-19, and CXCL10, STAT1, TLR4, and genes for class II HLA and immunoproteasome subunits were specifically up-regulated in influenza (Table S6). TNF, TGFB1, IL1B, and IFNG were commonly up-regulated. When we directly compared COVID-19 and influenza, NFKB1, NFKB2, and TNF were up-regulated in COVID-19, whereas STAT1, TLR4, and genes for immunoproteasome subunits were up-regulated in influenza. For each group of differentially expressed genes (DEGs), we identified the top 10 enriched GO biological pathways and collected them to demonstrate p-value enrichment in each group of DEGs (Fig. 2B). Both distinct and common biological functions were identified as illustrated by inflammatory response genes being highly active in both COVID-19 and influenza, but genes for transcription factors, including inflammatory factors (i.e., NFKB1/2, and STAT4) were up-regulated in COVID-19. In contrast, a limited response in genes associated with the IFN-I and -II signaling pathways, T-cell receptor pathways, and adaptive immune response was observed in COVID-19 compared to influenza. Such disease-specific gene expression patterns were exemplified at single cell resolution by GBP1 (IFN--mediated signaling pathway) being specifically up-regulated in influenza, CREM (positive regulation of transcription) being specifically up-regulated in COVID-19, and CCL3 (inflammatory response) being commonly up-regulated (Fig. 2C and Table S7).

We expanded our analysis in a cell type specific manner by conducting weighted gene correlation network analysis (WGCNA) (19) for the collected genes associated with Fig. 2B. We identified several modular expression patterns (Fig. 2D and Table S8). In the COVID-19 group, NFKB1/2, JUN, and TNF were modularized in CD8+ T and NK cells (G6 and G7 in Fig. 2D), and IL1B, NFKBID, and OSM were modularized in all types of monocytes and DCs (G3 in Fig. 2D). In the influenza group, GBP1, TAP1, STAT1, IFITM3, OAS1, IRF3, and IFNG were modularized in all types of T cells and NK cells (G2 in Fig. 2D), and CXCL10 and TLR4 were modularized in all types of monocytes and DCs (G5 and part of G6 in Fig. 2D). Consistently, the DEGs between COVID-19 and influenza were dominant in CD8+ T cells and all types of monocytes (Fig. S2B).

To uncover disease-specific transcriptional signatures in CD8+ T cells, we performed sub-clustering analysis from EM-like and non-EM-like CD8+ T cell clusters using Seurat (17). Each disease group-specifically enriched sub-clusters compared to the two other groups were identified in the non-EM-like CD8+ T cell cluster (Fig. 3A). Of the six sub-clusters from the non-EM-like CD8+ T cell cluster, cluster 1 and cluster 3 were significantly enriched in the influenza and COVID-19 groups, respectively (Fig. 3B and C, and S3A). Clusters with the high expression of PPBP, a marker of platelets, were excluded in following analysis (e.g., cluster 6 in Fig. S3A). Intriguingly, up-regulated genes in cluster 1 and cluster 3 were associated with previously defined gene sets for influenza A virus infection and SARS-CoV infection, respectively (Fig. S3B) (20). We also found that the cluster 3-specific up-regulated genes reflect activation of immune response, including CD27, RGS1, CCL5, SELL, and RGS10 (Fig. S3C and Table S9). Protein interaction network analysis of selected top 30 up-regulated genes in each cluster based on STRING v11 (21) revealed the up-regulation of PRF1, GNLY, GZMB, and GZMH in cluster 1 and the up-regulation of GZMK, GZMA, CXCR3, and CCL5 in cluster 3 (Fig. 3D, green). STAT1, TAP1, PSMB9, and PSME2, which are up-regulated preferentially by IFN-, were overexpressed only in influenza-specific cluster 1 (Fig. 3D, blue). We validated these data by intracellular staining for granzyme B and PMA/ionomycin-stimulated intracellular cytokine staining for IFN-. The percentages of granzyme B+ and IFN-+ cells among CD8+ T cells were significantly higher in the influenza group than in the COVID-19 group (Fig. S3D). Of the seven representative GO biological pathways for the pro-inflammatory and IFN responses, pathways for responses to IFN-I and -II were more associated with influenza-specific cluster 1, whereas pathways for the response to TNF or IL-1 were more prominent in COVID-19-specific cluster 3 (Fig. 3E).

(A) tSNE plot of the non-EM-like CD8+ T cell subpopulations in all groups (left, n=6,253), COVID-19 (top right, n=2,653), FLU (middle right, n=1,452), and HD (bottom right, n=2,148) colored by cluster information. (B, C) Boxplots showing the proportion of individual sub-clusters from the non-EM-like CD8+ T cell cluster within each group (COVID-19, n=10; FLU, n=5; HD, n=4). The proportions follow normal distribution as tested by the Shapiro-Wilk normality test except the proportion of cluster 3 in the COVID-19 group (p=0.04). Cluster 1 and cluster 3 were highly enriched in the FLU and COVID-19 group, respectively. Two-sided Welchs t test p-values were 4.4E-03 between COVID-19 and FLU in cluster 1, 3.5E-02 between FLU and HD donor in cluster 1, 8.6E-03 between COVID-19 and FLU in cluster 3, and 5.8E-3 between COVID-19 and HD in cluster 3. *p<0.05, **p<0.01. (D) STRING analysis using the top 30 up-regulated genes in cluster 1 (left) and cluster 3 (right). (E) Bar plots showing enrichment p-values of eight representative GO biological pathways for pro-inflammation and interferon in cluster 1 or cluster 3-specific up-regulated genes (cluster 1, n=66; cluster 3, n=183).

We performed sub-clustering analysis from all three types of monocyte clusters to find COVID-19-specific sub-clusters. However, there was no COVID-19-specifically enriched sub-cluster (Fig. S4A and B). Next, we further focused on classical monocytes considering their crucial roles for inflammatory responses. We investigated DEGs between influenza and COVID-19 to seek COVID-19-specific transcriptional signatures in classical monocytes (Fig. 4A). Interestingly, TNF and IL1B, major genes in the inflammatory response, were identified as COVID-19-specific and commonly up-regulated genes, respectively. To better characterize the transcriptional signatures in classical monocytes, we performed K-means clustering of up-regulated genes in at least one disease group compared to the healthy donor group. We identified five different clusters of up-regulation (Fig. 4B and Table S10): genes in cluster 1 are commonly up-regulated in all disease groups, cluster 2 is influenza-specific, cluster 3 is associated with mild/severe COVID-19, cluster 4 is associated with influenza and severe COVID-19, and cluster 5 is severe COVID-19-specific.

(A) Venn diagram of differentially expressed genes (DEGs) in COVID-19 and FLU compared to HD. The representative genes are shown together. (B) K-means clustering of DEGs between all pairs of FLU, mild COVID-19, and severe COVID-19 (n=499). The color indicates the relative gene expression between the diseases and HD. The representative genes are shown together. (C) Bar plots showing the average log10(p-value) values in enrichment analysis using the perturbed genes of four different cell lines listed in L1000 LINCS for up-regulated genes in cluster 2 (C2, left) and cluster 3 (C3, right). Error bars indicate standard deviation. (D) Combined enrichment scores were compared between C2 and C3 for the gene sets of the type I IFN response (left; GSE26104) and TNF response (right; GSE2638, GSE2639). **p<0.01. Each dot indicates an individual subject. (E) Bar plots showing the average log10(p-value) values in the enrichment analysis using the perturbed genes listed of four different cell lines in L1000 LINCS for up-regulated genes in cluster 4 (C4, left) and cluster 5 (C5, right). Error bars indicate standard deviation (C and E).

We examined each cluster-specific genes by gene set enrichment analysis (GSEA) using cytokine-responsive gene sets originated from each cytokine-treated cells (LINCS L1000 ligand perturbation analysis in Enrichr) (22). COVID-19-specific cluster 3 genes were enriched by TNF/IL-1-responsive genes whereas influenza-specific cluster 2 genes were enriched by IFN-I-responsive genes in addition to TNF/IL-1-responsive genes (Fig. 4C), indicating that the IFN-I response is dominant in influenza compared to COVID-19. We confirmed this result by analyzing cluster-specific genes with cytokine-responsive gene sets originated from other sources (Fig. 4D). Unexpectedly, cluster 4 and 5 exhibited strong associations with IFN-I-responsive genes, in addition to TNF/IL-1-responsive genes (Fig. 4E), indicating that severe COVID-19 acquires IFN-I-responsive features in addition to TNF/IL-1-inflammatory features.

Next, we directly compared classical monocytes between mild and severe COVID-19. When we analyzed DEGs, severe COVID-19 was characterized by up-regulation of various ISGs, including ISG15, IFITM1/2/3, and ISG20 (Fig. 5A). Both TNF/IL-1-responsive genes and IFN-I-responsive genes were enriched in severe COVID-19-specific up-regulated genes (Fig. 5B). We measured plasma concentrations of TNF, IL-1, IL-6, IFN-, IFN-, and IL-18 in a larger cohort of COVID-19 patients. Among these cytokines, IL-6 and IL-18 were significantly increased in severe COVID-19 compared to mild COVID-19 whereas there was no difference in plasma concentrations of the other cytokines between the two groups (Fig. S5A). These results indicate that cytokine-responsive gene signatures cannot be simply explained by a few cytokines because of overlapped effects of cytokines.

(A) Volcano plot showing DEGs between mild and severe COVID-19 groups. Each dot indicates individual gene, colored by red when a gene is significant DEG. (B) Bar plot showing the average log10(p-value) values in enrichment analysis using the perturbed genes of four different cell lines listed in L1000 LINCS for up-regulated genes in the severe COVID-19 group. Error bars indicate standard deviation. (C) Trajectory analysis of classical monocytes from specimens obtained at two different time points in a single COVID-19 patient (mild: C7-2, 1,197 cells; severe: C7-1, 631 cells). The color indicates cluster information (left) or the severity of COVID-19 (right). (D) Relative expression patterns of representative genes in the trajectory analysis are plotted along the Pseudotime. The color indicates the relative gene expression calculated by Monocle 2. (E) Bar plots showing the average log10(p-value) values in the enrichment analysis using the perturbed genes of four different cell lines in L1000 LINCS for up-regulated genes in cluster 3 (left) and cluster 1 (right). Error bars indicate standard deviation. (F) Comparison of combined enrichment scores between cluster 3 and cluster 1 for the gene sets from systemic lupus erythematosus (SLE) (n=16) and rheumatoid arthritis (RA) (n=5). ***p<0.001; ns, not significant. (G) GSEA of up-regulated genes in cluster 3 (left) and cluster 1 (right) to the class 1 gene module of monocyte-derived macrophages by Park et al. (2017). NES: normalized enrichment score, FDR: false discovery rate.

To further investigate the characteristics of severe COVID-19, we performed a trajectory analysis with Monocle 2 (23) using two internally well-controlled specimens (one severe and one mild) in which both PBMC samples were collected from a single patient (the subject C7) with COVID-19. Trajectory analysis aligned classical monocytes along the disease severity with cluster 1 and cluster 3 corresponding to later and earlier Pseudotime, respectively (Fig. 5C). Representative genes in cluster 1 was enriched in the severe stage and highly associated with the both IFN-I and TNF/IL-1-associated inflammatory response (Fig. 5D, Fig. S5B, and Table S11). GSEA confirmed that both the IFN-I response and TNF/IL-1 inflammatory response were prominent in cluster 1, but not in cluster 3 (Fig. 5E). Cluster 1 exhibited a significantly higher association with a gene set from systemic lupus erythematosus, which is a representative inflammatory disease with IFN-I features, than cluster 3 (Fig. 5F, left), but was not significantly associated with a gene set from rheumatoid arthritis (Fig. 5F, right).

We obtained additional evidence of the IFN-I-potentiated TNF inflammatory response in severe COVID-19 by analyzing a gene module that is not responsive to IFN-I, but associated with TNF-induced tolerance to TLR stimulation. Park et al. previously demonstrated that TNF tolerizes TLR-induced gene expression in monocytes, though TNF itself is an inflammatory cytokine (24). They also showed that IFN-I induces a hyper-inflammatory response by abolishing the tolerance effects of TNF, and defined a gene module responsible for the IFN-I-potentiated TNF-NF-B inflammatory response as class 1 (24). This gene module was significantly enriched in cluster 1, but not in cluster 3 (Fig. 5G), which suggests that the IFN-I response may exacerbate hyper-inflammation by abolishing a negative feedback mechanism.

Finally, we validated IFN-I response and inflammatory features using bulk RNA-seq data obtained using post-mortem lung tissues from patients with lethal COVID-19 (25). Although the analysis was limited to only two patients without individual cell-type resolution, in genome browser, up-regulation of IFITM1, ISG15, and JAK3 and down-regulation of RPS18 were observed commonly in post-mortem COVID-19 lung tissues and classical monocytes of severe COVID-19 (Fig. 6A). In the analysis with cytokine-responsive gene sets, both the IFN-I response and TNF/IL-1-inflammatory response were prominent in the lung tissues (Fig. 6B). DEGs in the lung tissues were significantly associated with cluster 4, which is commonly up-regulated in both influenza and severe COVID-19, and cluster 5, which is specific to severe COVID-19 in Fig. 4B (Fig. 6C). These genes were also significantly associated with the cluster 1 identified in the trajectory analysis, but not with cluster 3 (Fig. 6D). When gene sets were defined by DEGs between mild and severe COVID-19, the DEGs in post-mortem lung tissues were significantly associated with genes up-regulated specifically in severe COVID-19 (Fig. 6E).

(A) UCSC Genome Browser snapshots of representative genes. (B) Bar plot showing the average log10(p-value) values from the enrichment analysis using the perturbed genes of four different cell lines in L1000 LINCS for up-regulated genes (n= 386) in post-mortem lung tissues compared to biopsied healthy lung tissue. Error bars indicate standard deviation. (C) GSEA of significantly up- and down-regulated genes in post-mortem lung tissues for gene sets originated from up-regulated genes in C2 (n=96), C3 (n=143), C4 (n=218), and C5 (n=30) of Fig. 4B. (D and E) GSEA of significantly up- and down-regulated genes in post-mortem lung tissues for gene sets originated from the top 200 up-regulated genes in cluster 3 (left) and cluster 1 (right) from the trajectory analysis in Fig. 5C (D), and from gene sets originated from the top 200 up-regulated genes in classical monocytes of mild (left) and severe (right) COVID-19 (E).

Severe COVID-19 has been shown to be caused by a hyper-inflammatory response (7). Particularly, inflammatory cytokines secreted by classical monocytes and macrophages are considered to play a crucial role in severe progression of COVID-19 (26). In the current study, we confirmed the results from previous studies by showing that the TNF/IL-1 inflammatory response is dominant in COVID-19 although a small number of patients were enrolled. However, we also found that severe COVID-19 is accompanied by the IFN-I response in addition to the TNF/IL-1 response. These results indicate that the IFN-I response might contribute to the hyper-inflammatory response by potentiating TNF/IL-1-driven inflammation in severe progression of COVID-19.

In the current study, we carried out scRNA-seq using PBMCs instead of specimens from the site of infection, e.g., lung tissues or bronchoalveolar lavage (BAL) fluids. However, hierarchical clustering based on relative changes to the healthy donor group showed that all types of cells among PBMCs were clustered together according to the disease groups as shown in Fig. 2A, indicating that there is disease-specific global impact across all types of cells among PBMCs. This finding suggests that peripheral blood immune cells are influenced by common inflammatory mediators regardless of cell type. However, we could not examine granulocytes in the current study because we used PBMCs, not whole blood samples for scRNA-seq.

In transcriptome studies for cytokine responses, we often analyze cytokine-responsive genes rather than cytokine genes themselves. However, we cannot exactly specify responsible cytokine(s) from the list of up-regulated genes because of overlapped effects of cytokines. For example, up-regulation of NF-B-regulated genes can be driven by TNF, IL-1 or other cytokines, and up-regulation of IFN-responsive genes can be driven by IFN-I or other interferons. In the current study, we designated the IFN-I response because many up-regulated IFN-responsive genes were typical ISGs.

Recently, Wilk et al. also performed scRNA-seq using PBMCs from COVID-19 patients and healthy controls (27). Similar to our study, they found IFN-I-driven inflammatory signatures in monocytes from COVID-19 patients. However, they did not find substantial expression of pro-inflammatory cytokine genes such as TNF, IL6, IL1B, CCL3, CCL4 and CXCL2 in peripheral monocytes from COVID-19 patients whereas we detected the up-regulation of TNF, IL1B, CCL3, CCL4 and CXCL2 in the current study. Moreover, they found a developing neutrophil population in COVID-19 patients that was not detected in our study. These discrepant results might be due to different platforms for scRNA-seq. Wilk et al. used the Seq-Well platform whereas we used the 10X Genomics platform that is more generally used. We also note that recent scRNA-seq analyses of COVID-19 sometimes lead to unrelated or contradictory conclusions to each other despite the same platform (28, 29). Although it often occurs in unsupervised analysis of highly multi-dimensional data, more caution will be required in designing scRNA-seq analysis of COVID-19, including definition of the severity and sampling time points.

Recently, Blanco-Melo et al. examined the transcriptional response to SARS-CoV-2 in in vitro infected cells, infected ferrets, and post-mortem lung samples from lethal COVID-19 patients and reported that IFN-I and -III responses are attenuated (25). However, we noted that IFN-I signaling pathway and innate immune response genes were relatively up-regulated in post-mortem lung samples from lethal COVID-19 patients compared to SARS-CoV-2-infected ferrets in their paper. Given that SARS-CoV-2 induces only mild disease without severe progression in ferrets (30), we interpret that IFN-I response is up-regulated in severe COVID-19 (e.g., post-mortem lung samples from lethal COVID-19 patients), but not in mild COVID-19 (e.g., SARS-CoV-2-infected ferrets). Indeed, severe COVID-19-specific signatures discovered in our current study were significantly enriched in the publically available data of post mortem lung tissues from the Blanco-Melo et al.s study although the analysis was limited to only two patients without individual cell-type resolution (Fig. 6). In a recent study, Zhou et al. also found a robust IFN-I response in addition to pro-inflammatory response in BAL fluid of COVID-19 patients (31). Moreover, up-regulation of IFN-I-responsive genes has been demonstrated in SARS-CoV-2-infected intestinal organoids (32).

Although IFN-I has direct antiviral activity, their immunopathological role was also reported previously (33). In particular, the detrimental role of the IFN-I response was elegantly demonstrated in a murine model of SARS (10). In SARS-CoV-infected BALB/c mice, the IFN-I response induced the accumulation of pathogenic inflammatory monocytes-macrophages and vascular leakage, leading to death. It was proposed that a delayed, but considerable IFN-I response is critical for the development of acute respiratory distress syndrome and increased lethality during pathogenic coronavirus infection (6, 34).

Currently, the management of patients with severe COVID-19 relies on intensive care and mechanical ventilation without a specific treatment because the pathogenic mechanisms of severe COVID-19 have not yet been clearly elucidated. In the current study, we demonstrated that severe COVID-19 is characterized by TNF/IL-1-inflammatory features combined with the IFN-I response. In a murine model of SARS-CoV infection, timing of the IFN-I response is a critical factor determining outcomes of infection (6, 10). Delayed IFN-I response contributes to pathological inflammation whereas early IFN-I response controls viral replication. Therefore, we propose that anti-inflammatory strategies targeting not only inflammatory cytokines, including TNF, IL-1, and IL-6, but also pathological IFN-I response needs to be investigated for the treatment of patients with severe COVID-19.

Patients diagnosed with COVID-19 were enrolled from Asan Medical Center, Severance Hospital, and Chungbuk National University Hospital. SARS-CoV-2 RNA was detected in patients nasopharyngeal swab and sputum specimens by multiplex real-time reverse-transcriptase PCR using the Allplex 2019-nCoV Assay kit (Seegene, Seoul, Republic of Korea). In this assay, N, RdRP, and E genes of SARS-CoV-2 were amplified, and Ct values were obtained for each gene. SARS-CoV-2-specific antibodies were examined using the SARS-CoV-2 Neutralization Antibody Detection kit (GenScript, Piscataway, NJ) and were positive in all COVID-19 patients in convalescent plasma samples or the last plasma sample in a lethal case. Hospitalized patients diagnosed with influenza A virus infection by a rapid antigen test of a nasopharyngeal swab were also enrolled from Asan Medical Center and Chungbuk National University Hospital from December 2015 to April 2016, prior to the emergence of COVID-19. Patients clinical features, laboratory findings, and chest radiographs were collected from their electronic medical records at each hospital. This study protocol was reviewed and approved by the institutional review boards of all participating institutions. Written informed consent was obtained from all patients.

Peripheral blood mononuclear cells (PBMCs) were isolated from peripheral venous blood via standard Ficoll-Paque (GE Healthcare, Uppsala, Sweden) density gradient centrifugation, frozen in freezing media, and stored in liquid nitrogen until use. All samples showed a high viability of about 90% on average after thawing. Single-cell RNA-seq libraries were generated using the Chromium Single Cell 3 Library & Gel Bead Kit v3 (10X genomics, Pleasanton, CA) following the manufacturers instructions. Briefly, thousands of cells were separated into nanoliter-scale droplets. In each droplet, cDNA was generated through reverse transcription. As a result, a cell barcoding sequence and Unique Molecular Identifier (UMI) were added to each cDNA molecule. Libraries were constructed and sequenced as a depth of approximately 50,000 reads per cell using the Nextseq 550 or Novaseq 6000 platform (Illumina, San Diego, CA).

The sequenced data were de-multiplexed using mkfastq (cellranger 10X genomics, v3.0.2) to generate fastq files. After de-multiplexing, the reads were aligned to the human reference genome (GRCh38; 10x cellranger reference GRCh38 v3.0.0), feature-barcode matrices generated using the cellranger count, and then aggregated by cellranger aggr using default parameters. The following analysis was performed using Seurat R package v3.1.5 (17). After generating the feature-barcode matrix, we discarded cells that expressed <200 genes and genes not expressed in any cells. To exclude low-quality cells from our data, we filtered out the cells that express mitochondrial genes in >15% of their total gene expression as described in previous studies (29, 35, 36). Doublets were also excluded, which were dominant in the cluster Uncategorized 1. Although there was a high variability in the number of UMIs detected per cell, majority of cells (90.5%) were enriched in a reasonable range of the UMIs (1,000 - 25,000), and 59% of cells with less than 1,000 UMIs were platelet or RBC excluded in downstream analysis. In each cell, the gene expression was normalized based on the total read count and log-transformed. To align the cells originating from different samples, 2000 highly variable genes from each sample were identified by the vst method in Seurat R package v3.1.5 (17). Using the canonical correlation analysis (CCA), we found anchors and aligned the samples based on the top 15 canonical correlation vectors. The aligned samples were scaled and principal component analysis (PCA) conducted. Finally, the cells were clustered by unsupervised clustering (0.5 resolution) and visualized by tSNE using the top 15 principal components.

To identify marker genes, up-regulated genes in each cluster relative to the other clusters were selected based on the Wilcoxon rank sum test in Seurats implementation with >0.25 log fold change compared to the other clusters and a Bonferroni-adjusted p < 0.05 (Table S4). By manual inspection, among the 22 different clusters, 20 were assigned to 11 known immune cell types, RBCs which are characterized by HBA1, HBA2, and HBB, and platelets. The clusters characterized by similar marker genes were manually combined as one cell type. The two remaining clusters were assigned to Uncategorized 1 and Uncategorized 2 because they had no distinct features of known cell types. Based on the distribution of UMI counts, the cluster Uncategorized 1 was featured by relatively high UMIs per cell compared to other clusters and presence of higher expression of multiple cell type marker genes. The cluster Uncategorized 2 was featured by a B cell-like signatures and high expression of ribosomal protein genes, not recommended to be further analyzed according to the 10X platform guideline. In these aspects, RBCs, platelets, Uncategorized 1, and Uncategorized 2 were excluded in downstream analysis.

To check the reproducibility of biological replicates (individuals within a same group), we calculated the Spearmans rank correlation coefficient for UMI counts that were merged according to each individual. The correlation coefficients of all individual pairs within the same group were visualized by a boxplot (COVID-19, n=45; FLU, n=10; HD, n=6).

In Fig. S1E, to investigate the similarity of the transcriptomes between cell types across diseases, we merged the UMI counts of each cell type according to healthy donor, influenza, mild COVID-19, and severe COVID-19. Next, the UMI counts for each gene were divided by the total UMI count in each cell type and multiplied by 100,000 as the normalized gene expression. Based on a median expression value >0.5, we calculated the relative changes in gene expression divided by the median value for each gene. Hierarchical clustering analysis was performed based on the PCC of the relative change in gene expression.

In Fig. 2A and Fig. S2A, to compare the highly variable gene expression among mild and severe COVID-19 and influenza relative to healthy donors, the normalized gene expression used in Fig. S1E was divided by the values in the healthy donor group. We selected the highly variable genes in terms of the top 25% standard deviation followed by log2-transformation (pseudo-count =1). In Fig. 2A, hierarchical clustering analysis was performed based on the PCCs of the selected highly variable genes. For Fig. S2A, to investigate the expression patterns of the selected highly variable genes (n=6,052), K-means clustering (k=50) was performed based on Euclidean distance. We manually ordered the clusters and visualized them as a heat map, revealing four distinct patterns: influenza-specific (n=1,046), COVID-19 specific (n=1,215), influenza/COVID-19 common (n=1,483), and cell type-specific (n=2,308).

To investigate the dynamic changes in cell type composition, we calculated the proportion of cell types in each individual. As a control, we calculated the relative variation in each cell type composition between all pairs of healthy donors. Similarly, for each disease group, we calculated the relative variation in each cell type by dividing the fraction of the cell type in individual patient by that of individual healthy donor. After log2-transformation, we conducted statistical analysis using the relative variation in composition between the control and disease groups using a two-sided KolmogorovSmirnov test.

For any two transcriptome profiles, to identify DEGs, we utilized the model-based analysis of single cell transcriptomics (MAST) algorithm in Seurats implementation based on a Bonferroni-adjusted p<0.05 and a log2 fold change > 0.25.

In Fig. 2B, the DEGs in COVID-19 and influenza compared to healthy donors or COVID-19 compared to influenza were identified at cell type resolution. All DEGs were combined according to the disease groups for further analysis. The overlapping up or down DEGs between COVID-19 and influenza compared to healthy donors were defined as Common up or Common down. The specific DEGs in COVID-19 or influenza were assigned as COVID-19 up/down or FLU up/down, respectively. In addition, COVID-19-specific up- or down-regulated genes compared to influenza were assigned as COVID-19>FLU or FLU>COVID-19, respectively. The Gene Ontology analysis was performed by DAVID. For each group of DEGs, the top 10 enriched GO biological pathways were selected, resulting in 49 unique GO biological pathways across all groups. The -log10(p-values) are shown as a heat map in Fig. 2B.

The weighted gene correlation network analysis (WGCNA) was conducted with the genes listed in the top 10 GO biological pathways of COVID-19 up, FLU up, and Common up defined in Fig. 2B. The normalized gene expression values of the genes in COVID-19 were divided by the values in influenza and log2-transformed (pseudo-count =1). We used default parameters with the exception of soft threshold =10 and networkType = signed when we constructed a topological overlap matrix. The modular gene expression patterns were defined using cutreeDynamic with a minClusterSize of 5. We visualized the modular gene expression pattern as a heat map in which the cell types were ordered according to hierarchical clustering with the default parameters of hcluster in R.

To find disease-specific subpopulations, each immune cell type was subjected to the subclustering analysis using Seurat. Briefly, the highly variable genes (n=1000) were selected based on vst and then scaled by ScaleData in Seurat with the vars.to.regress option to eliminate variation between individuals. The subpopulations were identified by FindClusters with default parameters, except resolution (non-EM-like CD8+ T cells, 0.3; classical monocytes, 0.2); the inputs were the top eight principal components (PCs) obtained from PCA of the scaled expression of the highly variable genes. The subpopulations were visualized by tSNE using the top eight PCs.

The trajectory analysis was performed with 2000 highly variable genes in classical monocytes across mild (C7-2) and severe (C7-1) COVID-19 as defined by the vst method in Seurat. The following analysis was performed using Monocle2. Briefly, the input was created from the UMI count matrix of the highly variable genes using the newCellDataSet function with default parameters, except expressionFamily = negbinomial.size. The size factors and dispersion of gene expression were estimated. The dimension of the normalized data was reduced based on DDRTree using reduceDimension with default parameters, except scaling = FALSE, which aligned the cells to the trajectory with three distinct clusters.

To determine genes that gradually changed along the trajectory, we identified the DEGs using MAST between clusters 1 and 3, which represent the severe stage and mild stage, respectively. The expression patterns of representative DEGs were visualized along the Pseudotime after correction with estimated size factors and dispersion for all genes.

In Fig. 4B, we performed K-means clustering of DEGs among all pairs of mild COVID-19, severe COVID-19, and influenza. The log2-transformed relative gene expression of DEGs compared to healthy donors was subjected to K-means clustering (k=10). Here, we used up-regulated DEGs in at least one disease group compared to the healthy donor group. We manually assigned five clusters based on gene expression patterns.

The transcriptome profiles of post-mortem lung tissues from two lethal cases of COVID-19 and biopsied heathy lung tissues from two donors were downloaded from a public database (GSE147507). The DEGs were identified using DESeq2 based on a Bonferroni-adjusted p < 0.05 and a log2 fold change > 1.

Enrichr, the web-based software for gene set enrichment analysis (GSEA) was used for LINCS L1000 ligand perturbation analysis (22), virus perturbation analysis, and disease perturbation analysis from the GEO database. Combined score was calculated as a parameter of enrichment as the log(p-value) multiplied by the z-score from the Fisher exact test. GSEA 4.0.3 software was used to conduct the GSEA when a ranked list of genes was available (Fig. 5G, Fig. 6C-E) (37). Results for IFN--responsive genes were not presented because those were considerably overlapped with IFN--responsive genes, which are typical ISGs. The normalized enrichment score and FDR-q value were calculated to present the degree and significance of enrichment.

Cryopreserved PBMCs were thawed, and dead cells were stained using the Live/Dead Fixable Cell Stain kit (Invitrogen, Carlsbad, CA). Cells were stained with fluorochrome-conjugated antibodies, including anti-CD3 (BV605; BD Biosciences), anti-CD4 (BV510; BD Biosciences), anti-CD8 (BV421; BD Biosciences), anti-CD14 (PE-Cy7; BD Biosciences), anti-CD19 (Alexa Fluor 700; BD Biosciences), and anti-CD56 (VioBright FITC; Miltenyi Biotec). For staining with anti-granzyme B (BD Biosciences), cells were permeabilized using a Foxp3 staining buffer kit (eBioscience).

For intracellular cytokine staining of IFN-, PBMCs were stimulated with phorbol 12-myristate 13-acetate (PMA, 50 ng/ml) (Sigma Aldrich) and ionomycin (1 g/ml) (Sigma Aldrich). Brefeldin A (GolgiPlug, BD Biosciences) and monesin (GolgiStop, BD Biosciences) were added 1 hour later. After another 5 hours of incubation, cells were harvested for staining with the Live/Dead Fixable Cell Stain kit, anti-CD3, anti-CD4, and anti-CD8. Following cell permeabilization, cells were further stained with anti-IFN- (Alexa Fluor 488; eBioscience).

Flow cytometry was performed on an LSR II instrument using FACSDiva software (BD Biosciences) and the data analyzed using FlowJo software (Treestar, San Carlos, CA).

Cytokines were measured in plasma samples, including IFN-, IL-18 (ELISA, R&D Systems, Minneapolis, MN), IL-1 (Cytometric bead array flex kit, BD Biosciences, San Jose, CA), TNF, IL-6, and IFN- (LEGENDplex bead-based immunoassay kit, BioLegend, San Diego, CA).

We performed the KS test to compare the distributions of two groups without assuming that the distributions follow normality. Welchs t test was conducted to compare the two distributions after confirming the normality of the distributions using the Shapiro-Wilk normality test. A Wilcoxon signed rank test was conducted to compare the differences between two groups with paired subjects. The Mann-Whitney test was performed to compare the means of two groups. Statistical analyses were performed using Prism software version 5.0 (GraphPad, La Jolla, CA). p<0.05 was considered significant.

immunology.sciencemag.org/cgi/content/full/5/49/eabd1554/DC1

Fig. S1. Clinical characteristics and assessment of the quality of scRNA-seq results.

Fig. S2. Transcriptome features of highly variable genes.

Fig. S3. Characterization of disease-specific CD8+ T-cell subpopulations.

Fig. S4. Subpopulation analysis of classical monocytes.

Fig. S5. STRING analysis of up-regulated genes in cluster 1 obtained from the trajectory analysis of classical monocytes.

Table S1. Experimental batches of scRNA-seq.

Table S2. Clinical characteristics of severe influenza patients.

Table S3. Clinical characteristics of COVID-19 patients.

Table S4. The scRNA-seq results.

Table S5. A list of marker genes for each cluster.

Table S6. A list of DEGs and associated biological pathways in Fig. 2B.

Table S7. Cell types in which the GBP1, CREM, and CCL3 were upregulated in Fig. 2C.

Table S8. A list of genes in each module obtained from WGCNA in Fig. 2D.

Table S9. A list of up-regulated genes in non-EM-like CD8+ T-cell subpopulations.

Table S10. A list of genes included in each cluster defined by K-mean clustering of classical monocytes.

Table S11. A list of genes up-regulated in early and late Pseudotime.

This is an open-access article distributed under the terms of the Creative Commons Attribution license, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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Immunophenotyping of COVID-19 and influenza highlights the role of type I interferons in development of severe COVID-19 - Science

34-year-old Vancouver man dies from COVID-19 – KPTV.com

July 11, 2020

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