https://www.statnews.com/2020/03/17/...reliable-data/
The current coronavirus disease, Covid-19, has been called a once-in-a-century 
pandemic. But it may also be a once-in-a-century evidence fiasco. 
At a time when everyone needs better information, from disease  modelers and governments to people quarantined or just social  distancing, we lack reliable evidence on how many people have been  infected with SARS-CoV-2 or who continue to become infected. Better  information is needed to guide decisions and actions of monumental  significance and to monitor their impact.
 Draconian countermeasures have been adopted in many countries. If the  pandemic dissipates — either on its own or because of these measures —  short-term extreme social distancing and lockdowns may be bearable. How  long, though, should measures like these be continued if the pandemic  churns across the globe unabated? How can policymakers tell if they are  doing more good than harm?
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 Vaccines or affordable treatments take many months (or even years) to  develop and test properly. Given such timelines, the consequences of  long-term lockdowns are entirely unknown.
         
         The data collected so far on how many people are infected  and how the epidemic is evolving are utterly unreliable. Given the  limited testing to date, some deaths and probably the vast majority of  infections due to SARS-CoV-2 are being missed. We don’t know if we are  failing to capture infections by a factor of three or 300. Three months  after the outbreak emerged, most countries, including the U.S., lack the  ability to test a large number of people and no countries have reliable  data on the prevalence of the virus in a representative random sample  of the general population.
 
                      
 This evidence fiasco creates tremendous uncertainty about the risk of  dying from Covid-19. Reported case fatality rates, like the official  3.4% rate from the World Health Organization, cause horror — and are  meaningless. Patients who have been tested for SARS-CoV-2 are  disproportionately those with severe symptoms and bad outcomes. As most  health systems have limited testing capacity, selection bias may even  worsen in the near future.
 The one situation where an entire, closed population was tested was  the Diamond Princess cruise ship and its quarantine passengers. The case  fatality rate there was 1.0%, but this was a largely elderly  population, in which the death rate from Covid-19 is much higher.
 Projecting the Diamond Princess mortality rate onto the age structure  of the U.S. population, the death rate among people infected with  Covid-19 would be 0.125%. But since this estimate is based on extremely  thin data — there were just seven deaths among the 700 infected  passengers and crew — the real death rate could stretch from five times  lower (0.025%) to five times higher (0.625%). It is also possible that  some of the passengers who were infected might die later, and that  tourists may have different frequencies of chronic diseases — a risk  factor for worse outcomes with SARS-CoV-2 infection — than the general  population. Adding these extra sources of uncertainty, reasonable  estimates for the case fatality ratio in the general U.S. population  vary from 0.05% to 1%.
                                               
                
                 
             
         That huge range markedly affects how severe the pandemic is  and what should be done. A population-wide case fatality rate of 0.05%  is lower than seasonal influenza. If that is the true rate, locking down  the world with potentially tremendous social and financial consequences  may be totally irrational. It’s like an elephant being attacked by a  house cat. Frustrated and trying to avoid the cat, the elephant  accidentally jumps off a cliff and dies.
 Could the Covid-19 case fatality rate be that low? No, some say,  pointing to the high rate in elderly people. However, even some  so-called mild or common-cold-type coronaviruses that have been known  for decades can have case fatality rates 
as high as 8%  when they infect elderly people in nursing homes. In fact, such “mild”  coronaviruses infect tens of millions of people every year, and account  for 
3% to 11% of those hospitalized in the U.S. with lower respiratory infections each winter.
 These “mild” coronaviruses may be implicated in several thousands of  deaths every year worldwide, though the vast majority of them are not  documented with precise testing. Instead, they are lost as noise among  60 million deaths from various causes every year.
 Although successful surveillance systems have long existed for  influenza, the disease is confirmed by a laboratory in a tiny minority  of cases. In the U.S., for example, so far this season 
1,073,976 specimens have been tested  and 222,552 (20.7%) have tested positive for influenza. In the same  period, the estimated number of influenza-like illnesses is between  36,000,000 and 51,000,000, with an estimated 22,000 to 55,000 flu  deaths.
 Note the uncertainty about influenza-like illness deaths: a 2.5-fold  range, corresponding to tens of thousands of deaths. Every year, some of  these deaths are due to influenza and some to other viruses, like  common-cold coronaviruses.
 In 
an autopsy series  that tested for respiratory viruses in specimens from 57 elderly  persons who died during the 2016 to 2017 influenza season, influenza  viruses were detected in 18% of the specimens, while any kind of  respiratory virus was found in 47%. In some people who die from viral  respiratory pathogens, more than one virus is found upon autopsy and  bacteria are often superimposed. A positive test for coronavirus does  not mean necessarily that this virus is always primarily responsible for  a patient’s demise.
If we assume that case fatality rate among individuals  infected by SARS-CoV-2 is 0.3% in the general population — a mid-range  guess from my Diamond Princess analysis — and that 1% of the U.S.  population gets infected (about 3.3 million people), this would  translate to about 10,000 deaths. This sounds like a huge number, but it  is buried within the noise of the estimate of deaths from  “influenza-like illness.” If we had not known about a new virus out  there, and had not checked individuals with PCR tests, the number of  total deaths due to “influenza-like illness” would not seem unusual this  year. At most, we might have casually noted that flu this season seems  to be a bit worse than average. The media coverage would have been less  than for an NBA game between the two most indifferent teams.
 Some worry that the 68 deaths from Covid-19 in the U.S. 
as of March 16  will increase exponentially to 680, 6,800, 68,000, 680,000 … along with  similar catastrophic patterns around the globe. Is that a realistic  scenario, or bad science fiction? How can we tell at what point such a  curve might stop?
 The most valuable piece of information for answering those questions  would be to know the current prevalence of the infection in a random  sample of a population and to repeat this exercise at regular time  intervals to estimate the incidence of new infections. Sadly, that’s  information we don’t have.
 In the absence of data, prepare-for-the-worst reasoning leads to  extreme measures of social distancing and lockdowns. Unfortunately, 
we do not know  if these measures work. School closures, for example, may reduce  transmission rates. But they may also backfire if children socialize  anyhow, if school closure leads children to spend more time with  susceptible elderly family members, if children at home disrupt their  parents ability to work, and more. School closures may also diminish the  chances of developing herd immunity in an age group that is spared  serious disease.
 This has been the perspective behind the different stance of the United Kingdom 
keeping schools open,  at least until as I write this. In the absence of data on the real  course of the epidemic, we don’t know whether this perspective was  brilliant or catastrophic.
 
Flattening the curve  to avoid overwhelming the health system is conceptually sound — in  theory. A visual that has become viral in media and social media shows  how flattening the curve reduces the volume of the epidemic that is  above the threshold of what the health system can handle at any moment.
         
         Yet if the health system does become overwhelmed, the  majority of the extra deaths may not be due to coronavirus but to other  common diseases and conditions such as heart attacks, strokes, trauma,  bleeding, and the like that are not adequately treated. If the level of  the epidemic does overwhelm the health system and extreme measures have  only modest effectiveness, then flattening the curve may make things  worse: Instead of being overwhelmed during a short, acute phase, the  health system will remain overwhelmed for a more protracted period.  That’s another reason we need data about the exact level of the epidemic  activity.
 One of the bottom lines is that we don’t know how long social  distancing measures and lockdowns can be maintained without major  consequences to the economy, society, and mental health. Unpredictable  evolutions may ensue, including financial crisis, unrest, civil strife,  war, and a meltdown of the social fabric. At a minimum, we need unbiased  prevalence and incidence data for the evolving infectious load to guide  decision-making.
 In the most pessimistic scenario, which I do not espouse, if the new  coronavirus infects 60% of the global population and 1% of the infected  people die, that will translate into more than 40 million deaths  globally, matching the 1918 influenza pandemic.
 The vast majority of this hecatomb would be people with limited life  expectancies. That’s in contrast to 1918, when many young people died.
 One can only hope that, much like in 1918, life will continue.  Conversely, with lockdowns of months, if not years, life largely stops,  short-term and long-term consequences are entirely unknown, and  billions, not just millions, of lives may be eventually at stake.
 If we decide to jump off the cliff, we need some data to inform us  about the rationale of such an action and the chances of landing  somewhere safe.
 
John P.A. Ioannidis is professor of medicine, of epidemiology and  population health, of biomedical data science, and of statistics at  Stanford University and co-director of Stanford’s Meta-Research  Innovation Center.
Comment - a sobering article from a well recognized and respected educational institution.  and hardly a Trump proxy.  And a respected epidemiologist.
Points- we are operating under assumptions made with very little data to conclude the actions of shutting down the economy are necessary and indicated.  The consequences may be severe for the economy and last years.  Data as interpreted by  Dr. Ioannidis indicates the need for better data, and a very reasonable interpretation that the case fatality rate is much lower than  the 4% trumpeted in the LSM. 
China now reports -"No new cases of covid-19" - and anyone who believes China needs to get in line to purchase the Brooklyn bridge. It "FACT" that this Covid-19 virus originated in Wuhan China - and China is stonewalling the world to evade its' responsibility for denying the viral outbreak in Wuhan, trying to suppress the doctors who reported the outbreak, and exporting the virus on airplanes to many other countries as the virus spread in China. 
LSM and fascist DPST's are now parroting the Chinese effort to coverup, and calling naming the Virus "Wuhan virus" as racist - doing the Chinese aid and comfort in their coverup to evade their responsibility.  not to mention attacking Trump as "murderer" for the viral outbreak, and holding trump responsible for the virus mutation and origination in China!.  
LSM and Fascist DPST's have no shame in their Lies. 
Hear that - J666 and ilk???
I seriously doubt any of the Fascist DPST posters on site will read, much less understand/comprehend Dr. Ioannidis article.  We will see the usual "fake news" because this does not jibe with the Fascist DPST "narrative" that includes mandating the economic shutdown they have been praying for in their hatred for Trump.  All this shut down by the governments may well be not indicated. 
At least there is some progress - Quinine in its' various forms may be of some benefit - the studies are out of china - untrustworthy - and korea.  There are some lab cell studies of mechanism of action. But, enough information on a FDA approved anti-malarial drug to fast-track clinical studies   -  and the drug can be used "off-label" for severely affected patients. 
Perhaps a treatment "might" be in the offing. 
Now for the chorus from the unthinking China parroting numbskulls of the Fascist DPST Party, and ChiCom Party - this does not fit their Orwellian narrative - so "Fake news"!
Right j666 and ilk?!!!
        Author - John P.A. Ioannidis
                                            jioannid@stanford.edu                     
                                                            @METRICStanford