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by rumblecat 2274 days ago
Risk management is the correct way to go when uncertainty is high. Containment was the correct approach at the time.

When evidence starts coming in, then you can start applying evidence based approaches.

> Mortality rate: Mortality and morbidity rates are also downward biased, due to the lag between identified cases, deaths and reporting of those deaths [1]

> Among 3,711 Diamond Princess passengers and crew, 712 (19.2%) had positive test results for SARS-CoV-2 (Figure 1). Of these, 331 (46.5%) were asymptomatic at the time of testing. Among 381 symptomatic patients, 37 (9.7%) required intensive care, and nine (1.3%) died (8) . . . As of March 13, among 428 U.S. passengers and crew, 107 (25.0%) had positive test results for COVID-19; 11 U.S. passengers remain hospitalized in Japan (median age = 75 years), including seven in serious condition (median age = 76 years) [2].

Based on the second source, who can still seriously believe that the naive death rate is too conservative, because all the people in intensive care just have not died yet?

Look at the deaths/recoveries in Singapore and Hong Kong for more evidence [3][4].

Whereas, if you compare fatality rates reported by Germany, SK, HK, Singapore and other high testers vs China, Italy and Spain, it's pretty clear the latter are under-diagnosing mild/asymptomatic cases, which increase their fatality rate by a factor of 10 or more.

[1] https://necsi.edu/systemic-risk-of-pandemic-via-novel-pathog...

[2] https://www.cdc.gov/mmwr/volumes/69/wr/mm6912e3.htm?s_cid=mm...

[3] https://en.wikipedia.org/wiki/2020_coronavirus_pandemic_in_H...

[4] https://en.wikipedia.org/wiki/2020_coronavirus_pandemic_in_S...

2 comments

Right, so do the math. 5% of positives required intensive care. If 197 million Americans get this, That means 10 million people go to intensive care. There are 60,000 ICU beds in the U.S. If 10 million people need the ICU, effectively none get a ventilator and they all die.

Now it's true that the cruise ship passengers skewed significantly older, but on the other hand, they were all ambulatory and healthy enough to be taking a cruise. There are populations that are at significantly higher risk than the cruise ship passengers.

Also, Chinese experience was that about half of the people admitted to the ICU eventually died.

>Now it's true that the cruise ship passengers skewed significantly older, but on the other hand, they were all ambulatory and healthy enough to be taking a cruise.

While yes this is true technically, I'm not sure the bar for "healthy enough" is as high as you're making out it is. In my experience (apologies for the anecdote), significantly obese people are quite capable of going on a cruise almost always.

I'm talking about people in nursing homes, people in hospitals, people on immunosuppressants, for example, after a transplant (who wouldn't go on a cruise because of norovirus etc), people with other immune diseases, etc. There are a lot of these people out there, and these people would be very hard hit if we just let COVID run through the population.
But on the other other hand, they were all traveling, eating cruise ship food, and probably drinking, all of which could weaken their immune systems. We can add speculative adjustments all day long, but there's no way we're going to get a randomized double-blind study out of it.

Also you can't conclude much of anything based on a linear extrapolation, even if you have good data.

What do you need a randomized double blind study for? You're not sure the people on the ship died of COVID?

As for adjustment factors, if you just adjusted for age, you'd get about 50% less mortality if the ship had the same age distribution as the country. So that's 5 million dead. However there are over a million people in the U.S. that are medically compromised and would have a very high fatality rate with COVID.

I also don't see what the problem with a linear extrapolation is.

Finally, I only accounted for deaths due to lack of ventilators. There also wouldn't be enough hospital beds, and that would lead to millions more deaths.

There is simply no reasonable alternative to suppressing the disease. We're talking more deaths than the Holocaust here.

> What do you need a randomized double blind study for? You're not sure the people on the ship died of COVID?

Er, you're not trying to figure out how the ship victims already died, you're trying to predict how many other people might die of the same cause. To do that kind of thing well, you need a hypothesis, and then you need to test it properly.

> As for adjustment factors, if you just adjusted for age, you'd get about 50% less mortality if the ship had the same age distribution as the country.

You can't "just adjust for age" or "just adjust for" anything, you're going to miss something! That's why people do clinical trials.

> I also don't see what the problem with a linear extrapolation is.

Basically, an epidemic is not a linear system, so you can't model it with linear functions. Look into the "SIR model" for a standard way to do that kind of thing. I'm not trained in this field so I'd look for a medical/science forum if you have questions.

https://mathworld.wolfram.com/SIRModel.html

> Er, you're not trying to figure out how the ship victims already died, you're trying to predict how many other people might die of the same cause. To do that kind of thing well, you need a hypothesis, and then you need to test it properly.

What would be the randomized double blind trial that you would run, and what information would it give us?

> Basically, an epidemic is not a linear system, so you can't model it with linear functions. Look into the "SIR model" for a standard way to do that kind of thing. I'm not trained in this field so I'd look for a medical/science forum if you have questions.

I'm familiar with the SIR model. What you'll find is that if R0>1, the SIR model converges to a state where S=1/R0, I=0, and R=1-1/R0. In this epidemic, R0 is approximately 2.5, of course depending on conditions. That means in the U.S. population, 60% will end in state R, which means 60% of people will get the virus. That's the 198 million number from above. It's actually a little worse than that because the SIR model doesn't have a "Dead" state, so more than 60% of the population has to get the virus in order for 60% of the end state population to have recovered.

> What would be the randomized double blind trial that you would run, and what information would it give us?

I have absolutely no idea how to design or run a clinical study.

> 60% of people will get the virus.

All at the same time?? Your extrapolation comparing total critical cases with the number of ICU beds seemed to assume that. Try this interactive model, which plots infections over time and takes into account how long each patient will occupy a bed: https://neherlab.org/covid19/

Whereas, if you compare fatality rates reported by Germany, SK, HK, Singapore and other high testers vs China, Italy and Spain, it's pretty clear the latter are under-diagnosing mild/asymptomatic cases, which increase their fatality rate by a factor of 10 or more.

South Korea has 1% fatality rate at the end of their epidemic, they showed .5% in the middle of this. Germany has .2% rate but it has crept up to .4% and I suspect it will continue to creep to 1%, and if they get overwhelmed it could go higher. China has a less than 1% rate outside of Wuhan, since outside that area, the health care system wasn't overwhelmed [1]. The extra deaths in Wuhan could be attributed to the health care system getting overwhelmed rather than under counting - 20 or 10% of those infected require intensive care. You quote 10% of the infected on the Diamond Princess as requiring hospitalization. With an overwhelmed health care system, that might be the death rate.

Which is to say that we have more evidence but that evidence seems to point to a desperate need for containment.

[1] You can compare all the statistics at: https://covid19info.live

> You quote 10% of the infected on the Diamond Princess as requiring hospitalization.

10% of symptomatic cases, not all cases, and definitely not all infected.