Indian army produces 'questionable' optimistic findings about Covid-19 situation
Though it has mad promising prediction but the study did not question the government’s lack of aggressive testing for COVID-19 patients. Without such tests, India won’t be able to identify everyone, and certainly not isolate half or more as the study recommends

A new model of the COVID-19 pandemic by researchers has announced that if India is able to isolate and successfully quarantine at least 50% of all people infected by the new coronavirus today, the case growth rate would peak sometime in April to 7,000-9,000 new cases per day and fall off rapidly by up to 90% after.
The research is conducted by Armed Forces Medical College (AFMC), Pune, and INHS, India's oldest naval hospital, reports The Wire.
The current study is particularly being discussed because of its favourable view to the national lockdown.
It finds that the sooner India improves from finding and quarantining 1% of all those infected to 50% of all those infected, the drastically better the outcomes will be for the whole population.
For example, if this improvement happens over a period of 7 days, the study estimates India will a maximum of 70,000 total active cases; if over 14 days, then a little over 82,000 total active cases; and if over 21 days, then around 95,000 total active cases.
These predictions are similar to those made by the Indian Council of Medical Research (ICMR).
Gautam Menon, a professor of biology and physics at Ashoka University agreed findings saying, "It's a very standard one, like the ICMR model".
Menon also raised questions about the authors claiming their study is based on a stochastic model – which implies at least one of the model's inputs will vary randomly – "but the equations are deterministic".
Finally, he noted that unlike many other more detailed models, the study didn't provide an age-wise breakdown of the case and mortality loads, and didn't address the problem of asymptomatic infections.
Indeed, and by extension, the study also does not seem to question the government's lack of aggressive testing for COVID-19 patients. Without such tests, India won't be able to identify everyone, and certainly not isolate half or more as the study recommends.
As a result, a substantial number of people could be left behind in the population who still harbour the infection and could potentially lead to new case clusters after the lockdown has ended.
Second, and as an extension, if the quarantining strategy is not completely effective aligning with the goal of eliminating all potential sources of new infections from the population, the virus could bounce back once the lockdown is lifted.
And this hypothesis has been supported in multiple studies published in March 2020, based on the patients in China, Japan, Germany and those onboard the Diamond Princess cruise ship. It said, 30% of people who contract the new coronavirus may never develop any outward signs of infection yet still be able to spread it to others.
A previous modelling study published as a preprint paper, by researchers affiliated with Cambridge University and the Institute of Mathematical Sciences, Chennai, also found that a 21-day lockdown would only delay, but not eliminate, an exponential growth of the case load.
However, Suvrat Raju, a physicist at the International Centre for Theoretical Sciences, Bangalore, sharply criticised this paper in a (public) Facebook post, where he called the model's conclusions "absurd" and said their inputs were compromised by the fact that they were based on slightly outdated Indian government data, and therefore quite unreliable considering the government's staunch reluctance to test more.
That is, in the absence of more tests, there is presumed to be a big difference between the number of people we know are infected and the number of people who are actually infected.
As some reporters wrote over at FiveThirtyEight with reference to the wide variation in models' predictions: "To determine the fatality rate, you have to divide the number of people who have died from the disease by the number of people infected with the disease. In this case, we don't really have a reliable count for the number of people infected – so, to put it mathematically, we don't know the denominator."
In a slight departure from the standard SEIR ('susceptible', 'exposed', 'infected' and 'recovered') model that epidemiologists use to predict the spread of infectious diseases, the authors of the new study insert a 'quarantined' category between 'I' and 'R', and note that it refers to an individual who has been isolated but who, in reality, may not always be detectable.