NEW DELHI: Various mathematical models on the severity of the Covid-19 pandemic in India carried a “strong element of bias and used assumptions” to predict cases and deaths, an editorial published in ICMR‘s Indian Journal of Medical Research has said.
It said it “is a huge risk” to solely rely on these models for policy decisions on advance planning since predicting infectious diseases for a new pathogen is an “extremely perilous proposition” and hence it should be avoided.
The editorial ‘Lessons learnt during the first 100 days of Covid-19 pandemic in India’ is penned by Rajesh Bhatia, former director of Communicable Diseases for WHO’s South-East Asia Regional Office, and Priya Abraham, director of ICMR-National Institute of Virology.
Several mathematical models projected the severity of pandemic in terms of cases and deaths and at least in the context of India, no
Mathematical models on severity of Covid-19 in India carried strong bias, failed: IJMR editorial
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