Simon N. Wood, Ernst C. Wit, Paul M. McKeigue, Danshu Hu, Beth Flood, Lauren Corcoran, Thea Abou Jawad
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引用次数: 0
Abstract
This paper discusses some statistical aspects of the U.K. Covid-19 pandemic
response, focussing particularly on cases where we believe that a statistically
questionable approach or presentation has had a substantial impact on public
perception, or government policy, or both. We discuss the presentation of
statistics relating to Covid risk, and the risk of the response measures,
arguing that biases tended to operate in opposite directions, overplaying Covid
risk and underplaying the response risks. We also discuss some issues around
presentation of life loss data, excess deaths and the use of case data. The
consequences of neglect of most individual variability from epidemic models,
alongside the consequences of some other statistically important omissions are
also covered. Finally the evidence for full stay at home lockdowns having been
necessary to reverse waves of infection is examined, with new analyses provided
for a number of European countries.