Role of multiresolution vulnerability indices in COVID-19 spread in India: a Bayesian model-based analysis

Author:

Bhattacharyya RupamORCID,Burman Anik,Singh Kalpana,Banerjee Sayantan,Maity Subha,Auddy Arnab,Rout Sarit Kumar,Lahoti Supriya,Panda Rajmohan,Baladandayuthapani Veerabhadran

Abstract

ObjectivesCOVID-19 has differentially affected countries, with health infrastructure and other related vulnerability indicators playing a role in determining the extent of its spread. Vulnerability of a geographical region to COVID-19 has been a topic of interest, particularly in low-income and middle-income countries like India to assess its multifactorial impact on incidence, prevalence or mortality. This study aims to construct a statistical analysis pipeline to compute such vulnerability indices and investigate their association with metrics of the pandemic growth.DesignUsing publicly reported observational socioeconomic, demographic, health-based and epidemiological data from Indian national surveys, we compute contextual COVID-19 Vulnerability Indices (cVIs) across multiple thematic resolutions for different geographical and spatial administrative regions. These cVIs are then used in Bayesian regression models to assess their impact on indicators of the spread of COVID-19.SettingThis study uses district-level indicators and case counts data for the state of Odisha, India.Primary outcome measureWe use instantaneous R (temporal average of estimated time-varying reproduction number for COVID-19) as the primary outcome variable in our models.ResultsOur observational study, focussing on 30 districts of Odisha, identified housing and hygiene conditions, COVID-19 preparedness and epidemiological factors as important indicators associated with COVID-19 vulnerability.ConclusionHaving succeeded in containing COVID-19 to a reasonable level during the first wave, the second wave of COVID-19 made greater inroads into the hinterlands and peripheral districts of Odisha, burdening the already deficient public health system in these areas, as identified by the cVIs. Improved understanding of the factors driving COVID-19 vulnerability will help policy makers prioritise resources and regions, leading to more effective mitigation strategies for the present and future.

Funder

Rogel Cancer Center, University of Michigan

National Institutes of Health

DST INSPIRE Faculty Grant

National Science Foundation

IIM Indore Young Faculty Research Chair Award Grant

School of Public Health, University of Michigan

Publisher

BMJ

Subject

General Medicine

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