Hierarchical Modelling of COVID-19 Death Risk in India in the Early Phase of the Pandemic.
Wendy OlsenManasi BeraAmaresh DubeyJihye KimArkadiusz WiśniowskiPurva YadavPublished in: The European journal of development research (2020)
We improve upon the modelling of India's pandemic vulnerability. Our model is multidisciplinary and recognises the nested levels of the epidemic. We create a model of the risk of severe COVID-19 and death, instead of a model of transmission. Our model allows for socio-demographic-group differentials in risk, obesity and underweight people, morbidity status and other conditioning regional and lifestyle factors. We build a hierarchical multilevel model of severe COVID-19 cases, using three different data sources: the National Family Health Survey for 2015/16, Census data for 2011 and data for COVID-19 deaths obtained cumulatively until June 2020. We provide results for 11 states of India, enabling best-yet targeting of policy actions. COVID-19 deaths in north and central India were higher in areas with older and overweight populations, and were more common among people with pre-existing health conditions, or who smoke, or who live in urban areas. Policy experts may both want to 'follow World Health Organisation advice' and yet also use disaggregated and spatially specific data to improve wellbeing outcomes during the pandemic. The future uses of our innovative data-combining model are numerous.
Keyphrases
- coronavirus disease
- sars cov
- healthcare
- public health
- electronic health record
- big data
- mental health
- respiratory syndrome coronavirus
- metabolic syndrome
- weight loss
- early onset
- cardiovascular disease
- machine learning
- climate change
- body mass index
- insulin resistance
- data analysis
- deep learning
- weight gain
- drinking water
- high fat diet induced