Seasonal variations in social contact patterns in a rural population in north India: Implications for pandemic control

Author:

Nagpal SargunORCID,Kumar Rakesh,Noronha Riz Fernando,Kumar SupriyaORCID,Gupta DebayanORCID,Amarchand Ritvik,Gosain Mudita,Sharma Hanspria,Menon Gautam I.,Krishnan Anand

Abstract

AbstractSocial contact mixing patterns are critical to the transmission of communicable diseases and have been employed to model disease outbreaks including COVID-19. Nonetheless, there is a paucity of studies on contact mixing in low and middle-income countries such as India. Furthermore, mathematical models of disease outbreaks do not account for the temporal nature of social contacts. We conducted a longitudinal study of social contacts in rural north India across three seasons and analysed the temporal differences in contact patterns.A contact diary survey was performed across three seasons from October 2015-16, in which participants were queried on the number, duration, and characteristics of contacts that occurred on the previous day. A total of 8,421 responses from 3,052 respondents (49% females) recorded characteristics of 180,073 contacts. Respondents reported a significantly higher number and duration of contacts in the winter, followed by the summer and the monsoon season (Nemenyi post-hoc, p<0.001). Participants aged 0-9 years and 10-19 years of age reported the highest median number of contacts (16 (IQR 12-21), 17 (IQR 13-24) respectively) and were found to have the highest node centrality in the social network of the region (pageranks = 0.20, 0.17). Employed males across all age groups were found to have a higher number of contacts than unemployed males (Negative Binomial Regression: rate ratio 1.18, 95% CI: 1.05-1.31). A large proportion (>80%) of contacts that were reported in schools or on public transport involved physical contact.To the best of our knowledge, our study is the first from India to show that contact mixing patterns vary by the time of the year and provides useful implications for pandemic control. Our results can be used to parameterize more accurate mathematical models for prediction of epidemiological trends of infections in rural India.

Publisher

Cold Spring Harbor Laboratory

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