Comprehensive profiling of social mixing patterns in resource poor countries: a mixed methods research protocol

Author:

Aguolu Obianuju GenevieveORCID,Kiti Moses Chapa,Nelson Kristin,Liu Carol Y.,Sundaram MariaORCID,Gramacho Sergio,Jenness SamuelORCID,Melegaro Alessia,Sacoor Charfudin,Bardaji Azucena,Macicame Ivalda,Jose Americo,Cavele Nilzio,Amosse Felizarda,Uamba Migdalia,Jamisse Edgar,Tchavana Corssino,Briones Herberth Giovanni MaldonadoORCID,Jarquín Claudia,Ajsivinac María,Pischel LaurenORCID,Ahmed Noureen,Mohan Venkata Raghava,Srinivasan RajanORCID,Samuel Prasanna,John Gifta,Ellington Kye,Joaquim Orvalho Augusto,Zelaya Alana,Kim SaraORCID,Chen Holin,Kazi Momin,Malik Fauzia,Yildirim InciORCID,Lopman Benjamin,Omer Saad B.

Abstract

ABSTRACTBackgroundLow-and-middle-income countries (LMICs) bear a disproportionate burden of communicable diseases. Social interaction data inform infectious disease models and disease prevention strategies. The variations in demographics and contact patterns across ages, cultures, and locations significantly impact infectious disease dynamics and pathogen transmission. LMICs lack sufficient social interaction data for infectious disease modeling.MethodsTo address this gap, we will collect qualitative and quantitative data from eight study sites (encompassing both rural and urban settings) across Guatemala, India, Pakistan, and Mozambique. We will conduct focus group discussions and cognitive interviews to assess the feasibility and acceptability of our data collection tools at each site. Thematic and rapid analyses will help to identify key themes and categories through coding, guiding the design of quantitative data collection tools (enrollment survey, contact diaries, exit survey, and wearable proximity sensors) and the implementation of study procedures.We will create three age-specific contact matrices (physical, nonphysical, and both) at each study site using data from standardized contact diaries to characterize the patterns of social mixing. Regression analysis will be conducted to identify key drivers of contacts. We will comprehensively profile the frequency, duration, and intensity of infants’ interactions with household members using high resolution data from the proximity sensors and calculating infants’ proximity score (fraction of time spent by each household member in proximity with the infant, over the total infant contact time) for each household member.DiscussionOur qualitative data yielded insights into the perceptions and acceptability of contact diaries and wearable proximity sensors for collecting social mixing data in LMICs. The quantitative data will allow a more accurate representation of human interactions that lead to the transmission of pathogens through close contact in LMICs. Our findings will provide more appropriate social mixing data for parameterizing mathematical models of LMIC populations. Our study tools could be adapted for other studies.

Publisher

Cold Spring Harbor Laboratory

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