Incorporating respondent-driven sampling into web-based discrete choice experiments: preferences for COVID-19 mitigation measures.

Journal: Health services & outcomes research methodology

Volume: 22

Issue: 3

Year of Publication: 

Affiliated Institutions:  Department of Health Services, Policy, and Practice, Brown University School of Public Health, South Main Street, Box G-S-, Providence, RI USA. Department of Pharmacy Practice, Temple University School of Pharmacy, Philadelphia, PA USA. Department of Behavioural Science, School of Medicine, Moi University, Eldoret, Kenya. National Institute of Public Health (INSP), Cuernavaca, Morelos Mexico. Center for Health Equity and Innovation, Purdue University College of Pharmacy, Indianapolis, IN USA. Purdue University College of Pharmacy, Indianapolis, IN USA. Department of Applied Health Science, Indiana University School of Public Health, Bloomington, IN USA.

Abstract summary 

To slow the spread of COVID-19, most countries implemented stay-at-home orders, social distancing, and other nonpharmaceutical mitigation strategies. To understand individual preferences for mitigation strategies, we piloted a web-based Respondent Driven Sampling (RDS) approach to recruit participants from four universities in three countries to complete a computer-based Discrete Choice Experiment (DCE). Use of these methods, in combination, can serve to increase the external validity of a study by enabling recruitment of populations underrepresented in sampling frames, thus allowing preference results to be more generalizable to targeted subpopulations. A total of 99 students or staff members were invited to complete the survey, of which 72% started the survey (n = 71). Sixty-three participants (89% of starters) completed all tasks in the DCE. A rank-ordered mixed logit model was used to estimate preferences for COVID-19 nonpharmaceutical mitigation strategies. The model estimates indicated that participants preferred mitigation strategies that resulted in lower COVID-19 risk (i.e. sheltering-in-place more days a week), financial compensation from the government, fewer health (mental and physical) problems, and fewer financial problems. The high response rate and survey engagement provide proof of concept that RDS and DCE can be implemented as web-based applications, with the potential for scale up to produce nationally-representative preference estimates.

Authors & Co-authors:  Johnson Tran Mwangi Sosa-Rubí Chivardi Romero-Martínez Pastakia Robinson Jennings Mayo-Wilson Galárraga

Study Outcome 

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Statistics
Citations :  Abdul-Quader AS, Heckathorn DD, Sabin K, Saidel T. Implementation and analysis of respondent driven sampling: lessons learned from the field. J. Urban Health Bull. New York Acad. Med. 2006;83(6 Suppl):i1–i5. doi: 10.1007/s11524-006-9108-8.
Authors :  10
Identifiers
Doi : 10.1007/s10742-021-00266-4
SSN : 1387-3741
Study Population
Male,Female
Mesh Terms
Other Terms
COVID-19;Discrete choice experiment;Nonpharmaceutical interventions;Respondent driven sampling
Study Design
Study Approach
Country of Study
Kenya
Publication Country
Netherlands