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

被引:0
作者
Courtney A. Johnson
Dan N. Tran
Ann Mwangi
Sandra G. Sosa-Rubí
Carlos Chivardi
Martín Romero-Martínez
Sonak Pastakia
Elisha Robinson
Larissa Jennings Mayo-Wilson
Omar Galárraga
机构
[1] Brown University School of Public Health,Department of Health Services, Policy, and Practice
[2] Temple University School of Pharmacy,Department of Pharmacy Practice
[3] Moi University,Department of Behavioural Science, School of Medicine
[4] National Institute of Public Health (INSP),Center for Health Equity and Innovation
[5] Purdue University College of Pharmacy,Department of Applied Health Science
[6] Purdue University College of Pharmacy,undefined
[7] Indiana University School of Public Health,undefined
来源
Health Services and Outcomes Research Methodology | 2022年 / 22卷
关键词
Discrete choice experiment; Respondent driven sampling; COVID-19; Nonpharmaceutical interventions;
D O I
暂无
中图分类号
学科分类号
摘要
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.
引用
收藏
页码:297 / 316
页数:19
相关论文
共 259 条
[1]  
Abdul-Quader AS(2006)Implementation and analysis of respondent driven sampling: lessons learned from the field J. Urban Health Bull. New York Acad. Med. 83 i1-i5
[2]  
Heckathorn DD(1984)On the existence of maximum likelihood estimates in logistic regression models Biometrika 71 1-10
[3]  
Sabin K(2020)Challenges in creating herd immunity to SARS-CoV-2 infection by mass vaccination The Lancet 396 1614-1616
[4]  
Saidel T(1982)Quality of life in the evaluation of community support systems Eval. Program. Plann. 5 69-79
[5]  
Albert A(2012)Innovative recruitment using online networks: lessons learned from an online study of alcohol and other drug use utilizing a web-based, respondent-driven sampling (webRDS) strategy J. Stud. Alcohol Drugs 73 834-838
[6]  
Anderson JA(2012)Implementation of web-based respondent-driven sampling among men who have sex with men in Vietnam PLoS ONE 7 281-294
[7]  
Anderson RM(2003)Design techniques for stated preference methods in health economics Health Econ. 12 411-427
[8]  
Vegvari C(2012)Predictors of quality of life in economically disadvantaged populations in Montreal Soc. Indic. Res. 107 883-902
[9]  
Truscott J(2014)Discrete choice experiments in health economics: a review of the literature Pharmacoeconomics 32 25-30
[10]  
Collyer BS(2007)Developing attributes and levels for discrete choice experiments using qualitative methods J. Health Serv. Res. Pol. 12 2053168018769510-384