Respondent-driven sampling to recruit MDMA users: a methodological assessment.

Recruiting samples that are more representative of illicit drug users is an on-going challenge in substance abuse research. Respondent-driven sampling (RDS), a new form of chain-referral sampling, is designed to eliminate the bias caused by the non-random selection of the initial recruits and reduce other sources of bias (e.g. bias due to volunteerism and masking) that are usually associated with regular chain-referral sampling. This study provides a methodological assessment of the application of RDS among young adult MDMA/ecstasy users in Ohio. The results show that the sample compositions converged to equilibrium within a limited number of recruitment waves, independent of the characteristics of the initial recruits (i.e. seeds). The sample compositions approximated the theoretical equilibrium compositions, and were not significantly different from the estimated population compositions-with the exception that White respondents were over-sampled and Black respondents were under-sampled. The effect of volunteerism and masking on the sampling process was found not to be significant. Though identifying productive seeds and improving the referral rate are significant challenges when implementing RDS, the findings demonstrate that RDS is a flexible and robust sampling method. RDS has the potential to be widely employed in studies of illicit drug-using populations.

[1]  Douglas D. Heckathorn,et al.  AIDS AND SOCIAL NETWORKS: HIV PREVENTION THROUGH NETWORK MOBILIZATION* , 1999 .

[2]  Jennifer Lauby,et al.  Street and network sampling in evaluation studies of HIV risk-reduction interventions. , 2002, AIDS reviews.

[3]  J. Coleman Relational Analysis: The Study of Social Organizations with Survey Methods , 1958 .

[4]  Matthew J. Salganik,et al.  5. Sampling and Estimation in Hidden Populations Using Respondent-Driven Sampling , 2004 .

[5]  M. Spreen,et al.  PERSONAL NETWORK SAMPLING, OUTDEGREE ANALYSIS AND MULTILEVEL ANALYSIS: INTRODUCING THE NETWORK CONCEPT IN STUDIES OF HIDDEN POPULATIONS , 1994 .

[6]  P. Biernacki,et al.  TARGETED SAMPLING: OPTIONS FOR THE STUDY OF HIDDEN POPULATIONS , 1989 .

[7]  John G. Kemeny,et al.  Finite Markov chains , 1960 .

[8]  Douglas D. Heckathorn,et al.  AIDS Prevention Outreach Among Injection Drug Users: Agency Problems and New Approaches* , 1994 .

[9]  R J Mills,et al.  Harnessing peer networks as an instrument for AIDS prevention: results from a peer-driven intervention. , 1998, Public health reports.

[10]  Bruce D. Johnson,et al.  An enumeration method of determining the prevalence of users and operatives of cocaine and heroin in Central Harlem. , 2003, Drug and alcohol dependence.

[11]  D. Heckathorn,et al.  Extensions of Respondent-Driven Sampling: A New Approach to the Study of Injection Drug Users Aged 18–25 , 2002, AIDS and Behavior.

[12]  Bonnie H. Erickson,et al.  Some Problems of Inference from Chain Data , 1979 .

[13]  P. Biernacki,et al.  Snowball Sampling: Problems and Techniques of Chain Referral Sampling , 1981 .

[14]  Douglas D. Heckathorn,et al.  Respondent-driven sampling II: deriving valid population estimates from chain-referral samples of hi , 2002 .

[15]  R. Curtis,et al.  Using dyadic data for a network analysis of HIV infection and risk behaviors among injecting drug users. , 1995, NIDA research monograph.

[16]  Douglas D. Heckathorn,et al.  Respondent-driven sampling : A new approach to the study of hidden populations , 1997 .

[17]  D. Korf,et al.  Temporal and Social Contexts of Heroin‐Using Populations An Illustration of the Snowball Sampling Technique , 1987, The Journal of nervous and mental disease.

[18]  John G. Kemeny,et al.  Finite Markov Chains. , 1960 .

[19]  H. Siegal,et al.  An Ethnographic Approach to Targeted Sampling: Problems and Solutions in AIDS Prevention Research among Injection Drug and Crack-Cocaine Users , 1994 .

[20]  D. Heckathorn,et al.  Increasing drug users' adherence to HIV treatment: results of a peer-driven intervention feasibility study. , 2002, Social science & medicine.