1 / 8

RDS Data Analysis and Estimation of Design Effect: an application among FCSW in Brazil

RDS Data Analysis and Estimation of Design Effect: an application among FCSW in Brazil. Viena, July 20, 2010 Célia Landmann Szwarcwald celials@cict.fiocruz.br. Proposed Estimation Method.

maren
Download Presentation

RDS Data Analysis and Estimation of Design Effect: an application among FCSW in Brazil

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. RDS Data Analysis and Estimation of Design Effect: an application among FCSW in Brazil Viena, July 20, 2010 Célia Landmann Szwarcwald celials@cict.fiocruz.br

  2. Proposed Estimation Method • Respondent-driven sampling (RDS) is a chain-referral method that is being widely used to recruit most at risk populations. Since the method is respondent-driven, observations are dependent. • In this paper, we propose a method for estimating the variance of the HIV prevalence rate, based on the Markov transition probabilities. • Using statistical procedures appropriate for analysis of data collected by complex sample designs, we considered the homophily effect, the intra-class correlation among participants recruited by the same person, as well as the unequal selection probabilities, resultant from different network sizes.

  3. The FCSW study, Brazil, 2009 • The method was applied to a FCSW study carried out in 10 Brazilian cities in 2008. The total sample size was 2523 women. The study included a behavior questionnaire and rapid tests for HIV and syphilis. • The question used to measure network size was: “ How many CSW that work in the city do you know personally? “ • Additionally, as the study was conducted in 10 cities, to provide results for the total, the sample was calibrated by the relative size of women aged 18-59 years, considering each city as a stratum: where i represents participant, j represents city, δ is the degree and mj the proportion of female population 18-59 years in the city j.

  4. Estimation of HIV Prevalence (p) and Variance of p , where p1.0 and p0.1 are the transition probabilities. • Let p = P(HIV+) the parameter to be estimated. By the Markov equilibrium equation: • Let x=LN (p1.0/p0.1). Then, p can be written as: • Using the delta method, the variance of p is estimated by: , where the variance of x is estimated by: • The var(p0.1) and var(p1.0) are the variances of the conditional probabilities and should be estimated as in cluster sampling to account for intra-class correlation among participants recruited from the same person.

  5. Table 1: HIV participant test results according to the HIV test results of the corresponding recruiter after sampling weighting. FCSW, Brazil, 2009 *Variances estimated taking into account intra-class correlation among participants invited by the same CSW. The probability that a positive recruiter invites a positive participant is 5 times the probability that a negative recruiter invites a positive participant. p=4.8% ; 95%CI (3.4% , 6.1%); DEFF=2.62 and OR=5.8 (p<0.0001)

  6. Legend Large symbols represent the seeds. HIV - HIV + Not HIV tested

  7. Conclusions • The proposed estimation method is equivalent to the logistic regression model: Logit (p (x)) = a + b x, where x=1 if the recruiter is HIV+, 0 otherwise. Therefore, considering the complex sample design, we can use the OR to test for homophily • In the analysis of FCSW, the homophily effect was highly significant, showing the need to consider the dependence among observations in the data analysis. • The large design effect suggests that the execution of an RDS study in only one city would need a very large sample size. • Stratification in cities or neighborhoods was adequate to decrease the design effect and may be adopted in other studies, as long as the strata weights are known.

  8. Thank you!

More Related