| Literature DB >> 23172342 |
Daniel R Hogan1, Joshua A Salomon, David Canning, James K Hammitt, Alan M Zaslavsky, Till Bärnighausen.
Abstract
OBJECTIVES: Population-based HIV testing surveys have become central to deriving estimates of national HIV prevalence in sub-Saharan Africa. However, limited participation in these surveys can lead to selection bias. We control for selection bias in national HIV prevalence estimates using a novel approach, which unlike conventional imputation can account for selection on unobserved factors.Entities:
Mesh:
Year: 2012 PMID: 23172342 PMCID: PMC3512441 DOI: 10.1136/sextrans-2012-050636
Source DB: PubMed Journal: Sex Transm Infect ISSN: 1368-4973 Impact factor: 3.519
HIV testing strategies and personnel responsibilities in 24 Demographic and Health Surveys (DHS) as described in DHS survey reports, 2001–2009, with HIV testing participation rates for adult men and women.
| HIV testing strategy and personnel | Pr. HH* | No. of teams | No. of interviewers† | No. of testers‡ | % Participating§ | |||
|---|---|---|---|---|---|---|---|---|
| Country | Year | Men | Women | |||||
| (1) Consent on individual questionnaire; interviewers conducted HIV testing | Cote d'Ivoire | 2005 | 1/1 | 10 | 2F, 2M | – | 76 | 79 |
| Malawi | 2004 | 1/3 | 22 | 4–5F, 1M | (2–3) | 63 | 70 | |
| Tanzania | 2003–2004 | 1/1 | 11 | 4F, 1M | – | 77 | 84 | |
| Tanzania | 2007–2008 | 1/1 | 14 | 4F, 1M | – | 80 | 90 | |
| Zimbabwe | 2005–2006 | 1/1 | 14 | 3–4F, 2–3M | – | 63 | 76 | |
| (2) Consent on household questionnaire; interviewers conducted HIV testing | Lesotho | 2004 | 1/2 | 12 | 3F, 1M | – | 68 | 81 |
| Liberia | 2007 | 1/1 | 19 | 2F, 2M | – | 81 | 88 | |
| Sierra Leone | 2008 | 1/2 | 24 | 2F, 1M | – | 87 | 90 | |
| Zambia | 2007 | 1/1 | 12 | 3F, 3M | – | 72 | 77 | |
| (3) Consent on household questionnaire; subset of interviewers conducted HIV testing | Cameroon | 2004 | 1/2 | 14 | 3F, 1M | (≥2) | 90 | 92 |
| Ethiopia | 2005 | 1/2 | 30 | 4F, 2M | (2) | 76 | 83 | |
| Mali | 2006 | 1/3 | 25 | 3 | (2) | 85 | 93 | |
| Niger | 2006 | 1/2 | 20 | 3F, 1M | (1) | 84 | 91 | |
| Senegal | 2005 | 1/3 | 15 | 3F, 1M | (2) | 75 | 84 | |
| Swaziland | 2006–2007 | 1/1 | 10 | 3–4F, 1–2 M | (2–3) | 78 | 87 | |
| Rwanda | 2005 | 1/2 | 15 | 3F, 1M | (2) | 96 | 97 | |
| (4) Consent on household questionnaire; health worker or technician conducted HIV testing | Burkina Faso | 2003 | 1/3 | 12 | 3F, 1M | 1 | 86 | 92 |
| Democratic Republic of Congo | 2007 | 1/2 | 234 | 1–3 | 1 | 86 | 90 | |
| Ghana | 2003 | 1/2 | 15 | 4 | 1 | 80 | 89 | |
| Guinea | 2005 | 1/2 | 10 | 4F, 1M | 1 | 88 | 92 | |
| Kenya | 2003 | 1/2 | 17 | 4F, 1M | 1 | 70 | 76 | |
| Kenya¶ | 2008–2009 | 1/2 | 23 | 4F, 2M | 2 | 79 | 86 | |
| Mali | 2001 | 1/3 | 25 | 3F | 1 | 76 | 85 | |
| Zambia | 2001 | 1/3 | 12 | 3–4F, 1M | 2 | 73 | 79 | |
*Proportion of sampled households that were eligible for HIV testing and the men's individual questionnaire.
†Number of female and male interviewers per team. Team interviewer gender composition was not described in the reports for the Democratic Republic of Congo 2007, Mali 2006 and Ghana 2003 surveys.
‡Number of individuals who conducted HIV testing per team. Numbers in parenthesis indicate the number of interviewers on a team who also conducted HIV testing. The symbol ‘–’ indicates that all interviewers conducted HIV testing.
§Percent participating in survey HIV testing.
¶Kenya 2008–2009 also had two voluntary counselling and testing counsellors on each team.
F, female; M, male; Pr. HH, Proportion of sampled households.
Figure 1National adult HIV prevalence estimates with 95% CI derived from three modelling approaches for men and women from 12 Demographic and Health Surveys conducted in sub-Saharan Africa, 2001–2009. Women aged 15–49 years were eligible to be tested for HIV. The age range for men was 15–59 years, with the exceptions of Cote d'Ivoire, Liberia and Swaziland (15–49 years) and Malawi and Zimbabwe (15–54 years). HIV infection was defined as infection with either HIV-1 or HIV-2. Apart from the selection variables described in the text, all other covariates were shared by the two model components of the selection models and the conventional imputation probit regressions. For ‘consent’ regressions, these variables were: age, educational attainment, household wealth quintile as constructed from an index of household assets, urban setting, region, interview language, ethnicity, religion, marital status, high-risk sexual behaviour in the past year, condom use at last sex, sexually transmitted disease in the past year, tobacco and alcohol use, knowing someone with AIDS, willingness to care for a family member with AIDS, and having had a previous HIV test. For ‘contact’ regressions, these variables were: sex, age, education, wealth quintile, urban setting and region (see details in online technical appendix). ‘Extreme bounds’ assume that all those missing a valid HIV test are uniformly HIV-positive or HIV-negative.