2022
DOI: 10.1002/jia2.25954
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Correcting for selection bias in HIV prevalence estimates: an application of sample selection models using data from population‐based HIV surveys in seven sub‐Saharan African countries

Abstract: Introduction Population‐based biomarker surveys are the gold standard for estimating HIV prevalence but are susceptible to substantial non‐participation (up to 30%). Analytical missing data methods, including inverse‐probability weighting (IPW) and multiple imputation (MI), are biased when data are missing‐not‐at‐random, for example when people living with HIV more frequently decline participation. Heckman‐type selection models can, under certain assumptions, recover unbiased prevalence estimates … Show more

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Cited by 2 publications
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“…For example, household-based surveys may fail to reach key populations due to mobility, precarious housing, or congregate living arrangements such as barracks and brothels [47]. The resulting selection bias from these surveys has been shown to generate downwardly biased estimates of HIV prevalence due to missing data [48]. Similarly, people living with HIV who remain unaware of their HIV status or who have not yet initiated HIV treatment are inherently missing from programmatic records, as are individuals who have engaged in HIV services previously but who have subsequently become "lost to clinic" or "lost to care" [49].…”
Section: How Conventional Approaches In Big Data Science Could Amplif...mentioning
confidence: 99%
“…For example, household-based surveys may fail to reach key populations due to mobility, precarious housing, or congregate living arrangements such as barracks and brothels [47]. The resulting selection bias from these surveys has been shown to generate downwardly biased estimates of HIV prevalence due to missing data [48]. Similarly, people living with HIV who remain unaware of their HIV status or who have not yet initiated HIV treatment are inherently missing from programmatic records, as are individuals who have engaged in HIV services previously but who have subsequently become "lost to clinic" or "lost to care" [49].…”
Section: How Conventional Approaches In Big Data Science Could Amplif...mentioning
confidence: 99%