TY - JOUR
T1 - Using factor analyses to estimate the number of female sex workers across Malawi from multiple regional sources
AU - Niu, Xiaoyue Maggie
AU - Rao, Amrita
AU - Chen, David
AU - Sheng, Ben
AU - Weir, Sharon
AU - Umar, Eric
AU - Trapence, Gift
AU - Jumbe, Vincent
AU - Kamba, Dunker
AU - Rucinski, Katherine
AU - Viswasam, Nikita
AU - Baral, Stefan
AU - Bao, Le
N1 - Funding Information:
This research was supported by NIAID/NIH R01-AI136664 and NIH F31MH124458.
Publisher Copyright:
© 2020 Elsevier Inc.
PY - 2021/3
Y1 - 2021/3
N2 - Purpose: Human immunodeficiency virus (HIV) risks are heterogeneous in nature even in generalized epidemics. However, data are often missing for those at highest risk of HIV, including female sex workers. Statistical models may be used to address data gaps where direct, empiric estimates do not exist. Methods: We proposed a new size estimation method that combines multiple data sources (the Malawi Biological and Behavioral Surveillance Survey, the Priorities for Local AIDS Control Efforts study, and the Malawi Demographic Household Survey). We used factor analysis to extract information from auxiliary variables and constructed a linear mixed effects model for predicting population size for all districts of Malawi. Results: On average, the predicted proportion of female sex workers among women of reproductive age across all districts was about 0.58%. The estimated proportions seemed reasonable in comparing with a recent study Priorities for Local AIDS Control Efforts II (PLACE II). Compared with using a single data source, we observed increased precision and better geographic coverage. Conclusions: We illustrate how size estimates from different data sources may be combined for prediction. Applying this approach to other subpopulations in Malawi and to countries where size estimate data are lacking can ultimately inform national modeling processes and estimate the distribution of risks and priorities for HIV prevention and treatment programs.
AB - Purpose: Human immunodeficiency virus (HIV) risks are heterogeneous in nature even in generalized epidemics. However, data are often missing for those at highest risk of HIV, including female sex workers. Statistical models may be used to address data gaps where direct, empiric estimates do not exist. Methods: We proposed a new size estimation method that combines multiple data sources (the Malawi Biological and Behavioral Surveillance Survey, the Priorities for Local AIDS Control Efforts study, and the Malawi Demographic Household Survey). We used factor analysis to extract information from auxiliary variables and constructed a linear mixed effects model for predicting population size for all districts of Malawi. Results: On average, the predicted proportion of female sex workers among women of reproductive age across all districts was about 0.58%. The estimated proportions seemed reasonable in comparing with a recent study Priorities for Local AIDS Control Efforts II (PLACE II). Compared with using a single data source, we observed increased precision and better geographic coverage. Conclusions: We illustrate how size estimates from different data sources may be combined for prediction. Applying this approach to other subpopulations in Malawi and to countries where size estimate data are lacking can ultimately inform national modeling processes and estimate the distribution of risks and priorities for HIV prevention and treatment programs.
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U2 - 10.1016/j.annepidem.2020.12.001
DO - 10.1016/j.annepidem.2020.12.001
M3 - Article
C2 - 33340655
AN - SCOPUS:85099251524
SN - 1047-2797
VL - 55
SP - 34
EP - 40
JO - Annals of Epidemiology
JF - Annals of Epidemiology
ER -