Clusters of Sexual Behavior in Human Immunodeficiency Virus–positive Men Who Have Sex With Men Reveal Highly Dissimilar Time Trends

Abstract Background Separately addressing specific groups of people who share patterns of behavioral change might increase the impact of behavioral interventions to prevent transmission of sexually transmitted infections. We propose a method based on machine learning to assist the identification of...

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Veröffentlicht in:Clinical infectious diseases 2020-01, Vol.70 (3), p.416-424
Hauptverfasser: Salazar-Vizcaya, Luisa, Kusejko, Katharina, Schmidt, Axel J, Carrillo-Montoya, Germán, Nicca, Dunja, Wandeler, Gilles, Braun, Dominique L, Fehr, Jan, Darling, Katharine E A, Bernasconi, Enos, Schmid, Patrick, Günthard, Huldrych F, Kouyos, Roger D, Rauch, Andri
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Sprache:eng
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Zusammenfassung:Abstract Background Separately addressing specific groups of people who share patterns of behavioral change might increase the impact of behavioral interventions to prevent transmission of sexually transmitted infections. We propose a method based on machine learning to assist the identification of such groups among men who have sex with men (MSM). Methods By means of unsupervised learning, we inferred “behavioral clusters” based on the recognition of similarities and differences in longitudinal patterns of condomless anal intercourse with nonsteady partners (nsCAI) in the HIV Cohort Study over the last 18 years. We then used supervised learning to investigate whether sociodemographic variables could predict cluster membership. Results We identified 4 behavioral clusters. The largest behavioral cluster (cluster 1) contained 53% of the study population and displayed the most stable behavior. Cluster 3 (17% of the study population) displayed consistently increasing nsCAI. Sociodemographic variables were predictive for both of these clusters. The other 2 clusters displayed more drastic changes: nsCAI frequency in cluster 2 (20% of the study population) was initially similar to that in cluster 3 but accelerated in 2010. Cluster 4 (10% of the study population) had significantly lower estimates of nsCAI than all other clusters until 2017, when it increased drastically, reaching 85% by the end of the study period. Conclusions We identified highly dissimilar behavioral patterns across behavioral clusters, including drastic, atypical changes. The patterns suggest that the overall increase in the frequency of nsCAI is largely attributable to 2 clusters, accounting for a third of the population. We propose a method that uses machine learning to identify behavioral groups in men who have sex with men based on the recognition of condom use patterns over time. It led to the identification of clusters with dissimilar behavioral trends.
ISSN:1058-4838
1537-6591
DOI:10.1093/cid/ciz208