Cargando…

A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness

Youth experiencing homelessness (YEH) are at elevated risk of HIV/AIDS and disproportionately identify as racial, ethnic, sexual, and gender minorities. We developed a new peer change agent (PCA) HIV prevention intervention with 3 arms: (1) an arm using an artificial intelligence (AI) planning algor...

Descripción completa

Detalles Bibliográficos
Autores principales: Rice, Eric, Wilder, Bryan, Onasch-Vera, Laura, DiGuiseppi, Graham, Petering, Robin, Hill, Chyna, Yadav, Amulya, Lee, Sung-Jae, Tambe, Milind
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JAIDS Journal of Acquired Immune Deficiency Syndromes 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8579989/
https://www.ncbi.nlm.nih.gov/pubmed/34757989
http://dx.doi.org/10.1097/QAI.0000000000002807
_version_ 1784596529871323136
author Rice, Eric
Wilder, Bryan
Onasch-Vera, Laura
DiGuiseppi, Graham
Petering, Robin
Hill, Chyna
Yadav, Amulya
Lee, Sung-Jae
Tambe, Milind
author_facet Rice, Eric
Wilder, Bryan
Onasch-Vera, Laura
DiGuiseppi, Graham
Petering, Robin
Hill, Chyna
Yadav, Amulya
Lee, Sung-Jae
Tambe, Milind
author_sort Rice, Eric
collection PubMed
description Youth experiencing homelessness (YEH) are at elevated risk of HIV/AIDS and disproportionately identify as racial, ethnic, sexual, and gender minorities. We developed a new peer change agent (PCA) HIV prevention intervention with 3 arms: (1) an arm using an artificial intelligence (AI) planning algorithm to select PCAs; (2) a popularity arm, the standard PCA approach, operationalized as highest degree centrality (DC); and (3) an observation-only comparison group. SETTING: A total of 713 YEH were recruited from 3 drop-in centers in Los Angeles, CA. METHODS: Youth consented and completed a baseline survey that collected self-reported data on HIV knowledge, condom use, and social network information. A quasi-experimental pretest/posttest design was used; 472 youth (66.5% retention at 1 month postbaseline) and 415 youth (58.5% retention at 3 months postbaseline) completed follow-up. In each intervention arm (AI and DC), 20% of youth was selected as PCAs and attended a 4-hour initial training, followed by 7 weeks of half-hour follow-up sessions. Youth disseminated messages promoting HIV knowledge and condom use. RESULTS: Using generalized estimating equation models, there was a significant reduction over time (P < 0.001) and a significant time by AI arm interaction (P < 0.001) for condomless anal sex act. There was a significant increase in HIV knowledge over time among PCAs in DC and AI arms. CONCLUSIONS: PCA models that promote HIV knowledge and condom use are efficacious for YEH. Youth are able to serve as a bridge between interventionists and their community. Interventionists should consider working with computer scientists to solve implementation problems.
format Online
Article
Text
id pubmed-8579989
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JAIDS Journal of Acquired Immune Deficiency Syndromes
record_format MEDLINE/PubMed
spelling pubmed-85799892021-11-12 A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness Rice, Eric Wilder, Bryan Onasch-Vera, Laura DiGuiseppi, Graham Petering, Robin Hill, Chyna Yadav, Amulya Lee, Sung-Jae Tambe, Milind J Acquir Immune Defic Syndr Supplement Article Youth experiencing homelessness (YEH) are at elevated risk of HIV/AIDS and disproportionately identify as racial, ethnic, sexual, and gender minorities. We developed a new peer change agent (PCA) HIV prevention intervention with 3 arms: (1) an arm using an artificial intelligence (AI) planning algorithm to select PCAs; (2) a popularity arm, the standard PCA approach, operationalized as highest degree centrality (DC); and (3) an observation-only comparison group. SETTING: A total of 713 YEH were recruited from 3 drop-in centers in Los Angeles, CA. METHODS: Youth consented and completed a baseline survey that collected self-reported data on HIV knowledge, condom use, and social network information. A quasi-experimental pretest/posttest design was used; 472 youth (66.5% retention at 1 month postbaseline) and 415 youth (58.5% retention at 3 months postbaseline) completed follow-up. In each intervention arm (AI and DC), 20% of youth was selected as PCAs and attended a 4-hour initial training, followed by 7 weeks of half-hour follow-up sessions. Youth disseminated messages promoting HIV knowledge and condom use. RESULTS: Using generalized estimating equation models, there was a significant reduction over time (P < 0.001) and a significant time by AI arm interaction (P < 0.001) for condomless anal sex act. There was a significant increase in HIV knowledge over time among PCAs in DC and AI arms. CONCLUSIONS: PCA models that promote HIV knowledge and condom use are efficacious for YEH. Youth are able to serve as a bridge between interventionists and their community. Interventionists should consider working with computer scientists to solve implementation problems. JAIDS Journal of Acquired Immune Deficiency Syndromes 2021-12-15 2021-11-09 /pmc/articles/PMC8579989/ /pubmed/34757989 http://dx.doi.org/10.1097/QAI.0000000000002807 Text en Copyright © 2021 The Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal.
spellingShingle Supplement Article
Rice, Eric
Wilder, Bryan
Onasch-Vera, Laura
DiGuiseppi, Graham
Petering, Robin
Hill, Chyna
Yadav, Amulya
Lee, Sung-Jae
Tambe, Milind
A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness
title A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness
title_full A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness
title_fullStr A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness
title_full_unstemmed A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness
title_short A Peer-Led, Artificial Intelligence–Augmented Social Network Intervention to Prevent HIV Among Youth Experiencing Homelessness
title_sort peer-led, artificial intelligence–augmented social network intervention to prevent hiv among youth experiencing homelessness
topic Supplement Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8579989/
https://www.ncbi.nlm.nih.gov/pubmed/34757989
http://dx.doi.org/10.1097/QAI.0000000000002807
work_keys_str_mv AT riceeric apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT wilderbryan apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT onaschveralaura apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT diguiseppigraham apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT peteringrobin apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT hillchyna apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT yadavamulya apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT leesungjae apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT tambemilind apeerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT riceeric peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT wilderbryan peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT onaschveralaura peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT diguiseppigraham peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT peteringrobin peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT hillchyna peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT yadavamulya peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT leesungjae peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness
AT tambemilind peerledartificialintelligenceaugmentedsocialnetworkinterventiontopreventhivamongyouthexperiencinghomelessness