Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment

Abstract Introduction Early detection and treatment of HIV and sexually transmitted infections (STIs) are crucial for effective control. We previously developed MySTIRisk, an artificial intelligence-based risk tool that predicts the risk of HIV and STIs. We examined the attributes that encourage pot...

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Published in:BMC Public Health
Main Authors: Phyu M. Latt, Nyi N. Soe, Alicia J. King, David Lee, Tiffany R. Phillips, Xianglong Xu, Eric P. F. Chow, Christopher K. Fairley, Lei Zhang, Jason J. Ong
Format: Article
Language:English
Published: BMC 2024-11-01
Online Access:https://doi.org/10.1186/s12889-024-20688-2
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author Phyu M. Latt
Nyi N. Soe
Alicia J. King
David Lee
Tiffany R. Phillips
Xianglong Xu
Eric P. F. Chow
Christopher K. Fairley
Lei Zhang
Jason J. Ong
author_facet Phyu M. Latt
Nyi N. Soe
Alicia J. King
David Lee
Tiffany R. Phillips
Xianglong Xu
Eric P. F. Chow
Christopher K. Fairley
Lei Zhang
Jason J. Ong
author_sort Phyu M. Latt
collection DOAJ
container_title BMC Public Health
description Abstract Introduction Early detection and treatment of HIV and sexually transmitted infections (STIs) are crucial for effective control. We previously developed MySTIRisk, an artificial intelligence-based risk tool that predicts the risk of HIV and STIs. We examined the attributes that encourage potential users to use it. Methods Between January and March 2024, we sent text message invitations to the Melbourne Sexual Health Centre (MSHC) attendees to participate in an online survey. We also advertised the survey on social media, the clinic's website, and posters in affiliated general practice clinics. This anonymous survey used a discrete choice experiment (DCE) to examine which MySTIRisk attributes would encourage potential users. We analysed the data using random parameters logit (RPL) and latent class analysis (LCA) models. Results The median age of 415 participants was 31 years (interquartile range, 26–38 years), with a minority of participants identifying as straight or heterosexual (31.8%, n = 132). The choice to use MySTIRisk was most influenced by two attributes: cost and accuracy, followed by the availability of a pathology request form, level of anonymity, speed of receiving results, and whether the tool was a web or mobile application. LCA revealed two classes: "The Precisionists" (66.0% of respondents), who demanded high accuracy and "The Economists" (34.0% of respondents), who prioritised low cost. Simulations predicted a high uptake (97.7%) for a tool designed with the most preferred attribute levels, contrasting with lower uptake (22.3%) for the least preferred design. Conclusions Participants were more likely to use MySTIRisk if it was free, highly accurate, and could send pathology request forms. Tailoring the tool to distinct user segments could enhance its uptake and effectiveness in promoting early detection and prevention of HIV and STIs.
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spelling doaj-art-059af60051104d72913da702caf194ca2025-08-20T01:27:45ZengBMCBMC Public Health1471-24582024-11-0124111110.1186/s12889-024-20688-2Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experimentPhyu M. Latt0Nyi N. Soe1Alicia J. King2David Lee3Tiffany R. Phillips4Xianglong Xu5Eric P. F. Chow6Christopher K. Fairley7Lei Zhang8Jason J. Ong9Artificial Intelligence and Modelling in Epidemiology Program, Melbourne Sexual Health Centre, Alfred HealthArtificial Intelligence and Modelling in Epidemiology Program, Melbourne Sexual Health Centre, Alfred HealthSchool of Translational Medicine, Faculty of Medicine, Nursing and Health Sciences, Monash UniversityMelbourne Sexual Health Centre, Alfred HealthSchool of Translational Medicine, Faculty of Medicine, Nursing and Health Sciences, Monash UniversityArtificial Intelligence and Modelling in Epidemiology Program, Melbourne Sexual Health Centre, Alfred HealthSchool of Translational Medicine, Faculty of Medicine, Nursing and Health Sciences, Monash UniversitySchool of Translational Medicine, Faculty of Medicine, Nursing and Health Sciences, Monash UniversityArtificial Intelligence and Modelling in Epidemiology Program, Melbourne Sexual Health Centre, Alfred HealthSchool of Translational Medicine, Faculty of Medicine, Nursing and Health Sciences, Monash UniversityAbstract Introduction Early detection and treatment of HIV and sexually transmitted infections (STIs) are crucial for effective control. We previously developed MySTIRisk, an artificial intelligence-based risk tool that predicts the risk of HIV and STIs. We examined the attributes that encourage potential users to use it. Methods Between January and March 2024, we sent text message invitations to the Melbourne Sexual Health Centre (MSHC) attendees to participate in an online survey. We also advertised the survey on social media, the clinic's website, and posters in affiliated general practice clinics. This anonymous survey used a discrete choice experiment (DCE) to examine which MySTIRisk attributes would encourage potential users. We analysed the data using random parameters logit (RPL) and latent class analysis (LCA) models. Results The median age of 415 participants was 31 years (interquartile range, 26–38 years), with a minority of participants identifying as straight or heterosexual (31.8%, n = 132). The choice to use MySTIRisk was most influenced by two attributes: cost and accuracy, followed by the availability of a pathology request form, level of anonymity, speed of receiving results, and whether the tool was a web or mobile application. LCA revealed two classes: "The Precisionists" (66.0% of respondents), who demanded high accuracy and "The Economists" (34.0% of respondents), who prioritised low cost. Simulations predicted a high uptake (97.7%) for a tool designed with the most preferred attribute levels, contrasting with lower uptake (22.3%) for the least preferred design. Conclusions Participants were more likely to use MySTIRisk if it was free, highly accurate, and could send pathology request forms. Tailoring the tool to distinct user segments could enhance its uptake and effectiveness in promoting early detection and prevention of HIV and STIs.https://doi.org/10.1186/s12889-024-20688-2
spellingShingle Phyu M. Latt
Nyi N. Soe
Alicia J. King
David Lee
Tiffany R. Phillips
Xianglong Xu
Eric P. F. Chow
Christopher K. Fairley
Lei Zhang
Jason J. Ong
Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment
title Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment
title_full Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment
title_fullStr Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment
title_full_unstemmed Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment
title_short Preferences for attributes of an artificial intelligence-based risk assessment tool for HIV and sexually transmitted infections: a discrete choice experiment
title_sort preferences for attributes of an artificial intelligence based risk assessment tool for hiv and sexually transmitted infections a discrete choice experiment
url https://doi.org/10.1186/s12889-024-20688-2
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