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Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation

BACKGROUND: Recommender systems have great potential in mental health care to personalize self-guided content for patients, allowing them to supplement their mental health treatment in a scalable way. OBJECTIVE: In this paper, we describe and evaluate 2 knowledge-based content recommendation systems...

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Autores principales: Chaturvedi, Akhil, Aylward, Brandon, Shah, Setu, Graziani, Grant, Zhang, Joan, Manuel, Bobby, Telewa, Emmanuel, Froelich, Stefan, Baruwa, Olalekan, Kulkarni, Prathamesh Param, Ξ, Watson, Kunkle, Sarah
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9896352/
https://www.ncbi.nlm.nih.gov/pubmed/36656628
http://dx.doi.org/10.2196/38831
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author Chaturvedi, Akhil
Aylward, Brandon
Shah, Setu
Graziani, Grant
Zhang, Joan
Manuel, Bobby
Telewa, Emmanuel
Froelich, Stefan
Baruwa, Olalekan
Kulkarni, Prathamesh Param
Ξ, Watson
Kunkle, Sarah
author_facet Chaturvedi, Akhil
Aylward, Brandon
Shah, Setu
Graziani, Grant
Zhang, Joan
Manuel, Bobby
Telewa, Emmanuel
Froelich, Stefan
Baruwa, Olalekan
Kulkarni, Prathamesh Param
Ξ, Watson
Kunkle, Sarah
author_sort Chaturvedi, Akhil
collection PubMed
description BACKGROUND: Recommender systems have great potential in mental health care to personalize self-guided content for patients, allowing them to supplement their mental health treatment in a scalable way. OBJECTIVE: In this paper, we describe and evaluate 2 knowledge-based content recommendation systems as parts of Ginger, an on-demand mental health platform, to bolster engagement in self-guided mental health content. METHODS: We developed two algorithms to provide content recommendations in the Ginger mental health smartphone app: (1) one that uses users' responses to app onboarding questions to recommend content cards and (2) one that uses the semantic similarity between the transcript of a coaching conversation and the description of content cards to make recommendations after every session. As a measure of success for these recommendation algorithms, we examined the relevance of content cards to users’ conversations with their coach and completion rates of selected content within the app measured over 14,018 users. RESULTS: In a real-world setting, content consumed in the recommendations section (or “Explore” in the app) had the highest completion rates (3353/7871, 42.6%) compared to other sections of the app, which had an average completion rate of 37.35% (21,982/58,614; P<.001). Within the app’s recommendations section, conversation-based content recommendations had 11.4% (1108/2364) higher completion rates per card than onboarding response-based recommendations (1712/4067; P=.003) and 26.1% higher than random recommendations (534/1440; P=.005). Studied via subject matter experts’ annotations, conversation-based recommendations had a 16.1% higher relevance rate for the top 5 recommended cards, averaged across sessions of varying lengths, compared to a random control (110 conversational sessions). Finally, it was observed that both age and gender variables were sensitive to different recommendation methods, with responsiveness to personalized recommendations being higher if the users were older than 35 years or identified as male. CONCLUSIONS: Recommender systems can help scale and supplement digital mental health care with personalized content and self-care recommendations. Onboarding-based recommendations are ideal for “cold starting” the process of recommending content for new users and users that tend to use the app just for content but not for therapy or coaching. The conversation-based recommendation algorithm allows for dynamic recommendations based on information gathered during coaching sessions, which is a critical capability, given the changing nature of mental health needs during treatment. The proposed algorithms are just one step toward the direction of outcome-driven personalization in mental health. Our future work will involve a robust causal evaluation of these algorithms using randomized controlled trials, along with consumer feedback–driven improvement of these algorithms, to drive better clinical outcomes.
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spelling pubmed-98963522023-02-04 Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation Chaturvedi, Akhil Aylward, Brandon Shah, Setu Graziani, Grant Zhang, Joan Manuel, Bobby Telewa, Emmanuel Froelich, Stefan Baruwa, Olalekan Kulkarni, Prathamesh Param Ξ, Watson Kunkle, Sarah JMIR Form Res Original Paper BACKGROUND: Recommender systems have great potential in mental health care to personalize self-guided content for patients, allowing them to supplement their mental health treatment in a scalable way. OBJECTIVE: In this paper, we describe and evaluate 2 knowledge-based content recommendation systems as parts of Ginger, an on-demand mental health platform, to bolster engagement in self-guided mental health content. METHODS: We developed two algorithms to provide content recommendations in the Ginger mental health smartphone app: (1) one that uses users' responses to app onboarding questions to recommend content cards and (2) one that uses the semantic similarity between the transcript of a coaching conversation and the description of content cards to make recommendations after every session. As a measure of success for these recommendation algorithms, we examined the relevance of content cards to users’ conversations with their coach and completion rates of selected content within the app measured over 14,018 users. RESULTS: In a real-world setting, content consumed in the recommendations section (or “Explore” in the app) had the highest completion rates (3353/7871, 42.6%) compared to other sections of the app, which had an average completion rate of 37.35% (21,982/58,614; P<.001). Within the app’s recommendations section, conversation-based content recommendations had 11.4% (1108/2364) higher completion rates per card than onboarding response-based recommendations (1712/4067; P=.003) and 26.1% higher than random recommendations (534/1440; P=.005). Studied via subject matter experts’ annotations, conversation-based recommendations had a 16.1% higher relevance rate for the top 5 recommended cards, averaged across sessions of varying lengths, compared to a random control (110 conversational sessions). Finally, it was observed that both age and gender variables were sensitive to different recommendation methods, with responsiveness to personalized recommendations being higher if the users were older than 35 years or identified as male. CONCLUSIONS: Recommender systems can help scale and supplement digital mental health care with personalized content and self-care recommendations. Onboarding-based recommendations are ideal for “cold starting” the process of recommending content for new users and users that tend to use the app just for content but not for therapy or coaching. The conversation-based recommendation algorithm allows for dynamic recommendations based on information gathered during coaching sessions, which is a critical capability, given the changing nature of mental health needs during treatment. The proposed algorithms are just one step toward the direction of outcome-driven personalization in mental health. Our future work will involve a robust causal evaluation of these algorithms using randomized controlled trials, along with consumer feedback–driven improvement of these algorithms, to drive better clinical outcomes. JMIR Publications 2023-01-19 /pmc/articles/PMC9896352/ /pubmed/36656628 http://dx.doi.org/10.2196/38831 Text en ©Akhil Chaturvedi, Brandon Aylward, Setu Shah, Grant Graziani, Joan Zhang, Bobby Manuel, Emmanuel Telewa, Stefan Froelich, Olalekan Baruwa, Prathamesh Param Kulkarni, Watson Ξ, Sarah Kunkle. Originally published in JMIR Formative Research (https://formative.jmir.org), 19.01.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Formative Research, is properly cited. The complete bibliographic information, a link to the original publication on https://formative.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Chaturvedi, Akhil
Aylward, Brandon
Shah, Setu
Graziani, Grant
Zhang, Joan
Manuel, Bobby
Telewa, Emmanuel
Froelich, Stefan
Baruwa, Olalekan
Kulkarni, Prathamesh Param
Ξ, Watson
Kunkle, Sarah
Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation
title Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation
title_full Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation
title_fullStr Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation
title_full_unstemmed Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation
title_short Content Recommendation Systems in Web-Based Mental Health Care: Real-world Application and Formative Evaluation
title_sort content recommendation systems in web-based mental health care: real-world application and formative evaluation
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9896352/
https://www.ncbi.nlm.nih.gov/pubmed/36656628
http://dx.doi.org/10.2196/38831
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