Literature DB >> 34926979

Detecting Receptivity for mHealth Interventions in the Natural Environment.

Varun Mishra1, Florian Künzler2, Jan-Niklas Kramer3, Elgar Fleisch4, Tobias Kowatsch5, David Kotz1.   

Abstract

Just-In-Time Adaptive Intervention (JITAI) is an emerging technique with great potential to support health behavior by providing the right type and amount of support at the right time. A crucial aspect of JITAIs is properly timing the delivery of interventions, to ensure that a user is receptive and ready to process and use the support provided. Some prior works have explored the association of context and some user-specific traits on receptivity, and have built post-study machine-learning models to detect receptivity. For effective intervention delivery, however, a JITAI system needs to make in-the-moment decisions about a user's receptivity. To this end, we conducted a study in which we deployed machine-learning models to detect receptivity in the natural environment, i.e., in free-living conditions. We leveraged prior work regarding receptivity to JITAIs and deployed a chatbot-based digital coach - Ally - that provided physical-activity interventions and motivated participants to achieve their step goals. We extended the original Ally app to include two types of machine-learning model that used contextual information about a person to predict when a person is receptive: a static model that was built before the study started and remained constant for all participants and an adaptive model that continuously learned the receptivity of individual participants and updated itself as the study progressed. For comparison, we included a control model that sent intervention messages at random times. The app randomly selected a delivery model for each intervention message. We observed that the machine-learning models led up to a 40% improvement in receptivity as compared to the control model. Further, we evaluated the temporal dynamics of the different models and observed that receptivity to messages from the adaptive model increased over the course of the study.

Entities:  

Keywords:  Engagement; Interruption; Intervention; Mobile Health; Receptivity

Year:  2021        PMID: 34926979      PMCID: PMC8680205          DOI: 10.1145/3463492

Source DB:  PubMed          Journal:  Proc ACM Interact Mob Wearable Ubiquitous Technol


  15 in total

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4.  Assessing the Availability of Users to Engage in Just-in-Time Intervention in the Natural Environment.

Authors:  Hillol Sarker; Moushumi Sharmin; Amin Ahsan Ali; Md Mahbubur Rahman; Rummana Bari; Syed Monowar Hossain; Santosh Kumar
Journal:  Proc ACM Int Conf Ubiquitous Comput       Date:  2014

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Review 6.  A Systematic Review of the mHealth Interventions to Prevent Alcohol and Substance Abuse.

Authors:  Donna M Kazemi; Brian Borsari; Maureen J Levine; Shaoyu Li; Katie A Lamberson; Laura A Matta
Journal:  J Health Commun       Date:  2017-04-10

Review 7.  mHealth for Smoking Cessation Programs: A Systematic Review.

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Journal:  J Pers Med       Date:  2014-07-18

8.  mActive: A Randomized Clinical Trial of an Automated mHealth Intervention for Physical Activity Promotion.

Authors:  Seth S Martin; David I Feldman; Roger S Blumenthal; Steven R Jones; Wendy S Post; Rebeccah A McKibben; Erin D Michos; Chiadi E Ndumele; Elizabeth V Ratchford; Josef Coresh; Michael J Blaha
Journal:  J Am Heart Assoc       Date:  2015-11-09       Impact factor: 5.501

9.  Investigating Intervention Components and Exploring States of Receptivity for a Smartphone App to Promote Physical Activity: Protocol of a Microrandomized Trial.

Authors:  Jan-Niklas Kramer; Florian Künzler; Varun Mishra; Bastien Presset; David Kotz; Shawna Smith; Urte Scholz; Tobias Kowatsch
Journal:  JMIR Res Protoc       Date:  2019-01-31

10.  Which Components of a Smartphone Walking App Help Users to Reach Personalized Step Goals? Results From an Optimization Trial.

Authors:  Jan-Niklas Kramer; Florian Künzler; Varun Mishra; Shawna N Smith; David Kotz; Urte Scholz; Elgar Fleisch; Tobias Kowatsch
Journal:  Ann Behav Med       Date:  2020-06-12
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Journal:  Proc ACM Interact Mob Wearable Ubiquitous Technol       Date:  2021-03-30

2.  Designing, Developing, Evaluating, and Implementing a Smartphone-Delivered, Rule-Based Conversational Agent (DISCOVER): Development of a Conceptual Framework.

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3.  "I Wanted to See How Bad it Was": Online Self-screening as a Critical Transition Point Among Young Adults with Common Mental Health Conditions.

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4.  Engagement in digital interventions.

Authors:  Inbal Nahum-Shani; Steven D Shaw; Stephanie M Carpenter; Susan A Murphy; Carolyn Yoon
Journal:  Am Psychol       Date:  2022-03-17

Review 5.  Factors Influencing Adherence to mHealth Apps for Prevention or Management of Noncommunicable Diseases: Systematic Review.

Authors:  Robert Jakob; Samira Harperink; Aaron Maria Rudolf; Elgar Fleisch; Severin Haug; Jacqueline Louise Mair; Alicia Salamanca-Sanabria; Tobias Kowatsch
Journal:  J Med Internet Res       Date:  2022-05-25       Impact factor: 7.076

6.  A Personalized Smartphone-Delivered Just-in-time Adaptive Intervention (JitaBug) to Increase Physical Activity in Older Adults: Mixed Methods Feasibility Study.

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7.  Just-in-Time Prompts for Running, Walking, and Performing Strength Exercises in the Built Environment: 4-Week Randomized Feasibility Study.

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8.  Predicting the Next-Day Perceived and Physiological Stress of Pregnant Women by Using Machine Learning and Explainability: Algorithm Development and Validation.

Authors:  Ada Ng; Boyang Wei; Jayalakshmi Jain; Erin A Ward; S Darius Tandon; Judith T Moskowitz; Sheila Krogh-Jespersen; Lauren S Wakschlag; Nabil Alshurafa
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  8 in total

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