Department of Brain & Cognitive SCIENCES
Faculty

Research Highlights

2021 Machine-learning analysis identifies digital behavioral phenotypes for engagement and health outcome efficacy of mHealth interventions for obesity: post-hoc analyses of a randomized trial

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작성자 최고관리자 작성일 24-07-03 16:03

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Professor
Hyung Jin Choi
Authors
Kim M, Yang J, Ahn W, Choi HJ
Journal
Journal of Medical Internet Research
Journal Info
23(6)
Year
2021

Background: Digital healthcare aims to improve user engagement and health outcomes by analyzing various digital behaviors and traits.

Objective: This study examines how well different characteristics predict engagement and health outcomes in a digital cognitive behavioral therapy (CBT) program.

Methods: 45 participants used a CBT mobile app for 8 weeks. Researchers used machine learning to analyze both traditional psychological questionnaires and digital behaviors recorded by the app.

Results:

• Higher engagement was linked to greater weight loss at 8 and 24 weeks.

• Key factors included:

o Lower self-esteem (traditional measure).

o Higher motivation (digital measure).

• Specific digital behaviors, like eating fewer high-calorie foods and frequent mentor interactions, predicted engagement.

• Eating fewer carbs and more low-calorie foods predicted short- and long-term weight changes.

Conclusions: The study used machine learning to show that multiple psychological and behavioral factors can explain the effectiveness of digital health programs, leading to better, personalized treatments in the future.

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