4.7 Article

Weight Loss Trajectories and Related Factors in a 16-Week Mobile Obesity Intervention Program: Retrospective Observational Study

Journal

JOURNAL OF MEDICAL INTERNET RESEARCH
Volume 24, Issue 4, Pages -

Publisher

JMIR PUBLICATIONS, INC
DOI: 10.2196/29380

Keywords

clustering; mobile health; weight loss; weight management; behavior management; time series analysis; mHealth; obesity; outcomes; machine learning; mobile app; adherence; prediction; mobile phone

Funding

  1. National Research Foundation of Korea - South Korean government [NRF-2019M3E5D4064682]
  2. Foundational Technology Development Program - South Korean Ministry of Science and ICT [NRF2019M3E5D406468212]
  3. Bio-Industrial Technology Development Program - South Korean Ministry of Trade, Industry, and Energy [20014841]
  4. Korea Evaluation Institute of Industrial Technology (KEIT) [20014841] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)
  5. National Research Foundation of Korea [2019M3E5D4064682] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This study utilized machine learning and clustering techniques to identify 5 different weight loss trajectories in a mobile weight management app. Overall adherence and early self-monitoring adherence were found to be associated with these trajectories.
Background: In obesity management, whether patients lose 5% of their initial weight is a critical factor in clinical outcomes. However, evaluations that take only this approach are unable to identify and distinguish between individuals whose weight changes vary and those who steadily lose weight. Evaluation of weight loss considering the volatility of weight changes through a mobile-based intervention for obesity can facilitate understanding of an individual's behavior and weight changes from a longitudinal perspective. Objective: The aim of this study is to use a machine learning approach to examine weight loss trajectories and explore factors related to behavioral and app use characteristics that induce weight loss. Methods: We used the lifelog data of 13,140 individuals enrolled in a 16-week obesity management program on the health care app Noom in the United States from August 8, 2013, to August 8, 2019. We performed k-means clustering with dynamic time warping to cluster the weight loss time series and inspected the quality of clusters with the total sum of distance within the clusters. To identify use factors determining clustering assignment, we longitudinally compared weekly use statistics with effect size on a weekly basis. Results: The initial average BMI value for the participants was 33.6 (SD 5.9) kg/m(2), and it ultimately reached 31.6 (SD 5.7) kg/m(2). Using the weight log data, we identified five clusters: cluster 1 (sharp decrease) showed the highest proportion of participants who reduced their weight by >5% (7296/11,295, 64.59%), followed by cluster 2 (moderate decrease). In each comparison between clusters 1 and 3 (yo-yo) and clusters 2 and 3, although the effect size of the difference in average meal record adherence and average weight record adherence was not significant in the first week, it peaked within the initial 8 weeks (Cohen d>0.35) and decreased after that. Conclusions: Using a machine learning approach and clustering shape-based time series similarities, we identified 5 weight loss trajectories in a mobile weight management app. Overall adherence and early adherence related to self-monitoring emerged as potential predictors of these trajectories.

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