Department of Biomedical Systems Informatics, College of Medicine, Yonsei University, Seoul, Republic of Korea.
Noom Inc, New York, NY, United States.
JMIR Mhealth Uhealth. 2021 Mar 29;9(3):e22183. doi: 10.2196/22183.
In recent years, mobile-based interventions have received more attention as an alternative to on-site obesity management. Despite increased mobile interventions for obesity, there are lost opportunities to achieve better outcomes due to the lack of a predictive model using current existing longitudinal and cross-sectional health data. Noom (Noom Inc) is a mobile app that provides various lifestyle-related logs including food logging, exercise logging, and weight logging.
The aim of this study was to develop a weight change predictive model using an interpretable artificial intelligence algorithm for mobile-based interventions and to explore contributing factors to weight loss.
Lifelog mobile app (Noom) user data of individuals who used the weight loss program for 16 weeks in the United States were used to develop an interpretable recurrent neural network algorithm for weight prediction that considers both time-variant and time-fixed variables. From a total of 93,696 users in the coaching program, we excluded users who did not take part in the 16-week weight loss program or who were not overweight or obese or had not entered weight or meal records for the entire 16-week program. This interpretable model was trained and validated with 5-fold cross-validation (training set: 70%; testing: 30%) using the lifelog data. Mean absolute percentage error between actual weight loss and predicted weight was used to measure model performance. To better understand the behavior factors contributing to weight loss or gain, we calculated contribution coefficients in test sets.
A total of 17,867 users' data were included in the analysis. The overall mean absolute percentage error of the model was 3.50%, and the error of the model declined from 3.78% to 3.45% by the end of the program. The time-level attention weighting was shown to be equally distributed at 0.0625 each week, but this gradually decreased (from 0.0626 to 0.0624) as it approached 16 weeks. Factors such as usage pattern, weight input frequency, meal input adherence, exercise, and sharp decreases in weight trajectories had negative contribution coefficients of -0.021, -0.032, -0.015, and -0.066, respectively. For time-fixed variables, being male had a contribution coefficient of -0.091.
An interpretable algorithm, with both time-variant and time-fixed data, was used to precisely predict weight loss while preserving model transparency. This week-to-week prediction model is expected to improve weight loss and provide a global explanation of contributing factors, leading to better outcomes.
近年来,移动干预作为现场肥胖管理的替代方法受到了更多关注。尽管针对肥胖的移动干预措施有所增加,但由于缺乏使用现有纵向和横断面健康数据的预测模型,仍存在错失改善结果的机会。Noom(Noom Inc)是一款提供各种与生活方式相关的日志记录功能的移动应用程序,包括食物记录、运动记录和体重记录。
本研究旨在使用可解释的人工智能算法为移动干预开发体重变化预测模型,并探讨体重减轻的影响因素。
使用美国 Lifelog 移动应用程序(Noom)用户数据,这些用户在 16 周内使用体重管理程序,开发了一种可解释的递归神经网络算法,用于预测体重,该算法考虑了时变和时定变量。在参加教练计划的 93696 名用户中,我们排除了未参加 16 周体重减轻计划的用户、体重正常或体重不超重或肥胖的用户,或未在整个 16 周计划中记录体重或膳食的用户。使用 5 折交叉验证(训练集:70%;测试集:30%)对该可解释模型进行了训练和验证,使用 Lifelog 数据。实际体重减轻与预测体重之间的平均绝对百分比误差用于衡量模型性能。为了更好地了解有助于体重减轻或增加的行为因素,我们在测试集中计算了贡献系数。
共有 17867 名用户的数据纳入分析。该模型的总体平均绝对百分比误差为 3.50%,并且该模型的误差从计划开始时的 3.78%下降到第 16 周时的 3.45%。时间水平注意力加权被证明每周平均分配为 0.0625,但随着接近 16 周,该值逐渐减少(从 0.0626 到 0.0624)。使用模式、体重输入频率、膳食输入坚持、运动以及体重轨迹急剧下降等因素的贡献系数分别为-0.021、-0.032、-0.015 和-0.066。对于时定变量,男性的贡献系数为-0.091。
使用同时具有时变和时定数据的可解释算法,可以精确预测体重减轻,同时保持模型透明度。这种逐周预测模型有望改善体重减轻效果,并提供对影响因素的全面解释,从而带来更好的结果。