Švihrová Radoslava, Dei Rossi Alvise, Marzorati Davide, Tzovara Athina, Faraci Francesca Dalia
Institute of Computer Science, Faculty of Science, University of Bern, Bern, Switzerland.
Institute of Digital Technologies for Personalized Healthcare, Department of Innovative Technologies, University of Applied Sciences and Arts of Southern Switzerland, Lugano, Switzerland.
Front Digit Health. 2025 Jun 5;7:1435917. doi: 10.3389/fdgth.2025.1435917. eCollection 2025.
Recent statistics from the World Health Organization show that non-communicable diseases account for 74% of global fatalities, with lifestyle playing a pivotal role in their development. Promoting healthier behaviors and targeting modifiable risk factors can significantly improve both life expectancy and quality of life. The widespread adoption of smartphones and wearable devices enables continuous, in-the-wild monitoring of daily habits, opening new opportunities for personalized, data-driven health interventions. This paper provides an overview of the advancements, challenges, and future directions in translating principles of lifestyle medicine and behavior change into AI-powered mobile health (mHealth) applications, with a focus on Just-In-Time Adaptive Interventions. Considerations for the design of adaptive interventions that leverage wearable and contextual data to dynamically personalize behavioral change strategies in real time are discussed. Bayesian multi-armed bandits from reinforcement learning are exploited as a framework for tailoring interventions, with causal inference methods used to incorporate structural assumptions about the user's behavior. Furthermore, strategies for evaluation at both individual and population levels are presented, with causal inference tools to further guide unbiased estimates. A running example of a simple real-world scenario aimed at increasing physical activity through digital interventions is used throughout the paper. With input from domain experts, the proposed approach is generalizable to a wide range of behavior change use cases.
世界卫生组织最近的统计数据显示,非传染性疾病占全球死亡人数的74%,生活方式在其发展过程中起着关键作用。推广更健康的行为并针对可改变的风险因素,能够显著提高预期寿命和生活质量。智能手机和可穿戴设备的广泛应用,使得对日常习惯进行持续的、实地的监测成为可能,为个性化的、数据驱动的健康干预创造了新机会。本文概述了将生活方式医学和行为改变原则转化为人工智能驱动的移动健康(mHealth)应用的进展、挑战和未来方向,重点是即时自适应干预。讨论了利用可穿戴设备和情境数据实时动态个性化行为改变策略的自适应干预设计考量。强化学习中的贝叶斯多臂赌博机被用作定制干预的框架,因果推断方法用于纳入关于用户行为的结构假设。此外,还介绍了个体和群体层面的评估策略,以及用于进一步指导无偏估计的因果推断工具。本文通篇使用了一个简单的现实场景作为示例,旨在通过数字干预增加身体活动。在领域专家的参与下,所提出的方法可推广到广泛的行为改变用例。