Trella Anna L, Zhang Kelly W, Jajal Hinal, Nahum-Shani Inbal, Shetty Vivek, Doshi-Velez Finale, Murphy Susan A
Department of Computer Science, Harvard University.
Department of Mathematics, Imperial College London.
Proc AAAI Conf Artif Intell. 2025;39(28):28792-28800. doi: 10.1609/aaai.v39i28.35143. Epub 2025 Apr 11.
Dental disease is a prevalent chronic condition associated with substantial financial burden, personal suffering, and increased risk of systemic diseases. Despite widespread recommendations for twice-daily tooth brushing, adherence to recommended oral self-care behaviors remains sub-optimal due to factors such as forgetfulness and disengagement. To address this, we developed Oralytics, a mHealth intervention system designed to complement clinician-delivered preventative care for marginalized individuals at risk for dental disease. Oralytics incorporates an online reinforcement learning algorithm to determine optimal times to deliver intervention prompts that encourage oral self-care behaviors. We have deployed Oralytics in a registered clinical trial. The deployment required careful design to manage challenges specific to the clinical trials setting in the U.S. In this paper, we (1) highlight key design decisions of the RL algorithm that address these challenges and (2) conduct a re-sampling analysis to evaluate algorithm design decisions. A second phase (randomized control trial) of Oralytics is planned to start in spring 2025.
牙齿疾病是一种普遍存在的慢性疾病,会带来巨大的经济负担、个人痛苦,并增加患全身性疾病的风险。尽管普遍建议每天刷牙两次,但由于健忘和缺乏参与度等因素,遵循推荐的口腔自我护理行为的情况仍不尽人意。为了解决这个问题,我们开发了Oralytics,这是一个移动健康干预系统,旨在补充临床医生为有牙齿疾病风险的边缘化个体提供的预防性护理。Oralytics采用了一种在线强化学习算法来确定提供干预提示的最佳时间,以鼓励口腔自我护理行为。我们已在一项注册临床试验中部署了Oralytics。此次部署需要精心设计,以应对美国临床试验环境特有的挑战。在本文中,我们(1)强调了RL算法应对这些挑战的关键设计决策,(2)进行了重采样分析以评估算法设计决策。Oralytics的第二阶段(随机对照试验)计划于2025年春季开始。