Sy Bon, Wassil Michael, Hassan Alisha, Chen Jin
Graduate Center/City University of NY, 365 5th Avenue, NY 10016, USA.
Queens College/City University of NY, 65-30 Kissena Boulevard, Queens, NY 11367, USA.
Patterns (N Y). 2022 May 17;3(6):100510. doi: 10.1016/j.patter.2022.100510. eCollection 2022 Jun 10.
The objective of this research is to investigate the feasibility of applying behavioral predictive analytics to optimize diabetes self-management. This research also presents a use case on the application of the anaytics technology platform to deliver an online diabetes prevention program developed by the CDC. The goal of personalized self-management is to affect individuals on behavior change toward actionable health activities on glucose self-monitoring, diet management, and exercise. In conjunction with personalizing self-management, the content of the CDC diabetes prevention program was delivered online directly to a mobile device. The proposed behavioral predictive analytics relies on manifold clustering to identify subpopulations by behavior readiness characteristics exhibiting non-linear properties. Utilizing behavior readiness data of 148 subjects, subpopulations are created using manifold clustering to target personalized actionable health activities. This paper reports the preliminary result of personalizing self-management for 22 subjects under different scenarios and the outcome on improving diabetes self-efficacy of 34 subjects.
本研究的目的是探讨应用行为预测分析来优化糖尿病自我管理的可行性。本研究还展示了一个使用分析技术平台来提供由美国疾病控制与预防中心(CDC)开发的在线糖尿病预防项目的用例。个性化自我管理的目标是促使个体在葡萄糖自我监测、饮食管理和运动等可采取行动的健康活动方面改变行为。在进行个性化自我管理的同时,CDC糖尿病预防项目的内容直接在线传送到移动设备上。所提出的行为预测分析依靠流形聚类,通过表现出非线性特性的行为准备特征来识别亚群体。利用148名受试者的行为准备数据,使用流形聚类创建亚群体,以针对个性化的可采取行动的健康活动。本文报告了在不同场景下为22名受试者进行个性化自我管理的初步结果,以及34名受试者在提高糖尿病自我效能方面的成果。