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一种基于预测模型的糖尿病患者赋权决策支持系统。

A Predictive Model-Based Decision Support System for Diabetes Patient Empowerment.

作者信息

Glachs Dietmar, Namli Tuncay, Strohmeier Felix, Rodríguez Suárez Gustavo, Sluis Michel, Delgado-Lista Javier, Sont Jacob K, de Graaf Albert A, Salzsieder Eckhard, Vogt Lutz

机构信息

Salzburg Research Forschungsgesellschaft, Salzburg, Austria.

Software Research & Development and Consultancy Corp., Ankara, Turkey.

出版信息

Stud Health Technol Inform. 2021 May 27;281:963-968. doi: 10.3233/SHTI210321.

DOI:10.3233/SHTI210321
PMID:34042816
Abstract

The main objective of POWER2DM is to develop and validate a personalized self-management support system (SMSS) for T1 and T2 diabetes patients that combines and integrates i) a decision support system (DSS) based on leading European predictive personalized models for diabetes interlinked with predictive computer models, ii) automated e-coaching functionalities based on Behavioral Change Theories, and iii) real-time Personal Data processing and interpretation. The SMSS offers a guided workflow based on treatment goals and activities where a periodic review evaluates the patients progress and provides detailed feedback on how to improve towards a healthier, diabetes appropriate lifestyle.

摘要

POWER2DM的主要目标是为1型和2型糖尿病患者开发并验证一个个性化的自我管理支持系统(SMSS),该系统结合并整合了:i)基于欧洲领先的糖尿病预测个性化模型并与预测计算机模型相链接的决策支持系统(DSS);ii)基于行为改变理论的自动化电子辅导功能;iii)实时个人数据处理与解读。SMSS提供了一个基于治疗目标和活动的引导式工作流程,定期评估患者的进展,并就如何朝着更健康、适合糖尿病患者的生活方式改进提供详细反馈。

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