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Introducing decision support for smart mobile health behavior change applications

机译:为智能移动健康行为更改应用程序引入决策支持

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We developed Therapeutic Lifestyle Change Decision Aid (TLC DA) system to support an informed choice about which behavior change to work on when multiple unhealthy behaviors are present. The system collects significant amount of information which is used to generate tailored messages to consumers in order to persuade them in following certain healthy lifestyles. One of the current limitations of the system is the necessity to collect vast amount of information from users who have to manually enter all required data. By identifying optimal set of self-reported parameters we should be able to minimize the data entry burden of the app users. The main goal of this study was to identify primary determinants of health behavior choices made by patients after using the TLC DA system. Using discriminant analysis an optimal set of predictors was identified which determined healthy behavior choices of users of a computer-mediated decision aid. We were able to reduce the initial set of 45 baseline variables to 5 primary variables driving consumer decision making regarding health behavior choice. The resulting set included smoking status, smoking cessation success estimate, self-efficacy, body mass index and diet status. Prediction of smoking cessation choice was the most accurate (73%) followed by weight management choice (67%). Physical activity and diet choices were much better identified in a combined cluster (76%-87%). The resulting minimized parameter set can significantly improve user experience.
机译:我们开发了治疗性生活方式改变决策辅助(TLC DA)系统,以支持在出现多种不健康行为时做出明智的选择,以应对哪种行为改变。该系统收集了大量信息,这些信息用于为消费者生成量身定制的消息,以说服他们遵循某些健康的生活方式。该系统当前的局限之一是必须从必须手动输入所有必需数据的用户那里收集大量信息。通过确定最佳的自我报告参数集,我们应该能够最大程度地减少应用程序用户的数据输入负担。这项研究的主要目的是确定患者使用TLC DA系统后做出的健康行为选择的主要决定因素。使用判别分析,确定了一组最佳预测变量,这些预测变量确定了计算机介导的决策辅助工具用户的健康行为选择。我们能够将45个基准变量的初始集合减少为5个主要变量,以驱动消费者做出有关健康行为选择的决策。结果集包括吸烟状况,戒烟成功评估,自我效能,体重指数和饮食状况。戒烟选择的预测最准确(73%),其次是体重控制选择(67%)。在一个综合组中,身体活动和饮食选择被更好地识别(76%-87%)。结果最小化的参数集可以显着改善用户体验。

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