Elliot G Mitchell, Elizabeth M Heitkemper, Marissa Burgermaster, Matthew E Levine, Yishen Miao, Maria L Hwang, Pooja M Desai, Andrea Cassells, Jonathan N Tobin, Esteban G Tabak, David J Albers, Arlene M Smaldone, Lena Mamykina
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引用次数: 0
摘要
自我跟踪有助于对 2 型糖尿病(T2D)等慢性病进行个性化的自我管理干预,但对个人数据进行反思需要动力和素养。机器学习(ML)方法可以识别模式,但根据个人健康数据提出可行建议是一项关键挑战。我们介绍了 GlucoGoalie,它将 ML 与专家系统相结合,将 ML 输出转化为针对 T2D 患者的个性化营养目标建议。在一项对照实验中,患有 T2D 的参与者发现,目标建议是可以理解和执行的。一项为期四周的实地部署研究表明,接收目标建议能增强参与者的自我发现能力,选择目标凸显了个人偏好的多面性,而遵循目标的体验则证明了反馈和上下文的重要性。然而,我们发现抽象的目标和具体的饮食体验之间存在矛盾,并且发现静态文本对于复杂的概念过于模糊。我们讨论了基于 ML 的干预措施的意义,以及提供更多互动、反馈和协商的系统的必要性。
From Reflection to Action: Combining Machine Learning with Expert Knowledge for Nutrition Goal Recommendations.
Self-tracking can help personalize self-management interventions for chronic conditions like type 2 diabetes (T2D), but reflecting on personal data requires motivation and literacy. Machine learning (ML) methods can identify patterns, but a key challenge is making actionable suggestions based on personal health data. We introduce GlucoGoalie, which combines ML with an expert system to translate ML output into personalized nutrition goal suggestions for individuals with T2D. In a controlled experiment, participants with T2D found that goal suggestions were understandable and actionable. A 4-week in-the-wild deployment study showed that receiving goal suggestions augmented participants' self-discovery, choosing goals highlighted the multifaceted nature of personal preferences, and the experience of following goals demonstrated the importance of feedback and context. However, we identified tensions between abstract goals and concrete eating experiences and found static text too ambiguous for complex concepts. We discuss implications for ML-based interventions and the need for systems that offer more interactivity, feedback, and negotiation.