模拟健康行为的物理分析

Anmol Madan
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引用次数: 0

摘要

移动电话是一个无处不在的平台,机会主义地感知社会和健康相关行为。在这次演讲中,我将讨论如何使用来自移动电话的传感器数据来建模和预测健康结果。演讲以回顾麻省理工学院媒体实验室的研究开始,然后过渡到姜是如何。io建立了一个商业平台,用于大规模收集、注释、分析和推动医疗保健干预措施,并与美国主要的医院系统和医疗保健提供商一起部署。姜。IO由三部分组成的平台——患者应用程序、行为分析引擎和提供商仪表板——应用这项技术,为医护人员提供了一个了解患者就诊间隙健康状况的窗口。我们的移动应用程序使用智能手机传感器被动地收集有关患者日常模式的信息。使用这些数据,我们的机器学习模型能够比标准护理更好地检测出高危患者。任何有关行为的变化都通过我们简单的、面向动作的web仪表板传达给提供商。姜。io是Kaiser Permanente、Novant Health、UCSF、Duke Medical和辛辛那提儿童医院等机构护理解决方案的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physical analytics to model health behaviors
Mobile phones are a pervasive platform for opportunistic sensing of social and health related behaviors. In this talk, I discuss how sensor data from mobile phones can be used to model and predict health outcomes. The talk starts with a review of research at the MIT Media Lab, and then transitions into how Ginger.io has built a commercial platform to collect, annotate, analyze and drive healthcare interventions at scale, deployed with major US hospital systems and healthcare providers. The Ginger.io three-part platform -- patient app, behavioral analytics engine, and provider dashboard -- applies this technology to give care providers a window into their patients' health between office visits. Our mobile app uses smartphone sensors to passively collect information about a patient's daily patterns. Using this data, our machine learning models are able to detect at-risk patients significantly better than the standard of care. Any concerning changes in behavior are communicated to the provider through our simple, action-oriented web dashboard. Ginger.io is part of the care solutions at institutions such as Kaiser Permanente, Novant Health, UCSF, Duke Medical and Cincinnati Children's.
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