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Self-tracking Reloaded: Applying Process Mining to Personalized Health Care from Labeled Sensor Data

机译:自动跟踪重新加载:从标记的传感器数据应用流程挖掘到个性化的医疗保健

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Currently, there is a trend to promote personalized health care in order to prevent diseases or to have a healthier life. Using current devices such as smart-phones and smart-watches, an individual can easily record detailed data from her daily life. Yet, this data has been mainly used for self-tracking in order to enable personalized health care. In this paper, we provide ideas on how process mining can be used as a fine-grained evolution of traditional self-tracking. We have applied the ideas of the paper on recorded data from a set of individuals, and present conclusions and challenges.
机译:目前,促进个性化的医疗保健有趋势,以防止疾病或更健康的生活。使用诸如智能手机和智能手表等当前设备,个人可以轻松地从日常生活中记录详细数据。然而,该数据主要用于自动跟踪,以便使个性化的医疗保健。在本文中,我们提供了如何将过程采矿方式用作传统自动跟踪的细粒度演变的想法。我们已将纸张的想法应用于一组人员的记录数据,以及现有的结论和挑战。

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