Lakshmi Prasath Muniandi, W. Schlee, R. Pryss, M. Reichert, Johannes Schobel, Robin Kraft, M. Spiliopoulou
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引用次数: 6
摘要
移动应用程序可以帮助患有慢性疾病的患者记录他们的生态瞬间评估(EMA),并更准确地了解他们的疾病在白天和黑夜以及更长时间内的表现。这种群众感知应用有助于赋予患者权力,患者可以监测自己的疾病,有时还能学会更好地应对疾病。一个悬而未决的问题是,通过了解患者进化过程中的异同点,是否也能帮助医生帮助他们的患者。我们研究慢性疾病耳鸣患者的EMA,通过移动众感应用程序Track Your tinnitus记录。我们提出了一种方法来捕捉患者进化的相似性,同时考虑到每个患者EMA记录频率的差异。我们将该方法整合到一个完整的工作流中,该工作流包含以下组件:一个基于注册数据捕获患者之间相似性的算法,一个将静态患者相似性与基于ema的患者相似性并列的方法,以及一个识别静态特征空间和基于ema的特征空间的子空间的方法,这些子空间主要有助于患者相似性。我们报告了来自TrackYourTinnitus移动应用程序的450名耳鸣患者2014年至2017年的时间段记录结果。
Finding Tinnitus Patients with Similar Evolution of Their Ecological Momentary Assessments
Mobile applications can help patients with a chronical disease to record their Ecological Momentary Assessments (EMA) and to get a more precise impression of how their disease manifests itself during day and night and over longer time periods. Such crowdsensing applications contribute to patient empowerment, in which patients monitor their disease and, sometimes, learn to cope better with it. An open question is whether physicians can also be helped in assisting their patients, by understanding similarities and differences in the patients' evolution. We study the EMA of patients with the chronical disease tinnitus, as recorded with the mobile crowdsensing application Track Your Tinnitus. We propose a method that captures similarities in patient evolution, taking account of the differences in the frequency of each patient's EMA recordings. We incorporate this method into a complete workflow that encompasses following components: an algorithm that captures similarities among patients on the basis of their registration data, a method that juxtaposes static patient similarity to EMA-based patient similarity, and a method that identifies those subspaces of the static feature space and those of the EMA-based feature space, which are mainly contributing to patient similarity. We report on our results for the time period recordings from 2014 till 2017 of 450 tinnitus patients from TrackYourTinnitus mobile application.