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Infusing Domain Knowledge to Improve the Detection of Alzheimer's Disease from Everyday Motion Behaviour

机译:注入域名知识,从日常运动行为中改善阿尔茨海默病的检测

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Alzheimer's disease can severely impair the independent lifestyle of a person. Dem@Care is an European research project that conducted a study for timely diagnosis of Alzheimers disease by collecting everyday motion data from couples (or dyads), with one of the person in the couple having AD. Their results suggest that AD can be detected using everyday motion data from accelerometers. They did evaluation based on leave-one-person-out cross-validation. However, this evaluation can introduce bias in the classification results because one of the person from the dyad is present in the training set while the other is being tested. In this paper, we revisit the Dem@Care study and propose a new evaluation method that performs leave one-dyad-out cross-validation to remove the dataset selection bias. We then introduce new domain specific features based on dynamic and static intervals of motions that significantly improves the classification results. We further show increase in performance by combining the proposed features with new time, frequency domain and baseline features used in the Dem@Care study.
机译:阿尔茨海默病可以严重损害一个人的独立生活方式。 DEM @ CARE是一项欧洲研究项目,通过从夫妻(或DYADS)的日常行动数据,与夫妇中的一个人的一个人一起收集日常行动数据,进行了一次性诊断Alzheimers疾病的研究。它们的结果表明,可以使用加速度计的日常运动数据来检测广告。他们根据休假的交叉验证进行评估。然而,该评估可以在分类结果中引入偏差,因为从Dyad中的一个人存在于训练集中,而另一个是正在测试的。在本文中,我们重新审视DEM @ Care研究,并提出了一种新的评估方法,该方法执行留出一个二进制交叉验证以删除数据集选择偏差。然后,我们根据动态和静态间隔引入新的域特定功能,可以显着提高分类结果。我们进一步通过在DEM @ CARE研究中使用的新时间,频域和基线特征结合所提出的特征来提高性能。

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