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Wearable-Based Parkinson's Disease Severity Monitoring Using Deep Learning

机译:使用可深度学习的可穿戴式帕金森病严重度监测

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One major challenge in the medication of Parkinson's disease is that the severity of the disease, reflected in the patients' motor state, cannot be measured using accessible biomarkers. Therefore, we develop and examine a variety of statistical models to detect the motor state of such patients based on sensor data from a wearable device. We find that deep learning models consistently outperform a classical machine learning model applied on hand-crafted features in this time series classification task. Furthermore, our results suggest that treating this problem as a regression instead of an ordinal regression or a classification task is most appropriate. For consistent model evaluation and training, we adopt the leave-one-subject-out validation scheme to the training of deep learning models. We also employ a class-weighting scheme to successfully mitigate the problem of high multi-class imbalances in this domain. In addition, we propose a customized performance measure that reflects the requirements of the involved medical staff on the model. To solve the problem of limited availability of high quality training data, we propose a transfer learning technique which helps to improve model performance substantially. Our results suggest that deep learning techniques offer a high potential to autonomously detect motor states of patients with Parkinson's disease.
机译:帕金森氏病药物治疗的一个主要挑战是,不能使用可利用的生物标记物来测量该疾病的严重程度,这种严重程度反映在患者的运动状态上。因此,我们基于可穿戴设备的传感器数据开发并检查了各种统计模型,以检测此类患者的运动状态。我们发现,在此时间序列分类任务中,深度学习模型始终优于应用于手工特征的经典机器学习模型。此外,我们的结果表明,将此问题作为回归而不是序数回归或分类任务来处理是最合适的。为了进行一致的模型评估和培训,我们在深度学习模型的培训中采用了留一法则的验证方案。我们还采用类加权方案来成功缓解该领域中多类不平衡度高的问题。此外,我们提出了定制的绩效指标,以反映模型中涉及的医务人员的要求。为了解决高质量训练数据的可用性有限的问题,我们提出了一种转移学习技术,该技术可以帮助大大提高模型的性能。我们的结果表明,深度学习技术为自主检测帕金森氏病患者的运动状态提供了很高的潜力。

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