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使用监督学习的帕金森病前驱期运动评估可穿戴传感器

Wearable Sensors for Prodromal Motor Assessment of Parkinson's Disease using Supervised Learning.

作者信息

Rovini E, Moschetti A, Fiorini L, Esposito D, Maremmani C, Cavallo F

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:4318-4321. doi: 10.1109/EMBC.2019.8856804.

Abstract

Parkinson's disease (PD) is a common neurodegenerative disorder characterized by disabling motor and non-motor symptoms. Idiopathic hyposmia (IH), a reduced olfactory sensitivity, is a preclinical marker for the pathology and affects >95% of PD patients. In this paper, SensHand V1 and SensFoot V2, two inertial wearable sensors for upper and lower limbs, were developed to acquire motion data in ten tasks of the MDS-UPDRS III. Fifteen healthy subjects of control, 15 IH people, and 15 PD patients were enrolled. Seventy-one parameters per side were computed by spatiotemporal and frequency data analysis, and the most significant were selected to distinguish among the different classes. Performances of supervised learning algorithms (i.e., Support Vector Machine (SVM), and Random Forest (RF)) were compared on two-group and three-group classification and considering upper and lower limbs separately or together as a full system. Excellent results were obtained for healthy vs. patients classification (accuracy 1.00 for RF, and 0.97 for SVM), and good results were achieved by including IH subjects (0.92 F-measure with RF) within a three-group classification. Overall, the best performances were obtained using the full system with an RF classifier. The system is, thus, suitable to support an objective PD diagnosis. Furthermore, combining motion analysis with a validated olfactory screening test, people at risk for PD can be appropriately analyzed, and subtle changes in motor performance that characterize the prodromal phase and the early PD onset can be identified.

摘要

帕金森病(PD)是一种常见的神经退行性疾病,其特征为致残性运动和非运动症状。特发性嗅觉减退(IH),即嗅觉敏感性降低,是该疾病病理的临床前标志物,影响超过95%的帕金森病患者。在本文中,开发了用于上肢和下肢的两种惯性可穿戴传感器SensHand V1和SensFoot V2,以获取MDS-UPDRS III的十项任务中的运动数据。招募了15名健康对照者、15名嗅觉减退者和15名帕金森病患者。通过时空和频率数据分析计算每侧71个参数,并选择最显著的参数来区分不同类别。在两组和三组分类中,分别或作为一个完整系统一起考虑上肢和下肢,比较了监督学习算法(即支持向量机(SVM)和随机森林(RF))的性能。在健康人与患者的分类中获得了优异的结果(随机森林的准确率为1.00,支持向量机的准确率为0.97),在三组分类中纳入嗅觉减退受试者也取得了良好的结果(随机森林的F值为0.92)。总体而言,使用带有随机森林分类器的完整系统获得了最佳性能。因此,该系统适用于支持客观的帕金森病诊断。此外,将运动分析与经过验证的嗅觉筛查测试相结合,可以对帕金森病高危人群进行适当分析,并识别前驱期和帕金森病早期发作所特有的运动性能细微变化。

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