The BioRobotics Institute, Scuola Superiore Sant'Anna, Viale Rinaldo Piaggio, 34, 56025, Pontedera, Italy.
Co-Robotics srl, Via Franchi, 39, 56033, Capannoli (PI), Italy.
Parkinsonism Relat Disord. 2019 Jun;63:111-116. doi: 10.1016/j.parkreldis.2019.02.028. Epub 2019 Feb 22.
Parkinson's disease (PD) is a common neurodegenerative disorder characterized by disabling motor and non-motor symptoms. For example, idiopathic hyposmia (IH), which is a reduced olfactory sensitivity, is typical in >95% of PD patients and is a preclinical marker for the pathology.
In this work, a wearable inertial device, named SensHand V1, was used to acquire motion data from the upper limbs during the performance of six tasks selected by MDS-UPDRS III. Three groups of people were enrolled, including 30 healthy subjects, 30 IH people, and 30 PD patients. Forty-eight parameters per side were computed by spatiotemporal and frequency data analysis. A feature array was selected as the most significant to discriminate among the different classes both in two-group and three-group classification. Multiple analyses were performed comparing three supervised learning algorithms, Support Vector Machine (SVM), Random Forest (RF), and Naïve Bayes, on three different datasets.
Excellent results were obtained for healthy vs. patients classification (F-Measure 0.95 for RF and 0.97 for SVM), and good results were achieved by including subjects with hyposmia as a separate group (0.79 accuracy, 0.80 precision with RF) within a three-group classification. Overall, RF classifiers were the best approach for this application.
The system is suitable to support an objective PD diagnosis. Further, combining motion analysis with a validated olfactory screening test, a two-step non-invasive, low-cost procedure can be defined to appropriately analyze people at risk for PD development, helping clinicians to identify also subtle changes in motor performance that characterize PD onset.
帕金森病(PD)是一种常见的神经退行性疾病,其特征为运动和非运动症状。例如,特发性嗅觉减退(IH),即嗅觉敏感性降低,在>95%的 PD 患者中较为典型,是病理学的临床前标志物。
在这项工作中,使用了一种名为 SensHand V1 的可穿戴惯性设备,在执行 MDS-UPDRS III 选择的六项任务期间,从上肢采集运动数据。招募了三组人群,包括 30 名健康受试者、30 名 IH 患者和 30 名 PD 患者。通过时空和频率数据分析计算了每侧 48 个参数。选择特征数组作为最显著的特征,用于区分不同类别的人群,包括二分类和三分类。在三个不同的数据集上,对三种监督学习算法(支持向量机(SVM)、随机森林(RF)和朴素贝叶斯)进行了多次分析。
健康与患者分类的结果非常出色(RF 的 F-Measure 为 0.95,SVM 的 F-Measure 为 0.97),将嗅觉减退的受试者作为单独一组包括在内的三分类中,也获得了良好的结果(RF 的准确率为 0.79,精度为 0.80)。总体而言,RF 分类器是该应用的最佳方法。
该系统适合支持 PD 的客观诊断。此外,将运动分析与经过验证的嗅觉筛选测试相结合,可以定义一个两步非侵入性、低成本的程序,适当地分析有 PD 发展风险的人群,帮助临床医生识别出也可表征 PD 发作的运动表现的细微变化。