Laboratory of Images, Signals and Intelligent Systems (LISSI), University of Paris-Est Créteil (UPEC), 122 rue Paul Armangot, 94400 Vitry-Sur-Seine, France.
French Institute of Science and Technology for Transport, Development and Networks (IFSTTAR), University of Paris-Est, COSYS, GRETTIA, F-77447 Marne la Vallée, France.
Sensors (Basel). 2019 Jan 10;19(2):242. doi: 10.3390/s19020242.
This article presents a machine learning methodology for diagnosing Parkinson's disease (PD) based on the use of vertical Ground Reaction Forces (vGRFs) data collected from the gait cycle. A classification engine assigns subjects to healthy or Parkinsonian classes. The diagnosis process involves four steps: data pre-processing, feature extraction and selection, data classification and performance evaluation. The selected features are used as inputs of each classifier. Feature selection is achieved through a wrapper approach established using the random forest algorithm. The proposed methodology uses both supervised classification methods including K-nearest neighbour (K-NN), decision tree (DT), random forest (RF), Naïve Bayes (NB), support vector machine (SVM) and unsupervised classification methods such as K-means and the Gaussian mixture model (GMM). To evaluate the effectiveness of the proposed methodology, an online dataset collected within three different studies is used. This data set includes vGRF measurements collected from eight force sensors placed under each foot of the subjects. Ninety-three patients suffering from Parkinson's disease and 72 healthy subjects participated in the experiments. The obtained performances are compared with respect to various metrics including accuracy, precision, recall and F-measure. The classification performance evaluation is performed using the leave-one-out cross validation. The results demonstrate the ability of the proposed methodology to accurately differentiate between PD subjects and healthy subjects. For the purpose of validation, the proposed methodology is also evaluated with an additional dataset including subjects with neurodegenerative diseases (Amyotrophic Lateral Sclerosis (ALS) and Huntington's disease (HD)). The obtained results show the effectiveness of the proposed methodology to discriminate PD subjects from subjects with other neurodegenerative diseases with a relatively high accuracy.
本文提出了一种基于垂直地面反力(vGRF)数据的机器学习方法,用于诊断帕金森病(PD)。分类引擎将受试者分配到健康或帕金森病类别。诊断过程包括四个步骤:数据预处理、特征提取和选择、数据分类和性能评估。选择的特征作为每个分类器的输入。特征选择是通过使用随机森林算法建立的包装器方法实现的。所提出的方法既使用了监督分类方法,包括 K-最近邻(K-NN)、决策树(DT)、随机森林(RF)、朴素贝叶斯(NB)、支持向量机(SVM),也使用了无监督分类方法,如 K-均值和高斯混合模型(GMM)。为了评估所提出方法的有效性,使用了三个不同研究中收集的在线数据集。该数据集包括从受试者每只脚下面的八个力传感器收集的 vGRF 测量值。九十三名帕金森病患者和七十二名健康受试者参与了实验。获得的性能与包括准确率、精度、召回率和 F 度量在内的各种指标进行了比较。使用留一交叉验证进行分类性能评估。结果表明,该方法能够准确地区分帕金森病患者和健康受试者。为了验证目的,还使用包括神经退行性疾病(肌萎缩侧索硬化症(ALS)和亨廷顿病(HD))患者的附加数据集评估了所提出的方法。结果表明,该方法能够有效地将帕金森病患者与其他神经退行性疾病患者区分开来,具有相对较高的准确率。