Automatic Classification of Parkinson's Disease Using Best Parameters of Forward and Backward Walking

Atiye Riasi, Mehdi Delrobaei
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Abstract

This study aims to investigate the discriminative gait features of forward and backward walking to provide a combination of the most relevant parameters. These parameters would potentially help the clinicians to follow quantitative methods in diagnosing Parkinson's disease. In this paper, the statistically significant gait features were narrowed down from 46 to 30, 20, 10, and 5, using the minimal-redundancy-maximal-relevance feature selection method. The selected features were then fed to Random Forest and Support Vector Machine classifiers to evaluate the ability of features in discriminating Parkinson's disease and control groups. According to the results, we selected to use Random Forest classifier in our algorithm. Applying our algorithm on a database comprising 62 Parkinson's disease patients and 11 control participants, we achieved the average accuracy of 93.9 and 88 in 10 iterations of Random Forest and Support Vector Machine, respectively. Using the minimal-redundancy-maximal-relevance feature selection and mean decrease in accuracy and Gini index of the Random Forest classifier, we found the critical role of backward walking parameters such as the average of stance time, step length, and swing time in classification results.
基于最佳行走参数的帕金森病自动分类
本研究旨在研究向前和向后行走的判别步态特征,以提供最相关参数的组合。这些参数可能有助于临床医生采用定量方法诊断帕金森病。本文采用最小冗余-最大相关特征选择方法,将统计上显著的步态特征从46个缩小到30个、20个、10个和5个。然后将选择的特征输入随机森林和支持向量机分类器,以评估特征区分帕金森病和对照组的能力。根据结果,我们选择在算法中使用随机森林分类器。将我们的算法应用于包含62名帕金森病患者和11名对照参与者的数据库,我们在随机森林和支持向量机的10次迭代中分别获得了93.9和88的平均准确率。利用最小冗余最大相关特征选择和随机森林分类器的准确率和基尼指数的平均下降,我们发现了后退行走参数(如站立时间、步长和摆动时间的平均值)在分类结果中的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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