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Distinguishing between Parkinson's disease patients and healthy individuals using a comprehensive set of time, frequency and time-frequency features extracted from vertical ground reaction force data

机译:在垂直地面反作用力数据中提取的综合时间,频率和时频特征,区分帕金森病患者和健康个体

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摘要

Parkinson's disease (PD) is a progressive neurodegenerative disease manifests by motor and non-motor symptoms. During disease progression, several movement disorders appear that influence subject's natural life. Diagnosis of PD, especially at early-stages is important for early medication and other related interventions. In this regard, intelligent systems are interesting opportunities for PD diagnosis. In this study, a classification method for discriminating PD patients from healthy individuals was proposed in which using several feature sets extracted from vertical ground reaction force (VGRF) data and incorporating a decision tree classifier, higher classification performance was obtained compared with other existing methods. The feature sets were extracted for time, frequency and time-frequency domains by considering both local and global attributes of dynamic characteristics of human walking. The obtained results showed that considering features from different domains (time, frequency and time-frequency) enhanced classification performance in a large extent. Also, the statistical analysis of extracted features showed that PD patients performed the stance phase of the gait cycle at a delayed and prolonged duration, with an increased total applied force compared with the healthy group. Furthermore, the VGRF frequency content showed skewness toward the lower frequency range. In addition, most of the features exhibited the higher level of variability in PD patients compared with the healthy group.
机译:帕金森病(PD)是一种通过电动机和非运动症状表现出渐进神经退行性疾病。在疾病进展期间,几种运动障碍似乎影响受试者的自然生活。 Pd的诊断,特别是早期阶段对早期药物和其他相关干预措施是重要的。在这方面,智能系统是PD诊断的有趣机会。在本研究中,提出了一种用于区分来自健康个体的PD患者的分类方法,其中使用从垂直地反作用力(VGRF)数据中提取的几个特征组并包含决策树分类器,与其他现有方法相比获得了更高的分类性能。通过考虑人行走的动态特征的本地和全局属性,提取特征集,频率和时频域。所得结果表明,考虑来自不同域(时间,频率和时频)的特征在很大程度上提高了分类性能。此外,提取特征的统计分析表明,PD患者在延迟和长期持续时间内进行步态循环的姿势阶段,与健康组相比,总施加的力量增加。此外,VGRF频率内容向下频率范围显示出偏斜。此外,与健康组相比,大多数特征在PD患者中表现出更高的可变性。

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