Recognition of Parkinson's disease and Parkinson's dementia based on gait analysis and machine learning

Shuai Tao, Yi Wang, Huaying Cai, Zeping Lv, Liwen Kong, W. Lv
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Abstract

Parkinson's disease (PD) is a common neurodegenerative disease, with a high probability of Parkinson's disease dementia (PDD) in patients with intermediate and advanced PD. Gait disorders and cognitive disorders are common symptoms of PD patients and PDD patients. It is of great clinical significance to identify healthy elderly (HC), PD patients and PDD patients with gait characteristics under cognitive tasks. This study found that stride length, toe-off angle and heel-strike angle are important gait markers for identifying HC and PD as well as HC and PDD. Gait characteristics of multiple 7 task gait consumption can preliminarily identify PD and PDD. The gait features under multiple 7 task were used as input variables of machine learning, and the classification model was modeled by training random forest (RF) and support vector machine (SVM), and the accuracy of machine learning classification was evaluated by using the five-fold cross-validation method. The results found that the classification accuracy of all machine learning can reach more than 80%, and RF has a better classification effect. To further improve the recognition accuracy, this paper introduces recursive feature elimination (RFE) for important feature selection. By screening important features, it is found that the accuracy and AUC value of machine learning are improved to a certain extent. The highest classification accuracy of HC and PD is 91.25%, and the AUC value is 0.9127. The classification accuracy of HC and PDD was up to 97.5%, and the AUC value was 0.95. These findings have important application value for clinical diagnosis of PD and PDD. It also paves the way for a better understanding of the utility of machine learning techniques to support clinical decision-making.
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基于步态分析和机器学习的帕金森病和帕金森痴呆的识别
帕金森病(PD)是一种常见的神经退行性疾病,中晚期PD患者发生帕金森病痴呆(PDD)的概率较高。步态障碍和认知障碍是PD患者和PDD患者的常见症状。识别健康老年人(HC)、PD患者和PDD患者认知任务下的步态特征具有重要的临床意义。本研究发现步幅、脱趾角度、足跟角度是鉴别HC与PD、HC与PDD的重要步态标志。多重任务步态消耗的步态特征可以初步识别PD和PDD。将多7任务下的步态特征作为机器学习的输入变量,采用训练随机森林(RF)和支持向量机(SVM)对分类模型进行建模,并采用五重交叉验证法对机器学习分类的准确性进行评估。结果发现,所有机器学习的分类准确率都可以达到80%以上,RF具有更好的分类效果。为了进一步提高识别精度,本文引入递归特征消去(RFE)进行重要特征的选择。通过筛选重要特征,发现机器学习的准确率和AUC值在一定程度上得到了提高。HC和PD的最高分类准确率为91.25%,AUC值为0.9127。HC和PDD的分类准确率高达97.5%,AUC值为0.95。这些发现对PD及PDD的临床诊断具有重要的应用价值。它也为更好地理解机器学习技术在支持临床决策方面的效用铺平了道路。
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