利用机器学习对帕金森病进行步态数据驱动分析

Q2 Computer Science
Archana Panda, Prachet Bhuyan
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引用次数: 0

摘要

简介:帕金森病是一种进行性的复杂神经系统疾病,主要影响协调和运动控制。帕金森病最常见的运动症状包括震颤、运动迟缓、僵直和姿势不稳。目标: 确定帕金森病患者的运动模式是否有任何细微变化:确定行走模式的任何细微变化,这些变化可能是帕金森病的早期征兆。通过步态数据追踪帕金森病的长期病程。方法:在本研究中,我们应用了三种类型的 VGRF 数据集("双重任务、RAS 和跑步机行走"),并使用六种不同的分类器方法开发了基于 ML 的模型。数据集使用 16 个传感器进行分析,其中 8 个传感器分别用于每只脚以及左右脚的总压力。上述三种不同的步态模式运动障碍是数据集的来源。步态信号数据集得益于参与者的人口统计学数据。 结果:然后,我们通过交叉验证运算符来检验五种算法 i) 深度学习、ii) 神经网络、iii) 支持向量机(SVM)、iv) 梯度提升树(GBT)、v) 随机森林 "的准确性和决策性。以下研究结果比较了所使用的各种算法的有效性和观察到的 PD。结论:不同的 ML 分类器算法表现出良好的检测能力和不同的准确率。与现有模型相比,我们提出的集合模型更胜一筹。因为我们可以观察到提议的集合模型的结果和准确率都优于其他分类器模型。其他分类器模型的最高准确率为 92.08%,而我们的集合模型的准确率为 92.31%。因此,这证明了我们提出的集合模型是优秀且稳健的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gait Data-Driven Analysis of Parkinson’s Disease Using Machine Learning
INTRODUCTION: Parkinson's disease is a progressive and complex neurological condition that mostly affects coordination and motor control. Parkinson's disease is most commonly associated with its motor symptoms, which include tremors, bradykinesia (slowness of movement), rigidity, and postural instability. OBJECTIVES: Determine any minor alterations in walking patterns that could be early signs of Parkinson's disease. Track the course of Parkinson's disease over time by using gait data. METHODS: In this study, we applied three types of VGRF datasets ("Dual Tasking, RAS, and Treadmill Walking") and    developed an ML-based model using six different classifier methods. The datasets were analysed using 16 sensors, of which 8 were applied to each foot and the total pressure of the left and right foot. The aforementioned three distinct gait patterns movement disorders were the sources of the dataset. The gait signals dataset benefited by the participant demographic data.  RESULTS: Then, we passed the outcome of applying the model and measuring performance through a cross-validation operator to check the accuracy and decision-making of the five algorithms i) Deep Learning, ii) Neural Networks, iii) Support Vector Machine (SVM), iv) Gradient Boost Tree (GBT), v) Random Forest”. The following findings compare the effectiveness of the various algorithms utilized and the observed PD very well. CONCLUSION: The different ML classifier algorithms demonstrated good detection capability with different accuracy. Our proposed ensemble model is superior to compare with the existing models. Because we can observe the proposed ensemble model result and accuracy better than the other classifier model. The other classifier model’s highest accuracy is 92.08% whereas our ensemble model got 92.31%. So, it has proved that our proposed ensemble model is excellent and robust.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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