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High Accuracy Discrimination of Parkinson’s Disease from Healthy Controls by Hand Movements Analysis Using LeapMotion Sensor and 1D Convolutional Neural Network

机译:使用LeapMotion传感器和1D卷积神经网络进行手部运动分析,可从健康对照中高精度地区分帕金森氏病

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This study is devoted to the detection of hand motor impairment in Parkinson’s disease (PD) using ID convolutional neural network (CNN). The data were obtained from the LeapMotion sensor when performing hand motor tasks in the group of patients with PD and the control group. CNN consists of2 blocks: three parallel ID convolution blocks and a common fully connected block. CNN was trained on a data set of each hand fo r three motor tasks: finger tapping, finger opening-closing, pronation-supination of the hands. Binary classification (PD veisus non-PD) was performed be the CNN itself, as well as by several conventional classifieis (knearest neighbors, SVM, Decision Tree, and Random Forest) that were used instead of the output neuron of fully connected block of the CNN. Additionally, the best feature set was selected using logistic regression. The testing was conducted in the 8-fold cross-validation mode; the best obtained accuracy of the correct classification was S5.1 % using CNN with the SVM classifier.
机译:这项研究致力于使用ID卷积神经网络(CNN)检测帕金森氏病(PD)中的手部运动障碍。这些数据是从PD患者组和对照组中执行手部运动任务时从LeapMotion传感器获得的。 CNN由2个块组成:三个并行的ID卷积块和一个公共的完全连接的块。 CNN在每只手的数据集上接受了三个运动任务的训练:手指轻敲,手指张开-闭合,手的旋前旋。二进制分类(PD veisus non-PD)是由CNN本身进行的,以及通过几种常规分类(近邻,SVM,决策树和随机森林)进行的,这些分类代替了CNN完全连接模块的输出神经元CNN。此外,使用逻辑回归选择最佳功能集。测试是在8倍交叉验证模式下进行的;使用带有SVM分类器的CNN,获得正确分类的最佳准确性为S5.1%。

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