基于递归神经网络分类器的PSD自动检测PD静息性震颤

R. Arvind, B. Karthik, N. Sriraam, J. Kannan
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引用次数: 13

摘要

帕金森病(PD)的诊断一直是医学界的难题。帕金森氏症的典型特征是震颤,帕金森氏症的发生是由于大脑丘脑区域多巴胺的丧失,导致身体不自主或振荡运动。PD的早期阶段被称为静息性震颤,出现在肌肉放松的时候。众所周知,表面肌电记录提供了震颤的神经生理特征的临床信息。本文讨论了从肌电信号中提取功率谱密度(PSD)特征的静息地震检测方法。两种方法,即Welch和Burgs的PSD,通过配置预测器的顺序来应用,然后使用递归神经网络模型Elman神经网络(REN)进行分类。实验使用肌电图进行,并使用PSD的平均值和最大值等统计方法对正常和异常PD受试者进行分类。实验结果表明,Burg与递归神经网络分类器的功率谱密度均值的分类准确率达到95.6%。建议的工作需要用更大的数据集进行实时临床应用验证。
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Automated Detection of PD Resting Tremor Using PSD with Recurrent Neural Network Classifier
Diagnosis of Parkinson’s disease (PD) is a challenging problem for medical community. Typically characterized by tremor, PD occurs due to the loss of dopamine in the brain’s thalamic region that results in involuntary or oscillatory movement in the body. The early stage of the PD is referred as resting tremors, which appears when the muscles are relaxed. It is well known that surface EMG recording provides clinical information on the neuro-physiological characteristics of the tremors. This paper discusses the detection of resting tremors by extracting power spectral density (PSD) features from EMGs. Two methods namely, PSD by Welch and Burgs are applied by configuring the order of the predictors and are then classified using a recurrent neural network model, Elman Neural Network (REN). Experiments are performed using EMG patterns and statistical measures such as mean and maximum of PSD are used to classify the normal and abnormal PD subjects. It is found from the experimental results that the mean value of power spectral density by Burg with recurrent neural network classifier yields a classification accuracy of 95.6%. The proposed work need to be validated with larger datasets for real -time clinical application.
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