A CACDSS for automatic detection of Parkinson's disease using EEG signals

S. K. Khare, V. Bajaj
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引用次数: 4

Abstract

The advancement from new-born to old-age results in physical and psychological growth of human-being. The number of neurons also begins to die or become impaired with advancing age. These dying or impaired neurons result in declination for the generation of dopamine which is the prime reason for Parkinson's disease (PD). Though PD is incurable, early detection, proper diagnosis, and timely medication may help PD patients to perform their routine tasks. Electroencephalogram (EEG) signals are one such medium for automatic detection of PD. But the nature of EEG signals is complex, non-linear, and non-stationary making its analysis difficult. Therefore, this paper presents a computer-aided clinical decision support system (CACDSS). The CACDSS consists of automatic signal analysis and classification techniques combining automated variational mode decomposition (AOVMD) and automated extreme learning machine (AOELM) classifier. AOVMD selects the decomposition parameters adaptively using the arithmetic optimization algorithm by extracting representative modes and minimizing reconstruction error. The modes are further used to compute features which are fed to AOELM classifier to classify normal controls (NC) versus off medication PD EEG records (SFPD) and NC versus on medication PD EEG records (SOPD). The highest accuracy of 98.91% and 98.55% is obtained in classifying NC versus SOPD and NC versus SFPD, respectively.
利用脑电图信号自动检测帕金森病的CACDSS
从新生儿到老年的发展,导致了人的生理和心理的成长。随着年龄的增长,神经元的数量也开始死亡或受损。这些死亡或受损的神经元导致多巴胺的产生减少,这是帕金森病(PD)的主要原因。虽然PD是无法治愈的,但早期发现、正确诊断和及时用药可能有助于PD患者完成日常工作。脑电图(EEG)信号是一种自动检测PD的介质。但是脑电图信号的复杂性、非线性和非平稳性给其分析带来了困难。为此,本文提出了一种计算机辅助临床决策支持系统(CACDSS)。CACDSS由自动变分模态分解(automated variational mode decomposition, AOVMD)和自动极限学习机(automated extreme learning machine, AOELM)分类器相结合的自动信号分析和分类技术组成。AOVMD采用算法优化算法自适应选择分解参数,提取有代表性的模式,使重构误差最小化。这些模式被进一步用于计算特征,这些特征被馈送到AOELM分类器中,用于对正常对照(NC)与停药PD脑电图记录(SFPD)以及NC与服药PD脑电图记录(SOPD)进行分类。NC与SOPD和NC与SFPD的分类准确率分别为98.91%和98.55%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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