首页> 外文期刊>IEE Proceedings. Part A >Artificial neural network and spectrum analysis methods for detecting brain diseases from the CNV response in the electroencephalogram
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Artificial neural network and spectrum analysis methods for detecting brain diseases from the CNV response in the electroencephalogram

机译:人工神经网络和频谱分析方法可从脑电图中的CNV反应中检测出脑部疾病

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摘要

Two methods of identifying schizophrenia, Parkinson's disease (PD), and Huntington's disease (HD) are described. The methods are based on the analysis of the contingent negative variation (CNV), an event related potential (ERP) in the electroencephalogram. The first method involves spectrum analysis of the CNV and discriminant analysis of the Fourier harmonic frequency components. The other method involves the application of supervised learning artificial neural networks to the CNV features obtained in the time domain. Additionally, unsupervised artificial neural networks were used to presymptomatically assess the risk of HD. Sensitivities and specificities lie between 0.81 and 1.0 with low false positive rates (0 to 0.13) for differentiating between disease and normal data, and between disease data, dependent on disease and method. The preferred method for disease differentiation for accuracy and ease of application is the multilayer perceptron. Using Kohonen and ART networks for detecting abnormal CNVs in subjects at risk of HD (ARs) eight abnormals are identified in agreement with the prediction of risk derived from a published risk table. In addition, one of the abnormals has since developed symptomatic Huntington's disease. The recommended method is to combine the results of the Kohonen method with an ART2 and a modified ART1 network.
机译:描述了两种识别精神分裂症的方法,帕金森氏病(PD)和亨廷顿氏病(HD)。这些方法基于对脑电图中的事件性负电位(CNV)的分析,即事件相关电位(ERP)。第一种方法涉及CNV的频谱分析和傅立叶谐波频率分量的判别分析。另一种方法涉及将监督学习人工神经网络应用于在时域中获得的CNV特征。此外,无监督的人工神经网络被用于症状前评估HD的风险。敏感性和特异性介于0.81至1.0之间,假阳性率低(0至0.13),可根据疾病和方法区分疾病和正常数据,以及疾病数据。为了准确和易于应用,疾病区分的首选方法是多层感知器。使用Kohonen和ART网络来检测处于HD(AR)风险的受试者中的CNV异常,根据从已发布的风险表得出的风险预测,确定了八个异常。另外,此后异常之一发展为症状性亨廷顿舞蹈病。推荐的方法是将Kohonen方法的结果与ART2和经过修改的ART1网络相结合。

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