亨廷顿氏病脑电图模式的地形分类。

R Bellotti, F De Carlo, R Massafra, M de Tommaso, V Sciruicchio
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引用次数: 0

摘要

本研究的目的是执行地形分类脑电图(EEG)模式的受试者亨廷顿氏病(HD)的影响。α活动是HD的鉴别特征,因为其振幅降低是该疾病的明显标志。将其作为监督神经网络的输入变量,可以很好地实现病理模式和控制模式的分类,并具有很高的灵敏度和特异性。通过实现神经网络方法对从头皮特定区域对应的通道组中提取的脑电图模式进行分类,应该有助于更深入地了解α节律的局部判别能力。受试者工作特征(ROC)曲线分析可以用曲线下面积的值标记每个区域,从而为HD分类提供局部意义。当处理头皮区域时,相对于整个区域的面积减少,表明所有通道对HD模式识别都有重要贡献。这些结果可以解释为由于丘脑对皮层活动的功能失调,导致α节律的皮质下异常调节的影响。在进一步的研究中,通过MRI评估丘脑和基底神经节的形态特征,将与电生理结果相匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topographic classification of EEG patterns in Huntington's disease.

The aim of this study is to perform a topographic classification of electroencephalographic (EEG) patterns in subjects affected by the Huntington's disease (HD). The alpha activity is a discriminating feature for HD, as its amplitude reduction turns out to be a clear mark of the illness. When used as input variable to a supervised neural network, a good classification of pathological patterns and control ones is achieved with high values of sensitivity and specificity. It should be useful to get more insight into the local discriminating capabilities of the alpha rhythm by implementing a neural network approach to classify EEG patterns extracted from groups of channels corresponding to specific regions of the scalp. Receiver operating characteristic (ROC) curve analysis enables one to label each region with the value of the area under the curve, thus providing a local significance for HD classification. A reduction of the area when processing regions of the scalp, with respect to the whole, suggests that all channels provide significant contribution to HD pattern discrimination. These results can be interpreted as an effect of an abnormal subcortical modulation of the alpha rhythm, due to the dysfunctional action of the thalamus on the cortical activities. In a further study, morphometric features of thalamus and basal ganglia, evaluated by MRI, will be matched with the electrophysiological findings.

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