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首页> 外文期刊>Clinical neurophysiology >Detection of subclinical brain electrical activity changes in Huntington's disease using artificial neural networks.
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Detection of subclinical brain electrical activity changes in Huntington's disease using artificial neural networks.

机译:使用人工神经网络检测亨廷顿氏病中亚临床脑电活动的变化。

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OBJECTIVE: The aim of this study was to analyze EEG background activity in Huntington's disease (HD) patients and relatives at risk, in relation to CAG repeat size and clinical state, in order to detect an electrophysiological marker of early disease.METHODS: We selected 13 patients and 7 subjects at risk. Thirteen normal subjects, sex- and age-matched, were also evaluated. Artifact-free epochs were selected and analyzed through Fast-Fourier Transform. EEG background activity was tested using both linear analysis and artificial neural network (ANN) classifier in order to evaluate whether EEG abnormalities were linked to functional changes preceding the onset of the disease.RESULTS: The most important EEG classification pattern was the absolute alpha power not correlated with cognitive decline. The ANN correctly classified 11/13 patients and 12/13 normals. Moreover, the neural scores for subjects at risk seemed to be correlated to the expected time before the onset of the disease.CONCLUSIONS: ANN is a very powerful method to discriminate between normals and patients. It could be used as an automatic diagnostic tool. EEG changes in positive gene-carriers for HD confirm an early functional impairment which should be taken into account in the genetic counseling and in the management of the early stages of the disease.
机译:目的:本研究旨在分析亨廷顿舞蹈病(HD)患者和处于危险之中的亲戚的脑电图本底活动,与CAG重复大小和临床状态相关,以检测早期疾病的电生理指标。 13名患者和7名受试者处于危险之中。还对13名性别和年龄相匹配的正常受试者进行了评估。选择了无伪像的时代,并通过快速傅立叶变换进行了分析。使用线性分析和人工神经网络(ANN)分类器对脑电图本底活动进行了测试,以评估脑电图异常是否与疾病发作前的功能变化有关。结果:最重要的脑电图分类模式是绝对α功率与认知能力下降相关。人工神经网络正确分类了11/13患者和12/13正常人。此外,对处于危险中的受试者的神经评分似乎与疾病发作之前的预期时间相关。结论:人工神经网络是区分正常人和患者的一种非常有效的方法。它可以用作自动诊断工具。 HD阳性基因携带者的脑电图改变证实了早期功能障碍,应在遗传咨询和疾病早期管理中予以考虑。

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