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首页> 外文期刊>Medical engineering & physics. >Discrimination of cerebral ischemic states using bispectrum analysis of EEG and artificial neural network.
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Discrimination of cerebral ischemic states using bispectrum analysis of EEG and artificial neural network.

机译:使用脑电双谱分析和人工神经网络区分脑缺血状态。

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No doubt a noninvasive technique for detection of cerebral ischemic extent, before the formation of the focus, is extremely valuable. This paper presents a new approach to early evaluate the degree of ischemic injury by combining bispectrum estimation of electroencephalograms (EEGs) with artificial neural network (ANN). The graded ischemic injuries in 24 Sprague-Dawley (SD) rats were induced for different periods of 8, 18, 30 min by infusing physiological saline along the left blood stream, based on the model for rat ischemic cerebral injury described in this paper. Four channels of EEG were collected in each rat at scheduled time of ischemia. The maximum bicoherence index and the weighted center of bispectrum (WCOB) were extracted from the EEGs and were used as input feature vector of a four-layer (12-7-2-1) ANN for prediction. Training and testing the ANN used the 'leave one out' strategy. The levels of ischemic injury were verified and classified by observing the ischemic area by conventional hematoxylin and eosin (HE) staining and the heat shock protein (HSP70) test. The proposed method was able to correctly detect ischemic extent in average accuracy of 91.67% of the cases. The results show that this scheme can be expected to diagnose ischemic cerebral injury in its earlier phases.
机译:毫无疑问,在焦点形成之前,一种用于检测脑缺血程度的非侵入性技术非常有价值。本文提出了一种通过将双谱脑电图估计(EEG)与人工神经网络(ANN)相结合来早期评估缺血性损伤程度的新方法。根据本文所述的大鼠缺血性脑损伤模型,通过沿左侧血流注入生理盐水,分别在24、8、18、30分钟的不同时间段诱导24只Sprague-Dawley(SD)大鼠的分级缺血性损伤。在缺血的预定时间在每只大鼠中收集四个EEG通道。从脑电图中提取最大双相干指数和双谱加权中心(WCOB),并将其用作四层(12-7-2-1)ANN的输入特征向量以进行预测。训练和测试人工神经网络使用了“一劳永逸”的策略。通过常规苏木精和曙红(HE)染色以及热休克蛋白(HSP70)测试观察缺血区域,从而对缺血损伤水平进行验证和分类。所提出的方法能够正确地检测出缺血程度,平均准确率为91.67%。结果表明,该方案有望在早期诊断出缺血性脑损伤。

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