Ischemic stroke identification based on EEG and EOG using ID convolutional neural network and batch normalization

Endang Purnama Giri, M. I. Fanany, A. M. Arymurthy
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引用次数: 51

Abstract

In 2015, stroke was the number one cause of death in Indonesia. The majority type of stroke is ischemic. The standard tool for diagnosing stroke is CT-Scan. For developing countries like Indonesia, the availability of CT-Scan is very limited and still relatively expensive. Because of the availability, another device that potential to diagnose stroke in Indonesia is EEG. Ischemic stroke occurs because of obstruction that can make the cerebral blood flow (CBF) on a person with stroke has become lower than CBF on a normal person (control) so that the EEG signal have a deceleration. On this study, we perform the ability of ID Convolutional Neural Network (1DCNN) to construct classification model that can distinguish the EEG and EOG stroke data from EEG and EOG control data. To accelerate training process our model we use Batch Normalization. Involving 62 person data object and from leave one out the scenario with five times repetition of measurement we obtain the average of accuracy 0.86 (F-Score 0.861) only at 200 epoch. This result is better than all over shallow and popular classifiers as the comparator (the best result of accuracy 0.69 and F-Score 0.72). The feature used in our study were only 24 handcrafted feature with simple feature extraction process.
基于ID卷积神经网络和批归一化的脑电和眼电脑卒中识别
2015年,中风是印尼的头号死因。大多数类型的中风是缺血性的。诊断中风的标准工具是ct扫描。对于像印度尼西亚这样的发展中国家来说,ct扫描的可用性非常有限,而且仍然相对昂贵。由于可用性,另一种在印度尼西亚有可能诊断中风的设备是脑电图。缺血性脑卒中的发生是由于脑梗塞使脑血流(CBF)低于正常人(对照组),从而使脑电图信号出现减速。在本研究中,我们运用ID卷积神经网络(1DCNN)的能力来构建能够区分脑电和眼电脑卒中数据与脑电和眼电控制数据的分类模型。为了加速模型的训练过程,我们使用了批归一化。涉及62人数据对象,并从五次重复测量的场景中留下一个,我们仅在200 epoch获得平均精度0.86 (F-Score 0.861)。这个结果优于所有的浅分类器和流行分类器作为比较器(精度0.69和F-Score 0.72的最佳结果)。我们研究中使用的特征只有24个手工制作的特征,特征提取过程简单。
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