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Epileptic seizure detection and prediction using stacked bidirectional long short term memory

机译:使用堆叠式双向长期短期记忆的癫痫发作检测和预测

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Epilepsy is a not a disease but a neurological disorder. But people with epilepsy cannot lead a social life like others. Proper diagnosis and advance prediction of epileptic seizures definitely improves the life of epilepsy patients. In this paper an effort is made to develop a seizure detection and prediction method using stacked bidirectional long short term memory technique. This is the most suitable technique for the analysis of time series datasets as it overcomes the vanishing gradient problem identified in recurrent neural network. The dataset for detection and prediction experiments was taken from Bonn University. Our model could perform the seizure detection with the highest accuracy of 99.08% with 98% precision, 99.5% recall and ROC AUC: 0.984346. A binary classification method with AUC more than 0.9 is considered to be outstanding. Seizure prediction was conducted using the same dataset by classifying preictal states of EEG from interictal and ictal states. For the case of prediction our model could identify preictal states with the overall sensitivity: 89.21% and false prediction rate: 0.06. In future the model could be used to program the wearable devices like wrist watch which can be used by epileptic patients for seizure prediction. The device could be programmed to fire alarm during the detection of the preictal EEG signal before the onset of the seizure. (C) 2019 Elsevier B.V. All rights reserved.
机译:癫痫不是疾病而是神经系统疾病。但是患有癫痫病的人无法像其他人一样过着社交生活。正确诊断和预测癫痫发作肯定会改善癫痫患者的生活。在本文中,致力于开发使用堆叠双向长期短期记忆技术的癫痫发作检测和预测方法。这是最适合分析时间序列数据集的技术,因为它克服了递归神经网络中识别出的消失梯度问题。用于检测和预测实验的数据集来自波恩大学。我们的模型可以以99.08%的最高准确度执行癫痫发作检测,具有98%的精度,99.5%的召回率和ROC AUC:0.984346。 AUC大于0.9的二进制分类方法被认为是杰出的。通过从发作期和发作期状态对脑电图的发作前状态进行分类,使用相同的数据集进行癫痫发作预测。对于预测,我们的模型可以识别出总体状态敏感度为89.21%,错误预测率为0.06的发作期状态。将来,该模型可用于对可穿戴设备(如手表)进行编程,癫痫患者可将其用于癫痫发作预测。该设备可以被编程为在发作之前在检测到发作前脑电信号期间发出警报。 (C)2019 Elsevier B.V.保留所有权利。

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