Augmenting DL with Adversarial Training for Robust Prediction of Epilepsy Seizures

A. Hussein, Marc Djandji, Reem A. Mahmoud, Mohamad Dhaybi, Hazem M. Hajj
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引用次数: 14

Abstract

Epilepsy is a chronic medical condition that involves abnormal brain activity causing patients to lose control of awareness or motor activity. As a result, detection of pre-ictal states, before the onset of a seizure, can be lifesaving. The problem is challenging because it is difficult to discern between electroencephalogram signals in pre-ictal states versus signals in normal inter-ictal states. There are three key challenges that have not been addressed previously: (1) the inconsistent performance of prediction models across patients, (2) the lack of perfect prediction to protect patients from any episode, and (3) the limited amount of pre-ictal labeled data for advancing machine learning methods. This article addresses these limitations through a novel approach that uses adversarial examples with optimized tuning of a combined convolutional neural network and gated recurrent unit. Compared to the state of the art, the results showed an improvement of 3x in model robustness as measured in reduced variations and superior accuracy of the area under the curve, with an average increase of 6.7%. The proposed method also exhibited superior performance with other advances in the field of machine learning and customized for epilepsy prediction including data augmentation with Gaussian noise and multitask learning.
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对抗性训练增强DL对癫痫发作的稳健预测
癫痫是一种慢性疾病,涉及异常的大脑活动,导致患者失去意识或运动活动的控制。因此,在癫痫发作之前检测到发作前的状态可以挽救生命。这个问题具有挑战性,因为很难区分发作前状态下的脑电图信号与正常发作间状态下的信号。有三个关键挑战以前没有解决:(1)预测模型在患者中的表现不一致,(2)缺乏完美的预测来保护患者免受任何发作的影响,以及(3)用于推进机器学习方法的发作前标记数据数量有限。本文通过一种新的方法来解决这些局限性,该方法使用对抗性示例,对组合卷积神经网络和门控递归单元进行优化调整。结果表明,与现有技术相比,模型鲁棒性提高了3倍,曲线下面积的变化减少,精度更高,平均增长6.7%。该方法在机器学习领域的其他进步中也表现出了优异的性能,并为癫痫预测定制,包括高斯噪声的数据增强和多任务学习。
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