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Seizure Prediction: A Visual Approach

机译:癫痫发作预测:一种视觉方法

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摘要

Activity preceding the onset of epileptic seizures has been an elusive subject for neuroscience research, without a clear grasp of what patterns might be responsible. In this work, we present an out of the box approach to this problem, trying to mimic the visual inspection process that a trained physician might do to locate the beginning of a pre-ictal state in an EEG plot. We explore different data labeling methods for the posterior training of a Convolutional Neural Network, taking into account only visual characteristics for classification. Ten second images (300x400 px) were synthesized from scalp EEG recordings belonging to 10 epileptic patients from the public Physionet CHB-MIT database. A tortuosity measure was taken for each one-second window, for each channel (23 channels in 10–20 bipolar configuration). Unsupervised clustering methods in conjunction with the mean and the standard deviation of the tortuosity sets were used to identify pre-ictal states; interictal states were selected according to the same proximity criteria used for the Kaggles Melbourne University AES/MathWorks/NIH Seizure Prediction Challenge. The proposed labelling method indentified 28 posible pre-ictal states across 10 patients. Data from pre-ictal states and interictal states was used to train, and test, a Convolutional Neural Network classifier for each of the 8 patients selected. A classification accuracy of 99.29% was achieved for the best patient; however, an accuracy of 46.93% was also obtained for the worst patient. Mean performance across patients was 76.03%, a 52.07% improvement over chance.
机译:癫痫发作发作之前的活动一直是神经科学研究的一个难以捉摸的话题,但不清楚其可能是什么模式引起的。在这项工作中,我们提出了一种开箱即用的方法来解决这个问题,试图模仿经过视觉检查的过程,即受过训练的医师可能会在EEG图中定位发作前状态的开始。我们探索卷积神经网络的后验训练的不同数据标记方法,只考虑分类的视觉特征。从属于Physionet CHB-MIT公共数据库的10名癫痫患者的头皮脑电图记录合成了十秒钟的图像(300x400 px)。对于每个通道(每个通道在10–20双极配置中有23个通道),每秒钟窗口都采用了曲折度测量。结合曲折度集合的均值和标准差的无监督聚类方法来识别发作前状态。根据用于Kaggles墨尔本大学AES / MathWorks / NIH癫痫发作预测挑战的相同接近度标准选择发作间状态。提议的标记方法可识别10位患者的28种可能的发作前状态。发作前状态和发作间状态的数据用于训练和测试卷积神经网络分类器,用于选择的8位患者中的每位患者。最佳患者的分类准确度达到99.29%;但是,最严重的患者的准确率也达到46.93%。患者平均表现为76.03%,比机会改善52.07%。

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