神经网络在癫痫检测中的不平衡学习

J. Birjandtalab, V. Jarmale, M. Nourani, J. Harvey
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引用次数: 7

摘要

世界上大约1%的人口患有癫痫发作,这可能导致受伤甚至意外死亡。利用脑电图信号作为癫痫发作的最佳指标,我们的目标是建立一个人工神经网络来分类癫痫发作和非癫痫发作事件。然而,由于脑电图数据中发作事件的可用性有限,使得自动分类器难以准确地对发作事件进行分类。为了改善这一点,我们提出了一种不平衡学习方法来提高高度不平衡癫痫发作数据集的准确性。由于每个患者对癫痫发作的反应不同,我们根据训练数据和模型参数对分类模型进行个性化。所提出的不平衡学习方法为Physionet MIT数据集提供了86%以上的平均F-measure精度。
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Imbalance Learning Using Neural Networks for Seizure Detection
Around 1% of world's population suffer from epileptic seizures which can lead to injuries and even unexpected death. Making use of EEG signals, which are proven to be the best indicators of seizures, we aim to build an Artificial Neural Networks to classify seizure and non-seizure events. However, the limited availability of seizure events in the EEG data makes it difficult for the automatic classifiers in general to accurately classify seizure events. To improve this, we propose an imbalance learning approach to improve accuracy of highly imbalanced seizure dataset. Since each patient provides a different response to the seizure, we personalize the classification models in terms of training data and model parameters. The proposed imbalance learning method provides an average F-measure accuracy above 86% for Physionet MIT dataset.
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