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Incorporating Hand-crafted Features to Deep Neural Networks for Seizure Prediction

机译:将手工制作的功能整合到深度神经网络中以预测癫痫发作

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Brain computer interface (BCI) provides effective communication between the brain and a machine. BCI-aided systems have been used for epilepsy control by performing seizure prediction and feedback treatment in a closed-loop approach, in which seizure prediction plays an important role. However, automatic seizure prediction still faces difficulties. Most existing seizure prediction approaches use empirical features which are effective and interpretable, however, they are hard to compose. Recent deep neural network-based methods can learn effective features in a data-driven way, but they are usually not sufficiently trained given limited training data. In this paper, we aim to construct effective seizure prediction methods by combining the strengths of both empirical features and deep models. We construct different deep architectures to incorporate empirical features to different layers in the deep neural networks. Experiments are carried out on nine patients of the Freiburg dataset and achieve a best average F1 score of 0.8622 which outperforms empirical features-based methods and deep neural networks. The results also indicate that incorporating the empirical features in the front layers of the networks can obtain better seizure prediction performance.
机译:大脑计算机接口(BCI)提供了大脑与机器之间的有效通信。 BCI辅助系统已通过以闭环方式执行癫痫​​发作预测和反馈治疗而用于癫痫控制,其中癫痫发作预测起着重要作用。但是,自动癫痫发作预测仍然面临困难。大多数现有的癫痫发作预测方法都使用有效且可解释的经验特征,但是很难组合。最近的基于深度神经网络的方法可以以数据驱动的方式学习有效的功能,但是在有限的训练数据的情况下,通常无法对其进行充分的训练。在本文中,我们旨在通过结合经验特征和深度模型的优势来构建有效的癫痫发作预测方法。我们构建了不同的深度架构,以将经验特征整合到深度神经网络的不同层中。对弗莱堡数据集的9位患者进行了实验,其最佳平均F1得分为0.8622,优于基于经验特征的方法和深度神经网络。结果还表明,将经验特征纳入网络的前层可以获得更好的癫痫发作预测性能。

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