A framework for seizure detection using effective connectivity, graph theory and deep modular neural networks

09/06/2019
by   Behnaz Akbarian, et al.
56

Objective The electrical characteristics of the EEG signals can be used for seizure detection. Statistical independence between different brain regions is measured by functional brain connectivity (FBC). Specific directional effects can't consider by FBC and thus effective brain connectivity (EBC) is used to measure causal intervention between one neuronal region and the rest of the neuronal regions. Our main purpose is to provide a reliable automatic seizure detection approach. Methods In this study, three new methods are provided. Deep modular neural network (DMNN) is developed based on a combination of various EBC classification results in the different frequencies. Another method is named "modular effective neural networks (MENN)". This method combines the classification results of the three different EBC in the specific frequency. "Modular frequency neural networks (MFNN)" is another method that combines the classification results of the specific EBC in the seven different frequencies. Results The mean accuracy of the MFNN are 97.14 transfer function, directed coherence, and generalized partial directed coherence, respectively. Using the MENN, the highest mean accuracy is 98.34 Finally, DMNN has the highest mean accuracy which is equal to 99.43. To our best knowledge, the proposed method is a new method that provides the high accuracy in comparison to other studies which used MIT-CHB database. Conclusion and significance The knowledge of structure-function relationships between different areas of the brain is necessary for characterizing the underlying dynamics. Hence, features based on EBC can provide a reliable automatic seizure detection approach.

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