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An Epileptic EEG Detection Method Based on Data Augmentation and Lightweight Neural Network | IEEE Journals & Magazine | IEEE Xplore

An Epileptic EEG Detection Method Based on Data Augmentation and Lightweight Neural Network


Fig GA. Total architecture Conv: Convolutional , BN:BatchNormalize, ReLU:React Liner Unit, DO:Dropout, FC:Fully Connect, SF:SoftMax The first box is for data augmentation...

Abstract:

Objective: Epilepsy, an enduring neurological disorder, afflicts approximately 65 million individuals globally, significantly impacting their physical and mental wellbein...Show More

Abstract:

Objective: Epilepsy, an enduring neurological disorder, afflicts approximately 65 million individuals globally, significantly impacting their physical and mental wellbeing. Traditional epilepsy detection methods are labor-intensive, leading to inefficiencies. Although deep learning techniques for brain signal detection have gained traction in recent years, their clinical application advancement is hindered by the significant requirement for high-quality data and computational resources during training. Methods & Results: The neural network training initially involved merging two datasets of different data quality, namely Bonn University datasets and CHB-MIT datasets, to bolster its generalization capabilities. To tackle the issues of dataset size and class imbalance, we employed small window segmentation and Synthetic Minority Over-sampling Technique (SMOTE). algorithms to augment and equalize the data. A streamlined neural network architecture was then proposed, drastically reducing the model’s training parameters. Notably, a model trained with a mere 9,371 parameters yielded impressive results. The three-classification task on the combined dataset delivered an accuracy of 98.52%, sensitivity of 97.99%, specificity of 99.35%, and precision of 98.44%.Conclusion: The experimental findings of this study underscore the superiority of the proposed method over existing approaches in both model size reduction and accuracy enhancement. As a result, it is more apt for deployment in low-cost, low computational hardware devices, including wearable technology, and various clinical applications. Clinical and Translational Impact Statement— This study is a Pre-Clinical Research. The lightweight neural network is easily deployed on hardware device for real-time epileptic EEG detection.
Fig GA. Total architecture Conv: Convolutional , BN:BatchNormalize, ReLU:React Liner Unit, DO:Dropout, FC:Fully Connect, SF:SoftMax The first box is for data augmentation...
Page(s): 22 - 31
Date of Publication: 24 August 2023
Electronic ISSN: 2168-2372
PubMed ID: 38059126

References

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