SeizNet: An AI-enabled Implantable Sensor Network System for Seizure Prediction

2024 19TH WIRELESS ON-DEMAND NETWORK SYSTEMS AND SERVICES CONFERENCE, WONS(2024)

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Abstract
In this paper, we introduce SeizNet, a closed-loop system for predicting epileptic seizures through the use of Deep Learning (DL) method and implantable sensor networks. While pharmacological treatment is effective for some epilepsy patients (with similar to 65M people affected worldwide), one out of three suffer from drug-resistant epilepsy. To alleviate the impact of seizure, predictive systems have been developed that can notify such patients of an impending seizure, allowing them to take precautionary measures. SeizNet leverages DL techniques and combines data from multiple recordings, specifically intracranial electroencephalogram (iEEG) and electrocardiogram (ECG) sensors, that can significantly improve the specificity of seizure prediction while preserving very high levels of sensitivity. SeizNet DL algorithms are designed for efficient real-time execution at the edge, minimizing data privacy concerns, data transmission overhead, and power inefficiencies associated with cloud-based solutions. Our results indicate that SeizNet outperforms traditional single-modality and non-personalized prediction systems in all metrics, achieving up to 99% accuracy in predicting seizure, offering a promising new avenue in refractory epilepsy treatment.
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Key words
Prediction System,Sensor Networks,Seizure Prediction,Deep Learning,Closed-loop System,High Levels Of Sensitivity,Drug-resistant Epilepsy,Use Of Deep Learning,Loss Function,False Positive,High Specificity,Convolutional Neural Network,False Positive Rate,Classification Results,Wearable,Performance Metrics,Deep Learning Models,Convolutional Neural Network Model,Majority Voting,Bitrate,Electrocardiogram Signals,Medium Access Control,Electrocardiogram Data,Seizure Onset,Deep Learning Structure
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