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Epileptic Seizure Prediction Using Deep Transformer Model

Abhijeet Bhattacharya, Tanmay Baweja, S. P. K. Karri

2021International Journal of Neural Systems87 citationsDOI

Abstract

The electroencephalogram (EEG) is the most promising and efficient technique to study epilepsy and record all the electrical activity going in our brain. Automated screening of epilepsy through data-driven algorithms reduces the manual workload of doctors to diagnose epilepsy. New algorithms are biased either towards signal processing or deep learning, which holds subjective advantages and disadvantages. The proposed pipeline is an end-to-end automated seizure prediction framework with a Fourier transform feature extraction and deep learning-based transformer model, a blend of signal processing and deep learning - this imbibes the potential features to automatically identify the attentive regions in EEG signals for effective screening. The proposed pipeline has demonstrated superior performance on the benchmark dataset with average sensitivity and false-positive rate per hour (FPR/h) as 98.46%, 94.83% and 0.12439, 0, respectively. The proposed work shows great results on the benchmark datasets and a big potential for clinics as a support system with medical experts monitoring the patients.

Topics & Concepts

Computer scienceArtificial intelligenceEpileptic seizureDeep learningBenchmark (surveying)WorkloadPipeline (software)EpilepsyElectroencephalographyPattern recognition (psychology)Feature extractionSignal processingSIGNAL (programming language)Machine learningTransformerSpeech recognitionFeature engineeringSensitivity (control systems)Feature (linguistics)Data miningIctalEEG and Brain-Computer InterfacesEpilepsy research and treatmentECG Monitoring and Analysis
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