Epileptic Seizure Detection and Prediction from EEG Data: A Machine Learning Approach with Clinical Validation
Ria Jayanti, Tanish Jain

TL;DR
This paper presents a machine learning approach combining real-time seizure detection and prediction from EEG data, validated on clinical data, enabling proactive epilepsy management.
Contribution
It introduces a novel integrated method for seizure detection and prediction using machine learning, with clinical validation demonstrating its potential for proactive epilepsy care.
Findings
Logistic Regression achieved 90.9% detection accuracy with 89.6% recall.
LSTM networks predicted seizures with 89.26% accuracy.
Models highlight the importance of combining detection and prediction for clinical utility.
Abstract
In recent years, machine learning has become an increasingly powerful tool for supporting seizure detection and monitoring in epilepsy care. Traditional approaches focus on identifying seizures only after they begin, which limits the opportunity for early intervention and proactive treatment. In this study, we propose a novel approach that integrates both real-time seizure detection and prediction, aiming to capture subtle temporal patterns in EEG data that may indicate an upcoming seizure. Our approach was evaluated using the CHB-MIT Scalp EEG Database, which includes 969 hours of recordings and 173 seizures collected from 23 pediatric and young adult patients with drug-resistant epilepsy. To support seizure detection, we implemented a range of supervised machine learning algorithms, including K-Nearest Neighbors, Logistic Regression, Random Forest, and Support Vector Machine. The…
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