Work place: University of Sfax, Miracl Lab, Department of STIC, National School of Electronics and Telecommunications of Sfax, Tunisia
E-mail: rahmamaalej1234@gmail.com
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Biography
Rahma Maalej is a PhD student at the MIRACL Laboratory, University of Sfax, Tunisia. She is affiliated with the Department of STIC at the National School of Electronics and Telecommunications of Sfax (ENET’Com). With three years of experience in higher education, he has already published four research articles in international peer-reviewed journals. Her research focuses on Artificial Intelligence, Data Mining, and Signal Preprocessing, particularly for biomedical applications.
By Rahma Maalej Abir Hadriche Mohamed Amine Ben Msarra Nawel Jmail
DOI: https://doi.org/10.5815/ijigsp.2026.03.01, Pub. Date: 8 Jun. 2026
Interictal high-frequency oscillations, including ripples in the frequency range of 80-250 hertz and fast ripples between 250-500 hertz, are increasingly recognized as reliable electrophysiological biomarkers for delineating the epileptogenic zone in patients with drug-resistant epilepsy. However, their routine clinical exploitation remains limited due to pronounced morphological variability, low signal-to-noise ratios, and the difficulty of identifying overlapping events in which ripples and fast ripples occur simultaneously.
This paper presents an automated deep learning framework designed for the multi-label classification of pathological high-frequency oscillations in intracranial electroencephalographic signals. The proposed approach integrates advanced nonlinear statistical descriptors, including entropy- and complexity-based measures, in order to enhance the discriminative representation of the signals. These features are processed using a hybrid deep learning architecture that combines convolutional neural networks for local morphological feature extraction with bidirectional long short-term memory networks to capture long-range temporal dependencies in non-stationary neural signals.
The proposed framework was evaluated using the publicly available multi-patient intracranial electroencephalography dataset provided by the Collaborative Research in Computational Neuroscience initiative. Experimental results demonstrate a classification accuracy of 98.3 %, along with high precision and balanced performance across all pathological classes. These findings indicate that the proposed method offers a robust and objective solution for the automated identification of high-frequency oscillations, with strong potential for improving presurgical evaluation and decision-making in epilepsy surgery.
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