DOI: 10.21123/2411-7986.5340 ISSN: 2411-7986

TLENet-Transformer for Epilepsy Detection with Futuristic IoMT Plans

Jayanthi Vajiram, Sivakumar. S

Temporal Lobe Epilepsy (TLE) is the most prevalent subtype of focal epilepsy, often posing diagnostic difficulties due to its complex clinical features. To address these challenges, this study proposes TLENet-Transformer, a novel deep learning architecture tailored for precise TLE identification. The study begins with skull stripping, bias field correction, z-score normalization, and Gaussian filtering; these methods are implemented to enhance image quality. Following this, a segmentation method based on an optimized Fuzzy C-Means clustering algorithm is employed, providing accurate delineation of regions. At this point, the segmented images are subsequently mapped to a pre-labelled Automated Anatomical Labelling (AAL) template to detect distinct segmented ROIs. Developing hybrid models that combine DL with Transformer and attention-based techniques could improve feature extraction. The classification module integrates a hybrid deep learning approach, combining 3D Convolutional Neural Networks for spatial feature extraction, Spatio-Temporal Long Short-Term Memory units for capturing temporal dynamics, and Capsule Networks to preserve hierarchical features. This multi-layered architecture allows the model to learn complex patterns associated with affected regions. TLENet-Transformer gives a high diagnostic accuracy of 98.16%, outperforming conventional models in both sensitivity and specificity. Furthermore, the study explores the integration of Internet of Medical Things (IoMT) technologies to enable real-time remote monitoring as the future scope of work.

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