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Enhanced Segmentation of Active and Nonactive Multiple Sclerosis Plaques in T1 and Flair Mri Images Using Transformer-Based Encoders Publisher



Mn Davarani Mahsa NAEENI ; Aa Darestani Ali ARIAN ; V Guillen Canas VIRGINIA ; Mh Harirchian Mohammad HOSSEIN ; A Zarei AMIN ; S Heydari Havadaragh SANAZ ; H Hashemi HASSAN
Authors

Source: International Journal of Imaging Systems and Technology Published:2025


Abstract

Demyelinating plaques in multiple sclerosis (MS) can be visualized using magnetic resonance imaging (MRI), where accurate segmentation of active and nonactive lesions is critical for diagnosis, monitoring disease progression, and guiding treatment. Fluid-attenuated inversion recovery)FLAIR(images are widely used to detect both types of lesions, while T1-weighted images are, particularly, useful for identifying active plaques, although they are more challenging to segment due to their lower contrast and smaller lesion size. To enhance the segmentation accuracy of MS plaques, focusing on both active and non-active lesions, by utilizing TransUNet, a transformer-based neural network. The model's performance is evaluated on T1-weighted and FLAIR MRI images, with a specific focus on improving the segmentation of active plaques in T1-weighted images, which are traditionally more difficult to segment. The dataset included MRI scans from 174 patients diagnosed with MS, a significant expansion compared to previous studies. Additionally, 21 external subject test data were used to validate the model's generalizability. TransUNet was applied separately to T1-weighted and FLAIR images. Preprocessing steps included skull stripping and normalization. The model's performance was assessed using standard evaluation metrics, including Dice Coefficient, sensitivity, specificity, intersection over union (IoU), and Hausdorff distance at 95% (HD95). The study also conducted a comparative analysis between TransUNet and the widely used nnU-Net model. For FLAIR images, TransUNet achieved a sensitivity of 0.763, specificity of 0.998, IoU of 0.563, Dice coefficient of 0.712, and HD95 of 5.402 mm on the internal test set. On the external test set, it maintained a sensitivity of 0.739, specificity of 0.999, IoU of 0.551, Dice coefficient of 0.704, and HD95 of 14.630 mm. For T1-weighted images, the model showed a sensitivity of 0.494, specificity of 1.000, IoU of 0.411, Dice coefficient of 0.548, and HD95 of 22.144 mm on the internal test set. On the external test set, it improved to a sensitivity of 0.725, specificity of 0.999, IoU of 0.573, Dice coefficient of 0.693, and HD95 of 5.146 mm. Compared to nnU-Net on FLAIR images, TransUNet achieved a higher Dice coefficient (0.712 vs. 0.710) and significantly lower HD95 (5.402 vs. 28.300 mm). TransUNet significantly outperforms traditional methods, particularly in FLAIR images, demonstrating improved accuracy and boundary delineation. While T1-weighted images present challenges, the model shows potential for refinement. This study highlights the effectiveness of transformer-based architectures in medical image segmentation, suggesting TransUNet as a valuable tool for MS diagnosis and treatment monitoring. © 2025 Elsevier B.V., All rights reserved.
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