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Deep learning for discrimination of active and inactive lesions in multiple sclerosis using non-contrast FLAIR MRI: A multicenter study.

Amini, AmirAbbas; Shayganfar, Azin; Amini, Zahra; Ostovar, Leila; HajiAhmadi, Somayeh; Chitsaz, Navid; Rabbani, Masoud; Kafieh, Raheleh

Deep learning for discrimination of active and inactive lesions in multiple sclerosis using non-contrast FLAIR MRI: A multicenter study. Thumbnail


Authors

AmirAbbas Amini

Azin Shayganfar

Zahra Amini

Leila Ostovar

Somayeh HajiAhmadi

Navid Chitsaz

Masoud Rabbani



Abstract

Within the domain of multiple sclerosis (MS), the precise discrimination between active and inactive lesions bears immense significance. Active lesions are enhanced on T1-weighted MRI images after administration of gadolinium-based contrast agents, which brings about associated complexities. This study investigates the potential of deep learning to differentiate between active and inactive lesions in MS using non-contrast FLAIR-type MRI data, presenting a non-invasive alternative to conventional gadolinium-based MRI methods. The dataset encompasses 9097 lesion images collected from 130 MS patients across four distinct imaging centers, with post-contrast T1-weighted images as the benchmark reference. We initially identified and labeled the lesions and carefully selected corresponding regions of interest (ROIs). These ROIs were employed as inputs for a convolutional neural network (CNN) to predict lesion status. Also, transfer learning was utilized, incorporating 12 pre-trained CNN models. Subsequently, an ensemble technique was applied to 3 of best models, followed by a systematic comparison of the results. Through a 5-fold cross-validation, our custom designed network exhibited an average accuracy of 85 %, a sensitivity of 95 %, a specificity of 75 %, and an AUC value of 0.90. Among the pre-trained models, ResNet50 emerged as the most effective, achieving a specificity of 58 %, an accuracy of 75 %, a sensitivity of 91 %, and an AUC value of 0.81. Our comprehensive evaluations encompassed the receiver operating characteristic curve, precision-recall curve, and confusion matrix analyses. The findings underscore the efficacy of the proposed CNN, trained on FLAIR MRI data ROIs, in accurately discerning active and inactive lesions without reliance on contrast agents. Our multicenter study of 130 patients with diverse imaging devices outperforms the other single-center studies, achieving superior sensitivity and specificity. Unlike studies using multiple modalities, our exclusive use of FLAIR images streamlines the process, and our streamlined approach, excluding conventional pre-processing, demonstrates efficiency. The external validation conducted on diverse datasets, coupled with the analysis of dilated masks, underscores the adaptability and efficacy of our custom CNN model in discerning between active and inactive lesions.

Citation

Amini, A., Shayganfar, A., Amini, Z., Ostovar, L., HajiAhmadi, S., Chitsaz, N., Rabbani, M., & Kafieh, R. (2024). Deep learning for discrimination of active and inactive lesions in multiple sclerosis using non-contrast FLAIR MRI: A multicenter study. Multiple Sclerosis and Related Disorders, 87, Article 105642. https://doi.org/10.1016/j.msard.2024.105642

Journal Article Type Article
Acceptance Date Apr 20, 2024
Online Publication Date Apr 21, 2024
Publication Date 2024-07
Deposit Date May 28, 2024
Publicly Available Date May 28, 2024
Journal Multiple Sclerosis and Related Disorders
Print ISSN 2211-0348
Electronic ISSN 2211-0356
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 87
Article Number 105642
DOI https://doi.org/10.1016/j.msard.2024.105642
Keywords Non-contrast MRI, Deep learning, Multiple sclerosis (MS)
Public URL https://durham-repository.worktribe.com/output/2465766
This output contributes to the following UN Sustainable Development Goals:

SDG 3 - Good Health and Well-Being

Ensure healthy lives and promote well-being for all at all ages

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