Abstract
Multiple sclerosis (MS) is an autoimmune disease that causes lesions in the central nervous system of humans due to demyelinating axons. Magnetic resonance imaging (MRI) is widely used for monitoring and measuring MS lesions. Automated methods for MS lesion segmentation have usually been performed on individual MRI scans. Recently, tracking lesion activity for quantifying and monitoring MS disease progression, especially detecting new lesions, has become an important biomarker. In this study, a unique pipeline with a deep neural network that combines U-Net, attention gate, and residual learning is proposed to perform better new MS lesion segmentation using baseline and follow-up 3D FLAIR MR images. The proposed network has a similar architecture to U-Net and is formed from residual units which facilitate the training of deep networks. Networks with fewer parameters are designed with better performance through the skip connections of U-Net and residual units, which facilitate information propagation without degradation. Attention gates also learn to focus on salient features of the target structures of various sizes and shapes. The MSSEG-2 dataset was used for training and testing the proposed pipeline, and the results were compared with those of other proposed pipelines of the challenge and experts who participated in the same challenge. According to the results over the testing set, the lesion-wise F1 and dice scores were obtained as a mean of 48 and 44.30%. For the no-lesion cases, the number of tested and volume of tested lesions were obtained as a mean of 0.148 and 1.488, respectively. The proposed pipeline outperformed 22 proposed pipelines and ranked 8th in the challenge.
Original language | English |
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Article number | 912000 |
Journal | Frontiers in Neuroscience |
Volume | 16 |
DOIs | |
Publication status | Published - 22 Jul 2022 |
Bibliographical note
Publisher Copyright:Copyright © 2022 Sarica and Seker.
Funding
The authors would like to thank the Empenn team, the French cohort of patients with MS (OFSEP), and France Life Imaging (FLI-IAM) for organizing the MSSEG-2 challenge and providing the dataset. The trained model is available as a Docker image and can be pulled with this command: docker pull beytullahsarica/deep-res-unet-ag-ms-activity-segmentation:v1.0.1. Also, our code is available at https://github.com/beytullahsarica/new_ms_lesion_segmentation.
Keywords
- MS lesion activity segmentation
- MS new lesions segmentation
- U-Net
- attention gate
- convolutional neural networks
- deep residual learning
- lesion activity
- multiple sclerosis (MS)