Longitudinal detection of new MS lesions using deep learning.

Reda Abdellah Kamraoui, Boris Mansencal, José V Manjon, Pierrick Coupé
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Abstract

The detection of new multiple sclerosis (MS) lesions is an important marker of the evolution of the disease. The applicability of learning-based methods could automate this task efficiently. However, the lack of annotated longitudinal data with new-appearing lesions is a limiting factor for the training of robust and generalizing models. In this study, we describe a deep-learning-based pipeline addressing the challenging task of detecting and segmenting new MS lesions. First, we propose to use transfer-learning from a model trained on a segmentation task using single time-points. Therefore, we exploit knowledge from an easier task and for which more annotated datasets are available. Second, we propose a data synthesis strategy to generate realistic longitudinal time-points with new lesions using single time-point scans. In this way, we pretrain our detection model on large synthetic annotated datasets. Finally, we use a data-augmentation technique designed to simulate data diversity in MRI. By doing that, we increase the size of the available small annotated longitudinal datasets. Our ablation study showed that each contribution lead to an enhancement of the segmentation accuracy. Using the proposed pipeline, we obtained the best score for the segmentation and the detection of new MS lesions in the MSSEG2 MICCAI challenge.

Abstract Image

Abstract Image

Abstract Image

利用深度学习纵向检测新的MS病变。
新的多发性硬化症(MS)病变的检测是疾病发展的重要标志。基于学习的方法的适用性可以有效地自动化这项任务。然而,缺乏新出现病变的注释纵向数据是训练鲁棒和泛化模型的限制因素。在这项研究中,我们描述了一个基于深度学习的管道,解决了检测和分割新的MS病变的挑战性任务。首先,我们建议使用迁移学习,从使用单个时间点训练分割任务的模型中学习。因此,我们从一个更容易的任务中挖掘知识,并且有更多的注释数据集可用。其次,我们提出了一种数据综合策略,使用单时间点扫描生成具有新病变的真实纵向时间点。通过这种方式,我们在大型合成注释数据集上预训练我们的检测模型。最后,我们使用数据增强技术来模拟MRI中的数据多样性。通过这样做,我们增加了可用的小型带注释的纵向数据集的大小。我们的消融研究表明,每一种贡献都会导致分割精度的提高。使用所提出的管道,我们在MSSEG2 MICCAI挑战中获得了新的MS病变的分割和检测的最高分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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