Braided Networks for Scan-Aware MRI Brain Tissue Segmentation

Mahmoud Mostapha, B. Mailhé, Xiao Chen, P. Ceccaldi, Y. Yoo, M. Nadar
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Abstract

Recent advances in supervised deep learning, mainly using convolutional neural networks, enabled the fast acquisition of high-quality brain tissue segmentation from structural magnetic resonance brain images (MRI). However, the robustness of such deep learning models is limited by the existing training datasets acquired with a homogeneous MRI acquisition protocol. Moreover, current models fail to utilize commonly available relevant non-imaging information (i.e., meta-data). In this paper, the notion of a braided block is introduced as a generalization of convolutional or fully connected layers for learning from paired data (meta-data, images). For robust MRI tissue segmentation, a braided 3D U-Net architecture is implemented as a combination of such braided blocks with scanner information, MRI sequence parameters, geometrical information, and task-specific prior information used as meta-data. When applied to a large (> 16,000 scans) and highly heterogeneous (wide range of MRI protocols) dataset, our method generates highly accurate segmentation results (Dice scores > 0.9) within seconds****The concepts and information presented in this paper are based on research results that are not commercially available..
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扫描感知MRI脑组织分割的编织网络
监督深度学习的最新进展,主要使用卷积神经网络,使得能够从结构磁共振脑图像(MRI)中快速获取高质量的脑组织分割。然而,这种深度学习模型的稳健性受到用同质MRI采集协议采集的现有训练数据集的限制。此外,当前的模型未能利用通常可用的相关非成像信息(即元数据)。在本文中,引入了编织块的概念,作为卷积层或全连接层的推广,用于从配对数据(元数据、图像)中学习。对于稳健的MRI组织分割,编织的3D U-Net架构被实现为这种编织块与用作元数据的扫描器信息、MRI序列参数、几何信息和任务特定先验信息的组合。当应用于大型(>16000次扫描)和高度异构(广泛的MRI协议)数据集时,我们的方法在几秒钟内生成高度准确的分割结果(Dice分数>0.9)***本文中提出的概念和信息基于商业上没有的研究结果。。
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