胎儿心脏MRI中关节弱监督分割和主动脉弓异常分类的多任务学习

Paula Ramirez, Alena Uus, Milou P.M. van Poppel, Irina Grigorescu, Johannes K. Steinweg, David F.A. Lloyd, Kuberan Pushparajah, Andrew P. King, Maria Deprez
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引用次数: 0

摘要

先天性心脏病(CHD)是一组在胎儿期就已经存在的心脏畸形,是全球出生缺陷的主要类别。我们在这项研究中的目的是帮助3D胎儿血管拓扑可视化主动脉弓异常,这一组包括一系列具有显著解剖异质性的条件。我们提出了一个多任务框架,用于从3D黑血T2w MRI和异常分类中自动进行多类胎儿血管分割。我们的训练数据包括单个受试者的心脏血管区域的二进制手动分割掩码和完全标记的异常特异性人群地图集。我们的框架将使用VoxelMorph的深度学习标签传播与3D注意力U-Net分割和DenseNet121异常分类相结合。我们的目标是11条心脏血管和三种不同的主动脉弓异常,包括双主动脉弓、右主动脉弓和疑似主动脉缩窄。我们将异常分类器整合到我们的分割管道中,提供了一个多任务框架,其主要动机是纠正分割的拓扑不准确性。假设是,多任务方法将鼓励分割网络学习异常特定的特征。作为次要动机,自动化诊断工具可能有潜力提高决策支持设置中的诊断信心。我们的研究结果表明,我们提出的训练策略明显优于标签传播和仅在传播标签上训练的网络。我们的分类器优于专门训练T2w体积图像的分类器,联合训练后的平均平衡准确率为0.99(0.01)。添加分类器可以提高所有正确分类的双主动脉弓受试者的解剖和拓扑精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-task learning for joint weakly-supervised segmentation and aortic arch anomaly classification in fetal cardiac MRI
Congenital Heart Disease (CHD) is a group of cardiac malformations present already during fetal life, representing the prevailing category of birth defects globally. Our aim in this study is to aid 3D fetal vessel topology visualisation in aortic arch anomalies, a group which encompasses a range of conditions with significant anatomical heterogeneity. We present a multi-task framework for automated multi-class fetal vessel segmentation from 3D black blood T2w MRI and anomaly classification. Our training data consists of binary manual segmentation masks of the cardiac vessels' region in individual subjects and fully-labelled anomaly-specific population atlases. Our framework combines deep learning label propagation using VoxelMorph with 3D Attention U-Net segmentation and DenseNet121 anomaly classification. We target 11 cardiac vessels and three distinct aortic arch anomalies, including double aortic arch, right aortic arch, and suspected coarctation of the aorta. We incorporate an anomaly classifier into our segmentation pipeline, delivering a multi-task framework with the primary motivation of correcting topological inaccuracies of the segmentation. The hypothesis is that the multi-task approach will encourage the segmenter network to learn anomaly-specific features. As a secondary motivation, an automated diagnosis tool may have the potential to enhance diagnostic confidence in a decision support setting. Our results showcase that our proposed training strategy significantly outperforms label propagation and a network trained exclusively on propagated labels. Our classifier outperforms a classifier trained exclusively on T2w volume images, with an average balanced accuracy of 0.99 (0.01) after joint training. Adding a classifier improves the anatomical and topological accuracy of all correctly classified double aortic arch subjects.
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