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JSSR: A Joint Synthesis, Segmentation,and Registration System for 3D Multi-modal Image Alignment of Large-Scale Pathological CT Scans

机译:JSSR:大规模病理CT扫描的3D多模态图像对齐的联合综合,分割和注册系统

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Multi-modal image registration is a challenging problem that is also an important clinical task for many real applications and scenarios. As a first step in analysis, deformable registration among different image modalities is often required in order to provide complementary visual information. During registration, semantic information is key to match homologous points and pixels. Nevertheless, many conventional registration methods are incapable in capturing high-level semantic anatomical dense correspondences. In this work, we propose a novel multi-task learning system, JSSR, based on an end-to-end 3D convolutional neural network that is composed of a generator, a registration and a segmentation component. The system is optimized to satisfy the implicit constraints between different tasks in an unsupervised manner. It first synthesizes the source domain images into the target domain, then an intra-modal registration is applied on the synthesized images and target images. The segmentation module are then applied on the synthesized and target images, providing additional cues based on semantic correspondences. The supervision from another fully-annotated dataset is used to regularize the segmentation. We extensively evaluate JSSR on a large-scale medical image dataset containing 1,485 patient CT imaging studies of four different contrast phases (i.e., 5,940 3D CT scans with pathological livers) on the registration, segmentation and synthesis tasks. The performance is improved after joint training on the registration and segmentation tasks by 0.9% and 1.9% respectively compared to a highly competitive and accurate deep learning baseline. The registration also consistently outperforms conventional state-of-the-art multi-modal registration methods.
机译:多模态图像注册是一个具有挑战性的问题,也是许多真实应用和场景的重要临床任务。作为分析的第一步,通常需要不同图像模式之间的可变形登记,以便提供互补的视觉信息。在注册期间,语义信息是匹配同源点和像素的关键。然而,许多传统的登记方法无法捕获高级语义解剖密度对应。在这项工作中,我们提出了一种基于由发电机,注册和分割组件组成的端到端3D卷积神经网络的新型多任务学习系统JSSR。优化系统以满足无监督方式不同任务之间的隐式约束。首先将源域图像合成到目标域中,然后在合成图像和目标图像上应用模态注册。然后将分割模块应用于合成的和目标图像,基于语义对应的提供额外的提示。来自另一个完全注释的数据集的监督用于规范分段。我们在注册,分割和综合任务上,广泛地评估了包含1,485名患者CT成像研究的大规模医学图像数据集(即,5,940 3D CT扫描)的大规模医学图像数据集。与高竞争和准确的深度学习基线相比,在登记和分割任务上的联合培训分别为0.9%和1.9%后,性能得到改善。注册还始终如一地优于常规的最先进的多模态登记方法。

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