论文标题
残留对准器网络
Residual Aligner Network
论文作者
论文摘要
图像注册对于医学成像,这是对不同图像之间空间转换的估计。许多先前的研究都使用基于学习的方法进行粗到细节的注册来有效执行3D图像注册。但是,在处理附近物体的不同动作时,粗到最新的方法受到限制。在这里,我们提出了一种新型的运动感知(MA)结构,该结构捕获了一个地区的不同动作。 MA结构结合了一种新型残差对准器(RA)模块,该模块预测用于散布多个相邻对象的不同运动的多头位移场。与其他深度学习方法相比,基于MA结构和RA模块的网络在腹部CT扫描中的9个各种大小的器官上实现了最准确的无监督的主体间注册之一,静脉排行榜排名最高(润肤切相似性的表面距离/平均水平距离:62 \%/4. 4.9mmmm for vern and vern and vern and vern and verna and verna and verna and verna and verna and verna and ven4 cava and 34 cava and 34 cava and ven4 cava and 34 cava and 34 cava和34 cava和34静脉),具有半尺寸的结构和更有效的计算。新网络应用于胸部CT扫描中肺部的分割,获得了与最优秀的网络(94 \%/3.0mm)无法区分的结果。此外,通过进一步分析来验证有关预测运动模式和MA结构设计的定理。
Image registration is important for medical imaging, the estimation of the spatial transformation between different images. Many previous studies have used learning-based methods for coarse-to-fine registration to efficiently perform 3D image registration. The coarse-to-fine approach, however, is limited when dealing with the different motions of nearby objects. Here we propose a novel Motion-Aware (MA) structure that captures the different motions in a region. The MA structure incorporates a novel Residual Aligner (RA) module which predicts the multi-head displacement field used to disentangle the different motions of multiple neighbouring objects. Compared with other deep learning methods, the network based on the MA structure and RA module achieve one of the most accurate unsupervised inter-subject registration on the 9 organs of assorted sizes in abdominal CT scans, with the highest-ranked registration of the veins (Dice Similarity Coefficient / Average surface distance: 62\%/4.9mm for the vena cava and 34\%/7.9mm for the portal and splenic vein), with a half-sized structure and more efficient computation. Applied to the segmentation of lungs in chest CT scans, the new network achieves results which were indistinguishable from the best-ranked networks (94\%/3.0mm). Additionally, the theorem on predicted motion pattern and the design of MA structure are validated by further analysis.