Li Dongxiao, Zhong Wenxiong, Deh Kofi M, Nguyen Thanh, Prince Martin R, Wang Yi, Spincemaille Pascal
IEEE Trans Biomed Eng. 2018 Nov 12. doi: 10.1109/TBME.2018.2880733.
The sliding motion of the liver during respiration violates the homogeneous motion smoothness assumption in conventional non-rigid image registration and commonly results in compromised registration accuracy. This paper presents a novel approach, registration with 3D active contour motion segmentation (RAMS), to improve registration accuracy with discontinuity-aware motion regularization.
A Markov random field-based discrete optimization with dense displacement sampling and self-similarity context metric is used for registration, while a graph cuts-based 3D active contour approach is applied to segment the sliding interface. In the first registration pass, a mask-free L1 regularization on an image-derived minimum spanning tree is performed to allow motion discontinuity. Based on the motion field estimates, a coarse segmentation finds the motion boundaries. Next, based on MR signal intensity, a fine segmentation aligns the motion boundaries with anatomical boundaries. In the second registration pass, smoothness constraints across the segmented sliding interface are removed by masked regularization on a minimum spanning forest and masked interpolation of the motion field.
For in vivo breath-hold abdominal MRI data, the motion masks calculated by RAMS are highly consistent with manual segmentations in terms of Dice similarity and bidirectional local distance measure. These automatically obtained masks are shown to substantially improve registration accuracy for both the proposed discrete registration as well as conventional continuous non-rigid algorithms.
CONCLUSION/SIGNIFICANCE: The presented results demonstrated the feasibility of automated segmentation of the respiratory sliding motion interface in liver MR images and the effectiveness of using the derived motion masks to preserve motion discontinuity.
肝脏在呼吸过程中的滑动运动会违背传统非刚性图像配准中均匀运动平滑性的假设,通常会导致配准精度受损。本文提出了一种新方法,即基于三维主动轮廓运动分割的配准(RAMS),通过具有不连续性感知的运动正则化来提高配准精度。
采用基于马尔可夫随机场的离散优化方法,结合密集位移采样和自相似性上下文度量进行配准,同时应用基于图割的三维主动轮廓方法分割滑动界面。在第一次配准过程中,对图像衍生的最小生成树进行无掩码的L1正则化,以允许运动不连续性。基于运动场估计,进行粗略分割以找到运动边界。接下来,基于磁共振信号强度,进行精细分割以使运动边界与解剖边界对齐。在第二次配准过程中,通过对最小生成森林进行掩码正则化和对运动场进行掩码插值,去除分割后的滑动界面上的平滑约束。
对于体内屏气腹部磁共振成像数据,RAMS计算得到的运动掩码在骰子相似性和双向局部距离测量方面与手动分割高度一致。这些自动获得的掩码被证明能显著提高所提出的离散配准以及传统连续非刚性算法的配准精度。
结论/意义:所呈现的结果证明了在肝脏磁共振图像中自动分割呼吸滑动运动界面的可行性,以及使用导出的运动掩码来保留运动不连续性的有效性。