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利用心脏磁共振成像上的个体特定分布对左心室进行凸最大流分割。

A convex max-flow segmentation of LV using subject-specific distributions on cardiac MRI.

作者信息

Nambakhsh Mohammad Saleh, Yuan Jing, Ben Ayed Ismail, Punithakumar Kumaradevan, Goela Aashish, Islam Ali, Peters Terry, Li Shuo

机构信息

Biomedical Engineering Program, University of Western Ontario, London, Canada.

出版信息

Inf Process Med Imaging. 2011;22:171-83. doi: 10.1007/978-3-642-22092-0_15.

Abstract

This work studies the convex relaxation approach to the left ventricle (LV) segmentation which gives rise to a challenging multi-region seperation with the geometrical constraint. For each region, we consider the global Bhattacharyya metric prior to evaluate a gray-scale and a radial distance distribution matching. In this regard, the studied problem amounts to finding three regions that most closely match their respective input distribution model. It was previously addressed by curve evolution, which leads to sub-optimal and computationally intensive algorithms, or by graph cuts, which result in heavy metrication errors (grid bias). The proposed convex relaxation approach solves the LV segmentation through a sequence of convex sub-problems. Each sub-problem leads to a novel bound of the Bhattacharyya measure and yields the convex formulation which paves the way to build up the efficient and reliable solver. In this respect, we propose a novel flow configuration that accounts for labeling-function variations, in comparison to the existing flow-maximization configurations. We show it leads to a new convex max-flow formulation which is dual to the obtained convex relaxed sub-problem and does give the exact and global optimums to the original non-convex sub-problem. In addition, we present such flow perspective gives a new and simple way to encode the geometrical constraint of optimal regions. A comprehensive experimental evaluation on sufficient patient subjects demonstrates that our approach yields improvements in optimality and accuracy over related recent methods.

摘要

这项工作研究了用于左心室(LV)分割的凸松弛方法,该方法在几何约束下会产生具有挑战性的多区域分离问题。对于每个区域,我们在评估灰度和径向距离分布匹配之前考虑全局巴氏距离度量。在这方面,所研究的问题相当于找到三个与各自输入分布模型最匹配的区域。该问题以前通过曲线演化来解决,这会导致次优且计算量大的算法,或者通过图割来解决,这会导致严重的度量误差(网格偏差)。所提出的凸松弛方法通过一系列凸子问题来解决LV分割问题。每个子问题都导致了巴氏度量的一个新界限,并产生了凸公式,为构建高效可靠的求解器铺平了道路。在这方面,与现有的流最大化配置相比,我们提出了一种考虑标记函数变化的新颖流配置。我们表明它导致了一种新的凸最大流公式,该公式与获得的凸松弛子问题对偶,并且确实为原始非凸子问题给出了精确的全局最优解。此外,我们提出这种流视角为编码最优区域的几何约束提供了一种新的简单方法。对足够数量患者的全面实验评估表明,我们的方法在最优性和准确性方面比相关的最新方法有改进。

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