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基于混合个体化生物力学模型和图像配准方法的肺部运动估计。

A hybrid patient-specific biomechanical model based image registration method for the motion estimation of lungs.

机构信息

Shanghai East Hospital, School of Medicine, Tongji University, 1239 Siping Road, Shanghai, PR China.

College of Design and Innovation, Tongji University, 1239 Siping Road, Shanghai, PR China.

出版信息

Med Image Anal. 2017 Jul;39:87-100. doi: 10.1016/j.media.2017.04.003. Epub 2017 Apr 19.

Abstract

This paper presents a new hybrid biomechanical model-based non-rigid image registration method for lung motion estimation. In the proposed method, a patient-specific biomechanical modelling process captures major physically realistic deformations with explicit physical modelling of sliding motion, whilst a subsequent non-rigid image registration process compensates for small residuals. The proposed algorithm was evaluated with 10 4D CT datasets of lung cancer patients. The target registration error (TRE), defined as the Euclidean distance of landmark pairs, was significantly lower with the proposed method (TRE = 1.37 mm) than with biomechanical modelling (TRE = 3.81 mm) and intensity-based image registration without specific considerations for sliding motion (TRE = 4.57 mm). The proposed method achieved a comparable accuracy as several recently developed intensity-based registration algorithms with sliding handling on the same datasets. A detailed comparison on the distributions of TREs with three non-rigid intensity-based algorithms showed that the proposed method performed especially well on estimating the displacement field of lung surface regions (mean TRE = 1.33 mm, maximum TRE = 5.3 mm). The effects of biomechanical model parameters (such as Poisson's ratio, friction and tissue heterogeneity) on displacement estimation were investigated. The potential of the algorithm in optimising biomechanical models of lungs through analysing the pattern of displacement compensation from the image registration process has also been demonstrated.

摘要

本文提出了一种新的基于混合生物力学模型的非刚性图像配准方法,用于肺运动估计。在提出的方法中,患者特定的生物力学建模过程通过对滑动运动的显式物理建模来捕获主要的物理现实变形,而随后的非刚性图像配准过程则补偿小残余物。该算法在 10 个肺癌患者的 4DCT 数据集上进行了评估。目标配准误差(TRE)定义为标志点对的欧几里得距离,与生物力学建模(TRE=3.81mm)和没有考虑滑动运动的基于强度的图像配准(TRE=4.57mm)相比,使用提出的方法显著更低(TRE=1.37mm)。与在相同数据集上具有滑动处理的几种最近开发的基于强度的配准算法相比,该方法具有相当的准确性。与三种非刚性基于强度的算法的 TRE 分布的详细比较表明,该方法在估计肺表面区域的位移场方面表现特别出色(平均 TRE=1.33mm,最大 TRE=5.3mm)。还研究了生物力学模型参数(如泊松比、摩擦和组织各向异性)对位移估计的影响。该算法通过分析来自图像配准过程的位移补偿模式,在优化肺部生物力学模型方面的潜力也得到了证明。

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