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基于物理信息的跨静态CT图像的肺实质运动配准

Physics-informed motion registration of lung parenchyma across static CT images.

作者信息

Neelakantan Sunder, Mukherjee Tanmay, Myers Kyle J, Rizi Rahim, Avazmohammadi Reza

机构信息

Department of Biomedical Engineering, Texas A&M University, College Station, TX, USA.

Hagler Institute for Advanced Study, Texas A&M University, College Station, TX, USA.

出版信息

ArXiv. 2024 Jul 3:arXiv:2407.03457v1.

Abstract

Lung injuries, such as ventilator-induced lung injury and radiation-induced lung injury, can lead to heterogeneous alterations in the biomechanical behavior of the lungs. While imaging methods, e.g., X-ray and static computed tomography (CT), can point to regional alterations in lung structure between healthy and diseased tissue, they fall short of delineating timewise kinematic variations between the former and the latter. Image registration has gained recent interest as a tool to estimate the displacement experienced by the lungs during respiration via regional deformation metrics such as volumetric expansion and distortion. However, successful image registration commonly relies on a temporal series of image stacks with small displacements in the lungs across succeeding image stacks, which remains limited in static imaging. In this study, we have presented a finite element (FE) method to estimate strains from static images acquired at the end-expiration (EE) and end-inspiration (EI) timepoints, i.e., images with a large deformation between the two distant timepoints. Physiologically realistic loads were applied to the geometry obtained at EE to deform this geometry to match the geometry obtained at EI. The results indicated that the simulation could minimize the error between the two geometries. Using four-dimensional (4D) dynamic CT in a rat, the strain at an isolated transverse plane estimated by our method showed sufficient agreement with that estimated through non-rigid image registration that used all the timepoints. Through the proposed method, we can estimate the lung deformation at any timepoint between EE and EI. The proposed method offers a tool to estimate timewise regional deformation in the lungs using only static images acquired at EE and EI.

摘要

肺部损伤,如呼吸机诱导的肺损伤和辐射诱导的肺损伤,可导致肺部生物力学行为的异质性改变。虽然成像方法,如X射线和静态计算机断层扫描(CT),可以指出健康组织和患病组织之间肺部结构的区域变化,但它们无法描绘两者之间随时间的运动学变化。图像配准作为一种通过区域变形指标(如体积膨胀和扭曲)来估计肺部在呼吸过程中所经历位移的工具,最近受到了关注。然而,成功的图像配准通常依赖于一系列时间序列的图像堆栈,且相邻图像堆栈中肺部的位移较小,这在静态成像中仍然有限。在本研究中,我们提出了一种有限元(FE)方法,用于从在呼气末(EE)和吸气末(EI)时间点采集的静态图像中估计应变,即两个远距离时间点之间具有大变形的图像。将生理上逼真的载荷应用于在EE时获得的几何形状,以使该几何形状变形以匹配在EI时获得的几何形状。结果表明,该模拟可以最小化两种几何形状之间的误差。在大鼠中使用四维(4D)动态CT,我们的方法估计的孤立横断面上的应变与通过使用所有时间点的非刚性图像配准估计的应变显示出足够的一致性。通过所提出的方法,我们可以估计EE和EI之间任何时间点的肺部变形。所提出的方法提供了一种仅使用在EE和EI时采集的静态图像来估计肺部随时间的区域变形的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/afe7/11247911/7e8c4c71e8d9/nihpp-2407.03457v1-f0002.jpg

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