磁共振弹性成像的位移和压力重建:在计算机脑模型中的应用

F. Galarce, K. Tabelow, J. Polzehl, Christos Panagiotis Papanikas, V. Vavourakis, Ledia Lilaj, I. Sack, A. Caiazzo
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引用次数: 1

摘要

磁共振弹性成像是一种运动敏感的图像模式,允许测量体内组织位移场响应机械激励。本文研究了一种数据同化方法,用于从部分弹性图数据中重建硅脑模型中的组织位移和压力场。数据同化基于参数化背景数据弱方法,其中物理系统的状态-组织位移和压力场-从可用数据中重建,假设潜在的孔隙弹性生物力学模型。为此,通过对描述组织模型的参数空间进行接近其生理范围的采样来模拟相应的孔隙弹性问题,并通过适当正交分解计算降基,构建物理信息流形。在求解包含降阶模型结构和可用测量值的最小化问题后,在简化空间中寻求位移和压力重构。利用模拟生理脑的孔隙弹性力学获得的综合数据验证了所提出的管道。数值实验表明,该框架能准确地模拟位移场和压力场。该方法可用于相关图像中可用位移数据的任意分辨率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Displacement and Pressure Reconstruction from Magnetic Resonance Elastography Images: Application to an In Silico Brain Model
Magnetic resonance elastography is a motion-sensitive image modality that allows to measure in vivo tissue displacement fields in response to mechanical excitations. This paper investigates a data assimilation approach for reconstructing tissue displacement and pressure fields in an in silico brain model from partial elastography data. The data assimilation is based on a parametrized-background data weak methodology, in which the state of the physical system -- tissue displacements and pressure fields -- is reconstructed from the available data assuming an underlying poroelastic biomechanics model. For this purpose, a physics-informed manifold is built by sampling the space of parameters describing the tissue model close to their physiological ranges to simulate the corresponding poroelastic problem, and computing a reduced basis via Proper Orthogonal Decomposition. Displacements and pressure reconstruction is sought in a reduced space after solving a minimization problem that encompasses both the structure of the reduced-order model and the available measurements. The proposed pipeline is validated using synthetic data obtained after simulating the poroelastic mechanics of a physiological brain. The numerical experiments demonstrate that the framework can exhibit accurate joint reconstructions of both displacement and pressure fields. The methodology can be formulated for an arbitrary resolution of available displacement data from pertinent images.
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