Physics-informed motion registration of lung parenchyma across static CT images
Sunder Neelakantan, Tanmay Mukherjee, Kyle J. Myers, Rahim Rizi, Reza, Avazmohammadi

TL;DR
This paper introduces a physics-informed finite element method to estimate lung deformation over time from only static CT images at end-expiration and end-inspiration, overcoming limitations of traditional registration methods that require temporal image series.
Contribution
The study presents a novel FE-based approach that accurately estimates lung strains and deformations from static images, enabling timewise analysis without continuous imaging.
Findings
Method minimizes error between geometries at EE and EI
Strain estimates agree with 4D CT data
Allows deformation estimation at any intermediate timepoint
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…
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