Influence of learned landmark correspondences on lung CT registration

Med Phys. 2024 Aug;51(8):5321-5336. doi: 10.1002/mp.17120. Epub 2024 May 7.

Abstract

Background: Disease or injury may cause a change in the biomechanical properties of the lungs, which can alter lung function. Image registration can be used to measure lung ventilation and quantify volume change, which can be a useful diagnostic aid. However, lung registration is a challenging problem because of the variation in deformation along the lungs, sliding motion of the lungs along the ribs, and change in density.

Purpose: Landmark correspondences have been used to make deformable image registration robust to large displacements.

Methods: To tackle the challenging task of intra-patient lung computed tomography (CT) registration, we extend the landmark correspondence prediction model deep convolutional neural network-Match by introducing a soft mask loss term to encourage landmark correspondences in specific regions and avoid the use of a mask during inference. To produce realistic deformations to train the landmark correspondence model, we use data-driven synthetic transformations. We study the influence of these learned landmark correspondences on lung CT registration by integrating them into intensity-based registration as a distance-based penalty.

Results: Our results on the public thoracic CT dataset COPDgene show that using learned landmark correspondences as a soft constraint can reduce median registration error from approximately 5.46 to 4.08 mm compared to standard intensity-based registration, in the absence of lung masks.

Conclusions: We show that using landmark correspondences results in minor improvements in local alignment, while significantly improving global alignment.

Keywords: deep learning; image registration; landmark correspondence.

MeSH terms

  • Humans
  • Image Processing, Computer-Assisted* / methods
  • Lung* / diagnostic imaging
  • Lung* / physiology
  • Tomography, X-Ray Computed*