ArXiv TLDR

Point Cloud Registration for Fusion between SPECT MPI and CTA Images

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2604.24524

Ni Yao, Xiangyu Liu, Shaojie Tang, Danyang Sun, Chuang Han + 7 more

cs.CV

TLDR

A new framework accurately fuses SPECT MPI and CTA images using U-Net segmentation and point cloud registration for improved cardiac ischemia localization.

Key contributions

  • Proposes a framework for SPECT MPI and CTA image fusion using U-Net segmentation for cardiac structures.
  • Automates landmark derivation from LV (SPECT) and interventricular septal junction (CTA) for coarse registration.
  • Evaluates multiple fine registration methods on LV point clouds, with BCPD-plus-plus achieving 1.7 mm accuracy.
  • Propagates transformations to voxel-level resampling for high-precision SPECT-CTA fusion.

Why it matters

Clinical fusion of SPECT MPI and CTA is limited by misregistration and manual landmarks, hindering accurate ischemia localization. This paper provides an automated, robust framework that significantly improves the precision of cardiac image fusion. This enables more accurate functional assessment of coronary lesions and better patient care.

Original Abstract

Clinical fusion of Single Photon Emission Computed Tomography Myocardial Perfusion Imaging (SPECT MPI) and Computed Tomography Angiography (CTA) remains limited by cross-modality misregistration and reliance on manual landmarks, which can hinder accurate ischemia localization and lesion-level functional assessment. To address this issue, we propose a registration and fusion framework for SPECT MPI and CTA that integrates functional and structural information for comprehensive cardiac evaluation. The proposed pipeline performs U-Net-based segmentation on both modalities. On SPECT MPI, only the left ventricle (LV) is extracted, and anatomical landmarks are automatically derived from characteristic LV structures. On CTA, both ventricles are segmented, and their spatial relationship is used to automatically define landmarks at the interventricular septal junction. Scale-space consistency preprocessing and landmark-driven coarse registration are applied to mitigate initial misalignment. Based on this initialization, multiple fine registration methods are evaluated on LV epicardial surface point clouds, including ICP, SICP, CPD, CluReg, FFD, and BCPD-plus-plus. The resulting transformations are then propagated to voxel-level resampling for high-precision SPECT-CTA fusion. In a retrospective cohort of 60 patients, the proposed framework preserved sub-millimeter coronary detail from CTA while accurately overlaying quantitative SPECT perfusion. Among the evaluated methods, BCPD-plus-plus achieved the highest accuracy with a mean point cloud distance of 1.7 mm. By combining robust initialization, comparative fine registration, and voxel-level fusion, the proposed approach provides a practical solution for myocardial ischemia localization and functional evaluation of coronary lesions, while remaining independent of any specific fine registration algorithm.

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