Anatomy-guided Multimodal Registration by Learning Segmentation without Ground Truth: Application to Intraprocedural CBCT/MR Liver Segmentation and Registration
Bo Zhou, Zachary Augenfeld, Julius Chapiro, S. Kevin Zhou, Chi Liu,, James S. Duncan

TL;DR
This paper introduces APA2Seg-Net, a domain adaptation-based segmentation method that learns liver segmentation in CBCT and MR images without target ground truth, improving multimodal registration for liver interventions.
Contribution
It proposes a novel anatomy-preserving domain adaptation approach for segmentation without target modality ground truth, enhancing multimodal registration accuracy.
Findings
APA2Seg-Net achieves robust liver segmentation in CBCT and MR images.
The anatomy-guided registration yields high-quality multimodal alignment.
Method improves intra-procedural tumor targeting in liver interventions.
Abstract
Multimodal image registration has many applications in diagnostic medical imaging and image-guided interventions, such as Transcatheter Arterial Chemoembolization (TACE) of liver cancer guided by intraprocedural CBCT and pre-operative MR. The ability to register peri-procedurally acquired diagnostic images into the intraprocedural environment can potentially improve the intra-procedural tumor targeting, which will significantly improve therapeutic outcomes. However, the intra-procedural CBCT often suffers from suboptimal image quality due to lack of signal calibration for Hounsfield unit, limited FOV, and motion/metal artifacts. These non-ideal conditions make standard intensity-based multimodal registration methods infeasible to generate correct transformation across modalities. While registration based on anatomic structures, such as segmentation or landmarks, provides an efficient…
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Taxonomy
TopicsAdvanced Neural Network Applications · Medical Image Segmentation Techniques · Medical Imaging and Analysis
