Diffeomorphic Transformer-based Abdomen MRI-CT Deformable Image Registration
Yang Lei, Luke A. Matkovic, Justin Roper, Tonghe Wang, Jun Zhou, Beth, Ghavidel, Mark McDonald, Pretesh Patel, Xiaofeng Yang

TL;DR
This paper introduces a diffeomorphic transformer-based deep learning framework for accurate abdominal MRI-CT image registration, improving motion estimation and registration metrics over rigid methods.
Contribution
It proposes a novel deep learning model combining Swin transformers with CNNs for diffeomorphic, topology-preserving deformable registration of abdominal images.
Findings
Significant improvement in Dice similarity coefficient for liver and portal vein.
Reduction in mean surface distance and target registration error.
Effective registration performance suitable for liver radiotherapy planning.
Abstract
This paper aims to create a deep learning framework that can estimate the deformation vector field (DVF) for directly registering abdominal MRI-CT images. The proposed method assumed a diffeomorphic deformation. By using topology-preserved deformation features extracted from the probabilistic diffeomorphic registration model, abdominal motion can be accurately obtained and utilized for DVF estimation. The model integrated Swin transformers, which have demonstrated superior performance in motion tracking, into the convolutional neural network (CNN) for deformation feature extraction. The model was optimized using a cross-modality image similarity loss and a surface matching loss. To compute the image loss, a modality-independent neighborhood descriptor (MIND) was used between the deformed MRI and CT images. The surface matching loss was determined by measuring the distance between the…
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