Deep learning in medical image registration: introduction and survey
It provides a comprehensive overview for researchers and practitioners in medical imaging, but is incremental as it synthesizes existing knowledge without novel contributions.
This survey paper introduces and reviews deep learning methods for medical image registration, covering various algorithms, taxonomies, datasets, and applications such as image-guided surgery and tumor diagnosis, but does not present new experimental results or concrete numbers.
Image registration (IR) is a process that deforms images to align them with respect to a reference space, making it easier for medical practitioners to examine various medical images in a standardized reference frame, such as having the same rotation and scale. This document introduces image registration using a simple numeric example. It provides a definition of image registration along with a space-oriented symbolic representation. This review covers various aspects of image transformations, including affine, deformable, invertible, and bidirectional transformations, as well as medical image registration algorithms such as Voxelmorph, Demons, SyN, Iterative Closest Point, and SynthMorph. It also explores atlas-based registration and multistage image registration techniques, including coarse-fine and pyramid approaches. Furthermore, this survey paper discusses medical image registration taxonomies, datasets, evaluation measures, such as correlation-based metrics, segmentation-based metrics, processing time, and model size. It also explores applications in image-guided surgery, motion tracking, and tumor diagnosis. Finally, the document addresses future research directions, including the further development of transformers.