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UNSUPERVISED DEFORMABLE MEDICAL IMAGE REGISTRATION WITH CONVOLUTIONAL NEURAL NETWORKS
PhD Thesis Proposal Defence Title: "UNSUPERVISED DEFORMABLE MEDICAL IMAGE REGISTRATION WITH CONVOLUTIONAL NEURAL NETWORKS" by Mr. Chi Wing MOK Abstract: Image registration and the subsequent quantitative assessment in medical imaging studies provide valuable information that is important for clinical diagnosis, evolutionary evaluation and planning of treatment strategies. The treatment quality and diagnosis precision of these applications highly rely on an accurate registration result of automated image registration algorithms. Therefore, it is essential to improve the robustness, accuracy and runtime of image registration. Recently, there is a rapid adoption of deep learning-based medical image registration applications over the past few years. While existing deep learning-based image registration approaches significantly accelerate the image registration by circumventing the costly iterative optimization process in conventional methods, these methods often ignore the desirable diffeomorphic properties of the transformation and fail spectacularly in images with large displacement settings and in medical images with pathologies. The core of this thesis proposal is to develop a novel learning-based image registration framework for deformable medical image registration, which addresses the aforementioned issues. The contributions are linked under the common theme of learning-based image registration, but stand on their own as valuable components within the image registration framework. In particular, a new unsupervised symmetric image registration method is proposed which maximizes the similarity between images within the space of diffeomorphic maps and estimates both forward and inverse transformations simultaneously. This original concept learns the image registration problem within the space of diffeomorphic maps, resulting in securing desirable diffeomorphic properties of the solution. Furthermore, we introduce a pioneering conditional deformable image registration architecture and learning paradigm for large deformation image registration and rapid hyperparameter tuning. By learning the conditional features that are correlated with the hyperparameters and utilizing the advantages of the multi-resolution architecture, our formulation achieves end-to-end fast image registration under large deformation settings and enables fast hyperparameter tuning in learning-based registration, where usual learning-based registration solutions do not succeed. Finally, we present a new deep learning-based deformable registration method that jointly estimates regions with absent correspondence and bidirectional deformation fields in pre-operative and follow-up brain tumour MRI scans. The experimental results demonstrated that our novel methods can achieve higher robustness and registration quality, as compared with state-of-the-art approaches, in deformable image registration under large deformation and images with missing correspondences. Date: Tuesday, 9 August 2022 Time: 2:00pm - 4:00pm Zoom Meeting: https://hkust.zoom.us/j/96051474396?pwd=bFJGS1d0Qk9tajl4S1V6MmE4VnFTdz09 Committee Members: Prof. Albert Chung (Supervisor) Prof. Pedro Sander (Supervisor) Dr. Minhao Cheng (Chairperson) Prof. Siu-Wing Cheng **** ALL are Welcome ****