Diffeomorphic MRI Image Registration using Deep Learning

Type: BA thesis

Status: finished

Date: December 10, 2020 - May 10, 2021

Supervisors: Andreas Maier, Seung Su Yoon

State-of-the-art deformable image registration approaches achieve impressive results and are commonly used in diverse image processing applications. However, these approaches are computationally expensive even on GPUs [1] due to their requirement to solve an optimization problem for each image pair during registration [2]. Most Learning based methods either required labeled data or do not guarantee a diffeomorphic registration or deformation field reversibility [1]. Adrian V. Dalca et. al. presented an unsupervised Deep-Learning framework for diffeomorphic image registration named Voxelmorph in [1].
In this thesis the network described in [1] will be implemented and trained on Cardiac Magnetic Resonance images to build an application for fast diffeomorphic image registration. The results will be compared to state-of-the-art diffeomorphic image registration methods. Additionally the method will be evaluated by comparing segmented areas as well as landmark locations of co-registered images. Furthermore the method in [1] will be extended to a one-to-many registration method using the approach in [3] to fulfill the desire for motion estimation of anatomy of interest for increasingly available dynamic imaging data [3]. Data used in this thesis will be provided by Siemens Healthineers. The implementation will be done using a open source framework like PyTorch [4].

The thesis will include the following points:

• Literature research of the topic of state-of-the-art methods regarding diffeomorphic image registration and one to many registration

• Implementing a Neural Network for diffeomorphic image regstration and extending it to a one-to-many registration

• Comparison of the results with state-of-the-art image registration methods

 

[1] Balakrishnan, G., Zhao, A., Sabuncu, M. R., Guttag, J. V. & Dalca, A. V. VoxelMorph: A Learning Framework for
Deformable Medical Image Registration. CoRR abs/1809.05231. arXiv: 1809.05231. http://arxiv.org/abs/1809.05231 (2018).
[2] Ashburner, J. A fast diffeomorphic image registration algorithm. NeuroImage 38, 95 –113. ISSN: 1053-8119. http://www.sciencedirect.com/science/article/pii/S1053811907005848 (2007).
[3] Metz, C., Klein, S., Schaap, M., van Walsum, T. & Niessen, W. Nonrigid registration of dynamic medical imaging data using nD+t B-splines and a groupwise optimization approach. Medical Image Analysis 15, 238 –249. ISSN: 1361-8415. http://www.sciencedirect.com/science/article/pii/S1361841510001155 (2011).
[4] Paszke, A. et al. PyTorch: An Imperative Style, High-Performance Deep Learning Library. CoRR abs/1912.01703. arXiv: 1912.01703. http://arxiv.org/abs/1912.01703 (2019).