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Correlation ratio for unsupervised learning of...
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Correlation ratio for unsupervised learning of multi-modal deformable registration

Abstract

In recent years, unsupervised learning for deformable image registration has been a major research focus. This approach involves training a registration network using pairs of moving and fixed images, along with a loss function that combines an image similarity measure and deformation regularization. For multi-modal image registration tasks, the correlation ratio has been a widely-used image similarity measure historically, yet it has been underexplored in current deep learning methods. Here, we propose a differentiable correlation ratio to use as a loss function for learning-based multi-modal deformable image registration. This approach extends the traditionally non-differentiable implementation of the correlation ratio by using the Parzen windowing approximation, enabling backpropagation with deep neural networks. We validated the proposed correlation ratio on a multi-modal neuroimaging dataset. In addition, we established a Bayesian training framework to study how the trade-off between the deformation regularizer and similarity measures, including mutual information and our proposed correlation ratio, affects the registration performance. The source code is freely available at: bit.ly/3XTJrJh.

Authors

Chen X; Liu Y; Wei S; Carass A; Du Y; Chen J

Volume

13406

Publisher

SPIE, the international society for optics and photonics

Publication Date

January 1, 2025

DOI

10.1117/12.3047699

Name of conference

Medical Imaging 2025: Image Processing

Conference proceedings

Progress in Biomedical Optics and Imaging

ISSN

1605-7422
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