TL;DR
This paper introduces a novel training-time privileged modality approach for cross-modality image registration, significantly improving accuracy in multiparametric MRI alignment for prostate cancer imaging.
Contribution
It proposes a learning algorithm that leverages an additional modality available only during training to enhance registration between challenging image pairs.
Findings
Achieved a median target registration error of 4.34 mm after registration.
Outperformed classical iterative and other learning-based methods.
Enabled efficient registration with comparable or better accuracy.
Abstract
In this work, we consider the task of pairwise cross-modality image registration, which may benefit from exploiting additional images available only at training time from an additional modality that is different to those being registered. As an example, we focus on aligning intra-subject multiparametric Magnetic Resonance (mpMR) images, between T2-weighted (T2w) scans and diffusion-weighted scans with high b-value (DWI). For the application of localising tumours in mpMR images, diffusion scans with zero b-value (DWI) are considered easier to register to T2w due to the availability of corresponding features. We propose a learning from privileged modality algorithm, using a training-only imaging modality DWI, to support the challenging multi-modality registration problems. We present experimental results based on 369 sets of 3D multiparametric MRI images from…
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