Abstract

Image registration is an important task in medical image analysis. Whereas most methods are designed for the registration of two images (pairwise registration), there is an increasing interest in simultaneously aligning more than two images using groupwise registration. Multimodal registration in a groupwise setting remains difficult, due to the lack of generally applicable similarity metrics. In this work, a novel similarity metric for such groupwise registration problems is proposed. The metric calculates the sum of the conditional entropy between each image in the group and a representative template image constructed iteratively using principal component analysis. The proposed metric is validated in extensive experiments on synthetic and intrasubject clinical image data. These experiments showed equivalent or improved registration accuracy compared to other state-of-the-art (dis)similarity metrics and improved transformation consistency compared to pairwise mutual information.

Highlights

  • Biomedical image registration is the process of spatially aligning medical images, allowing for an accurate and quantitative comparison

  • Results for the groupwise target registration error (gTRE) were compared in a pairwise manner among all similarity metrics

  • The Black&White experiment shows that the metric behavior of SAMI and SPC is equal to the behavior of the entropy of the images in the group

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Summary

Introduction

Biomedical image registration is the process of spatially aligning medical images, allowing for an accurate and quantitative comparison. An increasing number of image analysis tasks calls for the alignment of multiple (more than two) images. One approach to perform such a registration task would be to take one image in the group as a reference and register all other images to this reference in a pairwise manner. Such an approach has two distinct shortcomings. The choice of the reference image inherently biases the resulting transformations and subsequent data analysis towards the chosen reference

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