A method for tissue-mask supported whole-body image registration in the UK Biobank
Yasemin Utkueri, Elin Lundstr\"om, H{\aa}kan Ahlstr\"om, Johan \"Ofverstedt, Joel Kullberg

TL;DR
This paper introduces a tissue-mask supported whole-body image registration method for UK Biobank MR images, improving accuracy and anatomical alignment over previous intensity-only approaches, facilitating better medical research analysis.
Contribution
The novel method integrates tissue masks from VIBESegmentator with graph-cut registration, enhancing accuracy in whole-body MR image registration compared to existing methods.
Findings
Higher Dice scores and lower label error frequency with the proposed method.
More accurate age-related tissue correlation maps.
Improved anatomical alignment in registered images.
Abstract
The UK Biobank is a large-scale study collecting whole-body MR imaging and non-imaging health data. Robust and accurate inter-subject image registration of these whole-body MR images would enable their body-wide spatial standardization, and region-/voxel-wise correlation analysis of non-imaging data with image-derived parameters (e.g., tissue volume or fat content). We propose a sex-stratified inter-subject whole-body MR image registration approach that uses subcutaneous adipose tissue- and muscle-masks from the state-of-the-art VIBESegmentator method to augment intensity-based graph-cut registration. The proposed method was evaluated on a subset of 4000 subjects by comparing it to an intensity-only method as well as two previously published registration methods, uniGradICON and MIRTK. The evaluation comprised overlap measures applied to the 71 VIBESegmentator masks: 1) Dice scores,…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · 3D Shape Modeling and Analysis · Medical Image Segmentation Techniques
