Upright to supine image registration and contour propagation for thoracic patients
M. C. Martire, L. Volz, C. Galeone, M. Durante, M. Pankuch, C., Graeff

TL;DR
This paper introduces a method for registering upright and supine thoracic CT images and propagating contours, facilitating comparison of different patient positioning therapies and enabling advanced image fusion techniques in upright therapy.
Contribution
It presents a novel framework for deformable registration and contour propagation between upright and supine CTs, including an AI-based contouring tool validation for upright images.
Findings
High-quality lung structure registration with DSC > 0.94
Average Hausdorff distance around 1.5mm, below CT slice thickness
Successful application of AI contouring tool on upright images
Abstract
A renewed interest in upright therapy is currently driven by the availability of upright positioning and imaging systems. Aside from reduced cost, upright positioning possibly provides clinical advantages. The comparison between upright and supine particle therapy treatments can be biased through multiple variables, such as differences in the target contouring on the two CTs. We present a method for upright and supine CT registration and structures propagation, and the investigation of an AI-based contouring tool for upright images. Six paired 4DCTs from Proton Therapy Collaboration Group registry were available from the Northwestern Medicine Proton Centre. Deformable image registration (DIR) is challenged by the different patient anatomy between postures, causing artefacts in the warped images. To achieve high quality contour propagation, we propose the construction of a region of…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Medical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging
