TL;DR
This paper introduces a novel abdominal CT landmark dataset with highly accurate vessel bifurcation pairs, enabling robust validation of deformable image registration algorithms in clinical applications.
Contribution
The authors created the first comprehensive abdominal CT landmark dataset with 1895 pairs, facilitating improved DIR algorithm validation and quality assurance.
Findings
Landmark pair accuracy estimated at 0.7+/-1.2mm.
Dataset includes 1895 landmark pairs across 30 patients.
Workflow combines deep learning, manual, and automated processes.
Abstract
Deformable image registration (DIR) is an enabling technology in many diagnostic and therapeutic tasks. Despite this, DIR algorithms have limited clinical use, largely due to a lack of benchmark datasets for quality assurance during development. To support future algorithm development, here we introduce our first-of-its-kind abdominal CT DIR benchmark dataset, comprising large numbers of highly accurate landmark pairs on matching blood vessel bifurcations. Abdominal CT image pairs of 30 patients were acquired from several public repositories as well as the authors' institution with IRB approval. The two CTs of each pair were originally acquired for the same patient on different days. An image processing workflow was developed and applied to each image pair: 1) Abdominal organs were segmented with a deep learning model, and image intensity within organ masks was overwritten. 2) Matching…
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