Neural network assessment of aortic, iliac, renal, and mesenteric artery calcification in CTA: Normalized scoring framework and comparison to threshold-based method
Johannes Halkoaho, Oskari Niiranen, Tuomas Kaseva, Arttu Ruohola, Eero Salli, Sauli Savolainen, Harri Hakovirta, Marko Kangasniemi

TL;DR
This paper introduces a deep learning method to automatically quantify calcification in abdominal arteries from CT scans, offering a reliable alternative to manual or threshold-based methods.
Contribution
A normalized deep learning framework for calcification quantification in abdominal arteries, benchmarked against threshold-based methods.
Findings
The neural network achieved performance comparable to threshold-based methods with slight improvements in segmentation metrics.
Predicted calcification burden scores correlated highly with ground truth scores.
The method enables fast and reproducible quantification of calcification in major abdominal vessels.
Abstract
Calcification of abdominal arteries is an important risk marker in vascular disease. Automated, objective quantification methods could improve reproducibility and reduce observer dependency in clinical practice. To develop and evaluate a deep learning method for quantifying abdominal arterial calcification from contrast-enhanced CT angiography (CTA). We retrospectively collected 223 CTA volumes, divided into 147 training and 76 test cases. Ground truth calcification segmentations were manually annotated, while vessel segmentations were generated by a previously trained neural network and manually refined. Two nnU-Net models were trained, one for artery segmentation and one for calcification segmentation. Renal, mesenteric, and common iliac arteries were shortened algorithmically. Performance of the models was evaluated using Dice score, volumetric similarity, sensitivity, precision,…
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Taxonomy
TopicsRenal and Vascular Pathologies · Peripheral Artery Disease Management · Parathyroid Disorders and Treatments
