Deep learning-based detection of functionally significant stenosis in coronary CT angiography

Nils Hampe, Sanne G M van Velzen, R Nils Planken, José P S Henriques, Carlos Collet, Jean-Paul Aben, Michiel Voskuil, Tim Leiner, Ivana Išgum

Research output: Contribution to journalArticleAcademicpeer-review

3 Citations (Scopus)

Abstract

Patients with intermediate anatomical degree of coronary artery stenosis require determination of its functional significance. Currently, the reference standard for determining the functional significance of a stenosis is invasive measurement of the fractional flow reserve (FFR), which is associated with high cost and patient burden. To address these drawbacks, FFR can be predicted non-invasively from a coronary CT angiography (CCTA) scan. Hence, we propose a deep learning method for predicting the invasively measured FFR of an artery using a CCTA scan. The study includes CCTA scans of 569 patients from three hospitals. As reference for the functional significance of stenosis, FFR was measured in 514 arteries in 369 patients, and in the remaining 200 patients, obstructive coronary artery disease was ruled out by Coronary Artery Disease-Reporting and Data System (CAD-RADS) category 0 or 1. For prediction, the coronary tree is first extracted and used to reconstruct an MPR for the artery at hand. Thereafter, the coronary artery is characterized by its lumen, its attenuation and the area of the coronary artery calcium in each artery cross-section extracted from the MPR using a CNN. Additionally, characteristics indicating the presence of bifurcations and information indicating whether the artery is a main branch or a side-branch of a main artery are derived from the coronary artery tree. All characteristics are fed to a second network that predicts the FFR value and classifies the presence of functionally significant stenosis. The final result is obtained by merging the two predictions. Performance of our method is evaluated on held out test sets from multiple centers and vendors. The method achieves an area under the receiver operating characteristics curve (AUC) of 0.78, outperforming other works that do not require manual correction of the segmentation of the artery. This demonstrates that our method may reduce the number of patients that unnecessarily undergo invasive measurements.

Original languageEnglish
Article number964355
JournalFrontiers in cardiovascular medicine
Volume9
DOIs
Publication statusPublished - 15 Nov 2022

Keywords

  • convolutional neural networks
  • coronary artery tree
  • coronary computed tomography angiography
  • fractional flow reserve
  • transformer

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