Improving CCTA based lesions' hemodynamic significance assessment by accounting for partial volume modeling in automatic coronary lumen segmentation
Moti Freiman, Hannes Nickisch, Sven Prevrhal, Holger Schmitt, Mani, Vembar, P\'al Maurovich-Horvat, Patrick Donnelly, and Liran Goshen

TL;DR
This study demonstrates that incorporating partial volume effects into automatic coronary lumen segmentation from CCTA improves the accuracy of flow simulation and hemodynamic assessment of coronary lesions, aiding better diagnosis.
Contribution
The paper introduces a novel approach that integrates partial volume effect modeling into automatic coronary lumen segmentation, enhancing diagnostic accuracy over previous methods.
Findings
Segmentation accuracy improved by ~39% in surface distance error.
Flow simulation specificity increased from 0.6 to 0.68.
AUC for detecting significant CAD increased from 0.76 to 0.8.
Abstract
Purpose: The goal of this study was to assess the potential added benefit of accounting for partial volume effects (PVE) in an automatic coronary lumen segmentation algorithm from coronary computed tomography angiography (CCTA). Materials and methods: We assessed the potential added value of PVE integration as a part of the automatic coronary lumen segmentation algorithm by means of segmentation accuracy using the MICCAI 2012 challenge framework and by means of flow simulation overall accuracy, sensitivity, specificity, negative and positive predictive values and the receiver operated characteristic (ROC) area under the curve. We also evaluated the potential benefit of accounting for PVE in automatic segmentation for flow-simulation for lesions that were diagnosed as obstructive based on CCTA, which could have indicated a need for an invasive exam and revascularization. Results: Our…
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