Efficacy of human experts and an automated segmentation algorithm in quantifying disease pathology in coronary computed tomography angiography: A head-to-head comparison with intravascular ultrasound imaging

Coronary computed tomography angiography (CCTA) analysis is currently performed by experts and is a laborious process. Fully automated edge-detection methods have been developed to expedite CCTA segmentation however their use is limited as there are concerns about their accuracy. This study aims to...

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Veröffentlicht in:Journal of cardiovascular computed tomography 2024-03, Vol.18 (2), p.142-153
Hauptverfasser: Çap, Murat, Ramasamy, Anantharaman, Parasa, Ramya, Tanboga, Ibrahim H., Maung, Soe, Morgan, Kimberley, Yap, Nathan A.L., Abou Gamrah, Mazen, Sokooti, Hessam, Kitslaar, Pieter, Reiber, Johan H.C., Dijkstra, Jouke, Torii, Ryo, Moon, James C., Mathur, Anthony, Baumbach, Andreas, Pugliese, Francesca, Bourantas, Christos V.
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Sprache:eng
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Zusammenfassung:Coronary computed tomography angiography (CCTA) analysis is currently performed by experts and is a laborious process. Fully automated edge-detection methods have been developed to expedite CCTA segmentation however their use is limited as there are concerns about their accuracy. This study aims to compare the performance of an automated CCTA analysis software and the experts using near-infrared spectroscopy-intravascular ultrasound imaging (NIRS-IVUS) as a reference standard. Fifty-one participants (150 vessels) with chronic coronary syndrome who underwent CCTA and 3-vessel NIRS-IVUS were included. CCTA analysis was performed by an expert and an automated edge detection method and their estimations were compared to NIRS-IVUS at a segment-, lesion-, and frame-level. Segment-level analysis demonstrated a similar performance of the two CCTA analyses (conventional and automatic) with large biases and limits of agreement compared to NIRS-IVUS estimations for the total atheroma (ICC: 0.55 vs 0.25, mean difference:192 (-102-487) vs 243 (-132-617) and percent atheroma volume (ICC: 0.30 vs 0.12, mean difference: 12.8 (−5.91-31.6) vs 20.0 (0.79–39.2). Lesion-level analysis showed that the experts were able to detect more accurately lesions than the automated method (68.2 ​% and 60.7 ​%) however both analyses had poor reliability in assessing the minimal lumen area (ICC 0.44 vs 0.36) and the maximum plaque burden (ICC 0.33 vs 0.33) when NIRS-IVUS was used as the reference standard. Conventional and automated CCTA analyses had similar performance in assessing coronary artery pathology using NIRS-IVUS as a reference standard. Therefore, automated segmentation can be used to expedite CCTA analysis and enhance its applications in clinical practice. The effectiveness of expert analysis in the evaluation of coronary computed tomography angiography (CCTA) is limited, time-consuming, and prone to interobserver variability. The study aims to compare the performance of an automated CCTA analysis software and the performance of experts using near-infrared spectroscopy-intravascular ultrasound imaging (NIRS-IVUS) as a reference standard. A total of 150 vessels from 51 patients were analysed. Automated segmentation of CCTA imaging data has limited accuracy but it is not inferior to expert analysis in assessing atheroma burden against NIRS-IVUS in patients with established coronary artery disease. Therefore, this approach provides a viable and time-effective option for CCTA volum
ISSN:1934-5925
1876-861X
DOI:10.1016/j.jcct.2023.12.007