4.6 Article

Assessment of New Coronary Features on Quantitative Coronary Angiographic Images With Innovative Unsupervised Artificial Adaptive Systems: A Proof-of-Concept Study

Journal

FRONTIERS IN CARDIOVASCULAR MEDICINE
Volume 8, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fcvm.2021.730626

Keywords

atherosclerosis; diagnostic; coronary angiography; artificial intelligence; ultrasonography; image processing; computer-assisted

Funding

  1. Italian Ministry of Health, Rome, Italy [RC2011 ID-2102343, RC2012 ID-2351878, RC 2013 ID-2600725, RC 2014 ID-2607406, RC2015 ID-2613071, RC2016 ID-2622813, RC2017 ID-2631162, RC2018 ID-2634534, RC2019 ID-2755481]

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This study demonstrates that ACMs can improve the measurement precision of coronary lumen diameter and extract hidden arterial wall features from QCA images effectively.
Background and Purpose: The Active Connection Matrixes (ACMs) are unsupervised artificial adaptive systems able to extract from digital images features of interest (edges, tissue differentiation, etc.) unnoticeable with conventional systems. In this proof-of-concept study, we assessed the potentiality of ACMs to increase measurement precision of morphological structures (e.g., stenosis and lumen diameter) and to grasp morphological features (arterial walls) from quantitative coronary angiography (QCA), unnoticeable on the original images. Methods: Archive images of QCA and intravascular ultrasound (IVUS) of 10 patients (8 men, age 69.1 +/- 9.7 years) who underwent both procedures for clinical reasons were retrospectively analyzed. Arterial features derived from IVUS images, conventional QCA images, and ACM-reprocessed QCA images were measured in 21 coronary segments. Portions of 1-mm length (263 for lumen and 526 for arterial walls) were head-to-head compared to assess quali-quantitative between-methods agreement. Results: When stenosis was calculated on ACM-reprocessed QCA images, the bias vs. IVUS (gold standard) did not improve, but the correlation coefficient of the QCA-IVUS relationship increased from 0.47 to 0.83. When IVUS-derived lumen diameters were compared with diameters obtained on ACM-reprocessed QCA images, the bias (-0.25 mm) was significantly smaller (p < 0.01) than that observed with original QCA images (0.58 mm). ACMs were also able to extract arterial wall features from QCA. The bias between the measures of arterial walls obtained with IVUS and ACMs, although significant (p < 0.01), was small [0.09 mm, 95% CI (0.03, 0.14)] and the correlation was fairly good (r = 0.63; p < 0.0001). Conclusions: This study provides proof of concept that ACMs increase the measurement precision of coronary lumen diameter and allow extracting from QCA images hidden features that mirror well the arterial walls derived by IVUS.

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