Automated analysis of fibrous cap in intravascular optical coherence tomography images of coronary arteries

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作者
Juhwan Lee
Gabriel T. R. Pereira
Yazan Gharaibeh
Chaitanya Kolluru
Vladislav N. Zimin
Luis A. P. Dallan
Justin N. Kim
Ammar Hoori
Sadeer G. Al-Kindi
Giulio Guagliumi
Hiram G. Bezerra
David L. Wilson
机构
[1] Case Western Reserve University,Department of Biomedical Engineering
[2] University Hospitals Cleveland Medical Center,Harrington Heart and Vascular Institute
[3] The Hashemite University,Department of Biomedical Engineering
[4] Galeazzi San’Ambrogio Hospital,Cardiovascular Department
[5] University of South Florida,Interventional Cardiology Center, Heart and Vascular Institute
[6] Case Western Reserve University,Department of Radiology
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摘要
Thin-cap fibroatheroma (TCFA) and plaque rupture have been recognized as the most frequent risk factor for thrombosis and acute coronary syndrome. Intravascular optical coherence tomography (IVOCT) can identify TCFA and assess cap thickness, which provides an opportunity to assess plaque vulnerability. We developed an automated method that can detect lipidous plaque and assess fibrous cap thickness in IVOCT images. This study analyzed a total of 4360 IVOCT image frames of 77 lesions among 41 patients. Expert cardiologists manually labeled lipidous plaque based on established criteria. To improve segmentation performance, preprocessing included lumen segmentation, pixel-shifting, and noise filtering on the raw polar (r, θ) IVOCT images. We used the DeepLab-v3 plus deep learning model to classify lipidous plaque pixels. After lipid detection, we automatically detected the outer border of the fibrous cap using a special dynamic programming algorithm and assessed the cap thickness. Our method provided excellent discriminability of lipid plaque with a sensitivity of 85.8% and A-line Dice coefficient of 0.837. By comparing lipid angle measurements between two analysts following editing of our automated software, we found good agreement by Bland–Altman analysis (difference 6.7° ± 17°; mean ~ 196°). Our method accurately detected the fibrous cap from the detected lipid plaque. Automated analysis required a significant modification for only 5.5% frames. Furthermore, our method showed a good agreement of fibrous cap thickness between two analysts with Bland–Altman analysis (4.2 ± 14.6 µm; mean ~ 175 µm), indicating little bias between users and good reproducibility of the measurement. We developed a fully automated method for fibrous cap quantification in IVOCT images, resulting in good agreement with determinations by analysts. The method has great potential to enable highly automated, repeatable, and comprehensive evaluations of TCFAs.
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