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Tytuł artykułu

Automated characterization and classification of coronary atherosclerotic plaques for intravascular optical coherence tomography

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Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Identification of coronary atherosclerotic plaques and vulnerable plaques is of great clinical significance in the diagnosis and treatment of coronary artery diseases, such as myocardial infarction and sudden death. Optical coherence tomography (OCT) is a catheter-based intracoronary imaging technique with high resolution (<20 μm) adopted to study the morphology of atherosclerotic plaques and identification of the composition of plaques. Nevertheless, manual characterization and quantification of plaques by clinicians is a labor-intensive and subjective procedure. This study aimed to propose a novel plaque characterization algorithm to automatically characterize and classify the atherosclerotic plaques (fibrous, calcific, and lipid-rich). First, nongeometric features such as Fisher vector, principal component analysis, histogram of the oriented gradient, and local binary pattern were investigated and adapted to two geometric features (basic feature and texture feature) to characterize the plaques. Second, for automated classification of the plaques, a hard example mining strategy was introduced to train support vector machine classifier and improve the effectiveness of training data. Third, to demonstrate the relationship between the selected features and the plaque classification accuracy, different feature compositions and comparisons were presented. The contribution of key features to the final classification was revealed. Datasets from 20 OCT pullbacks of 9 patients were used in the training and testing using the proposed algorithm. The overall classification accuracy reached 96.8%, and that of fibrous, calcific, and lipid-rich plaques was 94%, 97.2%, and 99.2%, respectively.
Twórcy
autor
  • Hebei University, Key Laboratory of Digital Medical Engineering of Hebei Province, College of Electronic and Information Engineering, Baoding, China
autor
  • Hebei University, Key Laboratory of Digital Medical Engineering of Hebei Province, College of Electronic and Information Engineering, Baoding, China
autor
  • Hebei University, Key Laboratory of Digital Medical Engineering of Hebei Province, College of Electronic and Information Engineering, Baoding, China
autor
  • Nanyang Technological University, School of Computer Engineering, Singapore
autor
  • Peking Union Medical College Hospital, Cardiology, Peking, China
autor
  • Hebei University, Key Laboratory of Digital Medical Engineering of Hebei Province, College of Electronic and Information Engineering, No. 180 Wusi East Road, Baoding, 071002, China
Bibliografia
  • [1] Tearney GJ, Jang IK, Kashiwagi M, et al. Imaging coronary atherosclerosis and vulnerable plaques with optical coherence tomography. Optical Coherence Tomography: Technology and Applications 2015;2109–30.
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  • [3] Fu Q, Zhao M, Wang D, et al. Coronary plaque characterization assessed by optical coherence tomography and plasma trimethylamine-N-oxide levels in patients with coronary artery disease. Am J Cardiol 2016;118(9):1311–5.
  • [4] Shalev R, Bezerra HG, Ray S, et al. Classification of calcium in intravascular OCT images for the purpose of intervention planning. Image-guided procedures, robotic interventions, and modeling. International Society for Optics and Photonics; 2016. 9786: 978605.
  • [5] Athanasiou LS, Bourantas CV, Rigas GA, et al. Fully automated calcium detection using optical coherence tomography. Engineering in Medicine and Biology Society (EMBC), 2013 35th Annual International Conference of the IEEE; 2013.
  • [6] Ughi GJ, Adriaenssens T, Sinnaeve P, et al. Automated tissue characterization of in vivo atherosclerotic plaques by intravascular optical coherence tomography images. Biomed Opt Express 2013;4(7):1014–30.
  • [7] Liu S, Sotomi Y, Eggermont J, et al. Tissue characterization with depth-resolved attenuation coefficient and backscatter term in intravascular optical coherence tomography images. J Biomed Opt 2017;22(9):096004.
  • [8] Athanasiou LS, Bourantas CV, Rigas G, et al. Methodology for fully automated segmentation and plaque characterization in intracoronary optical coherence tomography images. J Biomed Opt 2014;19(2):026009.
  • [9] Rico-Jimenez JJ, Campos-Delgado DU, Villiger M, et al. Automatic classification of atherosclerotic plaques imaged with intravascular OCT. Biomed Opt Express 2016;7 (10):4069–85.
  • [10] Xu M, Cheng J, Wong DWK, et al. Automatic image classification in intravascular optical coherence tomography images. Region 10 Conference (TENCON), 2016 IEEE; 2016.
  • [11] Shalev R, Nakamura D, Nishino S, et al. Automated volumetric intravascular plaque classification using optical coherence tomography. AI Mag 2017;38(1):61–72.
  • [12] Kolluru C, Prabhu D, Gharaibeh Y, et al. Voxel-based plaque classification in coronary intravascular optical coherence tomography images using decision trees. Medical Imaging 2018: Computer-Aided Diagnosis; 2018.
  • [13] Lee MW, Song JW, Kang WJ, et al. Comprehensive intravascular imaging of atherosclerotic plaque in vivo using optical coherence tomography and fluorescence lifetime imaging. Sci Rep 2018;8(1):1–12.
  • [14] Gnanadesigan M, van Soest G, White S, et al. Effect of temperature and fixation on the optical properties of atherosclerotic tissue: a validation study of an ex-vivo whole heart cadaveric model. Biomed Opt Express 2014;5 (4):1038–49.
  • [15] Abdolmanafi A, Duong L, Dahdah N, et al. Deep feature learning for automatic tissue classification of coronary artery using optical coherence tomography. Biomed Opt Express 2017;8(2):1203–20.
  • [16] He S, Zheng J, Maehara A, et al. Convolutional neural network based automatic plaque characterization for intracoronary optical coherence tomography images[C]// Medical Imaging 2018: Image Processing; 2018. 10574: 1057432.
  • [17] Gessert N, Lutz M, Heyder M, et al. Automatic plaque detection in IVOCT pullbacks using convolutional neural networks. IEEE Trans Med Imaging 2019;38(2):426–34.
  • [18] Shah NR, Howlett PJ, Fluck DS, et al. Optical coherence tomography in coronary atherosclerosis. MOJ Anat Physiol 2015;1(1):1–4.
  • [19] Yang J, Shi Y, Lin F, et al. Vessel intimal extraction of coronary optical coherence tomography imagery based on an improved CV model. J Med Imaging Health Inform 2017;7(1):235–40.
  • [20] Zhang B, Yang J, Wang G, et al. Plaque region segmentation of intracoronary optical cohenrence tomography images based on kernel graph cuts. J Biomed Eng 2017;34(1):15–20.
  • [21] Dalal N, Triggs B. Histograms of oriented gradients for human detection. IEEE Computer Society Conference on Computer Vision and Pattern Recognition, CVPR; 2005.
  • [22] Sanchez J, Perronnin F, Mensink T, et al. Image classification with the fisher vector: theory and practice. Int J Comput Vis 2013;105(3):222–45.
  • [23] Perronnin F, Dance C. Fisher kernels on visual vocabularies for image categorization. IEEE conference on computer vision and pattern recognition; 2007.
  • [24] Yabushita H, Bouma BE, Houser SL, et al. Characterization of human atherosclerosis by optical coherence tomography. Circulation 2002;106(13):1640–5.
  • [25] Athanasiou LS, Exarchos TP, Naka KK, et al. Atherosclerotic plaque characterization in optical coherence tomography images. 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society; 2011.
  • [26] Shrivastava A, Gupta A, Girshick R. Training region-based object detectors with online hard example mining. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition; 2016. p. 761–9.
  • [27] Kubo T, Matsuo Y, Ino Y, et al. Current clinical applications of intravascular optical coherence tomography in coronary artery disease. Ann Nucl Cardiol 2018;4(1):127–31.
  • [28] Boi A, Jamthikar AD, Saba L, et al. A survey on coronary atherosclerotic plaque tissue characterization in intravascular optical coherence tomography. Curr Atheroscler Rep 2018;20(7):33.
  • [29] Ye H, Wang S, Hu Y, et al. Therapeutic effects of different Atorvastatin doses on vulnerable plaques in coronary arteries assessed by intracoronary optical coherence tomography. Medicine (Baltimore) 2018;97(31):1–6.
Uwagi
PL
Opracowanie rekordu w ramach umowy 509/P-DUN/2018 ze środków MNiSW przeznaczonych na działalność upowszechniającą naukę (2019).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-1605dfed-727b-40ef-b34b-408605fdf5b3
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