Abstract

The tissue composition and morphological structure of atherosclerotic plaques determine its stability or vulnerability. Intravascular optical coherence tomography ( IV OCT) has rapidly become the method of choice for assessing the pathology of the coronary arterial wall in vivo due to its superior resolution. However, in clinical practice, the analysis of plaque composition of OCT images mainly relies on the interpretation of images by well - trained experts, which is a time - consuming, labor - intensive procedure and it is also subjective . The purpose of this study is to use the Convolutional neural network ( CNN) method to automatically extract the best feature information from the OCT images to characterize the three basic components of atherosclerotic plaque (fibrous, lipid, and calcification). This study select ed the OCT images of 20 patients from Nanjing Drum Tower Hospital from 2015.12 to 2016.12. The OCT - reading expert first excluded the image s containing the brackets, and then divide d all the remaining images, resulting in 1500 plaque OCT images. The expert label ed plaque composition in each image, cut ting it into 11*11 image patches and obtained 87390 patches. 75000 of them were set as training examples and the others were set for testing. The classification accuracy of the test set serve d as the evaluation criterion. The experimental results show that the average classification accuracy of the fibrous, calcification, and lipid patches by the CNN classifier as over 75 %, especially to characterize the fibrous patches, whose accuracy could reach more than 80% . The proposed method is effective and robust in the analysis of atherosclerotic plaque composition in coronary OCT images, providing a base for further segmentation study.

Highlights

  • The tissue composition and morphological structure of atherosclerotic plaques determine its stability or vulnerability

  • In clinical practice, the analysis of plaque composition of OCT images mainly relies on the interpretation of images by well-trained experts, which is a time-consuming, labor-intensive procedure and it is subjective

  • The expert labeled plaque composition in each image, cutting it into 11*11 image patches and obtained 87390 patches. 75000 of them were set as training examples and the others were set for testing

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Summary

Introduction

The tissue composition and morphological structure of atherosclerotic plaques determine its stability or vulnerability. Characterization of Coronary Atherosclerotic Plaque Composition Based on Convolutional Neural Network (CNN) Yifan Yin1 , Chunliu He1, Biao Xu2 and Zhiyong Li1, *

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