Abstract

Calcified plaque in coronary arteries is one major cause and prediction of future coronary artery disease risk. Therefore, the detection of calcified plaque in coronary arteries is exceptionally significant in clinical for slowing coronary artery disease progression. At present, the Convolutional Neural Network (CNN) is exceedingly popular in natural images’ object detection field. Therefore, CNN in the object detection field of medical images also has a wide range of applications. However, many current calcified plaque detection methods in medical images are based on improving the CNN model algorithm, not on the characteristics of medical images. In response, we propose an automatic calcified plaque detection method in non-contrast-enhanced cardiac CT by adding medical prior knowledge. The training data merging with medical prior knowledge through data augmentation makes the object detection algorithm achieve a better detection result. In terms of algorithm, we employ a deep learning tool knows as Faster R-CNN in our method for locating calcified plaque in coronary arteries. To reduce the generation of redundant anchor boxes, Region Proposal Networks is replaced with guided anchoring. Experimental results show that the proposed method achieved a decent detection performance.

Highlights

  • Coronary artery disease (CAD) is a typical type of cardiovascular disease that seriously threatens people’s health, and the fall in mortality from cardiovascular disease can increase life expectancy [1].Calcified plaque in the coronary arteries predicts cardiovascular disease and all-cause mortality and is essential for making an early diagnosis of CAD [2]

  • We propose a data augmentation technique for calcified plaque detection, a fusion of medical prior knowledge

  • Computed Tomography (CT) is commonly used in clinical examination of the coronary arteries, which allows for noninvasive detection and characterization of calcified plaques

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Summary

Introduction

Calcified plaque in the coronary arteries predicts cardiovascular disease and all-cause mortality and is essential for making an early diagnosis of CAD [2]. Calcified plaque detection in coronary arteries is incredibly significant for slowing CAD progression. The application of Deep Learning has extensively promoted the development of computer vision. With the development of Deep Learning, more and more Deep Learning methods have appeared in medical image processing. In the novel corona-virus disease (COVID-19) pandemic, Deep Learning is used to detect lung infections in chest CT images. In [4], a weakly supervised Deep Learning method was proposed to detect infection and distinguish COVID-19 from non-COVID-19 cases. In [5], COVID TV-UNet was proposed to segment the regions infected by COVID-19 in CT images

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