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首页> 外文期刊>International Journal of Integrated Engineering >Calcification Detection of Coronary Artery Disease in Intravascular Ultrasound Image: Deep Feature Learning Approach
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Calcification Detection of Coronary Artery Disease in Intravascular Ultrasound Image: Deep Feature Learning Approach

机译:血管内超声图像中冠状动脉疾病的钙化检测:深度特征学习方法

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Coronary artery disease (CAD) is part of the non-communicable disease (NCD) in cardiovascular disease (CVD). The blood vessel area became narrow when the calcification with the plaque embedded in the coronary artery inner wall. The radiologists and medical practitioners used visual inspection to detect calcification on IVUS image. The presence of calcification will not be able to do the measurement to calculate the maximum diameter and the maximum area for the patient coronary artery either before treatment or after treatment. More than 100 frames per patient is needed to analyse the location of the calcification. In this study, our aim is to detect the presence and the absence of the calcification in the coronary artery using intravascular ultrasound (IVUS) images with catheter frequency of 20MHz. The IVUS images used were the original Cartesian coordinate image and the polar reconstructed coordinate image. In this study, three types of convolutional neural network (CNN) using Directed Acyclic Graph networks, were used together with five types of classifiers. The dataset used to demonstrate our framework is Dataset B from MICCAI Challenge 2011 that consists of 2175 coronary artery disease IVUS image where 530 are IVUS images with calcification and 1645 are IVUS images without calcification. The cross validation for testing and training, the k-fold value used was 2, 3, 5 and 10. The performance measures for the ResNet-50, the ResNet-101 and the Inception-V3 model shows an excellent result using support vector machine classifier and discriminant analysis for both types of images. A better improvement using polar reconstructed coordinate image when using decision tree classifier and Na?ve Bayes classifier whilst ResNet-101 architecture shows an excellent performance measure when applying images polar reconstructed images when using k-nearest neighbor classifier. However, Na?ve Bayes classifier has an excellent result when using Inception-V3 architecture.
机译:冠状动脉疾病(CAD)是心血管疾病(CVD)中非传染性疾病(NCD)的一部分。当钙化斑块嵌入冠状动脉内壁时,血管区域变窄。放射科医生和医学从业人员使用目视检查来检测IVUS图像上的钙化。在治疗之前或之后,钙化的存在将无法进行测量以计算出患者冠状动脉的最大直径和最大面积。每个病人需要超过100帧来分析钙化的位置。在这项研究中,我们的目的是使用导管频率为20MHz的血管内超声(IVUS)图像检测冠状动脉中钙化的存在与否。使用的IVUS图像是原始的笛卡尔坐标图像和极坐标重建的坐标图像。在这项研究中,使用有向无环图网络的三种类型的卷积神经网络(CNN)与五种类型的分类器一起使用。用于证明我们框架的数据集是来自MICCAI Challenge 2011的数据集B,它由2175例冠状动脉疾病IVUS图像组成,其中530个是钙化的IVUS图像,而1645是没有钙化的IVUS图像。用于测试和训练的交叉验证,使用的k倍值为2、3、5和10。ResNet-50,ResNet-101和Inception-V3模型的性能指标使用支持向量机显示了出色的结果两种图像的分类器和判别分析。当使用决策树分类器和朴素贝叶斯分类器时,使用极坐标重建的坐标图像可以得到更好的改进,而ResNet-101体系结构在使用k最近邻分类器时应用极坐标重建图像时,则表现出出色的性能。但是,朴素贝叶斯分类器在使用Inception-V3体系结构时具有出色的结果。

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