Automatic image classification in intravascular optical coherence tomography images

Mengdi Xu, Jun Cheng, D. Wong, A. Taruya, A. Tanaka, Jiang Liu, N. Foin, P. Wong
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引用次数: 8

Abstract

Vulnerable plaque detection to identify plaque is important in coronary heart disease diagnosis. Currently, it is conducted through manual reading of intravascular optical coherence tomography (IVOCT) images by an interventional cardiologist. However, human reading and understanding is highly subjective. An objective and automated assessment of plaque status is highly needed. This paper proposes a method for automatic image classification in IVOCT images based on different lesion types. In the proposed method, we first use detail-preserving anisotropic diffusion to remove speckle noise in IVOCT images. It removes the noise without losing details. Then, the IVOCT images are transformed to polar coordinates for feature extraction. In particular, Fisher vector and other texture features including local binary pattern and histogram of oriented gradients are studied. Finally, a support vector machine classifier is obtained to classify the IVOCT images into five groups: Normal (normal), FP (fibrous plaque), FA (fibroatheroma), PR (plaque rupture), and FC (fibrocalcific plaque). These five groups are obtained according to lesion characteristics. We evaluate the proposed method in a dataset of 1,000 images with five groups. Experimental results show that the proposed method achieves an average accuracy of 90% in image classification. The proposed automatic IVOCT image classification method can be used to save time and cost of cardiologist.
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血管内光学相干断层成像的自动图像分类
易损斑块检测在冠心病诊断中具有重要意义。目前,它是由介入心脏病专家通过手工读取血管内光学相干断层扫描(IVOCT)图像来进行的。然而,人类的阅读和理解是高度主观的。对斑块状态进行客观和自动的评估是非常必要的。提出了一种基于不同病灶类型的IVOCT图像自动分类方法。在该方法中,我们首先使用保持细节的各向异性扩散来去除IVOCT图像中的斑点噪声。它可以在不丢失细节的情况下去除噪音。然后,将IVOCT图像转换为极坐标进行特征提取。特别研究了Fisher向量和其他纹理特征,包括局部二值模式和定向梯度直方图。最后,获得支持向量机分类器,将IVOCT图像分为Normal(正常)、FP(纤维斑块)、FA(纤维粥样瘤)、PR(斑块破裂)和FC(纤维钙化斑块)五组。这五组是根据病变的特点得出的。我们在五组1000张图像的数据集中评估了所提出的方法。实验结果表明,该方法在图像分类中平均准确率达到90%。所提出的IVOCT图像自动分类方法可以节省心脏科医生的时间和成本。
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