首页> 外文期刊>Ultrasonic Imaging: An International Journal >Detecting the Media-adventitia Border in Intravascular Ultrasound Images through a Classification-based Approach
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Detecting the Media-adventitia Border in Intravascular Ultrasound Images through a Classification-based Approach

机译:通过基于分类的方法检测血管内超声图像中的媒体 - 去世边界

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摘要

The detection of the media-adventitia (MA) border in intravascular ultrasound (IVUS) images is essential for vessel assessment and disease diagnosis. However, it remains a challenging task, considering the existence of plaque, calcification, and various artifacts. In this article, an effective method based on classification is proposed to extract the MA border in IVUS images. First, a novel morphologic feature describing the relative position of each structure relative to the MA border, called RPES for short, is proposed. Then, the RPES feature and other features are employed in a multiclass extreme learning machine (ELM) to classify IVUS images into nine classes including the MA border and other structures. At last, a modified snake model is employed to effectively detect the MA border in the rectangular domain, in which a modified external force field is constructed on the basis of local border appearances and classification results. The proposed method is evaluated on a public dataset with 77 IVUS images by three indicators in eight situations, such as calcification and a guide wire artifact. With the proposed RPES feature, detection performances are improved by more than 39 percent, which shows an apparent advantage in comparative experiments. Furthermore, compared with two other existing methods used on the same dataset, the proposed method achieves 18 of the best indicators among 24, demonstrating its higher capability in detecting the MA border.
机译:在血管内超声(IVUS)图像中的媒体 - 去世(MA)边界的检测对于血管评估和疾病诊断至关重要。然而,考虑到存在斑块,钙化和各种伪影,它仍然是一个具有挑战性的任务。在本文中,提出了一种基于分类的有效方法,以提取IVUS图像中的MA边框。首先,提出了一种新的形态学特征,其描述了每个结构相对于MA边界的相对位置,称为短路的RPE。然后,RPES特征和其他特征在多级极端学习机(ELM)中采用,将IVUS图像分类为九个类,包括MA边界和其他结构。最后,采用改进的蛇模型来有效地检测矩形域中的MA边界,其中根据局部边界出现和分类结果构建改进的外力场。所提出的方法在具有77个IVUS图像的公共数据集中在八个情况下在具有77个IVUS图像的公共数据集中进行评估,例如钙化和导线伪像。利用所提出的RPE特征,检测性能提高了39%以上,这在比较实验中显示出明显的优势。此外,与在相同数据集上使用的另外两个现有方法相比,所提出的方法在24中实现了18个最佳指标,证明了其检测MA边界的更高能力。

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