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一种使用正交最小二乘法和监督机器学习的 IV-OCT 分叉标识符。

A bifurcation identifier for IV-OCT using orthogonal least squares and supervised machine learning.

机构信息

Division of Informatics, Heart Institute (InCor), University of São Paulo Medical School, Av. Dr. Eneas de Carvalho, 44, cep:05403-900 São Paulo, Brazil.

Hemodynamics, Heart Institute (InCor), University of São Paulo Medical School, Av. Dr. Eneas de Carvalho, 44, cep:05403-900 São Paulo, Brazil.

出版信息

Comput Med Imaging Graph. 2015 Dec;46 Pt 2:237-48. doi: 10.1016/j.compmedimag.2015.09.004. Epub 2015 Sep 21.

Abstract

Intravascular optical coherence tomography (IV-OCT) is an in-vivo imaging modality based on the intravascular introduction of a catheter which provides a view of the inner wall of blood vessels with a spatial resolution of 10-20 μm. Recent studies in IV-OCT have demonstrated the importance of the bifurcation regions. Therefore, the development of an automated tool to classify hundreds of coronary OCT frames as bifurcation or nonbifurcation can be an important step to improve automated methods for atherosclerotic plaques quantification, stent analysis and co-registration between different modalities. This paper describes a fully automated method to identify IV-OCT frames in bifurcation regions. The method is divided into lumen detection; feature extraction; and classification, providing a lumen area quantification, geometrical features of the cross-sectional lumen and labeled slices. This classification method is a combination of supervised machine learning algorithms and feature selection using orthogonal least squares methods. Training and tests were performed in sets with a maximum of 1460 human coronary OCT frames. The lumen segmentation achieved a mean difference of lumen area of 0.11 mm(2) compared with manual segmentation, and the AdaBoost classifier presented the best result reaching a F-measure score of 97.5% using 104 features.

摘要

血管内光学相干断层扫描(IV-OCT)是一种基于将导管引入血管内的体内成像方式,可提供 10-20μm 空间分辨率的血管内壁视图。IV-OCT 的最新研究表明,分支区域很重要。因此,开发一种自动工具来将数百个冠状动脉 OCT 帧分类为分支或非分支,可以是改善动脉粥样硬化斑块定量、支架分析和不同模态之间配准的自动方法的重要步骤。本文描述了一种用于识别分支区域中的 IV-OCT 帧的全自动方法。该方法分为管腔检测、特征提取和分类,提供管腔面积定量、横截面管腔的几何特征和标记切片。这种分类方法是监督机器学习算法和使用正交最小二乘法进行特征选择的组合。训练和测试在最大包含 1460 个人冠状动脉 OCT 帧的集合中进行。与手动分割相比,管腔分割的管腔面积平均差异为 0.11mm2,而使用 104 个特征的 AdaBoost 分类器的 F 度量得分最高,达到 97.5%。

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