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首页> 外文期刊>International journal of computational methods >A Machine Learning-Based Method for Intracoronary OCT Segmentation and Vulnerable Coronary Plaque Cap Thickness Quantification
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A Machine Learning-Based Method for Intracoronary OCT Segmentation and Vulnerable Coronary Plaque Cap Thickness Quantification

机译:基于机器学习的颅内型OCT细分和脆弱冠状动脉斑块帽厚度定量

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摘要

Accurate cap thickness quantification is of fundamental importance for vulnerable plaque detection in cardiovascular research. A segmentation method for intracoronary optical coherence tomography (OCT) image based on least squares support vector machine (LS-SVM) was performed to characterize plaque component borders and quantify fibrous cap thickness. Manual segmentation of OCT images were performed by experts based on combination of virtual-histology intravascular ultrasound (VH-IVUS) and OCT images and used as gold standard. The segmentation methods based on LS-SVM provided accurate plaque cap thickness (an 8.6% error by LS-SVM vs. 71% error by IVUS50) serving as solid basis for plaque modeling and assessment.
机译:准确的盖帽厚度量化对于心血管研究中脆弱的斑块检测是根本的重要性。 进行基于最小二乘支持向量机(LS-SVM)的颅内光学相干断层扫描(OCT)图像的分段方法,以表征斑块成分边界并量化纤维帽厚度。 OCT图像的手动分割由专家基于虚拟组织学血管内超声(VH-IVUS)和OCT图像的组合来进行,并用作金标准。 基于LS-SVM的分割方法提供了精确的斑块盖厚度(IVUS50的LS-SVM与71%误差8.6%误差)作为斑块建模和评估的坚实基础。

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