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Multi-atlas based neointima segmentation in intravascular coronary OCT

机译:血管内冠状动脉搭桥术中基于多图集的新内膜分割

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Neointima thickening plays a decisive role in coronary restenosis after stenting. The aim of this study is to detect neointima tissue in intravascular optical coherence tomography (IVOCT) sequences. We developed a multi-atlas based segmentation method to detect neointima without stent struts locations. The atlases are selected by measurements of stenosis and a similarity metric. The probability map is then used to estimate neointima label in the unseen image. To account for the registration errors, a patch-based label fusion approach is applied. Validation is performed using 18 typical in-vivo IVOCT sequences. The comparison against manual expert segmentation and other fusion approaches demonstrates that the proposed neointima identification is robust and accurate.
机译:新内膜增厚在置入支架后对冠状动脉再狭窄起决定性作用。这项研究的目的是在血管内光学相干断层扫描(IVOCT)序列中检测新内膜组织。我们开发了一种基于多图集的分割方法来检测没有支架支杆位置的新内膜。通过狭窄的测量和相似性度量选择地图集。然后,将概率图用于估计看不见图像中的新内膜标签。为了解决注册错误,应用了基于补丁的标签融合方法。使用18种典型的体内IVOCT序列进行验证。与手动专家分割和其他融合方法的比较表明,所提出的新内膜鉴定是可靠且准确的。

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