首页> 外文会议>Society of Photo-Optical Instrumentation Engineers Conference on Medical Imaging : Physiology and Function--Methods, Systems, and Applications >Semi-Automatic Segmentation of Non-Viable Cardiac Tissue Using Cine and Delayed Enhancement Magnetic Resonance Images
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Semi-Automatic Segmentation of Non-Viable Cardiac Tissue Using Cine and Delayed Enhancement Magnetic Resonance Images

机译:使用CINE和延迟增强磁共振图像的非活性心脏组织半自动分割

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Post myocardial infarction, the identification and assessment of non-viable (necrotic) tissues is necessary for effective development of intervention strategies and treatment plans. Delayed Enhancement Magnetic Resonance (DEMR) imaging is a technique whereby non-viable cardiac tissue appears with increased signal intensity. Radiologists typically acquire these images in conjunction with other functional modalities (e.g., MR Cine), and use domain knowledge and experience to isolate the non-viable tissues. In this paper, we present a technique for automatically segmenting these tissues given the delineation of myocardial borders in the DEMR and in the End-systolic and End-diastolic MR Cine images. Briefly, we obtain a set of segmentations furnished by an expert and employ an artificial intelligence technique, Support Vector Machines (SVMs), to "learn" the segmentations based on features culled from the images. Using those features we then allow the SVM to predict the segmentations the expert would provide on previously unseen images.
机译:心肌梗死后,鉴定和评估不可行(坏死)组织是有效地发展干预策略和治疗计划所必需的。延迟增强磁共振(DEMR)成像是一种技术,由此出现不良心脏组织的信号强度增加。放射科学医生通常与其他功能模式(例如,CINE MR)结合使用这些图像,并使用域知识和经验来分离不活组织。在本文中,鉴于DEMR中的心肌边界和末端 - 收缩期和终舒张MR CINE图像,我们提出了一种自动分割这些组织的技术。简而言之,我们获得由专家提供的一组分割,采用人工智能技术,支持向量机(SVM),“学习”基于从图像剔除的功能的分段。使用这些功能,我们允许SVM预测专家将在以前看不见的图像上提供的分段。

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