论文标题
一个综合的3D框架,用于自动量化晚期gadolinium增强心脏磁共振图像
A Comprehensive 3-D Framework for Automatic Quantification of Late Gadolinium Enhanced Cardiac Magnetic Resonance Images
论文作者
论文摘要
晚期增强(LGE)心脏磁共振(CMR)可以直接可视化与正常心肌相对于正常强度的不可行的心肌。对于心脏病发作患者,通过分析和量化其LGE CMR图像来促进适当治疗的决定至关重要。为了实现准确的定量,需要分两个步骤处理LGE CMR图像:对心肌的分割,然后分类分段心肌内的梗塞。但是,通常由于心肌的强度异质性以及梗塞和血液池之间的强度相似性而难以自动分割。此外,LGE CMR数据集的切片通常会遭受空间和强度扭曲的影响,从而在分割和分类方面造成了进一步的困难。在本文中,我们提出了一个综合的3D框架,用于自动量化LGE CMR图像。在此框架中,心肌采用一种新颖的方法进行了分割,该方法将耦合的心内膜和心外膜网格变形,并在短轴切片和长轴切片中结合了信息,而梗塞则用图形切割的算法分类,该算法结合了强度和空间信息。此外,空间和强度扭曲均通过特殊设计的对策有效地校正。具有20组实际患者数据的实验表明,视觉上良好的细分和分类结果与专家手动获得的实验非常吻合。
Late gadolinium enhanced (LGE) cardiac magnetic resonance (CMR) can directly visualize nonviable myocardium with hyperenhanced intensities with respect to normal myocardium. For heart attack patients, it is crucial to facilitate the decision of appropriate therapy by analyzing and quantifying their LGE CMR images. To achieve accurate quantification, LGE CMR images need to be processed in two steps: segmentation of the myocardium followed by classification of infarcts within the segmented myocardium. However, automatic segmentation is difficult usually due to the intensity heterogeneity of the myocardium and intensity similarity between the infarcts and blood pool. Besides, the slices of an LGE CMR dataset often suffer from spatial and intensity distortions, causing further difficulties in segmentation and classification. In this paper, we present a comprehensive 3-D framework for automatic quantification of LGE CMR images. In this framework, myocardium is segmented with a novel method that deforms coupled endocardial and epicardial meshes and combines information in both short- and long-axis slices, while infarcts are classified with a graph-cut algorithm incorporating intensity and spatial information. Moreover, both spatial and intensity distortions are effectively corrected with specially designed countermeasures. Experiments with 20 sets of real patient data show visually good segmentation and classification results that are quantitatively in strong agreement with those manually obtained by experts.