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Four-Chamber Heart Modeling and Automatic Segmentation for 3-D Cardiac CT Volumes Using Marginal Space Learning and Steerable Features

机译:利用边缘空间学习和可操纵特征对3-D心脏CT体积进行四腔心脏建模和自动分割

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摘要

We propose an automatic four-chamber heart segmentation system for the quantitative functional analysis of the heart from cardiac computed tomography (CT) volumes. Two topics are discussed: heart modeling and automatic model fitting to an unseen volume. Heart modeling is a nontrivial task since the heart is a complex nonrigid organ. The model must be anatomically accurate, allow manual editing, and provide sufficient information to guide automatic detection and segmentation. Unlike previous work, we explicitly represent important landmarks (such as the valves and the ventricular septum cusps) among the control points of the model. The control points can be detected reliably to guide the automatic model fitting process. Using this model, we develop an efficient and robust approach for automatic heart chamber segmentation in 3D CT volumes. We formulate the segmentation as a two-step learning problem: anatomical structure localization and boundary delineation. In both steps, we exploit the recent advances in learning discriminative models. A novel algorithm, marginal space learning (MSL), is introduced to solve the 9-D similarity transformation search problem for localizing the heart chambers. After determining the pose of the heart chambers, we estimate the 3D shape through learning-based boundary delineation. The proposed method has been extensively tested on the largest dataset (with 323 volumes from 137 patients) ever reported in the literature. To the best of our knowledge, our system is the fastest with a speed of 4.0 s per volume (on a dual-core 3.2-GHz processor) for the automatic segmentation of all four chambers.
机译:我们提出了一种自动四腔心脏分割系统,用于从心脏计算机断层扫描(CT)量对心脏进行定量功能分析。讨论了两个主题:心脏建模和适应未知体积的自动模型。心脏建模是一项艰巨的任务,因为心脏是一个复杂的非刚性器官。该模型必须在解剖学上准确,可以手动编辑,并提供足够的信息以指导自动检测和分割。与以前的工作不同,我们明确表示了模型控制点之间的重要标志(例如瓣膜和室间隔尖瓣)。可以可靠地检测控制点,以指导自动模型拟合过程。使用此模型,我们为3D CT卷中的心腔自动分割开发了一种有效而强大的方法。我们将分割公式化为两步学习问题:解剖结构定位和边界勾画。在这两个步骤中,我们利用学习判别模型的最新进展。引入了一种新的算法,即边际空间学习(MSL),以解决9D相似性转换搜索问题,以定位心腔。确定心室的姿势后,我们通过基于学习的边界描绘来估计3D形状。所提出的方法已经在文献中报道的最大数据集(来自137位患者的323卷)中进行了广泛的测试。据我们所知,我们的系统是最快的,每体积4.0 s的速度(在双核3.2 GHz处理器上)可自动分割所有四个腔室。

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