Shanghai Advance Research Institute, Chinese Academy of Sciences, China.
J Healthc Eng. 2013;4(3):371-408. doi: 10.1260/2040-2295.4.3.371.
Whole heart segmentation from magnetic resonance imaging or computed tomography is a prerequisite for many clinical applications. Since manual delineation can be tedious and subject to bias, automating such segmentation becomes increasingly popular in the image computing field. However, fully automatic whole heart segmentation is challenging and only limited studies were reported in the literature. This article reviews the existing techniques and analyzes the challenges and methodologies. The techniques are classified in terms of the types of the prior models and the algorithms used to fit the model to unseen images. The prior models include the atlases and the deformable models, and the fitting algorithms are further decomposed into four key techniques including localization of the whole heart, initialization of substructures, refinement of boundary delineation, and regularization of shapes. Finally, the validation issues, challenges, and future directions are discussed.
心脏整体分割是许多临床应用的前提。由于手动勾画既繁琐又容易产生偏差,因此在图像计算领域,自动分割技术越来越受欢迎。然而,完全自动的心脏整体分割具有挑战性,目前文献中仅报道了有限的研究。本文综述了现有的技术,并分析了挑战和方法。这些技术根据先验模型的类型和用于将模型拟合到未见图像的算法进行分类。先验模型包括图谱和可变形模型,拟合算法进一步细分为四个关键技术,包括整个心脏的定位、子结构的初始化、边界描绘的细化以及形状的正则化。最后,讨论了验证问题、挑战和未来方向。