Philips Research Europe - Aachen, X-ray Imaging, 52062 Aachen, Germany.
Med Image Anal. 2011 Dec;15(6):863-76. doi: 10.1016/j.media.2011.06.004. Epub 2011 Jun 16.
Recently, model-based methods for the automatic segmentation of the heart chambers have been proposed. An important application of these methods is the characterization of the heart function. Heart models are, however, increasingly used for interventional guidance making it necessary to also extract the attached great vessels. It is, for instance, important to extract the left atrium and the proximal part of the pulmonary veins to support guidance of ablation procedures for atrial fibrillation treatment. For cardiac resynchronization therapy, a heart model including the coronary sinus is needed. We present a heart model comprising the four heart chambers and the attached great vessels. By assigning individual linear transformations to the heart chambers and to short tubular segments building the great vessels, variable sizes of the heart chambers and bending of the vessels can be described in a consistent way. A configurable algorithmic framework that we call adaptation engine matches the heart model automatically to cardiac CT angiography images in a multi-stage process. First, the heart is detected using a Generalized Hough Transformation. Subsequently, the heart chambers are adapted. This stage uses parametric as well as deformable mesh adaptation techniques. In the final stage, segments of the large vascular structures are successively activated and adapted. To optimize the computational performance, the adaptation engine can vary the mesh resolution and freeze already adapted mesh parts. The data used for validation were independent from the data used for model-building. Ground truth segmentations were generated for 37 CT data sets reconstructed at several cardiac phases from 17 patients. Segmentation errors were assessed for anatomical sub-structures resulting in a mean surface-to-surface error ranging 0.50-0.82mm for the heart chambers and 0.60-1.32mm for the parts of the great vessels visible in the images.
最近,已经提出了基于模型的方法来自动分割心脏腔室。这些方法的一个重要应用是对心脏功能进行特征描述。然而,心脏模型越来越多地用于介入指导,因此需要提取附着的大血管。例如,提取左心房和肺静脉的近端部分对于支持房颤治疗的消融程序的引导非常重要。对于心脏再同步治疗,需要包括冠状窦的心脏模型。我们提出了一个包含四个心脏腔室和附着的大血管的心脏模型。通过将单个线性变换分配给心脏腔室和构建大血管的短管状段,可以以一致的方式描述心脏腔室的可变大小和血管的弯曲。我们称之为自适应引擎的可配置算法框架可以在多阶段过程中自动将心脏模型匹配到心脏 CT 血管造影图像。首先,使用广义霍夫变换检测心脏。随后,适应心脏腔室。该阶段使用参数和可变形网格适配技术。在最后阶段,依次激活和适配大血管结构的段。为了优化计算性能,自适应引擎可以改变网格分辨率并冻结已经适应的网格部分。用于验证的数据与用于模型构建的数据是独立的。为 17 名患者的 37 个 CT 数据集在几个心脏相位重建生成了地面真实分割。对于解剖子结构的分割误差进行了评估,导致心脏腔室的平均表面到表面误差范围为 0.50-0.82mm,图像中可见的大血管部分的误差范围为 0.60-1.32mm。