Cristoforetti Alessandro, Faes Luca, Ravelli Flavia, Centonze Maurizio, Del Greco Maurizio, Antolini Renzo, Nollo Giandomenico
Department of Physics, University of Trento, 38050 Povo, Trento, Italy.
Med Eng Phys. 2008 Jan;30(1):48-58. doi: 10.1016/j.medengphy.2007.01.003. Epub 2007 Mar 27.
The delineation of left atrium (LA) and pulmonary veins (PVs) anatomy from high resolution images holds importance for atrial fibrillation (AF) investigation and treatment. In this study, a semiautomatic segmentation procedure for LA and PVs inner surface from contrast enhanced CT data was developed. The procedure consists of a three dimensional marker controlled watershed segmentation applied to the external morphological gradient, followed by variable threshold surface extraction from the original intensity image. A preliminary anisotropic non-linear filtering was implemented to improve the S/N ratio of CT images. The performance of segmentation was evaluated on cardiac CT scans of 12 AF patients both qualitatively and quantitatively. The qualitative evaluation by expert radiologist assessed the segmentation as overall successful in all patients and capable of extracting both the LA body and the connected vascular trees. The quantitative validation, by computing discrepancy measures with respect to a manually segmented gold standard, indicated an average of about 90% of voxels correctly classified and an average border mismatch lower than 1.5 voxels (1.2 mm). The accurate extraction of the inner LA-PVs walls provided by this method, along with the minimal required human intervention, should facilitate the use of anatomical atrial models for the non-pharmacological treatment of AF.
从高分辨率图像中描绘左心房(LA)和肺静脉(PVs)的解剖结构对于心房颤动(AF)的研究和治疗具有重要意义。在本研究中,开发了一种从对比增强CT数据中半自动分割LA和PVs内表面的程序。该程序包括对外部形态梯度应用三维标记控制分水岭分割,然后从原始强度图像中提取可变阈值表面。实施了初步的各向异性非线性滤波以提高CT图像的信噪比。在12例AF患者的心脏CT扫描上对分割性能进行了定性和定量评估。放射科专家的定性评估认为所有患者的分割总体成功,并且能够提取LA主体和相连的血管树。通过计算相对于手动分割的金标准的差异度量进行的定量验证表明,平均约90%的体素分类正确,平均边界错配低于1.5体素(1.2毫米)。该方法提供的LA-PVs内壁的准确提取以及所需的最少人工干预,应有助于将解剖心房模型用于AF的非药物治疗。