Department of Radiology and Department of Bioengineering, University of Pittsburgh, 3362 Fifth Ave, Pittsburgh, PA 15213, USA.
IEEE Trans Vis Comput Graph. 2011 Jan;17(1):115-24. doi: 10.1109/TVCG.2010.56.
In three-dimensional medical imaging, segmentation of specific anatomy structure is often a preprocessing step for computer-aided detection/diagnosis (CAD) purposes, and its performance has a significant impact on diagnosis of diseases as well as objective quantitative assessment of therapeutic efficacy. However, the existence of various diseases, image noise or artifacts, and individual anatomical variety generally impose a challenge for accurate segmentation of specific structures. To address these problems, a shape analysis strategy termed "break-and-repair" is presented in this study to facilitate automated medical image segmentation. Similar to surface approximation using a limited number of control points, the basic idea is to remove problematic regions and then estimate a smooth and complete surface shape by representing the remaining regions with high fidelity as an implicit function. The innovation of this shape analysis strategy is the capability of solving challenging medical image segmentation problems in a unified framework, regardless of the variability of anatomical structures in question. In our implementation, principal curvature analysis is used to identify and remove the problematic regions and radial basis function (RBF) based implicit surface fitting is used to achieve a closed (or complete) surface boundary. The feasibility and performance of this strategy are demonstrated by applying it to automated segmentation of two completely different anatomical structures depicted on CT examinations, namely human lungs and pulmonary nodules. Our quantitative experiments on a large number of clinical CT examinations collected from different sources demonstrate the accuracy, robustness, and generality of the shape "break-and-repair" strategy in medical image segmentation.
在三维医学成像中,特定解剖结构的分割通常是计算机辅助检测/诊断(CAD)的预处理步骤,其性能对疾病的诊断以及治疗效果的客观定量评估有重大影响。然而,各种疾病的存在、图像噪声或伪影以及个体解剖结构的多样性,通常给特定结构的准确分割带来挑战。为了解决这些问题,本研究提出了一种称为“断裂-修复”的形状分析策略,以促进医学图像的自动分割。类似于使用有限数量的控制点进行曲面逼近,其基本思想是去除有问题的区域,然后通过用高保真度将剩余区域表示为隐式函数,来估计平滑且完整的曲面形状。这种形状分析策略的创新之处在于能够在统一的框架内解决具有挑战性的医学图像分割问题,而不受所关注的解剖结构变化的影响。在我们的实现中,主曲率分析用于识别和去除有问题的区域,而基于径向基函数(RBF)的隐式曲面拟合用于实现封闭(或完整)的曲面边界。通过将该策略应用于 CT 检查中描绘的两种完全不同的解剖结构(即人体肺部和肺结节)的自动分割,验证了该策略的可行性和性能。我们从不同来源收集的大量临床 CT 检查的定量实验证明了形状“断裂-修复”策略在医学图像分割中的准确性、鲁棒性和通用性。