Zhao B, Yankelevitz D, Reeves A, Henschke C
Department of Radiology, New York Hospital-Cornell Medical Center, New York 10021, USA.
Med Phys. 1999 Jun;26(6):889-95. doi: 10.1118/1.598605.
A multi-criterion algorithm for automatic delineation of small pulmonary nodules on helical CT images has been developed. In a slice-by-slice manner, the algorithm uses density, gradient strength, and a shape constraint of the nodule to automatically control segmentation process. The multiple criteria applied to separation of the nodule from its surrounding structures in lung are based on the fact that typical small pulmonary nodules on CT images have high densities, show a distinct difference in density at the boundary, and tend to be compact in shape. Prior to the segmentation, a region-of-interest containing the nodule is manually selected on the CT images. Then the segmentation process begins with a high density threshold that is decreased stepwise, resulting in expansion of the area of nodule candidates. This progressive region growing approach is terminated when subsequent thresholds provide either a diminished gradient strength of the nodule contour or significant changes of nodule shape from the compact form. The shape criterion added to the algorithm can effectively prevent the high density surrounding structures (e.g., blood vessels) from being falsely segmented as nodule, which occurs frequently when only the gradient strength criterion is applied. This has been demonstrated by examples given in the Results section. The algorithm's accuracy has been compared with that of radiologist's manual segmentation, and no statistically significant difference has been found between the nodule areas delineated by radiologist and those obtained by the multi-criterion algorithm. The improved nodule boundary allows for more accurate assessment of nodule size and hence nodule growth over a short time period, and for better characterization of nodule edges. This information is useful in determining malignancy status of a nodule at an early stage and thus provides significant guidance for further clinical management.
已开发出一种用于在螺旋CT图像上自动勾勒小肺结节的多标准算法。该算法以逐片方式,利用结节的密度、梯度强度和形状约束来自动控制分割过程。应用于将结节与其肺部周围结构分离的多个标准基于这样一个事实,即CT图像上典型的小肺结节具有高密度,在边界处显示出明显的密度差异,并且形状趋于紧凑。在分割之前,在CT图像上手动选择包含结节的感兴趣区域。然后分割过程从一个高密度阈值开始,该阈值逐步降低,导致候选结节区域扩大。当后续阈值导致结节轮廓的梯度强度减弱或结节形状从紧凑形式发生显著变化时,这种渐进式区域生长方法终止。添加到算法中的形状标准可以有效防止高密度的周围结构(如血管)被错误地分割为结节,当仅应用梯度强度标准时,这种情况经常发生。结果部分给出的示例已经证明了这一点。该算法的准确性已与放射科医生的手动分割进行比较,并且在放射科医生勾勒的结节区域与多标准算法获得的结节区域之间未发现统计学上的显著差异。改进后的结节边界允许更准确地评估结节大小,从而在短时间内评估结节生长情况,并更好地表征结节边缘。这些信息对于早期确定结节的恶性状态很有用,因此为进一步的临床管理提供了重要指导。