Einstein A J, Gil J, Wallenstein S, Bodian C A, Sanchez M, Burstein D E, Wu H S, Liu Z
Department of Biomathematical Sciences, Mount Sinai School of Medicine, New York, NY 10029, USA.
J Microsc. 1997 Nov;188(Pt 2):136-48. doi: 10.1046/j.1365-2818.1997.2510808.x.
The segmentation of nuclear images is a crucial step in the development of procedures using image analysis for the cytological diagnosis of cancer. The purpose of this study is to evaluate the reproducibility and accuracy of several interactive segmentation methods which can be used in this context. Four methods were studied: a thresholding-based method enabling selection of intensity histogram contrast and brightness, manual tracing with a stylus, and arc- and ellipse-fitting routines. Features of nuclear size and shape were derived from nuclei segmented on repeated occasions by several individuals. Variance component models provided a statistical framework for evaluating the intraobserver and interobserver variability of these measurements in terms of their intraclass correlation coefficients. Of the methods tested, the arc-fitting segmentation method gave the most reproducible results, and thresholding the least. Reproducibility was generally very high both between individuals and for repeated segmentations by a single individual. Accuracies of area measurements for the various methods, as determined with respect to point counting, paralleled the reproducibilities of the methods. Sample size requirements were observed to be more dependent on the biological variability of the tissue sampled than on the particular segmentation method or on the number of individuals performing segmentation.
细胞核图像分割是利用图像分析进行癌症细胞学诊断程序开发中的关键步骤。本研究的目的是评估几种可用于此背景下的交互式分割方法的可重复性和准确性。研究了四种方法:一种基于阈值的方法,可选择强度直方图对比度和亮度,用触控笔进行手动追踪,以及圆弧和椭圆拟合程序。细胞核大小和形状特征源自多个个体在重复情况下分割的细胞核。方差分量模型提供了一个统计框架,用于根据组内相关系数评估这些测量在观察者内和观察者间的变异性。在所测试的方法中,圆弧拟合分割方法给出的结果最具可重复性,而阈值法的可重复性最低。个体之间以及单个个体的重复分割的可重复性通常都非常高。各种方法的面积测量准确性,相对于点计数法而言,与方法的可重复性相当。观察到样本量要求更多地取决于所采样组织的生物学变异性,而不是特定的分割方法或进行分割的个体数量。