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晚期卵巢癌的最小生成树分析。采样方法、可重复性及其与组织学分级相关性的研究。

Minimum spanning tree analysis in advanced ovarian carcinoma. An investigation of sampling methods, reproducibility and correlation with histologic grade.

作者信息

Brinkhuis M, Meijer G A, van Diest P J, Schuurmans L T, Baak J P

机构信息

Department of Pathology, Free University Hospital, Amsterdam, The Netherlands.

出版信息

Anal Quant Cytol Histol. 1997 Jun;19(3):194-201.

PMID:9196801
Abstract

OBJECTIVE

To investigate sampling methods and reproducibility of minimum spanning tree (MST) variables in advanced ovarian cancer and their discriminative power for histologic grade.

STUDY DESIGN

For the methodologic investigation, 30 cases of advanced ovarian cancer of the common epithelial types were used. These cases were equally distributed over the three histologic grades according to independent, "blind" assessments by three observers: well (n = 10), moderately (n = 10) and poorly (n = 10) differentiated. Additionally, the discriminative power of the MST variables for histologic grade was assessed in 64 cases (double-blind agreement upon grade by two observers). Measurements were performed on hematoxylin-eosin-stained tumor sections. In each field of vision the centers of gravity of tumor cell nuclei were interactively marked using a digitizing video overlay system, and an MST was computed. From each MST the number of points, total line length, average line length, minimum line length, maximum line length and percentage of points with one, two three and four neighbors were obtained. Optimal performance (coefficient of error < 5%) of the method was established when the MST was constructed in 12 systematically randomly selected fields of vision at a final magnification of 1,900x.

RESULTS

Intraobserver and interobserver reproducibility showed good correlation coefficients for most MST variables. Univariate analysis revealed that total, average and minimum line length were significantly different between the three histologic grades. With a jacknifed stepwise discriminant analysis an overall correct classification of 75% for the three histologic grades was achieved in 64 cases, using the average line length, standard deviation of the line length and total line length.

CONCLUSION

MST syntactic structure analysis offers an easy, fast and very reproducible technique that may be of help in objective grading of advanced ovarian cancers. Further studies are under way to investigate the prognostic value of MST analysis in advanced ovarian cancer.

摘要

目的

探讨晚期卵巢癌最小生成树(MST)变量的采样方法和可重复性,及其对组织学分级的判别能力。

研究设计

在方法学研究中,使用了30例常见上皮类型的晚期卵巢癌病例。根据三位观察者独立、“盲法”评估,这些病例在三个组织学分级中平均分布:高分化(n = 10)、中分化(n = 10)和低分化(n = 10)。此外,在64例病例中评估了MST变量对组织学分级的判别能力(两位观察者对分级进行双盲一致判定)。对苏木精-伊红染色的肿瘤切片进行测量。在每个视野中,使用数字化视频叠加系统交互式标记肿瘤细胞核的重心,并计算MST。从每个MST中获取点数、总线长、平均线长、最小线长、最大线长以及具有一个、两个、三个和四个邻域的点的百分比。当在最终放大倍数为1900倍的情况下,在12个系统随机选择的视野中构建MST时,该方法达到了最佳性能(误差系数<5%)。

结果

大多数MST变量的观察者内和观察者间可重复性显示出良好的相关系数。单因素分析显示,三个组织学分级之间的总线长、平均线长和最小线长存在显著差异。通过留一法逐步判别分析,在64例病例中,使用平均线长、线长标准差和总线长,对三个组织学分级的总体正确分类率达到了75%。

结论

MST句法结构分析提供了一种简单、快速且非常可重复的技术,可能有助于晚期卵巢癌的客观分级。正在进行进一步研究以探讨MST分析在晚期卵巢癌中的预后价值。

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