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通过图像处理对福尔根染色乳腺癌切片中的有丝分裂进行计数:分辨率的影响。

Counting mitoses by image processing in Feulgen stained breast cancer sections: the influence of resolution.

作者信息

Beliën J A, Baak J P, van Diest P J, van Ginkel A H

机构信息

Department of Pathology, Academic Hospital Vrije Universiteit, Amsterdam, The Netherlands.

出版信息

Cytometry. 1997 Jun 1;28(2):135-40.

PMID:9181303
Abstract

Counting of mitotic cells has been shown to be of prognostic value in breast cancer in different retrospective studies. Up to now the number of mitoses is assessed mainly manually according to a standardized but strict protocol. Although such a manual procedure is reasonably reproducible, automatic counting of mitotic cells offers the potential for greater objectivity and reproducibility. This paper describes the influence of resolution on automatic recognition by image processing of mitotic cells in Feulgen stained breast cancer sections. Using the image recording, correction and segmentation procedure described in a previous study, five specimens were analyzed: one was used to serve as a training set and four were put aside for later use as independent test set. For each slide, objects from a pre-selected area were recorded at increasing resolution. For each object, contour features and optical density measurements were computed and stored in a data file for statistical analysis. The results showed that increased resolution using a 40x objective lowered the number of misclassified mitoses compared with a 20x objective (overall mean percentage of misclassified mitoses over training and all test specimens: 20x, 24.57; 40x, 7.96). The number of misclassifications of non-mitoses was almost stable per specimen but varied between specimens (19-42%) due to differences among tissues. Given the improvement in classifying mitoses and the possibility to evaluate interactively the measurement result, the described semi-automated mitoses pre-screener of histological sections may be suitable for further testing in a clinical setting.

摘要

在不同的回顾性研究中,有丝分裂细胞计数已被证明对乳腺癌具有预后价值。到目前为止,有丝分裂的数量主要是根据标准化但严格的方案进行人工评估。尽管这种人工操作具有合理的可重复性,但有丝分裂细胞的自动计数具有更高的客观性和可重复性潜力。本文描述了分辨率对福尔根染色乳腺癌切片中有丝分裂细胞图像处理自动识别的影响。使用先前研究中描述的图像记录、校正和分割程序,分析了五个标本:一个用作训练集,四个留作以后用作独立测试集。对于每张载玻片,以递增分辨率记录预选区域的物体。对于每个物体,计算轮廓特征和光密度测量值,并存储在数据文件中进行统计分析。结果表明,与20倍物镜相比,使用40倍物镜提高分辨率可降低误分类有丝分裂的数量(训练集和所有测试标本中误分类有丝分裂的总体平均百分比:20倍,24.57;40倍,7.96)。每个标本中非有丝分裂的误分类数量几乎稳定,但由于组织之间的差异,不同标本之间有所不同(19-42%)。鉴于在有丝分裂分类方面的改进以及交互式评估测量结果的可能性,所描述的组织学切片半自动有丝分裂预筛选器可能适合在临床环境中进行进一步测试。

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