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男性乳腺癌全切片图像中自动提取核形态计量特征的预后价值。

Prognostic value of automatically extracted nuclear morphometric features in whole slide images of male breast cancer.

机构信息

Image Sciences Institute, University Medical Center Utrecht, Utrecht, The Netherlands.

出版信息

Mod Pathol. 2012 Dec;25(12):1559-65. doi: 10.1038/modpathol.2012.126. Epub 2012 Aug 17.

DOI:10.1038/modpathol.2012.126
PMID:22899294
Abstract

Numerous studies have shown the prognostic significance of nuclear morphometry in breast cancer patients. Wide acceptance of morphometric methods has, however, been hampered by the tedious and time consuming nature of the manual segmentation of nuclei and the lack of equipment for high throughput digitization of slides. Recently, whole slide imaging became more affordable and widely available, making fully digital pathology archives feasible. In this study, we employ an automatic nuclei segmentation algorithm to extract nuclear morphometry features related to size and we analyze their prognostic value in male breast cancer. The study population comprised 101 male breast cancer patients for whom survival data was available (median follow-up of 5.7 years). Automatic segmentation was performed on digitized tissue microarray slides, and for each patient, the mean nuclear area and the standard deviation of the nuclear area were calculated. In univariate survival analysis, a significant difference was found between patients with low and high mean nuclear area (P=0.022), while nuclear atypia score did not provide prognostic value. In Cox regression, mean nuclear area had independent additional prognostic value (P=0.032) to tumor size and tubule formation. In conclusion, we present an automatic method for nuclear morphometry and its application in male breast cancer prognosis. The automatically extracted mean nuclear area proved to be a significant prognostic indicator. With the increasing availability of slide scanning equipment in pathology labs, these kinds of quantitative approaches can be easily integrated in the workflow of routine pathology practice.

摘要

大量研究表明核形态计量学在乳腺癌患者中的预后意义。然而,由于核的手动分割繁琐且耗时,以及缺乏高通量幻灯片数字化设备,形态计量方法的广泛接受受到了阻碍。最近,全切片成像变得更加实惠且广泛可用,使得全数字化病理学档案成为可能。在这项研究中,我们使用自动核分割算法提取与大小相关的核形态计量特征,并分析它们在男性乳腺癌中的预后价值。研究人群包括 101 名男性乳腺癌患者,这些患者的生存数据可用(中位随访时间为 5.7 年)。对数字化组织微阵列载玻片进行自动分割,并为每位患者计算平均核面积和核面积的标准差。在单变量生存分析中,低平均核面积和高平均核面积患者之间存在显著差异(P=0.022),而核异型评分没有提供预后价值。在 Cox 回归中,平均核面积具有独立的附加预后价值(P=0.032),优于肿瘤大小和管腔形成。总之,我们提出了一种用于核形态计量学的自动方法及其在男性乳腺癌预后中的应用。自动提取的平均核面积被证明是一个重要的预后指标。随着病理实验室中玻片扫描设备的日益普及,这些定量方法可以很容易地整合到常规病理实践的工作流程中。

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