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一种基于纹理的模式识别方法,用于区分组织病理组织微阵列切片中的黑素瘤和非黑素瘤细胞。

A texture based pattern recognition approach to distinguish melanoma from non-melanoma cells in histopathological tissue microarray sections.

机构信息

Department of Genetics and Pathology and Science for Life Laboratory, Rudbeck Laboratory, Uppsala University, Uppsala, Sweden.

出版信息

PLoS One. 2013 May 17;8(5):e62070. doi: 10.1371/journal.pone.0062070. Print 2013.

Abstract

AIMS

Immunohistochemistry is a routine practice in clinical cancer diagnostics and also an established technology for tissue-based research regarding biomarker discovery efforts. Tedious manual assessment of immunohistochemically stained tissue needs to be fully automated to take full advantage of the potential for high throughput analyses enabled by tissue microarrays and digital pathology. Such automated tools also need to be reproducible for different experimental conditions and biomarker targets. In this study we present a novel supervised melanoma specific pattern recognition approach that is fully automated and quantitative.

METHODS AND RESULTS

Melanoma samples were immunostained for the melanocyte specific target, Melan-A. Images representing immunostained melanoma tissue were then digitally processed to segment regions of interest, highlighting Melan-A positive and negative areas. Color deconvolution was applied to each region of interest to separate the channel containing the immunohistochemistry signal from the hematoxylin counterstaining channel. A support vector machine melanoma classification model was learned from a discovery melanoma patient cohort (n = 264) and subsequently validated on an independent cohort of melanoma patient tissue sample images (n = 157).

CONCLUSION

Here we propose a novel method that takes advantage of utilizing an immuhistochemical marker highlighting melanocytes to fully automate the learning of a general melanoma cell classification model. The presented method can be applied on any protein of interest and thus provides a tool for quantification of immunohistochemistry-based protein expression in melanoma.

摘要

目的

免疫组织化学是临床癌症诊断中的常规实践,也是用于生物标志物发现研究的组织基础研究的成熟技术。需要对免疫组织化学染色的组织进行繁琐的手动评估进行完全自动化,以充分利用组织微阵列和数字病理学实现高通量分析的潜力。此类自动化工具还需要针对不同的实验条件和生物标志物靶标具有可重复性。在这项研究中,我们提出了一种新颖的、经过监督的黑色素瘤特异性模式识别方法,该方法完全自动化且定量。

方法和结果

对黑色素瘤样本进行黑色素细胞特异性靶标 Melan-A 的免疫染色。然后对代表免疫染色的黑色素瘤组织的图像进行数字处理,以分割感兴趣的区域,突出显示 Melan-A 阳性和阴性区域。对每个感兴趣区域应用颜色反卷积,将包含免疫组织化学信号的通道与苏木精复染通道分离。从发现的黑色素瘤患者队列(n=264)中学习支持向量机黑色素瘤分类模型,然后在独立的黑色素瘤患者组织样本图像队列(n=157)上进行验证。

结论

在这里,我们提出了一种新的方法,该方法利用突出黑色素细胞的免疫组织化学标志物来充分实现一般黑色素瘤细胞分类模型的学习自动化。所提出的方法可应用于任何感兴趣的蛋白质,因此为基于免疫组织化学的黑色素瘤中蛋白质表达的定量提供了一种工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/743d/3656869/27eb8d33bc10/pone.0062070.g001.jpg

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