Datamining approach for automation of diagnosis of breast cancer in immunohistochemically stained tissue microarray images.

Keerthana Prasad, Bernhard Zimmermann, Gopalakrishna Prabhu, Muktha Pai
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引用次数: 4

Abstract

Cancer of the breast is the second most common human neoplasm, accounting for approximately one quarter of all cancers in females after cervical carcinoma. Estrogen receptor (ER), Progesteron receptor and human epidermal growth factor receptor (HER-2/neu) expressions play an important role in diagnosis and prognosis of breast carcinoma. Tissue microarray (TMA) technique is a high throughput technique which provides a standardized set of images which are uniformly stained, facilitating effective automation of the evaluation of the specimen images. TMA technique is widely used to evaluate hormone expression for diagnosis of breast cancer. If one considers the time taken for each of the steps in the tissue microarray process workflow, it can be observed that the maximum amount of time is taken by the analysis step. Hence, automated analysis will significantly reduce the overall time required to complete the study. Many tools are available for automated digital acquisition of images of the spots from the microarray slide. Each of these images needs to be evaluated by a pathologist to assign a score based on the staining intensity to represent the hormone expression, to classify them into negative or positive cases. Our work aims to develop a system for automated evaluation of sets of images generated through tissue microarray technique, representing the ER expression images and HER-2/neu expression images. Our study is based on the Tissue Microarray Database portal of Stanford university at http://tma.stanford.edu/cgi-bin/cx?n=her1, which has made huge number of images available to researchers. We used 171 images corresponding to ER expression and 214 images corresponding to HER-2/neu expression of breast carcinoma. Out of the 171 images corresponding to ER expression, 104 were negative and 67 were representing positive cases. Out of the 214 images corresponding to HER-2/neu expression, 112 were negative and 102 were representing positive cases. Our method has 92.31% sensitivity and 93.18% specificity for ER expression image classification and 96.67% sensitivity and 88.24% specificity for HER-2/neu expression image classification.

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免疫组织化学染色组织芯片图像中自动化诊断乳腺癌的数据挖掘方法。
乳腺癌是第二常见的人类肿瘤,约占女性癌症的四分之一,仅次于宫颈癌。雌激素受体(ER)、孕激素受体(Progesteron receptor)和人表皮生长因子受体(HER-2/neu)的表达在乳腺癌的诊断和预后中起重要作用。组织微阵列(TMA)技术是一种高通量技术,它提供了一组均匀染色的标准化图像,促进了标本图像评估的有效自动化。TMA技术被广泛用于评估乳腺癌的激素表达。如果考虑组织微阵列处理工作流程中每个步骤所花费的时间,可以观察到分析步骤所花费的时间最多。因此,自动化分析将显著减少完成研究所需的总时间。许多工具可用于自动数字采集微阵列载玻片上斑点的图像。每一张图像都需要由病理学家评估,根据染色强度分配一个分数来代表激素表达,将它们分为阴性或阳性病例。我们的工作旨在开发一个系统,用于自动评估通过组织微阵列技术生成的图像集,代表ER表达图像和HER-2/ new表达图像。我们的研究基于斯坦福大学的组织微阵列数据库门户网站http://tma.stanford.edu/cgi-bin/cx?n=her1,该网站为研究人员提供了大量的图像。我们使用了171张与ER表达相对应的图像,214张与HER-2/neu表达相对应的图像。在171张与ER表达相对应的图像中,104张为阴性,67张为阳性。在214张HER-2/neu表达的图像中,112张为阴性,102张为阳性。该方法对ER表达图像分类的灵敏度为92.31%,特异性为93.18%;对HER-2/neu表达图像分类的灵敏度为96.67%,特异性为88.24%。
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