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Automated image analysis of cyclin D1 protein expression in invasive lobular breast carcinoma provides independent prognostic information

机译:侵袭性小叶型乳腺癌中cyclin D1蛋白表达的自动图像分析可提供独立的预后信息

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The emergence of automated image analysis algorithms has aided the enumeration, quantification, and immunohistochemical analyses of tumor cells in both whole section and tissue microarray samples. To date, the focus of such algorithms in the breast cancer setting has been on traditional markers in the common invasive ductal carcinoma subtype. Here, we aimed to optimize and validate an automated analysis of the cell cycle regulator cyclin D1 in a large collection of invasive lobular carcinoma and relate its expression to clinicopathologic data. The image analysis algorithm was trained to optimally match manual scoring of cyclin D1 protein expression in a subset of invasive lobular carcinoma tissue microarray cores. The algorithm was capable of distinguishing cyclin D1-positive cells and illustrated high correlation with traditional manual scoring (κ = 0.63). It was then applied to our entire cohort of 483 patients, with subsequent statistical comparisons to clinical data. We found no correlation between cyclin D1 expression and tumor size, grade, and lymph node status. However, overexpression of the protein was associated with reduced recurrence-free survival (P =.029), as was positive nodal status (P <.001) in patients with invasive lobular carcinoma. Finally, high cyclin D1 expression was associated with increased hazard ratio in multivariate analysis (hazard ratio, 1.75; 95% confidence interval, 1.05-2.89). In conclusion, we describe an image analysis algorithm capable of reliably analyzing cyclin D1 staining in invasive lobular carcinoma and have linked overexpression of the protein to increased recurrence risk. Our findings support the use of cyclin D1 as a clinically informative biomarker for invasive lobular breast cancer.
机译:自动化图像分析算法的出现有助于整个切片和组织微阵列样品中肿瘤细胞的计数,定量和免疫组化分析。迄今为止,这种算法在乳腺癌中的焦点一直集中在普通浸润性导管癌亚型中的传统标记上。在这里,我们旨在优化和验证大量侵袭性小叶癌中细胞周期调控细胞周期蛋白D1的自动化分析,并将其表达与临床病理数据联系起来。对图像分析算法进行了培训,以使其最佳匹配手动匹配的侵袭性小叶癌组织微阵列核心子集中的细胞周期蛋白D1蛋白表达。该算法能够区分细胞周期蛋白D1阳性细胞,并说明了与传统人工评分的高度相关性(κ= 0.63)。然后将其应用于我们的483名患者的整个队列,随后将其与临床数据进行统计学比较。我们发现细胞周期蛋白D1表达与肿瘤大小,等级和淋巴结状态之间无相关性。但是,该蛋白的过表达与无复发生存期降低(P = .029)以及浸润性小叶癌患者的淋巴结阳性状态(P <.001)一样。最后,在多变量分析中,细胞周期蛋白D1的高表达与危险比增加相关(危险比1.75; 95%置信区间1.05-2.89)。总之,我们描述了一种图像分析算法,该算法能够可靠地分析浸润性小叶癌中的细胞周期蛋白D1染色,并将蛋白质的过表达与复发风险增加联系起来。我们的发现支持细胞周期蛋白D1作为侵袭性小叶性乳腺癌的临床信息学生物标志物的使用。

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