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BREAST CANCER STRATIFICATION FROM ANALYSIS OF MICRO-ARRAY DATA OF MICRO-DISSECTED SPECIMENS

机译:微观分析标本的微阵列数据分析乳腺癌分层

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We describe a new method based on principal component analysis and robust consensus ensemble clustering to identify and elucidate the subtypes of breast cancer disease. The method was applied to microarray gene expression data using micro-dissection of samples from 36 breast cancer patients with at least two of three pathological stages of disease. Controls were normal breast epithelial cells from 3 disease free patients. Our method identified an optimum set of genes and strong, stable clusters which correlated well with clinical classification into Luminal, Basal and Her2+ subtypes based on ER, PR and Her2 status. It also revealed a hierarchical portrait of disease progression through various grades and stages and identified genes and functional pathways for each stage, grade and disease subtype. We found that gene expression heterogeneity across subtypes is much greater than the heterogeneity of progression from DCIS to IDC within a subtype, suggesting that the disease subtypes are distinct disease processes. The averaging over data perturbations and clustering methods is critical in the robust identification of subtypes and gene markers for grade and progression.
机译:我们描述了一种基于主成分分析和强大共识集群的新方法,以识别和阐明乳腺癌疾病的亚型。使用来自36例患有36例病理阶段的36例乳腺癌患者的微剖视图,将该方法应用于微阵列基因表达数据。来自3名疾病患者的对照是正常的乳腺上皮细胞。我们的方法鉴定了一种最佳的基因组和强稳定的簇,其基于ER,PR和HER2地位,临床分类良好,临床分类良好。它还通过各种等级和阶段揭示了疾病进展的分层肖像,并确定了每个阶段,等级和疾病亚型的基因和功能途径。我们发现,亚型的基因表达异质性远大于亚型中DCIS对IDC的进展的异质性,表明疾病亚型是不同的疾病过程。对数据扰动和聚类方法的平均值对于等级和进展的亚型和基因标记的鲁棒鉴定至关重要。

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