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Data driven derivation of cutoffs from a pool of 3,030 Affymetrix arrays to stratify distinct clinical types of breast cancer

机译:数据驱动的3030个Affymetrix阵列的临界值的推导可对不同类型的乳腺癌进行分层

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摘要

Pooling of microarray datasets seems to be a reasonable approach to increase sample size when a heterogeneous disease like breast cancer is concerned. Different methods for the adaption of datasets have been used in the literature. We have analyzed influences of these strategies using a pool of 3,030 Affymetrix U133A microarrays from breast cancer samples. We present data on the resulting concordance with biochemical assays of well known parameters and highlight critical pitfalls. We further propose a method for the inference of cutoff values directly from the data without prior knowledge of the true result. The cutoffs derived by this method displayed high specificity and sensitivity. Markers with a bimodal distribution like ER, PgR, and HER2 discriminate different biological subtypes of disease with distinct clinical courses. In contrast, markers displaying a continuous distribution like proliferation markers as Ki67 rather describe the composition of the mixture of cells in the tumor.
机译:当涉及乳腺癌等异质性疾病时,合并微阵列数据集似乎是增加样本量的合理方法。文献中已经使用了不同的数据集适配方法。我们使用了来自乳腺癌样本的3030个Affymetrix U133A微阵列池,分析了这些策略的影响。我们提出了与众所周知的参数的生化分析结果一致性的数据,并强调了关键的陷阱。我们进一步提出了一种无需直接了解真实结果即可直接从数据推断临界值的方法。用这种方法得出的临界值显示出很高的特异性和敏感性。具有双峰分布的标记(例如ER,PgR和HER2)可通过不同的临床过程来区分疾病的不同生物学亚型。相反,显示出连续分布的标记物如Ki67等增殖标记物更能描述肿瘤细胞混合物的组成。

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