基因表达谱预测乳腺癌临床特征。

Erich Huang, Mike West, Joseph R Nevins
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引用次数: 0

摘要

我们将基因表达分析技术应用于人类乳腺癌的分析中,通过鉴定具有基于雌激素受体(ER)状态和淋巴结转移倾向区分乳腺肿瘤能力的metagene模型。我们评估了这些模型在交叉验证中预测肿瘤状态的效用和有效性。这些方法的实用价值不仅依赖于评估未来样本临床结果的相对概率的能力,而且还依赖于基于每个验证分析的基因子集的选择,对与这种预测分类相关的不确定性提供诚实的评估。后一点对于将这些方法应用于肿瘤表型临床评估的能力至关重要。从内质网预测中也可以清楚地看出,这些分析确定了已知参与内质网功能的基因,但也确定了参与内质网功能的新候选基因。我们相信这些基因表达表型具有表征肿瘤状态的复杂遗传改变的潜力,这种改变真正反映了受影响的调控途径的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene expression profiling for prediction of clinical characteristics of breast cancer.

We have applied techniques of gene expression analysis to the analysis of human breast cancer by identifying metagene models with the capacity to discriminate breast tumors based on estrogen receptor (ER) status as well as the propensity for lymph node metastasis. We assess the utility and validity of these models in predicting status of tumors in cross-validation determinations. The practical value of such approaches relies on the ability not only to assess relative probabilities of clinical outcomes for future samples but also to provide an honest assessment of the uncertainties associated with such predictive classifications, based on the selection of gene subsets for each validation analysis. This latter point is of critical importance to the ability of applying these methodologies to clinical assessment of tumor phenotype. It is also clear from ER predictions that these analyses identify genes known to be involved in ER function but also identify new candidate genes involved in ER function. We believe these gene expression phenotypes have the potential to characterize the complex genetic alterations that typify the neoplastic state in a way that truly reflects the complexity of the regulatory pathways that are affected.

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