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分群分析揭示了具有共同临床特征的乳腺癌肿瘤亚群,并提高了疾病复发的预测能力。

Biclustering reveals breast cancer tumour subgroups with common clinical features and improves prediction of disease recurrence.

机构信息

Auckland Bioengineering Institute, University of Auckland, Auckland, New Zealand.

出版信息

BMC Genomics. 2013 Feb 13;14:102. doi: 10.1186/1471-2164-14-102.

Abstract

BACKGROUND

Many studies have revealed correlations between breast tumour phenotypes, variations in gene expression, and patient survival outcomes. The molecular heterogeneity between breast tumours revealed by these studies has allowed prediction of prognosis and has underpinned stratified therapy, where groups of patients with particular tumour types receive specific treatments. The molecular tests used to predict prognosis and stratify treatment usually utilise fixed sets of genomic biomarkers, with the same biomarker sets being used to test all patients. In this paper we suggest that instead of fixed sets of genomic biomarkers, it may be more effective to use a stratified biomarker approach, where optimal biomarker sets are automatically chosen for particular patient groups, analogous to the choice of optimal treatments for groups of similar patients in stratified therapy. We illustrate the effectiveness of a biclustering approach to select optimal gene sets for determining the prognosis of specific strata of patients, based on potentially overlapping, non-discrete molecular characteristics of tumours.

RESULTS

Biclustering identified tightly co-expressed gene sets in the tumours of restricted subgroups of breast cancer patients. The co-expressed genes in these biclusters were significantly enriched for particular biological annotations and gene regulatory modules associated with breast cancer biology. Tumours identified within the same bicluster were more likely to present with similar clinical features. Bicluster membership combined with clinical information could predict patient prognosis in conditional inference tree and ridge regression class prediction models.

CONCLUSIONS

The increasing clinical use of genomic profiling demands identification of more effective methods to segregate patients into prognostic and treatment groups. We have shown that biclustering can be used to select optimal gene sets for determining the prognosis of specific strata of patients.

摘要

背景

许多研究揭示了乳腺癌肿瘤表型、基因表达变化与患者生存结局之间的相关性。这些研究揭示的乳腺癌分子异质性使得预后预测成为可能,并为分层治疗提供了依据,即具有特定肿瘤类型的患者群体接受特定的治疗。用于预测预后和分层治疗的分子测试通常使用固定的基因组生物标志物集,相同的生物标志物集用于测试所有患者。在本文中,我们提出,与其使用固定的基因组生物标志物集,不如使用分层生物标志物方法,即根据特定患者群体自动选择最佳生物标志物集,类似于在分层治疗中为相似患者群体选择最佳治疗方法。我们基于肿瘤潜在重叠而非离散的分子特征,说明了使用双聚类方法选择最佳基因集来确定特定患者亚组预后的有效性。

结果

双聚类确定了乳腺癌患者受限亚组肿瘤中紧密共表达的基因集。这些双聚类中的共表达基因显著富集了与乳腺癌生物学相关的特定生物学注释和基因调控模块。在同一双聚类中鉴定的肿瘤更可能具有相似的临床特征。双聚类成员身份结合临床信息可以在条件推断树和岭回归分类预测模型中预测患者预后。

结论

基因组分析的临床应用日益广泛,需要确定更有效的方法将患者分为预后和治疗组。我们已经表明,双聚类可用于选择最佳基因集来确定特定患者亚组的预后。

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