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体外下调的低氧转录组与乳腺癌不良预后相关。

In vitro downregulated hypoxia transcriptome is associated with poor prognosis in breast cancer.

机构信息

Department of Electronic and Computer Engineering, Brunel University London, Uxbridge, Middlesex, UB8 3PH, UK.

Department of Plant Sciences, University of Oxford, Oxford, OX1 3RB, UK.

出版信息

Mol Cancer. 2017 Jun 15;16(1):105. doi: 10.1186/s12943-017-0673-0.

Abstract

BACKGROUND

Hypoxia is a characteristic of breast tumours indicating poor prognosis. Based on the assumption that those genes which are up-regulated under hypoxia in cell-lines are expected to be predictors of poor prognosis in clinical data, many signatures of poor prognosis were identified. However, it was observed that cell line data do not always concur with clinical data, and therefore conclusions from cell line analysis should be considered with caution. As many transcriptomic cell-line datasets from hypoxia related contexts are available, integrative approaches which investigate these datasets collectively, while not ignoring clinical data, are required.

RESULTS

We analyse sixteen heterogeneous breast cancer cell-line transcriptomic datasets in hypoxia-related conditions collectively by employing the unique capabilities of the method, UNCLES, which integrates clustering results from multiple datasets and can address questions that cannot be answered by existing methods. This has been demonstrated by comparison with the state-of-the-art iCluster method. From this collection of genome-wide datasets include 15,588 genes, UNCLES identified a relatively high number of genes (>1000 overall) which are consistently co-regulated over all of the datasets, and some of which are still poorly understood and represent new potential HIF targets, such as RSBN1 and KIAA0195. Two main, anti-correlated, clusters were identified; the first is enriched with MYC targets participating in growth and proliferation, while the other is enriched with HIF targets directly participating in the hypoxia response. Surprisingly, in six clinical datasets, some sub-clusters of growth genes are found consistently positively correlated with hypoxia response genes, unlike the observation in cell lines. Moreover, the ability to predict bad prognosis by a combined signature of one sub-cluster of growth genes and one sub-cluster of hypoxia-induced genes appears to be comparable and perhaps greater than that of known hypoxia signatures.

CONCLUSIONS

We present a clustering approach suitable to integrate data from diverse experimental set-ups. Its application to breast cancer cell line datasets reveals new hypoxia-regulated signatures of genes which behave differently when in vitro (cell-line) data is compared with in vivo (clinical) data, and are of a prognostic value comparable or exceeding the state-of-the-art hypoxia signatures.

摘要

背景

缺氧是肿瘤的一个特征,表明预后不良。基于这样的假设,即在细胞系中缺氧上调的基因有望成为临床数据中预后不良的预测因子,因此确定了许多预后不良的特征。然而,观察到细胞系数据并不总是与临床数据一致,因此应谨慎考虑细胞系分析的结论。由于有许多与缺氧相关的转录组细胞系数据集可用,因此需要采用综合方法来共同研究这些数据集,同时也不能忽略临床数据。

结果

我们通过使用 UNCLES 方法的独特功能,对 16 个不同的乳腺癌细胞系在缺氧相关条件下的转录组数据集进行了综合分析。UNCLES 可以整合来自多个数据集的聚类结果,并可以解决现有方法无法回答的问题。通过与最先进的 iCluster 方法进行比较,证明了这一点。从这个包含 15588 个基因的全基因组数据集集中,UNCLES 确定了相对较多的基因(总体上超过 1000 个),这些基因在所有数据集上都被一致地共同调控,其中一些基因仍然知之甚少,代表着新的潜在 HIF 靶标,如 RSBN1 和 KIAA0195。确定了两个主要的、反相关的聚类;第一个聚类富含参与生长和增殖的 MYC 靶标,而另一个聚类富含直接参与缺氧反应的 HIF 靶标。令人惊讶的是,在六个临床数据集中,一些生长基因的亚群与缺氧反应基因始终呈正相关,而不是在细胞系中观察到的那样。此外,由一个生长基因亚群和一个缺氧诱导基因亚群组成的组合特征预测不良预后的能力似乎与已知的缺氧特征相当,甚至更大。

结论

我们提出了一种适合整合来自不同实验设置的数据的聚类方法。将其应用于乳腺癌细胞系数据集揭示了新的缺氧调节基因特征,这些特征在体外(细胞系)数据与体内(临床)数据进行比较时表现不同,并且具有与最先进的缺氧特征相当或超过的预后价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f2ba/5472949/21632c12314d/12943_2017_673_Fig1_HTML.jpg

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