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A sparse regulatory network of copy-number driven expression reveals putative breast cancer oncogenes

机译:拷贝数驱动表达的稀疏调控网络揭示了推定的乳腺癌癌基因

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The influence of DNA cis-regulatory elements on a gene's expression has been intensively studied. However, little is known about expressions driven by trans-acting DNA hotspots. DNA hotspots harboring copy number aberrations are recognized to be important in cancer as they influence multiple genes on a global scale. The challenge in detecting trans-effects is mainly due to the computational difficulty in detecting weak and sparse trans-acting signals amidst co-occuring passenger events. We propose an integrative approach to learn a sparse interaction network of DNA copy-number regions with their downstream targets in a breast cancer dataset. Information from this network helps distinguish copy-number driven from copy-number independent expression changes on a global scale. Our result further delineates cis- and trans-effects in a breast cancer dataset, for which important oncogenes such as ESR1 and ERBB2 appear to be highly copy-number dependent. Further, our model is shown to be efficient and in terms of goodness of fit no worse than other state-of the art predictors and network reconstruction models using both simulated and real data.
机译:DNA顺式调控元件对基因表达的影响已得到深入研究。但是,关于反式DNA热点驱动的表达知之甚少。具有拷贝数畸变的DNA热点在癌症中被认为是重要的,因为它们在全球范围内影响多个基因。检测反作用的挑战主要是由于在同时发生的乘客事件中检测弱而稀疏的反作用信号的计算困难。我们提出了一种综合的方法来学习一个稀疏的DNA复制数区域及其在乳腺癌数据集中的下游靶点的相互作用网络。来自该网络的信息有助于在全球范围内区分与独立于拷贝数的表达变化驱动的拷贝数。我们的结果进一步描述了乳腺癌数据集中的顺式和反式效应,对于这些效应,重要的癌基因(例如ESR1和ERBB2)似乎高度依赖拷贝数。此外,我们的模型被证明是有效的,并且在拟合优度方面也比使用模拟数据和实际数据的其他最新技术预测指标和网络重构模型差。

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