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Identifying Cancer Specific Functionally Relevant miRNAs from Gene Expression and miRNA-to-Gene Networks Using Regularized Regression

机译:使用正则回归从基因表达和miRNA到基因网络识别癌症特定的功能相关的miRNA

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摘要

Identifying microRNA signatures for the different types and subtypes of cancer can result in improved detection, characterization and understanding of cancer and move us towards more personalized treatment strategies. However, using microRNA's differential expression (tumour versus normal) to determine these signatures may lead to inaccurate predictions and low interpretability because of the noisy nature of miRNA expression data. We present a method for the selection of biologically active microRNAs using gene expression data and microRNA-to-gene interaction network. Our method is based on a linear regression with an elastic net regularization. Our simulations show that, with our method, the active miRNAs can be detected with high accuracy and our approach is robust to high levels of noise and missing information. Furthermore, our results on real datasets for glioblastoma and prostate cancer are confirmed by microRNA expression measurements. Our method leads to the selection of potentially functionally important microRNAs. The associations of some of our identified miRNAs with cancer mechanisms are already confirmed in other studies (hypoxia related hsa-mir-210 and apoptosis-related hsa-mir-296-5p). We have also identified additional miRNAs that were not previously studied in the context of cancer but are coherently predicted as active by our method and may warrant further investigation. The code is available in Matlab and R and can be downloaded on .
机译:鉴定不同类型和亚型癌症的microRNA签名可以改善对癌症的检测,表征和理解,并使我们朝着更加个性化的治疗策略发展。但是,由于miRNA表达数据的嘈杂性质,使用microRNA的差异表达(肿瘤与正常)来确定这些特征可能会导致预测不准确和可解释性低。我们提出了一种使用基因表达数据和microRNA到基因相互作用网络选择具有生物活性的microRNA的方法。我们的方法基于具有弹性净正则化的线性回归。我们的模拟表明,使用我们的方法,可以高精度检测活性miRNA,并且我们的方法对于高水平的噪声和信息丢失具有鲁棒性。此外,我们在胶质母细胞瘤和前列腺癌的真实数据集上的结果通过microRNA表达测量得到了证实。我们的方法导致潜在功能重要的microRNA的选择。在其他研究中(与低氧相关的hsa-mir-210和与凋亡相关的hsa-mir-296-5p),我们已经确定了某些已鉴定的miRNA与癌症机制的关联。我们还鉴定了其他未在癌症背景下进行过研究的miRNA,但据我们的方法一致预测它们具有活性,可能需要进一步研究。该代码在Matlab和R中可用,可以在上下载。

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