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Tiresias: Context-sensitive Approach to Decipher the Presence and Strength of MicroRNA Regulatory Interactions

机译:Tiresias:上下文相关的方法以了解MicroRNA调控相互作用的存在和强度

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摘要

MicroRNAs (miRNAs) are short non-coding RNAs that regulate expression of target messenger RNAs (mRNAs) post-transcriptionally. Understanding the precise regulatory role of miRNAs is of great interest since miRNAs have been shown to play an important role in development, diseases, and other biological processes. Early work on miRNA target prediction has focused on static sequence-driven miRNA-mRNA complementarity. However, recent research also utilizes expression-level data to study context-dependent regulation effects in a more dynamic, physiologically-relevant setting.>Methods: We propose a novel artificial neural network (ANN) based method, named Tiresias, to predict such targets in a context-dependent manner by combining sequence and expression data. In order to predict the interacting pairs among miRNAs and mRNAs and their regulatory weights, we develop a two-stage ANN and present how to train it appropriately. Tiresias is designed to study various regulation models, ranging from a simple linear model to a complex non-linear model. Tiresias has a single hyper-parameter to control the sparsity of miRNA-mRNA interactions, which we optimize using Bayesian optimization.>Results: Tiresias performs better than existing computational methods such as GenMiR++, Elastic Net, and PIMiM, achieving an F1 score of >0.8 for a certain level of regulation strength. For the TCGA breast invasive carcinoma dataset, Tiresias results in the rate of up to 82% in detecting the experimentally-validated interactions between miRNAs and mRNAs, even if we assume that true regulations may result in a low level of regulation strength.>Conclusion: Tiresias is a two-stage ANN, computational method that deciphers context-dependent microRNA regulatory interactions. Experiment results demonstrate that Tiresias outperforms existing solutions and can achieve a high F1 score. Source code of Tiresias is available at .
机译:MicroRNA(miRNA)是短的非编码RNA,可转录后调节靶信使RNA(mRNA)的表达。由于miRNA已显示在发育,疾病和其他生物过程中起着重要作用,因此了解miRNA的精确调控作用非常重要。 miRNA靶标预测的早期工作集中在静态序列驱动的miRNA-mRNA互补性上。但是,最近的研究还利用表达水平的数据在更动态,生理相关的环境中研究了上下文相关的调节作用。>方法:我们提出了一种基于人工神经网络(ANN)的新型方法,名为Tiresias,通过结合序列和表达数据以上下文相关的方式预测此类靶标。为了预测miRNA和mRNA之间的相互作用对及其调节权重,我们开发了一个两阶段的ANN,并介绍了如何对其进行适当的训练。 Tiresias旨在研究各种调节模型,从简单的线性模型到复杂的非线性模型。 Tiresias具有一个用于控制miRNA-mRNA相互作用稀疏性的单一超参数,我们使用贝叶斯优化对其进行了优化。>结果:Tiresias的性能优于现有的计算方法,例如GenMiR ++,Elastic Net和PIMiM,在一定水平的调节强度下,F1得分> 0.8。对于TCGA乳腺浸润癌数据集,即使我们假设真正的法规可能导致较低水平的法规强度,Tiresias在检测miRNA和mRNA之间经实验验证的相互作用时也可以达到82%的比率。>结论:Tiresias是一种两阶段的ANN计算方法,可解密上下文相关的microRNA调控相互作用。实验结果表明,Tiresias的性能优于现有解决方案,并且可以获得较高的F1分数。 Tiresias的源代码可在上找到。

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