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MicroTarget: MicroRNA target gene prediction approach with application to breast cancer

机译:Microtarget:microRNA靶基因预测方法应用于乳腺癌

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摘要

MicroRNAs are known to play an essential role in gene regulation in plants and animals. The standard method for understanding microRNA-gene interactions is randomized controlled perturbation experiments. These experiments are costly and time consuming. Therefore, use of computational methods is essential. Currently, several computational methods have been developed to discover microRNA target genes. However, these methods have limitations based on the features that are used for prediction. The commonly used features are complementarity to the seed region of the microRNA, site accessibility, and evolutionary conservation. Unfortunately, not all microRNA target sites are conserved or adhere to exact seed complementary, and relying on site accessibility does not guarantee that the interaction exists. Moreover, the study of regulatory interactions composed of the same tissue expression data for microRNAs and mRNAs is necessary to understand the specificity of regulation and function. We developed Micro Target to predict a microRNA-gene regulatory network using heterogeneous data sources, especially gene and microRNA expression data. First, Micro Target employs expression data to learn a candidate target set for each microRNA. Then, it uses sequence data to provide evidence of direct interactions. MicroTarget scores and ranks the predicted targets based on a set of features. The predicted targets overlap with many of the experimentally validated ones. Our results indicate that using expression data in target prediction is more accurate in terms of specificity and sensitivity.
机译:已知微小RNAS在植物和动物的基因调节中发挥重要作用。了解MicroRNA-基因相互作用的标准方法是随机对照扰动实验。这些实验昂贵且耗时。因此,使用计算方法至关重要。目前,已经开发了几种计算方法来发现MicroRNA靶基因。然而,这些方法基于用于预测的特征具有限制。常用的特征是微罗纳的种子区域的互补性,现场可访问性和进化节约。不幸的是,并非所有MicroRNA目标站点都是保守的或粘附于精确的种子互补性,并且依靠现场无障碍并不保证互动存在。此外,对于MicroRNA和MRNA的相同组织表达数据组成的调节相互作用是必要的,以了解调节和功能的特异性。我们开发了使用异质数据源,尤其是基因和MicroRNA表达数据来预测微型靶标以预测微小RNA-基因调节网络。首先,微目标采用表达数据来学习每个MicroRNA的候选目标设置。然后,它使用序列数据来提供直接交互的证据。 Microtarget得分并根据一组功能排列预测的目标。预测的目标与许多实验验证的目标重叠。我们的结果表明,在特异性和灵敏度方面,在目标预测中使用表达数据更准确。

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