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MicroRNA prediction with a novel ranking algorithm based on random walks

机译:基于随机游走的新型排名算法预测MicroRNA

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摘要

MicroRNA (miRNAs) play essential roles in post-transcriptional gene regulation in animals and plants. Several existing computational approaches have been developed to complement experimental methods in discovery of miRNAs that express restrictively in specific environmental conditions or cell types. These computational methods require a sufficient number of characterized miRNAs as training samples, and rely on genome annotation to reduce the number of predicted putative miRNAs. However, most sequenced genomes have not been well annotated and many of them have a very few experimentally characterized miRNAs. As a result, the existing methods are not effective or even feasible for identifying miRNAs in these genomes.Aiming at identifying miRNAs from genomes with a few known miRNA and/or little annotation, we propose and develop a novel miRNA prediction method, miRank, based on our new random walks- based ranking algorithm. We first tested our method on Homo sapiens genome; using a very few known human miRNAs as samples, our method achieved a prediction accuracy greater than 95%. We then applied our method to predict 200 miRNAs in Anopheles gambiae, which is the most important vector of malaria in Africa. Our further study showed that 78 out of the 200 putative miRNA precursors encode mature miRNAs that are conserved in at least one other animal species. These conserved putative miRNAs are good candidates for further experimental study to understand malaria infection.>Availability: MiRank is programmed in Matlab on Windows platform. The source code is available upon request.>Contact:
机译:MicroRNA(miRNA)在动植物的转录后基因调控中起着至关重要的作用。已经开发了几种现有的计算方法来补充实验方法,以发现在特定环境条件或细胞类型中限制性表达的miRNA。这些计算方法需要足够数量的特征化miRNA作为训练样本,并依靠基因组注释来减少预测的假定miRNA的数量。但是,大多数测序的基因组都没有得到很好的注释,其中许多具有很少的实验表征的miRNA。结果,现有的方法在鉴定这些基因组中的miRNA时是无效甚至不可行的。针对从具有少量已知miRNA和/或很少注释的基因组中鉴定miRNA的方法,我们提出并开发了一种新颖的基于miRank的miRNA预测方法。基于我们新的基于随机游走的排名算法。我们首先在智人基因组上测试了我们的方法;使用极少的已知人类miRNA作为样本,我们的方法实现了95%以上的预测准确性。然后,我们将我们的方法应用于预测冈比亚按蚊中的200个miRNA,冈比亚按蚊是非洲最重要的疟疾传播媒介。我们的进一步研究表明,在200种假定的miRNA前体中,有78种编码的成熟miRNA在至少一种其他动物物种中均是保守的。这些保守的推定miRNAs是用于进一步实验研究以了解疟疾感染的良好候选者。>可用性: MiRank在Windows平台上的Matlab中编程。可根据要求提供源代码。>联系方式:

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