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RNA-protein binding motifs mining with a new hybrid deep learning based cross-domain knowledge integration approach

机译:基于新的基于混合深度学习的跨域知识整合方法的RNA-蛋白质结合基序挖掘

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摘要

BackgroundRNAs play key roles in cells through the interactions with proteins known as the RNA-binding proteins (RBP) and their binding motifs enable crucial understanding of the post-transcriptional regulation of RNAs. How the RBPs correctly recognize the target RNAs and why they bind specific positions is still far from clear. Machine learning-based algorithms are widely acknowledged to be capable of speeding up this process. Although many automatic tools have been developed to predict the RNA-protein binding sites from the rapidly growing multi-resource data, e.g. sequence, structure, their domain specific features and formats have posed significant computational challenges. One of current difficulties is that the cross-source shared common knowledge is at a higher abstraction level beyond the observed data, resulting in a low efficiency of direct integration of observed data across domains. The other difficulty is how to interpret the prediction results. Existing approaches tend to terminate after outputting the potential discrete binding sites on the sequences, but how to assemble them into the meaningful binding motifs is a topic worth of further investigation.
机译:通过与称为RNA结合蛋白(RBP)的蛋白质相互作用,背景RNA在细胞中起着关键作用,它们的结合基序可以使人们对RNA的转录后调控产生至关重要的了解。 RBP如何正确识别靶RNA以及为什么它们结合特定位置尚不清楚。众所周知,基于机器学习的算法能够加快这一过程。尽管已经开发了许多自动工具来根据快速增长的多资源数据预测RNA-蛋白质结合位点,例如序列,结构,其领域特定的特征和格式带来了重大的计算挑战。当前的困难之一是跨源共享的公共知识处于比所观察到的数据更高的抽象级别,导致跨域直接整合所观察到的数据的效率较低。另一个困难是如何解释预测结果。现有方法倾向于在序列上输出潜在的离散结合位点后终止,但是如何将它们组装成有意义的结合基序是值得进一步研究的主题。

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