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Computational learning on specificity-determining residue-nucleotide interactions

机译:确定特异性的残基-核苷酸相互作用的计算学习

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摘要

The protein-DNA interactions between transcription factors and transcription factor binding sites are essential activities in gene regulation. To decipher the binding codes, it is a long-standing challenge to understand the binding mechanism across different transcription factor DNA binding families. Past computational learning studies usually focus on learning and predicting the DNA binding residues on protein side. Taking into account both sides (protein and DNA), we propose and describe a computational study for learning the specificity-determining residue-nucleotide interactions of different known DNA-binding domain families. The proposed learning models are compared to state-of-the-art models comprehensively, demonstrating its competitive learning performance. In addition, we describe and propose two applications which demonstrate how the learnt models can provide meaningful insights into protein-DNA interactions across different DNA binding families.
机译:转录因子和转录因子结合位点之间的蛋白质-DNA相互作用是基因调控中必不可少的活动。要破解绑定代码,了解跨不同转录因子DNA绑定家族的绑定机制是一项长期的挑战。过去的计算学习研究通常集中于学习和预测蛋白质侧的DNA结合残基。考虑到双方(蛋白质和DNA),我们提出并描述了一项计算研究,以学习确定不同已知DNA结合域家族的特异性确定残基-核苷酸相互作用的方法。拟议的学习模型与最新模型进行了全面比较,证明了其具有竞争力的学习表现。此外,我们描述并提出了两个应用程序,这些应用程序演示了学习的模型如何可以提供有意义的见解,以了解跨不同DNA结合家族的蛋白质-DNA相互作用。

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