蛋白质- rna复合物结构预测的评分功能:进展、应用和未来方向。

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Liming Qiu, Xiaoqin Zou
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引用次数: 2

摘要

蛋白质-RNA相互作用是活细胞中最重要的生物事件之一,涉及蛋白质合成、RNA加工和运输、DNA转录、基因表达调控以及许多其他关键的生物分子活动。对这种相互作用的透彻理解对于各种重要细胞过程的基础研究和广泛疾病的治疗应用至关重要。实验高分辨率三维结构测定是蛋白质- rna复合物知识的主要来源。然而,由于技术的限制,现有的实验结构确定技术无法满足学术界和工业界快速增长的需求。这个问题需要另一种高通量计算方法来预测蛋白质- rna复合物的结构。与用于蛋白质-蛋白质和蛋白质- dna相互作用的计算机方法类似,对蛋白质- rna复合物结构的可靠预测需要具有相应判别能力的评分函数。从已确定的结构中提取,用于预测待确定的结构,评分函数不仅是一种预测工具,而且是我们对蛋白质- rna相互作用知识的衡量标准。在这篇综述中,我们介绍了现有的评分函数的现状和科学原理背后的结构,以及他们的优势和局限性。最后,我们将讨论用于蛋白质- rna结构预测的评分函数的未来发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scoring Functions for Protein-RNA Complex Structure Prediction: Advances, Applications, and Future Directions.

Protein-RNA interaction is among the most essential of biological events in living cells, being involved in protein synthesizing, RNA processing and transport, DNA transcription, and regulation of gene expression, and many other critical bio-molecular activities. A thorough understanding of this interaction is of paramount importance in fundamental study of a variety of vital cellular processes and therapeutic application for remedy of a broad range of diseases. Experimental high-resolution 3D structure determination is the primary source of knowledge for protein-RNA complexes. However, due to technical limitations, the existing techniques for experimental structure determination couldn't match the demand from fast growing interest in academia and industry. This problem necessitates the alternative high-throughput computational method for protein-RNA complex structure prediction. Similar to the in silico methods used for protein-protein and protein-DNA interactions, a reliable prediction of protein-RNA complex structure requires a scoring function with commensurate discriminatory power. Derived from determined structures and purposed to predict the to-be-determined structures, the scoring function is not only a predictive tool but also a gauge of our knowledge of protein-RNA interaction. In this review, we present an overview of the status of existing scoring functions and the scientific principle behind their constructions as well as their strengths and limitations. Finally, we will discuss about future directions of the scoring function development for protein-RNA structure prediction.

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来源期刊
Communications in Information and Systems
Communications in Information and Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
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