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Structure-based prediction of DNA-binding proteins by structural alignment and a volume-fraction corrected DFIRE-based energy function

机译:通过结构比对和基于体积分数校正的DFIRE能量函数的DNA结合蛋白的基于结构的预测

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Motivation: Template-based prediction of DNA binding proteins requires not only structural similarity between target and template structures but also prediction of binding affinity between the target and DNA to ensure binding. Here, we propose to predict protein-DNA binding affinity by introducing a new volume-fraction correction to a statistical energy function based on a distance-scaled, finite, ideal-gas reference (DFIRE) state.Results: We showed that this energy function together with the structural alignment program TM-align achieves the Matthews correlation coefficient (MCC) of 0.76 with an accuracy of 98%, a precision of 93% and a sensitivity of 64%, for predicting DNA binding proteins in a benchmark of 179 DNA binding proteins and 3797 nonbinding proteins. The MCC value is substantially higher than the best MCC value of 0.69 given by previous methods. Application of this method to 2235 structural genomics targets uncovered 37 as DNA binding proteins, 27 (73%) of which are putatively DNA binding and only 1 protein whose annotated functions do not contain DNA binding, while the remaining proteins have unknown function. The method provides a highly accurate and sensitive technique for structure-based prediction of DNA binding proteins.
机译:动机:基于模板的DNA结合蛋白预测不仅需要靶标与模板结构之间的结构相似性,还需要预测靶标与DNA之间的结合亲和力以确保结合。在本文中,我们建议通过基于距离缩放的有限理想气体参考(DFIRE)状态向统计能量函数引入新的体积分数校正来预测蛋白质-DNA结合亲和力。结果:我们证明了该能量函数与结构比对程序TM-align一起使用时,可以预测179个DNA结合的基准中的DNA结合蛋白,从而获得0.76的Matthews相关系数(MCC),准确度为98%,准确度为93%和灵敏度为64%。蛋白和3797种非结合蛋白。 MCC值明显高于以前方法给出的最佳MCC值0.69。该方法在2235个结构基因组学中的应用以未发现的37种DNA结合蛋白为靶标,其中27种(73%)是DNA结合蛋白,只有1种蛋白的注释功能不包含DNA结合,而其余蛋白的功能未知。该方法为DNA结合蛋白的基于结构的预测提供了高度准确和灵敏的技术。

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