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Structure-based prediction of transcription factor binding specificity using an integrative energy function

机译:使用综合能量函数的基于结构的转录因子结合特异性预测

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Transcription factors (TFs) regulate gene expression through binding to specific target DNA sites. Accurate annotation of transcription factor binding sites (TFBSs) at genome scale represents an essential step toward our understanding of gene regulation networks. In this article, we present a structure-based method for computational prediction of TFBSs using a novel, integrative energy (IE) function. The new energy function combines a multibody (MB) knowledge-based potential and two atomic energy terms (hydrogen bond and pi interaction) that might not be accurately captured by the knowledge-based potential owing to the mean force nature and low count problem. We applied the new energy function to the TFBS prediction using a non-redundant dataset that consists of TFs from 12 different families. Our results show that the new IE function improves the prediction accuracy over the knowledge-based, statistical potentials, especially for homeodomain TFs, the second largest TF family in mammals.
机译:转录因子(TFs)通过与特定目标DNA位点结合来调节基因表达。在基因组规模上正确注释转录因子结合位点(TFBS),是迈向我们了解基因调控网络的重要一步。在本文中,我们提出了一种基于结构的方法,用于使用新颖的积分能(IE)函数进行TFBS的计算预测。新能量函数结合了多体(MB)基于知识的势能和两个​​原子能项(氢键和pi相互作用),由于平均力性质和低计数问题,基于知识的势能可能无法准确地捕获它们。我们使用非冗余数据集将新的能量函数应用于TFBS预测,该数据集由来自12个不同家族的TF组成。我们的结果表明,新的IE功能可提高基于知识的统计潜力的预测准确性,尤其是对于同源域TF(哺乳动物第二大TF家族)而言。

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