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Confidence assessment of protein-DNA complex models

机译:蛋白质-DNA复杂模型的信心评估

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Protein-DNA docking is an important computational technique for generating native or near-native complex models. A docking program typically generates a number of complex conformations and predicts the docking solution based on interaction energies. However, incomplete sampling and energy function deficiencies can result in false positive protein-DNA complex models, which hampers its application in biology or medicine. Built upon our investigation of structural features for binding specificity between protein and DNA molecules, we present here a Support Vector Machine (SVM)-based approach for quality assessment of the docked transcription factor-DNA complex models by combining structural features and a knowledge-based protein-DNA interaction potential. Our results show that the SVM scoring model greatly improves the prediction accuracy by successfully identifying the false positive cases, in which the docking algorithm fails to produce any near-native complex models.
机译:蛋白质-DNA对接是一种用于产生天然或近天然复杂模型的重要计算技术。对接程序通常产生许多复杂构象并基于交互能量预测对接解决方案。然而,不完全的采样和能量函数缺陷可能导致假阳性蛋白质-DNA复杂模型,其妨碍其在生物学或药物中的应用。建立在我们对蛋白质和DNA分子之间结合特异性的结构特征的研究,我们通过组合结构特征和基于知识的基于知识的基于知识的基于支持向量机(SVM)基于对接转录因子-DNA复杂模型的支持方法蛋白质-DNA相互作用电位。我们的研究结果表明,SVM评分模型通过成功识别假阳性情况而大大提高了预测精度,其中对接算法未能产生任何近乎天然的复杂模型。

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