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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Inhibition and substrate recognition - a computational approach applied to HIV protease
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Inhibition and substrate recognition - a computational approach applied to HIV protease

机译:抑制和底物识别-一种应用于HIV蛋白酶的计算方法

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摘要

We have developed a computational approach in which an inhibitor's strength is determined from its interaction energy with a limited set of amino acid residues of the inhibited protein. We applied this method to HIV protease. The method uses a consensus structure built from X-ray crystallographic data. All inhibitors are docked into the consensus structure. Given that not every ligand - protein interaction causes inhibition, we implemented a genetic algorithm to determine the relevant set of residues. The algorithm optimizes the q(2) between the sum of interaction energies and the observed inhibition constants. The best possible predictive model resulting has a q(2) of 0.63. External validation by examining the predictivity for compounds not used in derivation of the model leads to a prediction accuracy between 0.9 and 1.5 log(10) unit. Out of 198 residues in the whole protein, the best internally predictive model defines a subset of 20 residues and the best externally predictive model one of 9 residues. These residues are distributed over the subsites of the enzyme. This approach provides insight in which interactions are important for inhibiting HIV protease and it allows for quantitative prediction of inhibitor strength. [References: 77]
机译:我们已经开发了一种计算方法,其中,抑制剂的强度取决于其与受抑制蛋白质的有限氨基酸残基集的相互作用能。我们将此方法应用于HIV蛋白酶。该方法使用根据X射线晶体学数据构建的共有结构。所有抑制剂均停靠在共有结构中。鉴于并非每个配体-蛋白质相互作用都会引起抑制,我们实施了遗传算法来确定相关的残基集。该算法优化了相互作用能之和与观察到的抑制常数之间的q(2)。得到的最佳预测模型的q(2)为0.63。通过检查未在模型推导中使用的化合物的预测性进行外部验证,可以得出0.9到1.5 log(10)单位之间的预测精度。在整个蛋白质的198个残基中,最佳内部预测模型定义了20个残基的一部分,而最佳外部预测模型定义了9个残基之一。这些残基分布在酶的亚位点上。这种方法提供了洞察力,其中相互作用对于抑制HIV蛋白酶很重要,并且可以定量预测抑制剂的强度。 [参考:77]

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