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Identification of high affinity fatty acid binding sites on human serum albumin by MM-PBSA method.

机译:通过MM-PBSA方法鉴定人血清白蛋白上的高亲和力脂肪酸结合位点。

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Human serum albumin (HSA) has seven common fatty acid (FA) binding sites. In this study, we used the molecular mechanics Poisson-Boltzmann surface area method to identify high affinity FA binding sites on HSA in terms of binding free energy. Using multiple HSA-FA (myristate, palmitate) complex models constructed by molecular dynamics simulations, two methods were performed in molecular mechanics Poisson-Boltzmann surface area, the "three-trajectory method" and the "single-trajectory method". The former, which is less precise than the latter but may be more accurate as it includes the effects of conformational change upon binding, was used to classify high and low affinity sites. As a result, Sites 2, 4, and 5 were identified as high affinity sites for both FAs. The latter method, which is precise because energies are calculated from snapshots of the same trajectory for HSA-FA complex, was performed to compare the magnitude of binding free energy for these sites. The order of magnitude was 5 > 4 > 2, identical to that of a previous publication by others. In this way, a combination of the two methods was effectively used to identify high affinity sites. This study therefore provides an insight into the quantitative identification of high affinity FA binding sites on HSA.
机译:人血清白蛋白(HSA)具有七个常见的脂肪酸(FA)结合位点。在这项研究中,我们使用分子力学Poisson-Boltzmann表面积方法从结合自由能方面鉴定了HSA上的高亲和力FA结合位点。使用通过分子动力学模拟构建的多个HSA-FA(肉豆蔻酸酯,棕榈酸酯)复杂模型,在分子力学Poisson-Boltzmann表面积中执行了两种方法,即“三轨迹法”和“单轨迹法”。前者的准确性较后者差,但可能更准确,因为它包括结合时构象变化的影响,用于对高和低亲和力位点进行分类。结果,位点2、4和5被鉴定为两个FA的高亲和力位点。后一种方法很精确,因为能量是根据HSA-FA配合物的相同轨迹的快照计算得出的,目的是比较这些位点的结合自由能的大小。数量级为5> 4> 2,与其他人之前的出版物相同。这样,有效地使用了两种方法的组合来识别高亲和力位点。因此,这项研究为定量鉴定HSA上高亲和力FA结合位点提供了见识。

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