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对阐明 HLA 等位基因与药物不良反应相关性的分子对接方法进行批判性评估。

Critical assessment of approaches for molecular docking to elucidate associations of HLA alleles with adverse drug reactions.

机构信息

Institute of Integrative Biology, University of Liverpool, Liverpool, UK.

MRC Centre for Drug Safety Science, Institute of Translational Medicine, University of Liverpool, Liverpool, UK.

出版信息

Mol Immunol. 2018 Sep;101:488-499. doi: 10.1016/j.molimm.2018.08.003. Epub 2018 Aug 18.

Abstract

Adverse drug reactions have been linked with genetic polymorphisms in HLA genes in numerous different studies. HLA proteins have an essential role in the presentation of self and non-self peptides, as part of the adaptive immune response. Amongst the associated drugs-allele combinations, anti-HIV drug Abacavir has been shown to be associated with the HLA-B57:01 allele, and anti-epilepsy drug Carbamazepine with B15:02, in both cases likely following the altered peptide repertoire model of interaction. Under this model, the drug binds directly to the antigen presentation region, causing different self peptides to be presented, which trigger an unwanted immune response. There is growing interest in searching for evidence supporting this model for other ADRs using bioinformatics techniques. In this study, in silico docking was used to assess the utility and reliability of well-known docking programs when addressing these challenging HLA-drug situations. The overall aim was to address the uncertainty of docking programs giving different results by completing a detailed comparative study of docking software, grounded in the MHC-ligand experimental structural data - for Abacavir and to a lesser extent Carbamazepine - in order to assess their performance. Four docking programs: SwissDock, ROSIE, AutoDock Vina and AutoDockFR, were used to investigate if each software could accurately dock the Abacavir back into the crystal structure for the protein arising from the known risk allele, and if they were able to distinguish between the HLA-associated and non-HLA-associated (control) alleles. The impact of using homology models on the docking performance and how using different parameters, such as including receptor flexibility, affected the docking performance were also investigated to simulate the approach where a crystal structure for a given HLA allele may be unavailable. The programs that were best able to predict the binding position of Abacavir were then used to recreate the docking seen for Carbamazepine with B15:02 and controls alleles. It was found that the programs investigated were sometimes able to correctly predict the binding mode of Abacavir with B57:01 but not always. Each of the software packages that were assessed could predict the binding of Abacavir and Carbamazepine within the correct sub-pocket and, with the exception of ROSIE, was able to correctly distinguish between risk and control alleles. We found that docking to homology models could produce poorer quality predictions, especially when sequence differences impact the architecture of predicted binding pockets. Caution must therefore be used as inaccurate structures may lead to erroneous docking predictions. Incorporating receptor flexibility was found to negatively affect the docking performance for the examples investigated. Taken together, our findings help characterise the potential but also the limitations of computational prediction of drug-HLA interactions. These docking techniques should therefore always be used with care and alongside other methods of investigation, in order to be able to draw strong conclusions from the given results.

摘要

在许多不同的研究中,已经发现药物不良反应与 HLA 基因中的遗传多态性有关。HLA 蛋白在自身和非自身肽的呈递中起着至关重要的作用,是适应性免疫反应的一部分。在相关的药物-等位基因组合中,抗 HIV 药物阿巴卡韦与 HLA-B57:01 等位基因有关,抗癫痫药物卡马西平与 B15:02 有关,这两种情况都可能遵循改变的肽库相互作用模型。在该模型中,药物直接与抗原呈递区域结合,导致呈现不同的自身肽,从而引发不必要的免疫反应。人们越来越感兴趣的是,使用生物信息学技术寻找支持其他药物不良反应的证据,以支持这种模型。在这项研究中,我们使用计算机对接来评估在处理这些具有挑战性的 HLA-药物情况时,知名对接程序的实用性和可靠性。总的来说,我们的目标是通过完成对接软件的详细比较研究来解决对接程序给出不同结果的不确定性,该研究基于 MHC-配体的实验结构数据,针对阿巴卡韦(以及在较小程度上针对卡马西平),以评估它们的性能。使用了四种对接程序:SwissDock、ROSIE、AutoDock Vina 和 AutoDockFR,以研究每个软件是否能够准确地将阿巴卡韦对接回已知风险等位基因的蛋白质晶体结构中,以及它们是否能够区分 HLA 相关和非 HLA 相关(对照)等位基因。还研究了使用同源建模对接性能的影响,以及使用不同的参数(如包括受体灵活性)对接性能的影响,以模拟可能无法获得特定 HLA 等位基因晶体结构的情况。然后,使用能够最佳预测阿巴卡韦结合位置的程序来重新创建卡马西平与 B15:02 和对照等位基因的对接。结果发现,所研究的程序有时能够正确预测阿巴卡韦与 B57:01 的结合模式,但并非总是如此。评估的每个软件包都能够预测阿巴卡韦和卡马西平在正确亚口袋中的结合,除了 ROSIE 之外,它还能够正确区分风险和对照等位基因。我们发现,对接同源模型可能会产生质量较差的预测,尤其是当序列差异影响预测结合口袋的结构时。因此,必须谨慎使用,因为不准确的结构可能导致错误的对接预测。研究发现,结合受体灵活性会对所研究的例子的对接性能产生负面影响。总的来说,我们的研究结果有助于描述药物-HLA 相互作用的计算预测的潜力和局限性。因此,在从给定结果得出强有力的结论时,这些对接技术应该始终谨慎使用,并与其他调查方法一起使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/594d/6148408/b8d0f450fa9b/gr1.jpg

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