Laboratoire d'Innovation Thérapeutique, UMR 7200 CNRS, Université de Strasbourg, 67400 Illkirch, France.
J Chem Inf Model. 2024 Jun 10;64(11):4587-4600. doi: 10.1021/acs.jcim.3c01835. Epub 2024 May 29.
AlphaFold and AlphaFold-Multimer have become two essential tools for the modeling of unknown structures of proteins and protein complexes. In this work, we extensively benchmarked the quality of chemokine-chemokine receptor structures generated by AlphaFold-Multimer against experimentally determined structures. Our analysis considered both the global quality of the model, as well as key structural features for chemokine recognition. To study the effects of template and multiple sequence alignment parameters on the results, a new prediction pipeline called LIT-AlphaFold (https://github.com/LIT-CCM-lab/LIT-AlphaFold) was developed, allowing extensive input customization. AlphaFold-Multimer correctly predicted differences in chemokine binding orientation and accurately reproduced the unique binding orientation of the CXCL12-ACKR3 complex. Further, the predictions of the full receptor N-terminus provided insights into a putative chemokine recognition site 0.5. The accuracy of chemokine N-terminus binding mode prediction varied between complexes, but the confidence score permitted the distinguishing of residues that were very likely well positioned. Finally, we generated a high-confidence model of the unsolved CXCL12-CXCR4 complex, which agreed with experimental mutagenesis and cross-linking data.
AlphaFold 和 AlphaFold-Multimer 已经成为蛋白质和蛋白质复合物未知结构建模的两个重要工具。在这项工作中,我们广泛地评估了 AlphaFold-Multimer 生成的趋化因子-趋化因子受体结构的质量,这些结构是通过实验确定的。我们的分析既考虑了模型的整体质量,也考虑了趋化因子识别的关键结构特征。为了研究模板和多重序列比对参数对结果的影响,开发了一个名为 LIT-AlphaFold 的新预测管道(https://github.com/LIT-CCM-lab/LIT-AlphaFold),允许进行广泛的输入定制。AlphaFold-Multimer 正确预测了趋化因子结合方向的差异,并准确再现了 CXCL12-ACKR3 复合物独特的结合方向。此外,对完整受体 N 端的预测提供了对假定的趋化因子识别位点 0.5 的深入了解。趋化因子 N 端结合模式预测的准确性在复合物之间有所不同,但置信度评分允许区分非常可能位置良好的残基。最后,我们生成了一个高置信度的未解决的 CXCL12-CXCR4 复合物模型,该模型与实验性诱变和交联数据一致。