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Improved peptide-MHC class II interaction prediction through integration of eluted ligand and peptide affinity data

机译:通过被洗脱的配体和肽亲和数据的整合改善肽-MHC II类相互作用预测

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摘要

Major histocompatibility complex (MHC) class II antigen presentation is a key component in eliciting a CD4+ T cell response. Precise prediction of peptide-MHC (pMHC) interactions has thus become a cornerstone in defining epitope candidates for rational vaccine design. Current pMHC prediction tools have, so far, primarily focused on inference from in vitro binding affinity. In the current study, we collate a large set of MHC class II eluted ligands generated by mass spectrometry to guide the prediction of MHC class II antigen presentation. We demonstrate that models developed on eluted ligands outperform those developed on pMHC binding affinity data. The predictive performance can be further enhanced by combining the eluted ligand and pMHC affinity data in a single prediction model. Furthermore, by including ligand data, the peptide length preference of MHC class II can be accurately learned by the prediction model. Finally, we demonstrate that our model significantly outperforms the current state-of-the-art prediction method, NetMHCIIpan, on an external dataset of eluted ligands and appears superior in identifying CD4+ T cell epitopes.
机译:主要的组织相容性复合物(MHC)II类抗原呈递是引发CD4 + T细胞响应的关键组分。因此,肽-MHC(PMHC)相互作用的精确预测成为定义合理疫苗设计的表位候选者的基石。到目前为止,目前的PMHC预测工具主要集中于来自体外结合亲和力的推动。在目前的研究中,我们融合了由质谱法产生的一大组MHC II洗脱的配体,以引导MHC II类抗原呈现的预测。我们展示了在洗脱配体上开发的模型优于PMHC绑定亲和力数据开发的模型。通过将洗脱的配体和PMHC亲和力数据组合在单个预测模型中,可以进一步增强预测性能。此外,通过包括配体数据,可以通过预测模型精确地学习MHC II类的肽长度偏好。最后,我们证明我们的模型显着优于当前的最先进的预测方法NetMhciipan在洗脱的配体的外部数据集上,并且在鉴定CD4 + T细胞表位时显得优异。

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