Deleuran Sebastian N, Nielsen Morten
Department of Health Technology, Technical University of Denmark, Lyngby, Denmark.
Front Immunol. 2025 Jul 17;16:1616328. doi: 10.3389/fimmu.2025.1616328. eCollection 2025.
Accurate modeling of T cell receptor (TCR)-peptide-major histocompatibility complex (pMHC) interactions is critical for understanding immune recognition. In this study, we present advances in structural modeling of TCR-pMHC class I complexes focusing on improving docking quality scoring and structural model selection using graph neural networks (GNN). We find that AlphaFold-Multimer's confidence score in certain cases correlates poorly with DockQ quality scores, leading to overestimation of model accuracy. Our proposed GNN solution achieves a 25% increase in Spearman's correlation between predicted quality and DockQ (from 0.681 to 0.855) and improves docking candidate ranking. Additionally, the GNN completely avoids selection of failed structures. Additionally, we assess the ability of our models to distinguish binding from non-binding TCR-pMHC interactions based on their predicted quality. Here, we demonstrate that our proposed model, particularly for high-quality structural models, is capable of discriminating between binding and non-binding complexes in a zero-shot setting. However, our findings also underlined that the structural pipeline struggled to generate sufficiently accurate TCR-pMHC models for reliable binding classification, highlighting the need for further improvements in modeling accuracy.
准确模拟T细胞受体(TCR)-肽-主要组织相容性复合体(pMHC)相互作用对于理解免疫识别至关重要。在本研究中,我们展示了TCR-pMHC I类复合体结构建模的进展,重点是使用图神经网络(GNN)提高对接质量评分和结构模型选择。我们发现,在某些情况下,AlphaFold-Multimer的置信度得分与DockQ质量得分相关性较差,导致对模型准确性的高估。我们提出的GNN解决方案使预测质量与DockQ之间的斯皮尔曼相关性提高了25%(从0.681提高到0.855),并改善了对接候选排名。此外,GNN完全避免了对失败结构的选择。此外,我们根据预测质量评估了我们的模型区分结合与非结合TCR-pMHC相互作用的能力。在此,我们证明,我们提出的模型,特别是对于高质量结构模型,能够在零样本设置中区分结合和非结合复合体。然而,我们的数据也强调,结构流程难以生成足够准确的TCR-pMHC模型用于可靠的结合分类,突出了在建模准确性方面进一步改进的必要性。