Prediction of KIR3DL1 and Human Leukocyte Antigen binding.

IF 4 2区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Martin Maiers, Yoram Louzoun, Philip Pymm, Julian P Vivian, Jamie Rossjohn, Andrew G Brooks, Philippa M Saunders
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引用次数: 0

Abstract

KIR3DL1 is a polymorphic inhibitory receptor on natural killer (NK) cells that recognizes HLA class I allotypes. While the Bw4 motif spanning residues 77-83 is central to this interaction, structural studies have shown that polymorphisms elsewhere in the HLA molecule also influence binding. To address the challenge of predicting interactions across the extensive diversity of both KIR3DL1 and HLA, we developed a machine learning model trained on binding data from nine KIR3DL1 tetramers tested against a panel of HLA class I allotypes. Multiple models were evaluated using different subsets of HLA sequence features, including the full α1/α2 domains, the Bw4 motif, and α-helical residues excluding loop regions. The best-performing model, using Multi-Label-Vector Optimization (MLVO) and trained on α-helix positions, achieved AUC scores ranging from 0.74 to 0.974 across all KIR3DL1 allotypes. The model effectively distinguished high and low binders, revealing that residues beyond the Bw4 motif contribute to binding strength in a nonadditive manner. These findings demonstrate that binding affinity cannot be accurately captured by binary classifiers or single-motif rules. Our approach offers a more nuanced framework for modeling KIR3DL1-HLA interactions, with broad applicability to immunogenetic research and clinical decision-making.

KIR3DL1与人白细胞抗原结合的预测。
KIR3DL1是自然杀伤(NK)细胞上的一种多态抑制受体,可识别HLA I类同种异型。虽然横跨77-83残基的Bw4基序是这种相互作用的核心,但结构研究表明,HLA分子中其他地方的多态性也会影响这种结合。为了解决预测KIR3DL1和HLA之间广泛多样性相互作用的挑战,我们开发了一个机器学习模型,该模型训练了来自九种KIR3DL1四聚体的结合数据,这些数据来自一组HLA I类同种异型的测试。利用HLA序列特征的不同亚群,包括完整的α1/α2结构域、Bw4基序和不包括环区的α-螺旋残基,对多个模型进行了评估。使用多标签向量优化(multi - tag - vector Optimization, MLVO)并对α-螺旋位置进行训练的最佳模型在所有KIR3DL1等位型中获得了0.74 - 0.974的AUC分数。该模型有效地区分了高结合物和低结合物,揭示了Bw4基序之外的残基以非加性的方式促进了结合强度。这些发现表明,结合亲和性不能被二元分类器或单基序规则准确捕获。我们的方法为KIR3DL1-HLA相互作用的建模提供了一个更细致的框架,在免疫遗传学研究和临床决策中具有广泛的适用性。
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来源期刊
Journal of Biological Chemistry
Journal of Biological Chemistry Biochemistry, Genetics and Molecular Biology-Biochemistry
自引率
4.20%
发文量
1233
期刊介绍: The Journal of Biological Chemistry welcomes high-quality science that seeks to elucidate the molecular and cellular basis of biological processes. Papers published in JBC can therefore fall under the umbrellas of not only biological chemistry, chemical biology, or biochemistry, but also allied disciplines such as biophysics, systems biology, RNA biology, immunology, microbiology, neurobiology, epigenetics, computational biology, ’omics, and many more. The outcome of our focus on papers that contribute novel and important mechanistic insights, rather than on a particular topic area, is that JBC is truly a melting pot for scientists across disciplines. In addition, JBC welcomes papers that describe methods that will help scientists push their biochemical inquiries forward and resources that will be of use to the research community.
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