主要组织相容性复合体
粒度
计算机科学
MHC I级
肽
同源建模
计算生物学
免疫系统
生物
免疫学
生物化学
操作系统
酶
作者
Ernest Glukhov,Dmytro Kalitin,Darya Stepanenko,Y. Zhu,Thu Nguyen,George Jones,Taras Patsahan,Carlos Simmerling,Julie C. Mitchell,Sándor Vajda,Ken A. Dill,Dzmitry Padhorny,Dima Kozakov
标识
DOI:10.1016/j.bpj.2024.05.011
摘要
The precise prediction of major histocompatibility complex (MHC)-peptide complex structures is pivotal for understanding cellular immune responses and advancing vaccine design. In this study, we enhanced AlphaFold's capabilities by fine-tuning it with a specialized dataset consisting of exclusively high-resolution class I MHC-peptide crystal structures. This tailored approach aimed to address the generalist nature of AlphaFold's original training, which, while broad-ranging, lacked the granularity necessary for the high-precision demands of class I MHC-peptide interaction prediction. A comparative analysis was conducted against the homology-modeling-based method Pandora as well as the AlphaFold multimer model. Our results demonstrate that our fine-tuned model outperforms others in terms of root-mean-square deviation (median value for Cα atoms for peptides is 0.66 Å) and also provides enhanced predicted local distance difference test scores, offering a more reliable assessment of the predicted structures. These advances have substantial implications for computational immunology, potentially accelerating the development of novel therapeutics and vaccines by providing a more precise computational lens through which to view MHC-peptide interactions.
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