AlphaFold3 for Noncanonical Cyclic Peptide Modeling: Hierarchical Benchmarking Reveals Accuracy and Practical Guidelines

Chengyun Zhang, Wentong Wang, Ning Zhu, Zhigang Cao, Yaling Wu, Qingyi Mao, Cheng Zhu, Chenhao Zhang, Jingjing Guo, Hongliang Duan

Research output: Contribution to journalArticlepeer-review

Abstract

Despite the revolutionary impact of AlphaFold3 on structural biology, this model’s capability in predicting noncanonical cyclic peptides remains unexplored. Given the clinical significance of cyclic peptides containing unnatural residues as a therapeutic modality, we present the first systematic evaluation of AlphaFold3 for this class of molecules. To facilitate benchmarking, we developed an automated input pipeline to streamline AlphaFold3 predictions for cyclic peptides. Our study aims to (1) quantify the hierarchical accuracy (all atoms, Cα atoms, and atoms of unnatural residue levels) of AlphaFold3 in predicting both noncanonical cyclic peptide monomers and complexes, (2) assess the reliability of AlphaFold3's confidence metrics, (3) evaluate the influence of multiple sequence alignment and structural templates, and (4) identify systematic biases in AlphaFold3's predictions. Based on these analyses, we provide practical guidelines for applying AlphaFold3 in cyclic peptide structure prediction to facilitate the related research of bioactive cyclic peptides.

Original languageEnglish
Pages (from-to)9777-9789
Number of pages13
JournalJournal of Chemical Information and Modeling
Volume65
Issue number18
DOIs
Publication statusPublished - 22 Sept 2025

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