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VsNsbench: evaluating AlphaFold3-embed induced-fit mechanism for enhanced virtual screening

  • Shu Kai Gu
  • , Chao Shen
  • , Yu Wei Yang
  • , Si Long Zhai
  • , Jing Li
  • , Ya Nan Tian
  • , Xu Jun Zhang
  • , Hong Yan Du
  • , Zhen Xing Wu
  • , Xiao Rui Wang
  • , Jing Xuan Ge
  • , Hui Feng Zhao
  • , Yuan Sheng Huang
  • , Gao Qi Weng
  • , Huan Xiang Liu
  • , Ting Jun Hou
  • , Yu Kang
  • Macao Polytechnic University
  • Zhejiang University
  • CarbonSilicon AI Technology Co., Ltd.
  • Oregon Health and Science University
  • Zhejiang Provincial Key Laboratory for Intelligent Drug Discovery and Development

Research output: Contribution to journalArticlepeer-review

Abstract

While AlphaFold3 (AF3) extends AlphaFold2 (AF2) by predicting holo structures, it remains unclear whether its modeling process captures similar induced-fit mechanisms. In this study, we benchmarked the VS performance of ligand-induced AF3 holo structures on two datasets: a subset of DUD-E and VsNsBench designed to avoid sequence-level information leakage. On both datasets, AF3 holo structures demonstrated substantially improved enriching capability compared to AF3 apo, experimental apo, and AF2 structures. Compared to experimental holo structures, AF3 models demonstrated inferior performance on the DUD-E subset but performed slightly better on VsNsBench. Further analysis revealed that AF3’s induced modeling critically depends on the bound ligand’s affinity: high-affinity ligands produced conformations enabling excellent enrichment, while low-affinity or random ligands yielded poor performance. Moreover, direct VS using AF3 alone achieved satisfactory performance, but computational efficiency remains a major bottleneck for large-scale applications, even with single-round multiple sequence alignment (MSA) generation. In a DFG-motif kinase case study, AF3 successfully modeled inhibitor-specific conformations with a 75% success rate. These findings demonstrate that AF3 effectively incorporates induced-fit modeling, though improvement is needed, particularly for modeling multi-state conformational ensembles.

Original languageEnglish
Pages (from-to)1682-1691
Number of pages10
JournalActa Pharmacologica Sinica
Volume47
Issue number6
DOIs
Publication statusPublished - Jun 2026

Keywords

  • AlphaFold3
  • VsNsBench
  • induced-fit mechanism
  • virtual screening

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