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FFLOM: A Flow-Based Autoregressive Model for Fragment-to-Lead Optimization

  • Jieyu Jin
  • , Dong Wang
  • , Guqin Shi
  • , Jingxiao Bao
  • , Jike Wang
  • , Haotian Zhang
  • , Peichen Pan
  • , Dan Li
  • , Xiaojun Yao
  • , Huanxiang Liu
  • , Tingjun Hou
  • , Yu Kang
  • Zhejiang University
  • Shanghai Qilu Pharmaceutical R&D Center
  • Macau University of Science and Technology

研究成果: Article同行評審

26 引文 斯高帕斯(Scopus)

摘要

Recently, deep generative models have been regarded as promising tools in fragment-based drug design (FBDD). Despite the growing interest in these models, they still face challenges in generating molecules with desired properties in low data regimes. In this study, we propose a novel flow-based autoregressive model named FFLOM for linker and R-group design. In a large-scale benchmark evaluation on ZINC, CASF, and PDBbind test sets, FFLOM achieves state-of-the-art performance in terms of validity, uniqueness, novelty, and recovery of the generated molecules and can recover over 92% of the original molecules in the PDBbind test set (with at least five atoms). FFLOM also exhibits excellent potential applicability in several practical scenarios encompassing fragment linking, PROTAC design, R-group growing, and R-group optimization. In all four cases, FFLOM can perfectly reconstruct the ground-truth compounds and generate over 74% of molecules with novel fragments, some of which have higher binding affinity than the ground truth.

原文English
頁(從 - 到)10808-10823
頁數16
期刊Journal of Medicinal Chemistry
66
發行號15
DOIs
出版狀態Published - 10 8月 2023

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