Research (Jan 2024)

Highly Accurate and Efficient Deep Learning Paradigm for Full-Atom Protein Loop Modeling with KarmaLoop

  • Tianyue Wang,
  • Xujun Zhang,
  • Odin Zhang,
  • Guangyong Chen,
  • Peichen Pan,
  • Ercheng Wang,
  • Jike Wang,
  • Jialu Wu,
  • Donghao Zhou,
  • Langcheng Wang,
  • Ruofan Jin,
  • Shicheng Chen,
  • Chao Shen,
  • Yu Kang,
  • Chang-Yu Hsieh,
  • Tingjun Hou

DOI
https://doi.org/10.34133/research.0408
Journal volume & issue
Vol. 7

Abstract

Read online

Protein loop modeling is a challenging yet highly nontrivial task in protein structure prediction. Despite recent progress, existing methods including knowledge-based, ab initio, hybrid, and deep learning (DL) methods fall substantially short of either atomic accuracy or computational efficiency. To overcome these limitations, we present KarmaLoop, a novel paradigm that distinguishes itself as the first DL method centered on full-atom (encompassing both backbone and side-chain heavy atoms) protein loop modeling. Our results demonstrate that KarmaLoop considerably outperforms conventional and DL-based methods of loop modeling in terms of both accuracy and efficiency, with the average RMSDs of 1.77 and 1.95 Å for the CASP13+14 and CASP15 benchmark datasets, respectively, and manifests at least 2 orders of magnitude speedup in general compared with other methods. Consequently, our comprehensive evaluations indicate that KarmaLoop provides a state-of-the-art DL solution for protein loop modeling, with the potential to hasten the advancement of protein engineering, antibody–antigen recognition, and drug design.