Genome Biology (Feb 2024)

AnnoPRO: a strategy for protein function annotation based on multi-scale protein representation and a hybrid deep learning of dual-path encoding

  • Lingyan Zheng,
  • Shuiyang Shi,
  • Mingkun Lu,
  • Pan Fang,
  • Ziqi Pan,
  • Hongning Zhang,
  • Zhimeng Zhou,
  • Hanyu Zhang,
  • Minjie Mou,
  • Shijie Huang,
  • Lin Tao,
  • Weiqi Xia,
  • Honglin Li,
  • Zhenyu Zeng,
  • Shun Zhang,
  • Yuzong Chen,
  • Zhaorong Li,
  • Feng Zhu

DOI
https://doi.org/10.1186/s13059-024-03166-1
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 22

Abstract

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Abstract Protein function annotation has been one of the longstanding issues in biological sciences, and various computational methods have been developed. However, the existing methods suffer from a serious long-tail problem, with a large number of GO families containing few annotated proteins. Herein, an innovative strategy named AnnoPRO was therefore constructed by enabling sequence-based multi-scale protein representation, dual-path protein encoding using pre-training, and function annotation by long short-term memory-based decoding. A variety of case studies based on different benchmarks were conducted, which confirmed the superior performance of AnnoPRO among available methods. Source code and models have been made freely available at: https://github.com/idrblab/AnnoPRO and https://zenodo.org/records/10012272

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