ContraNovo: A Contrastive Learning Approach to Enhance De Novo Peptide Sequencing

Authors

  • Zhi Jin Shanghai Artificial Intelligence Laboratory Department of Computer Science, Soochow University
  • Sheng Xu Shanghai Artificial Intelligence Laboratory Research Institute of Intelligent Complex Systems, Fudan University
  • Xiang Zhang University of British Columbia Shanghai Artificial Intelligence Laboratory
  • Tianze Ling National Center for Protein Sciences (Beijing)
  • Nanqing Dong Shanghai Artificial Intelligence Laboratory
  • Wanli Ouyang Shanghai Artificial Intelligence Laboratory
  • Zhiqiang Gao Shanghai Artificial Intelligence Laboratory
  • Cheng Chang National Center for Protein Sciences (Beijing)
  • Siqi Sun Shanghai Artificial Intelligence Laboratory Research Institute of Intelligent Complex Systems, Fudan University

DOI:

https://doi.org/10.1609/aaai.v38i1.27765

Keywords:

APP: Natural Sciences, ML: Applications

Abstract

De novo peptide sequencing from mass spectrometry (MS) data is a critical task in proteomics research. Traditional de novo algorithms have encountered a bottleneck in accuracy due to the inherent complexity of proteomics data. While deep learning-based methods have shown progress, they reduce the problem to a translation task, potentially overlooking critical nuances between spectra and peptides. In our research, we present ContraNovo, a pioneering algorithm that leverages contrastive learning to extract the relationship between spectra and peptides and incorporates the mass information into peptide decoding, aiming to address these intricacies more efficiently. Through rigorous evaluations on two benchmark datasets, ContraNovo consistently outshines contemporary state-of-the-art solutions, underscoring its promising potential in enhancing de novo peptide sequencing.

Published

2024-03-25

How to Cite

Jin, Z., Xu, S., Zhang, X., Ling, T., Dong, N., Ouyang, W., Gao, Z., Chang, C., & Sun, S. (2024). ContraNovo: A Contrastive Learning Approach to Enhance De Novo Peptide Sequencing. Proceedings of the AAAI Conference on Artificial Intelligence, 38(1), 144-152. https://doi.org/10.1609/aaai.v38i1.27765

Issue

Section

AAAI Technical Track on Application Domains