English

GlycanML: A Multi-Task and Multi-Structure Benchmark for Glycan Machine Learning

Machine Learning 2024-10-02 v3

Abstract

Glycans are basic biomolecules and perform essential functions within living organisms. The rapid increase of functional glycan data provides a good opportunity for machine learning solutions to glycan understanding. However, there still lacks a standard machine learning benchmark for glycan property and function prediction. In this work, we fill this blank by building a comprehensive benchmark for Glycan Machine Learning (GlycanML). The GlycanML benchmark consists of diverse types of tasks including glycan taxonomy prediction, glycan immunogenicity prediction, glycosylation type prediction, and protein-glycan interaction prediction. Glycans can be represented by both sequences and graphs in GlycanML, which enables us to extensively evaluate sequence-based models and graph neural networks (GNNs) on benchmark tasks. Furthermore, by concurrently performing eight glycan taxonomy prediction tasks, we introduce the GlycanML-MTL testbed for multi-task learning (MTL) algorithms. Also, we evaluate how taxonomy prediction can boost other three function prediction tasks by MTL. Experimental results show the superiority of modeling glycans with multi-relational GNNs, and suitable MTL methods can further boost model performance. We provide all datasets and source codes at https://github.com/GlycanML/GlycanML and maintain a leaderboard at https://GlycanML.github.io/project

Keywords

Cite

@article{arxiv.2405.16206,
  title  = {GlycanML: A Multi-Task and Multi-Structure Benchmark for Glycan Machine Learning},
  author = {Minghao Xu and Yunteng Geng and Yihang Zhang and Ling Yang and Jian Tang and Wentao Zhang},
  journal= {arXiv preprint arXiv:2405.16206},
  year   = {2024}
}

Comments

Research project paper. All code and data are released

R2 v1 2026-06-28T16:40:09.247Z