English

Exploring evolution-aware & -free protein language models as protein function predictors

Quantitative Methods 2022-10-18 v2 Artificial Intelligence

Abstract

Large-scale Protein Language Models (PLMs) have improved performance in protein prediction tasks, ranging from 3D structure prediction to various function predictions. In particular, AlphaFold, a ground-breaking AI system, could potentially reshape structural biology. However, the utility of the PLM module in AlphaFold, Evoformer, has not been explored beyond structure prediction. In this paper, we investigate the representation ability of three popular PLMs: ESM-1b (single sequence), MSA-Transformer (multiple sequence alignment) and Evoformer (structural), with a special focus on Evoformer. Specifically, we aim to answer the following key questions: (i) Does the Evoformer trained as part of AlphaFold produce representations amenable to predicting protein function? (ii) If yes, can Evoformer replace ESM-1b and MSA-Transformer? (ii) How much do these PLMs rely on evolution-related protein data? In this regard, are they complementary to each other? We compare these models by empirical study along with new insights and conclusions. All code and datasets for reproducibility are available at https://github.com/elttaes/Revisiting-PLMs.

Keywords

Cite

@article{arxiv.2206.06583,
  title  = {Exploring evolution-aware & -free protein language models as protein function predictors},
  author = {Mingyang Hu and Fajie Yuan and Kevin K. Yang and Fusong Ju and Jin Su and Hui Wang and Fei Yang and Qiuyang Ding},
  journal= {arXiv preprint arXiv:2206.06583},
  year   = {2022}
}
R2 v1 2026-06-24T11:50:14.038Z