SumoPred-PLM: human SUMOylation and SUMO2/3 sites Prediction using Pre-trained Protein Language Model

Author:

Palacios Andrew Vargas1,Acharya Pujan1,Peidl Anthony Stephen2,Beck Moriah Rene3,Blanco Eduardo4,Mishra Avdesh5,Bawa-Khalfe Tasneem2,Pakhrin Subash Chandra1ORCID

Affiliation:

1. Department of Computer Science and Engineering Technology, University of Houston-Downtown , 1 Main St., Houston , TX  77002 , USA

2. Department of Biology and Biochemistry, Center for Nuclear Receptors & Cell Signaling, University of Houston , Houston , TX  77204 , USA

3. Department of Chemistry and Biochemistry, Wichita State University , 1845 Fairmount St., Wichita , KS 67260 , USA

4. Department of Computer Science, University of Arizona , 1040 4th St., Tucson , AZ  85721 , USA

5. Department of Electrical Engineering and Computer Science, Texas A&M University-Kingsville , Kingsville , TX  78363 , USA

Abstract

Abstract SUMOylation is an essential post-translational modification system with the ability to regulate nearly all aspects of cellular physiology. Three major paralogues SUMO1, SUMO2 and SUMO3 form a covalent bond between the small ubiquitin-like modifier with lysine residues at consensus sites in protein substrates. Biochemical studies continue to identify unique biological functions for protein targets conjugated to SUMO1 versus the highly homologous SUMO2 and SUMO3 paralogues. Yet, the field has failed to harness contemporary AI approaches including pre-trained protein language models to fully expand and/or recognize the SUMOylated proteome. Herein, we present a novel, deep learning-based approach called SumoPred-PLM for human SUMOylation prediction with sensitivity, specificity, Matthew's correlation coefficient, and accuracy of 74.64%, 73.36%, 0.48% and 74.00%, respectively, on the CPLM 4.0 independent test dataset. In addition, this novel platform uses contextualized embeddings obtained from a pre-trained protein language model, ProtT5-XL-UniRef50 to identify SUMO2/3-specific conjugation sites. The results demonstrate that SumoPred-PLM is a powerful and unique computational tool to predict SUMOylation sites in proteins and accelerate discovery.

Funder

National Institutes of Health

U.H.D.

Department of Homeland Security

Publisher

Oxford University Press (OUP)

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