Litcius/Paper detail

Evidential deep learning for trustworthy prediction of enzyme commission number

So‐Ra Han, Mingyu Park, Sai Kosaraju, J.S. Lee, Hyun Lee, Jun Hyuck Lee, Tae‐Jin Oh, Mingon Kang

2023Briefings in Bioinformatics26 citationsDOIOpen Access PDF

Abstract

The rapid growth of uncharacterized enzymes and their functional diversity urge accurate and trustworthy computational functional annotation tools. However, current state-of-the-art models lack trustworthiness on the prediction of the multilabel classification problem with thousands of classes. Here, we demonstrate that a novel evidential deep learning model (named ECPICK) makes trustworthy predictions of enzyme commission (EC) numbers with data-driven domain-relevant evidence, which results in significantly enhanced predictive power and the capability to discover potential new motif sites. ECPICK learns complex sequential patterns of amino acids and their hierarchical structures from 20 million enzyme data. ECPICK identifies significant amino acids that contribute to the prediction without multiple sequence alignment. Our intensive assessment showed not only outstanding enhancement of predictive performance on the largest databases of Uniprot, Protein Data Bank (PDB) and Kyoto Encyclopedia of Genes and Genomes (KEGG), but also a capability to discover new motif sites in microorganisms. ECPICK is a reliable EC number prediction tool to identify protein functions of an increasing number of uncharacterized enzymes.

Topics & Concepts

UniProtComputer scienceKEGGArtificial intelligenceAnnotationMachine learningClassifier (UML)TrustworthinessProtein sequencingProtein Data Bank (RCSB PDB)Computational biologyData miningGeneBiologyPeptide sequenceGene ontologyBiochemistryComputer securityGene expressionMicrobial Metabolic Engineering and BioproductionProtein Structure and DynamicsEnzyme Structure and Function