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Improved multi-label classifiers for predicting protein subcellular localization

Lei Chen, Ruyun Qu, Xintong Liu

2023Mathematical Biosciences & Engineering24 citationsDOIOpen Access PDF

Abstract

Protein functions are closely related to their subcellular locations. At present, the prediction of protein subcellular locations is one of the most important problems in protein science. The evident defects of traditional methods make it urgent to design methods with high efficiency and low costs. To date, lots of computational methods have been proposed. However, this problem is far from being completely solved. Recently, some multi-label classifiers have been proposed to identify subcellular locations of human, animal, Gram-negative bacterial and eukaryotic proteins. These classifiers adopted the protein features derived from gene ontology information. Although they provided good performance, they can be further improved by adopting more powerful machine learning algorithms. In this study, four improved multi-label classifiers were set up for identification of subcellular locations of the above four protein types. The random k-labelsets (RAKEL) algorithm was used to tackle proteins with multiple locations, and random forest was used as the basic prediction engine. All classifiers were tested by jackknife test, indicating their high performance. Comparisons with previous classifiers further confirmed the superiority of the proposed classifiers.

Topics & Concepts

Jackknife resamplingRandom forestSubcellular localizationRandom subspace methodArtificial intelligenceComputer scienceMachine learningGene ontologyIdentification (biology)Support vector machinePseudo amino acid compositionPattern recognition (psychology)Classifier (UML)Protein subcellular localization predictionData miningMathematicsBiologyGeneStatisticsBiochemistryBotanyGene expressionEstimatorMachine Learning in BioinformaticsRNA and protein synthesis mechanismsGenomics and Phylogenetic Studies