Litcius/Paper detail

SPOTONE: Hot Spots on Protein Complexes with Extremely Randomized Trees via Sequence-Only Features

António J. Preto, Irina S. Moreira

2020International Journal of Molecular Sciences28 citationsDOIOpen Access PDF

Abstract

Protein Hot-Spots (HS) are experimentally determined amino acids, key to small ligand binding and tend to be structural landmarks on protein-protein interactions. As such, they were extensively approached by structure-based Machine Learning (ML) prediction methods. However, the availability of a much larger array of protein sequences in comparison to determined tree-dimensional structures indicates that a sequence-based HS predictor has the potential to be more useful for the scientific community. Herein, we present SPOTONE, a new ML predictor able to accurately classify protein HS via sequence-only features. This algorithm shows accuracy, AUROC, precision, recall and F1-score of 0.82, 0.83, 0.91, 0.82 and 0.85, respectively, on an independent testing set. The algorithm is deployed within a free-to-use webserver at http://moreiralab.com/resources/spotone, only requiring the user to submit a FASTA file with one or more protein sequences.

Topics & Concepts

Sequence (biology)Set (abstract data type)Protein sequencingComputer scienceComputational biologyTree (set theory)Web serverBioinformaticsPattern recognition (psychology)Peptide sequenceData miningAlgorithmArtificial intelligenceBiologyMathematicsGeneticsCombinatoricsThe InternetGeneProgramming languageWorld Wide WebProtein Structure and DynamicsMachine Learning in BioinformaticsComputational Drug Discovery Methods