2022
DOI: 10.1186/s12859-022-04565-6
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Assigning protein function from domain-function associations using DomFun

Abstract: Background Protein function prediction remains a key challenge. Domain composition affects protein function. Here we present DomFun, a Ruby gem that uses associations between protein domains and functions, calculated using multiple indices based on tripartite network analysis. These domain-function associations are combined at the protein level, to generate protein-function predictions. Results We analysed 16 tripartite networks connecting homologo… Show more

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Cited by 13 publications
(12 citation statements)
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“…Predicting protein functional properties is still one of the most important tasks for bioinformaticians (e.g., [10][11][12][13][14][15][16][17]). Here, we collect 10 useful tips or guidelines representing best practices specifically for methods that generate predictions of protein functional structural properties using protein sequence data as input; Fig 1 illustrates several examples.…”
Section: Introductionmentioning
confidence: 99%
“…Predicting protein functional properties is still one of the most important tasks for bioinformaticians (e.g., [10][11][12][13][14][15][16][17]). Here, we collect 10 useful tips or guidelines representing best practices specifically for methods that generate predictions of protein functional structural properties using protein sequence data as input; Fig 1 illustrates several examples.…”
Section: Introductionmentioning
confidence: 99%
“…A multitude of in silico approaches have been designed to predict the function of the gene products inferred downstream from a given workflow, without the need to rely on inheritance through homology. Some examples include, but are not restricted to, predicting protein function by (i) inferring known patterns of evolutionary substitutions ( Bileschi et al., 2022 ); (ii) integrative mapping of metabolic pathways ( Calhoun et al., 2018 ); (iii) using domain-function associations ( Rojano et al., 2022 ); (iv) leveraging template-based protein structure prediction ( Zheng et al., 2022 ); (v) integration of multiple data sources ( Zohra Smaili et al., 2021 ); and (vi) genomic context analysis ( Cotroneo et al., 2021 ), among many others. Most current protein function prediction tools are based upon machine-learning (ML) ( Bernardes, Pedreira, 2013 , Bonetta, Valentino, 2020 , Libbrecht, Noble, 2015 ), to some extent.…”
Section: Discussionmentioning
confidence: 99%
“…This approach is so powerful because only a few model organisms have been probed in depth in laboratory studies, but many proteins are conserved across diverse taxonomic groups. Homology inference is applied in many annotation tools (Mahlich et al 2018 ), which can also be used to identify associations between protein domains and functions (Rojano et al 2022 ). However, even when a conserved domain is predicted, the function itself may not be conserved (Punta and Ofran 2008 ).…”
Section: Sequence-based Annotationsmentioning
confidence: 99%