Literature DB >> 33579334

Gene function finding through cross-organism ensemble learning.

Gianluca Moro1, Marco Masseroli2.   

Abstract

BACKGROUND: Structured biological information about genes and proteins is a valuable resource to improve discovery and understanding of complex biological processes via machine learning algorithms. Gene Ontology (GO) controlled annotations describe, in a structured form, features and functions of genes and proteins of many organisms. However, such valuable annotations are not always reliable and sometimes are incomplete, especially for rarely studied organisms. Here, we present GeFF (Gene Function Finder), a novel cross-organism ensemble learning method able to reliably predict new GO annotations of a target organism from GO annotations of another source organism evolutionarily related and better studied.
RESULTS: Using a supervised method, GeFF predicts unknown annotations from random perturbations of existing annotations. The perturbation consists in randomly deleting a fraction of known annotations in order to produce a reduced annotation set. The key idea is to train a supervised machine learning algorithm with the reduced annotation set to predict, namely to rebuild, the original annotations. The resulting prediction model, in addition to accurately rebuilding the original known annotations for an organism from their perturbed version, also effectively predicts new unknown annotations for the organism. Moreover, the prediction model is also able to discover new unknown annotations in different target organisms without retraining.We combined our novel method with different ensemble learning approaches and compared them to each other and to an equivalent single model technique. We tested the method with five different organisms using their GO annotations: Homo sapiens, Mus musculus, Bos taurus, Gallus gallus and Dictyostelium discoideum. The outcomes demonstrate the effectiveness of the cross-organism ensemble approach, which can be customized with a trade-off between the desired number of predicted new annotations and their precision.A Web application to browse both input annotations used and predicted ones, choosing the ensemble prediction method to use, is publicly available at http://tiny.cc/geff/ .
CONCLUSIONS: Our novel cross-organism ensemble learning method provides reliable predicted novel gene annotations, i.e., functions, ranked according to an associated likelihood value. They are very valuable both to speed the annotation curation, focusing it on the prioritized new annotations predicted, and to complement known annotations available.

Entities:  

Keywords:  Biomolecular annotation prediction; Data representation; Ensemble learning; Gene ontology; Knowledge discovery; Transfer learning

Year:  2021        PMID: 33579334      PMCID: PMC7879670          DOI: 10.1186/s13040-021-00239-w

Source DB:  PubMed          Journal:  BioData Min        ISSN: 1756-0381            Impact factor:   2.522


  44 in total

1.  Creating the gene ontology resource: design and implementation.

Authors: 
Journal:  Genome Res       Date:  2001-08       Impact factor: 9.043

2.  Comparative genomics for reliable protein-function prediction from genomic data.

Authors:  Martijn A Huynen; Berend Snel; Vera van Noort
Journal:  Trends Genet       Date:  2004-08       Impact factor: 11.639

3.  Gene annotation from scientific literature using mappings between keyword systems.

Authors:  Antonio J Pérez; Carolina Perez-Iratxeta; Peer Bork; Guillermo Thode; Miguel A Andrade
Journal:  Bioinformatics       Date:  2004-04-01       Impact factor: 6.937

4.  Hierarchical multi-label prediction of gene function.

Authors:  Zafer Barutcuoglu; Robert E Schapire; Olga G Troyanskaya
Journal:  Bioinformatics       Date:  2006-01-12       Impact factor: 6.937

5.  Integration and Querying of Genomic and Proteomic Semantic Annotations for Biomedical Knowledge Extraction.

Authors:  Marco Masseroli; Arif Canakoglu; Stefano Ceri
Journal:  IEEE/ACM Trans Comput Biol Bioinform       Date:  2016 Mar-Apr       Impact factor: 3.710

6.  Cross-organism learning method to discover new gene functionalities.

Authors:  Giacomo Domeniconi; Marco Masseroli; Gianluca Moro; Pietro Pinoli
Journal:  Comput Methods Programs Biomed       Date:  2015-12-17       Impact factor: 5.428

7.  Gene function prediction using semantic similarity clustering and enrichment analysis in the malaria parasite Plasmodium falciparum.

Authors:  Philip M R Tedder; James R Bradford; Chris J Needham; Glenn A McConkey; Andrew J Bulpitt; David R Westhead
Journal:  Bioinformatics       Date:  2010-08-06       Impact factor: 6.937

8.  Predicting protein function and other biomedical characteristics with heterogeneous ensembles.

Authors:  Sean Whalen; Om Prakash Pandey; Gaurav Pandey
Journal:  Methods       Date:  2015-09-02       Impact factor: 3.608

9.  IMP: a multi-species functional genomics portal for integration, visualization and prediction of protein functions and networks.

Authors:  Aaron K Wong; Christopher Y Park; Casey S Greene; Lars A Bongo; Yuanfang Guan; Olga G Troyanskaya
Journal:  Nucleic Acids Res       Date:  2012-06-07       Impact factor: 16.971

Review 10.  A survey of computational intelligence techniques in protein function prediction.

Authors:  Arvind Kumar Tiwari; Rajeev Srivastava
Journal:  Int J Proteomics       Date:  2014-12-11
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