Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Gene function finding through cross-organism ensemble learning

View through CrossRef
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.
Springer Science and Business Media LLC
Title: Gene function finding through cross-organism ensemble learning
Description:
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.

Related Results

CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
Expression and polymorphism of genes in gallstones
Expression and polymorphism of genes in gallstones
ABSTRACT Through the method of clinical case control study, to explore the expression and genetic polymorphism of KLF14 gene (rs4731702 and rs972283) and SR-B1 gene...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Pinaceae show elevated rates of gene duplication and gene loss that are robust to incomplete gene annotation
Pinaceae show elevated rates of gene duplication and gene loss that are robust to incomplete gene annotation
Abstract Gene duplications and gene losses are major determinants of genome evolution and phenotypic diversity. The frequency of gene turnover (gene gains and gene ...
Producing calibrated ensemble precipitation forecasts using Neighbourhood Ensemble Copula Coupling
Producing calibrated ensemble precipitation forecasts using Neighbourhood Ensemble Copula Coupling
We introduce Neighbourhood Ensemble Copula Coupling, a technique for post-processing ensemble precipitation forecasts to produce physically realistic, well-calibrated scenarios.Mod...
Estimated limits of organism-specific training for epitope prediction
Estimated limits of organism-specific training for epitope prediction
Abstract Background The identification of linear B-cell epitopes remains an important task in the development of vaccines, ther...
Ensemble Machine Learning to “Boost” Ubiquitination-sites Prediction
Ensemble Machine Learning to “Boost” Ubiquitination-sites Prediction
ABSTRACT Ubiquitination-site prediction is an important task because ubiquitination is a critical regulatory function for many biological processes such as proteaso...
Multivariate Ensemble Sensitivity Analysis for an Extreme Weather Event Over Indian Subcontinent
Multivariate Ensemble Sensitivity Analysis for an Extreme Weather Event Over Indian Subcontinent
<p>Ensemble forecasts have proven useful for diagnosing the source of forecast uncertainty in a wide variety of atmospheric systems. Ensemble Sensitivity Analysis (ES...

Back to Top