A large number and variety of genome-wide genomics and proteomics datasets are now available for model organisms. Each dataset on its own presents a distinct but noisy view of cellular state. However, collectively, these datasets embody a more comprehensive view of cell function. This motivates the prediction of function for uncharacterized genes by combining multiple datasets, in order to exploit the associations between such genes and genes of known function--all in a query-specific fashion. Commonly, heterogeneous datasets are represented as networks in order to facilitate their combination. Here, I show that it is possible to accurately predict gene function in seconds by combining multiple large-scale networks. This facilitates fun...
With the advent of big data, scientists are collecting biological data faster than they have in the ...
A recent class of gene/protein function predictors, based on Graph Semi Supervised Learning (GSSL), ...
MOTIVATION: Network-based gene function inference methods have proliferated in recent years, but mea...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Abstract Background: Most successful computational ap...
In this opinion piece, we attempt to unify recent arguments we have made that serious confounds affe...
The rapid development of high-throughput technology has generated a large number of biological netwo...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
Motivation: Systematically predicting gene (or protein) function based on molecular interaction netw...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
One of the main problems in functional genomics is the prediction of the unknown gene/protein functi...
Motivation: Gene networks have been used widely in gene function prediction algorithms, many based o...
With the growing availability of large-scale biological datasets, automatedmethods of extract-ing fu...
With the advent of big data, scientists are collecting biological data faster than they have in the ...
A recent class of gene/protein function predictors, based on Graph Semi Supervised Learning (GSSL), ...
MOTIVATION: Network-based gene function inference methods have proliferated in recent years, but mea...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Abstract Background: Most successful computational ap...
In this opinion piece, we attempt to unify recent arguments we have made that serious confounds affe...
The rapid development of high-throughput technology has generated a large number of biological netwo...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
Motivation: Systematically predicting gene (or protein) function based on molecular interaction netw...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
One of the main problems in functional genomics is the prediction of the unknown gene/protein functi...
Motivation: Gene networks have been used widely in gene function prediction algorithms, many based o...
With the growing availability of large-scale biological datasets, automatedmethods of extract-ing fu...
With the advent of big data, scientists are collecting biological data faster than they have in the ...
A recent class of gene/protein function predictors, based on Graph Semi Supervised Learning (GSSL), ...
MOTIVATION: Network-based gene function inference methods have proliferated in recent years, but mea...