Background: In spite of the significant data surrounding complex gene networks including gene function, the occurrence of huge redundancy affects the efficiency. Objective: This work proposes a mining method to reduce the number of redundant nodes in a composite weighted network. Method: The idea is to eliminate the redundancies of nodes via a hybrid approach, i.e. the integration of multiple functional association networks using a Greedy Algorithm. This is achieved by mining the gene function from weighted gene co-expression networks based on neighbor similarity, as per the available datasets. Subsequently, Linear Regression and Greedy Algorithm are applied simultaneously for exclusion of the redundant nodes. Then, assigning the indexing r...
One of the main problems in functional genomics is the prediction of the unknown gene/protein functi...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
Background: Computational methods that make use of heterogeneous biological datasets to predict gene...
With the growing availability of large-scale biological datasets, automatedmethods of extract-ing fu...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Abstract Background Most computational algorithms mainly focus on detecting highly connected subgrap...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Abstract Background: Most successful computational ap...
Motivation: Gene networks have been used widely in gene function prediction algorithms, many based o...
Predicting the biological function of all the genes of an organism is one of the fundamental goals o...
Abstract Background In recent years, biological interaction networks have become the basis of some e...
Predicting the biological function of all the genes of an organism is one of the fundamental goals o...
One of the main problems in functional genomics is the prediction of the unknown gene/protein functi...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
Motivation: Many algorithms that integrate multiple functional association networks for predicting g...
Background: Computational methods that make use of heterogeneous biological datasets to predict gene...
With the growing availability of large-scale biological datasets, automatedmethods of extract-ing fu...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Abstract Background Most computational algorithms mainly focus on detecting highly connected subgrap...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Abstract Background: Most successful computational ap...
Motivation: Gene networks have been used widely in gene function prediction algorithms, many based o...
Predicting the biological function of all the genes of an organism is one of the fundamental goals o...
Abstract Background In recent years, biological interaction networks have become the basis of some e...
Predicting the biological function of all the genes of an organism is one of the fundamental goals o...
One of the main problems in functional genomics is the prediction of the unknown gene/protein functi...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...