This work presents a novel approach to predict functional relations between genes using gene expression data. Genes may have various types of relations between them, for example, regulatory relations, or they may be concerned with the same protein complex or metabolic/signaling pathways and obviously gene expression data should contain some clues to such relations. The present approach first digitizes the log-ratio type gene expression data of S. cerevisiae to a matrix consisting of 1, 0, and −1 indicating highly expressed, no major change, and highly suppressed conditions for genes, respectively. For each gene pair, a probability density mass function table is constructed indicating nine joint probabilities. Then gene pairs were selected b...
AbstractInference of gene expression networks has become one of the primary challenges in computatio...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Analysis of genome-wide expression data poses a challenge to extract relevant information. The usual...
It is commonly accepted that genes with similar expression profiles are functionally related. Ho...
Defining regulatory networks, linking transcription factors (TFs) to their targets, is a central pro...
International audienceBACKGROUND: Identifying gene functional modules is an important step towards e...
To carry out their specific roles in the cell, genes and gene products often work together in groups...
We propose a new method for finding potential regulatory relationships between pairs of genes from m...
UnrestrictedUnderstanding the gene regulatory network has always been one of the important and chall...
One of the primary goals of bioinformatics is the identification of the function of genes. The...
A major goal of biology is the construction of networks that predict complex system behavior. We com...
This dissertation proposes a set of computational methods for inference of gene networks from hetero...
With the growing availability of large-scale biological datasets, automatedmethods of extract-ing fu...
We propose a novel method to identify functionally related genes based on comparisons of neighborhoo...
Abstract Background Expression array data are used to predict biological functions of uncharacterize...
AbstractInference of gene expression networks has become one of the primary challenges in computatio...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Analysis of genome-wide expression data poses a challenge to extract relevant information. The usual...
It is commonly accepted that genes with similar expression profiles are functionally related. Ho...
Defining regulatory networks, linking transcription factors (TFs) to their targets, is a central pro...
International audienceBACKGROUND: Identifying gene functional modules is an important step towards e...
To carry out their specific roles in the cell, genes and gene products often work together in groups...
We propose a new method for finding potential regulatory relationships between pairs of genes from m...
UnrestrictedUnderstanding the gene regulatory network has always been one of the important and chall...
One of the primary goals of bioinformatics is the identification of the function of genes. The...
A major goal of biology is the construction of networks that predict complex system behavior. We com...
This dissertation proposes a set of computational methods for inference of gene networks from hetero...
With the growing availability of large-scale biological datasets, automatedmethods of extract-ing fu...
We propose a novel method to identify functionally related genes based on comparisons of neighborhoo...
Abstract Background Expression array data are used to predict biological functions of uncharacterize...
AbstractInference of gene expression networks has become one of the primary challenges in computatio...
With the growing availability of large-scale biological datasets, automated methods of extracting fu...
Analysis of genome-wide expression data poses a challenge to extract relevant information. The usual...