We present a novel and systematic approach to analyze temporal microarray data. The approach includes normalization, clustering and network analysis of genes.Genes are normalized using an error model based uniform normalization method aimed at identifying and estimating the sources of variations. The model minimizes the correlation among error terms across replicates. The normalized gene expressions are then clustered in terms of their power spectrum density. The method of complex Granger causality is introduced to reveal interactions between sets of genes. Complex Granger causality along with partial Granger causality is applied in both time and frequency domains to selected as well as all the genes to reveal the interesting networks of in...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Regulatory interactions among genes and gene products are dynamic processes, and hence, modeling the...
While genome-wide gene expression data are generated at an increasing rate, the repertoire of approa...
Background: We present a novel and systematic approach to analyze temporal microarray data. The appr...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
Background: A common approach for time series gene expression data analysis includes the clustering ...
We report on a new approach to modelling and identifying dependencies within a gene regulatory cycle...
We developed an integrative approach for discovering gene modules, i.e. genes that are tightly corre...
Powerful new methods, such as expression profiles using cDNA arrays, have been used to monitor chang...
We developed an integrative approach for discovering gene modules, i.e. genes that are tightly corre...
We introduce a model-based analysis technique for extracting and characterizing rhythmic expression ...
Functional gene research is an important issue in Post-genomic era. Microarray is used to generate l...
One of the exciting, ongoing research areas within the fields of bioinformatics and systems biology ...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
Microarray technology has produced a huge body of time-course gene expression data and will continue...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Regulatory interactions among genes and gene products are dynamic processes, and hence, modeling the...
While genome-wide gene expression data are generated at an increasing rate, the repertoire of approa...
Background: We present a novel and systematic approach to analyze temporal microarray data. The appr...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
Background: A common approach for time series gene expression data analysis includes the clustering ...
We report on a new approach to modelling and identifying dependencies within a gene regulatory cycle...
We developed an integrative approach for discovering gene modules, i.e. genes that are tightly corre...
Powerful new methods, such as expression profiles using cDNA arrays, have been used to monitor chang...
We developed an integrative approach for discovering gene modules, i.e. genes that are tightly corre...
We introduce a model-based analysis technique for extracting and characterizing rhythmic expression ...
Functional gene research is an important issue in Post-genomic era. Microarray is used to generate l...
One of the exciting, ongoing research areas within the fields of bioinformatics and systems biology ...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
Microarray technology has produced a huge body of time-course gene expression data and will continue...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Regulatory interactions among genes and gene products are dynamic processes, and hence, modeling the...
While genome-wide gene expression data are generated at an increasing rate, the repertoire of approa...