Gene expression time series (GETS) analysis aims to characterize sets of genes according to their longitudinal patterns of expression. Due to the large number of genes evaluated in GETS analysis, an useful strategy to summarize biological functional processes and regulatory mechanisms is through clustering of genes that present similar expression pattern over time. Traditional cluster methods usually ignore the challenges in GETS, such as the lack of data normality and small number of temporal observations. Independent Component Analysis (ICA) is a statistical procedure that uses a transformation to convert raw time series data into sets of values of independent variables, which can be used for cluster analysis to identify sets of genes wit...
High-throughput genome-widemeasurements of gene transcript levels have become available with the rec...
The article analyzes various clustering approaches that are used in gene expression tasks. The chose...
Microarray experiments are information rich; however, extensive data mining is required to identify ...
Gene expression time series (GETS) analysis aims to characterize sets of genes according to their lo...
We propose an unsupervised methodology using independent component analysis (ICA) to cluster genes f...
The next generation sequencing technology (RNA-seq) provides absolute quantifi-cation of gene expres...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
This study presents an effective method of blindly classifying large amounts of gene expression data...
Motivation: Time series expression experiments are used to study a wide range of biological systems....
This work performs a data driven comparative study of clustering methods used in the analysis of gen...
Abstract. Tree-dependent component analysis (TCA) is a generalization of independent component analy...
This thesis examines methods used to cluster time-course gene expression array data. In the past dec...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Gene clustering of periodic transcriptional profiles provides an opportunity to shed light on a vari...
Background: Unsupervised analyses such as clustering are the essential tools required to interpret t...
High-throughput genome-widemeasurements of gene transcript levels have become available with the rec...
The article analyzes various clustering approaches that are used in gene expression tasks. The chose...
Microarray experiments are information rich; however, extensive data mining is required to identify ...
Gene expression time series (GETS) analysis aims to characterize sets of genes according to their lo...
We propose an unsupervised methodology using independent component analysis (ICA) to cluster genes f...
The next generation sequencing technology (RNA-seq) provides absolute quantifi-cation of gene expres...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
This study presents an effective method of blindly classifying large amounts of gene expression data...
Motivation: Time series expression experiments are used to study a wide range of biological systems....
This work performs a data driven comparative study of clustering methods used in the analysis of gen...
Abstract. Tree-dependent component analysis (TCA) is a generalization of independent component analy...
This thesis examines methods used to cluster time-course gene expression array data. In the past dec...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Gene clustering of periodic transcriptional profiles provides an opportunity to shed light on a vari...
Background: Unsupervised analyses such as clustering are the essential tools required to interpret t...
High-throughput genome-widemeasurements of gene transcript levels have become available with the rec...
The article analyzes various clustering approaches that are used in gene expression tasks. The chose...
Microarray experiments are information rich; however, extensive data mining is required to identify ...