Motivation: Characterizing and comparing temporal gene-expression responses is an important computational task for answering a variety of questions in biological studies. Algorithms for aligning time series represent a valuable approach for such analyses. However, previous approaches to aligning gene-expression time series have assumed that all genes should share the same alignment. Our work is motivated by the need for methods that identify sets of genes that differ in similar ways between two time series, even when their expression profiles are quite different. Results: We present a novel algorithm that calculates clustered alignments; the method finds clusters of genes such that the genes within a cluster share a common alignment, but ea...
Motivation: The study of the dynamics of regulatory processes has led to increased interest for the ...
[[abstract]]We propose an unsupervised approach for analyzing gene time-series datasets. Our method ...
Clustering techniques are important for gene expression data analysis. However, efficient computatio...
ii We present methods for comparing and performing similarity queries for gene-expression time-serie...
An important process in functional genomic studies is clustering microarray time-series data, where ...
Genes with similar expression profiles are expected to be functionally related or co-regulated. In t...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Background: Unsupervised analyses such as clustering are the essential tools required to interpret t...
Motivation: Time series expression experiments are used to study a wide range of biological systems....
Clustering of gene expression time series gives insight into which genes may be co-regulated, allowi...
The development of microarray technology has enabled simultaneous expression measurements from tens ...
BACKGROUND. Many microarray experiments produce temporal profiles in different biological conditions...
Summarization: Statistical evaluation of temporal gene expression profiles plays an important role i...
A common problem in biology is to partition a set of experimental data into clusters in such a way t...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
Motivation: The study of the dynamics of regulatory processes has led to increased interest for the ...
[[abstract]]We propose an unsupervised approach for analyzing gene time-series datasets. Our method ...
Clustering techniques are important for gene expression data analysis. However, efficient computatio...
ii We present methods for comparing and performing similarity queries for gene-expression time-serie...
An important process in functional genomic studies is clustering microarray time-series data, where ...
Genes with similar expression profiles are expected to be functionally related or co-regulated. In t...
Clustering time course gene expression data allows one to explore functional co-regulation of genes ...
Background: Unsupervised analyses such as clustering are the essential tools required to interpret t...
Motivation: Time series expression experiments are used to study a wide range of biological systems....
Clustering of gene expression time series gives insight into which genes may be co-regulated, allowi...
The development of microarray technology has enabled simultaneous expression measurements from tens ...
BACKGROUND. Many microarray experiments produce temporal profiles in different biological conditions...
Summarization: Statistical evaluation of temporal gene expression profiles plays an important role i...
A common problem in biology is to partition a set of experimental data into clusters in such a way t...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
Motivation: The study of the dynamics of regulatory processes has led to increased interest for the ...
[[abstract]]We propose an unsupervised approach for analyzing gene time-series datasets. Our method ...
Clustering techniques are important for gene expression data analysis. However, efficient computatio...