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Open AccessJournal ArticleDOI

Analyzing time series gene expression data

Ziv Bar-Joseph
- 01 Nov 2004 - 
- Vol. 20, Iss: 16, pp 2493-2503
TLDR
This review is intended to serve as both, a point of reference for experimental biologists looking for practical solutions for analyzing their data, and a starting point for computer scientists interested in working on the computational problems related to time series expression analysis.
Abstract
Motivation: Time series expression experiments are an increasingly popular method for studying a wide range of biological systems. However, when analyzing these experiments researchers face many new computational challenges. Algorithms that are specifically designed for time series experiments are required so that we can take advantage of their unique features (such as the ability to infer causality from the temporal response pattern) and address the unique problems they raise (e.g. handling the different non-uniform sampling rates). Results: We present a comprehensive review of the current research in time series expression data analysis. We divide the computational challenges into four analysis levels: experimental design, data analysis, pattern recognition and networks. For each of these levels, we discuss computational and biological problems at that level and point out some of the methods that have been proposed to deal with these issues. Many open problems in all these levels are discussed. This review is intended to serve as both, a point of reference for experimental biologists looking for practical solutions for analyzing their data, and a starting point for computer scientists interested in working on the computational problems related to time series expression analysis.

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Citations
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Singular Value Decomposition for Genome-Wide Expression Data Processing and Modeling

TL;DR: Using singular value decomposition in transforming genome-wide expression data from genes x arrays space to reduced diagonalized "eigengenes" x "eigenarrays" space gives a global picture of the dynamics of gene expression, in which individual genes and arrays appear to be classified into groups of similar regulation and function, or similar cellular state and biological phenotype.
Journal ArticleDOI

maSigPro: a method to identify significantly differential expression profiles in time-course microarray experiments

TL;DR: In this paper, a two-regression step approach is proposed to identify genes that show different gene expression profiles across analytical groups in time-course experiments, where the experimental groups are identified by dummy variables and a variable selection strategy is applied to study differences between groups and to find statistically significant different profiles.
Proceedings ArticleDOI

TRICLUSTER: an effective algorithm for mining coherent clusters in 3D microarray data

TL;DR: A novel algorithm, TRICLUSTER, for mining coherent clusters in three-dimensional (3D) gene expression datasets, which can mine arbitrarily positioned and overlapping clusters, and depending on different parameter values, it can mine different types of clusters.
Journal ArticleDOI

Extended local similarity analysis (eLSA) of microbial community and other time series data with replicates

TL;DR: The extended LSA analysis technique was demonstrated to reveal statistically significant local and potentially time-delayed association patterns in replicated time series data beyond that of ordinary correlation analysis.
References
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Journal Article

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Journal ArticleDOI

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