Literature DB >> 12934016

Comparing the continuous representation of time-series expression profiles to identify differentially expressed genes.

Ziv Bar-Joseph1, Georg Gerber, Itamar Simon, David K Gifford, Tommi S Jaakkola.   

Abstract

We present a general algorithm to detect genes differentially expressed between two nonhomogeneous time-series data sets. As increasing amounts of high-throughput biological data become available, a major challenge in genomic and computational biology is to develop methods for comparing data from different experimental sources. Time-series whole-genome expression data are a particularly valuable source of information because they can describe an unfolding biological process such as the cell cycle or immune response. However, comparisons of time-series expression data sets are hindered by biological and experimental inconsistencies such as differences in sampling rate, variations in the timing of biological processes, and the lack of repeats. Our algorithm overcomes these difficulties by using a continuous representation for time-series data and combining a noise model for individual samples with a global difference measure. We introduce a corresponding statistical method for computing the significance of this differential expression measure. We used our algorithm to compare cell-cycle-dependent gene expression in wild-type and knockout yeast strains. Our algorithm identified a set of 56 differentially expressed genes, and these results were validated by using independent protein-DNA-binding data. Unlike previous methods, our algorithm was also able to identify 22 non-cell-cycle-regulated genes as differentially expressed. This set of genes is significantly correlated in a set of independent expression experiments, suggesting additional roles for the transcription factors Fkh1 and Fkh2 in controlling cellular activity in yeast.

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Year:  2003        PMID: 12934016      PMCID: PMC193530          DOI: 10.1073/pnas.1732547100

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  22 in total

1.  Dynamic modeling of gene expression data.

Authors:  N S Holter; A Maritan; M Cieplak; N V Fedoroff; J R Banavar
Journal:  Proc Natl Acad Sci U S A       Date:  2001-02-13       Impact factor: 11.205

2.  Functional discovery via a compendium of expression profiles.

Authors:  T R Hughes; M J Marton; A R Jones; C J Roberts; R Stoughton; C D Armour; H A Bennett; E Coffey; H Dai; Y D He; M J Kidd; A M King; M R Meyer; D Slade; P Y Lum; S B Stepaniants; D D Shoemaker; D Gachotte; K Chakraburtty; J Simon; M Bard; S H Friend
Journal:  Cell       Date:  2000-07-07       Impact factor: 41.582

3.  The plasticity of dendritic cell responses to pathogens and their components.

Authors:  Q Huang; D Liu; P Majewski; L C Schulte; J M Korn; R A Young; E S Lander; N Hacohen
Journal:  Science       Date:  2001-10-26       Impact factor: 47.728

4.  Serial regulation of transcriptional regulators in the yeast cell cycle.

Authors:  I Simon; J Barnett; N Hannett; C T Harbison; N J Rinaldi; T L Volkert; J J Wyrick; J Zeitlinger; D K Gifford; T S Jaakkola; R A Young
Journal:  Cell       Date:  2001-09-21       Impact factor: 41.582

5.  Aligning gene expression time series with time warping algorithms.

Authors:  J Aach; G M Church
Journal:  Bioinformatics       Date:  2001-06       Impact factor: 6.937

6.  Statistical modeling of large microarray data sets to identify stimulus-response profiles.

Authors:  L P Zhao; R Prentice; L Breeden
Journal:  Proc Natl Acad Sci U S A       Date:  2001-05-08       Impact factor: 11.205

7.  Forkhead genes in transcriptional silencing, cell morphology and the cell cycle. Overlapping and distinct functions for FKH1 and FKH2 in Saccharomyces cerevisiae.

Authors:  P C Hollenhorst; M E Bose; M R Mielke; U Müller; C A Fox
Journal:  Genetics       Date:  2000-04       Impact factor: 4.562

8.  Genomic expression programs in the response of yeast cells to environmental changes.

Authors:  A P Gasch; P T Spellman; C M Kao; O Carmel-Harel; M B Eisen; G Storz; D Botstein; P O Brown
Journal:  Mol Biol Cell       Date:  2000-12       Impact factor: 4.138

9.  Forkhead-like transcription factors recruit Ndd1 to the chromatin of G2/M-specific promoters.

Authors:  M Koranda; A Schleiffer; L Endler; G Ammerer
Journal:  Nature       Date:  2000-07-06       Impact factor: 49.962

10.  Molecular classification of cancer: class discovery and class prediction by gene expression monitoring.

Authors:  T R Golub; D K Slonim; P Tamayo; C Huard; M Gaasenbeek; J P Mesirov; H Coller; M L Loh; J R Downing; M A Caligiuri; C D Bloomfield; E S Lander
Journal:  Science       Date:  1999-10-15       Impact factor: 47.728

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  42 in total

1.  A robust Bayesian two-sample test for detecting intervals of differential gene expression in microarray time series.

Authors:  Oliver Stegle; Katherine J Denby; Emma J Cooke; David L Wild; Zoubin Ghahramani; Karsten M Borgwardt
Journal:  J Comput Biol       Date:  2010-03       Impact factor: 1.479

2.  Significance analysis of time course microarray experiments.

Authors:  John D Storey; Wenzhong Xiao; Jeffrey T Leek; Ronald G Tompkins; Ronald W Davis
Journal:  Proc Natl Acad Sci U S A       Date:  2005-09-02       Impact factor: 11.205

3.  The Forkhead transcription factor Hcm1 regulates chromosome segregation genes and fills the S-phase gap in the transcriptional circuitry of the cell cycle.

Authors:  Tata Pramila; Wei Wu; Shawna Miles; William Stafford Noble; Linda L Breeden
Journal:  Genes Dev       Date:  2006-08-15       Impact factor: 11.361

4.  The wavelet-based cluster analysis for temporal gene expression data.

Authors:  J Z Song; K M Duan; T Ware; M Surette
Journal:  EURASIP J Bioinform Syst Biol       Date:  2007

5.  A statistical framework for biomarker discovery in metabolomic time course data.

Authors:  Maurice Berk; Timothy Ebbels; Giovanni Montana
Journal:  Bioinformatics       Date:  2011-07-15       Impact factor: 6.937

6.  Identifying regulational alterations in gene regulatory networks by state space representation of vector autoregressive models and variational annealing.

Authors:  Kaname Kojima; Seiya Imoto; Rui Yamaguchi; André Fujita; Mai Yamauchi; Noriko Gotoh; Satoru Miyano
Journal:  BMC Genomics       Date:  2012-01-17       Impact factor: 3.969

Review 7.  Studying and modelling dynamic biological processes using time-series gene expression data.

Authors:  Ziv Bar-Joseph; Anthony Gitter; Itamar Simon
Journal:  Nat Rev Genet       Date:  2012-07-18       Impact factor: 53.242

8.  Tradeoffs between Dense and Replicate Sampling Strategies for High-Throughput Time Series Experiments.

Authors:  Emre Sefer; Michael Kleyman; Ziv Bar-Joseph
Journal:  Cell Syst       Date:  2016-07-21       Impact factor: 10.304

9.  Time warping of evolutionary distant temporal gene expression data based on noise suppression.

Authors:  Yury Goltsev; Dmitri Papatsenko
Journal:  BMC Bioinformatics       Date:  2009-10-26       Impact factor: 3.169

10.  An improved empirical bayes approach to estimating differential gene expression in microarray time-course data: BETR (Bayesian Estimation of Temporal Regulation).

Authors:  Martin J Aryee; José A Gutiérrez-Pabello; Igor Kramnik; Tapabrata Maiti; John Quackenbush
Journal:  BMC Bioinformatics       Date:  2009-12-10       Impact factor: 3.169

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