Literature DB >> 22085896

ARSyN: a method for the identification and removal of systematic noise in multifactorial time course microarray experiments.

Maria J Nueda1, Alberto Ferrer, Ana Conesa.   

Abstract

Transcriptomic profiling experiments that aim to the identification of responsive genes in specific biological conditions are commonly set up under defined experimental designs that try to assess the effects of factors and their interactions on gene expression. Data from these controlled experiments, however, may also contain sources of unwanted noise that can distort the signal under study, affect the residuals of applied statistical models, and hamper data analysis. Commonly, normalization methods are applied to transcriptomics data to remove technical artifacts, but these are normally based on general assumptions of transcript distribution and greatly ignore both the characteristics of the experiment under consideration and the coordinative nature of gene expression. In this paper, we propose a novel methodology, ARSyN, for the preprocessing of microarray data that takes into account these 2 last aspects. By combining analysis of variance (ANOVA) modeling of gene expression values and multivariate analysis of estimated effects, the method identifies the nonstructured part of the signal associated to the experimental factors (the noise within the signal) and the structured variation of the ANOVA errors (the signal of the noise). By removing these noise fractions from the original data, we create a filtered data set that is rich in the information of interest and includes only the random noise required for inferential analysis. In this work, we focus on multifactorial time course microarray (MTCM) experiments with 2 factors: one quantitative such as time or dosage and the other qualitative, as tissue, strain, or treatment. However, the method can be used in other situations such as experiments with only one factor or more complex designs with more than 2 factors. The filtered data obtained after applying ARSyN can be further analyzed with the appropriate statistical technique to obtain the biological information required. To evaluate the performance of the filtering strategy, we have applied different statistical approaches for MTCM analysis to several real and simulated data sets, studying also the efficiency of these techniques. By comparing the results obtained with the original and ARSyN filtered data and also with other filtering techniques, we can conclude that the proposed method increases the statistical power to detect biological signals, especially in cases where there are high levels of structural noise. Software for ARSyN is freely available at http://www.ua.es/personal/mj.nueda.

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Year:  2011        PMID: 22085896     DOI: 10.1093/biostatistics/kxr042

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.899


  22 in total

1.  Data quality aware analysis of differential expression in RNA-seq with NOISeq R/Bioc package.

Authors:  Sonia Tarazona; Pedro Furió-Tarí; David Turrà; Antonio Di Pietro; María José Nueda; Alberto Ferrer; Ana Conesa
Journal:  Nucleic Acids Res       Date:  2015-07-16       Impact factor: 16.971

2.  LPDA: A new classification method based on linear programming.

Authors:  María J Nueda; Carmen Gandía; Mariola D Molina
Journal:  PLoS One       Date:  2022-07-07       Impact factor: 3.752

3.  Epithelial cell responses to rhinovirus identify an early-life-onset asthma phenotype in adults.

Authors:  Eugene H Chang; Nima Pouladi; Stefano Guerra; Jana Jandova; Alexander Kim; Haiquan Li; Jianrong Li; Wayne Morgan; Debra A Stern; Amanda L Willis; Yves A Lussier; Fernando D Martinez
Journal:  J Allergy Clin Immunol       Date:  2022-03-31       Impact factor: 14.290

4.  Brain Gene Expression Pattern of Subjects with Completed Suicide and Comorbid Substance Use Disorder.

Authors:  Brenda Cabrera; Nancy Monroy-Jaramillo; Gabriel Rodrigo Fries; Roberto Cuauhtemoc Mendoza-Morales; Fernando García-Dolores; Alejandra Mendoza-Larios; Carlos Diaz-Otañez; Consuelo Walss-Bass; David Colin Glahn; Patricia Ostrosky-Wegman; Cristobal Fresno; Humberto Nicolini
Journal:  Mol Neuropsychiatry       Date:  2018-11-12

5.  The Role of Copy Number Variants in Gene Co-Expression Patterns for Luminal B Breast Tumors.

Authors:  Candelario Hernández-Gómez; Enrique Hernández-Lemus; Jesús Espinal-Enríquez
Journal:  Front Genet       Date:  2022-04-01       Impact factor: 4.772

6.  Precise transcriptional control of cellular quiescence by BRAVO/WOX5 complex in Arabidopsis roots.

Authors:  Isabel Betegón-Putze; Josep Mercadal; Nadja Bosch; Ainoa Planas-Riverola; Mar Marquès-Bueno; Josep Vilarrasa-Blasi; David Frigola; Rebecca C Burkart; Cristina Martínez; Ana Conesa; Rosangela Sozzani; Yvonne Stahl; Salomé Prat; Marta Ibañes; Ana I Caño-Delgado
Journal:  Mol Syst Biol       Date:  2021-06       Impact factor: 11.429

Review 7.  The use of transcriptomics to unveil the role of nutrients in Mammalian liver.

Authors:  Jesús Osada
Journal:  ISRN Nutr       Date:  2013-08-28

8.  Next maSigPro: updating maSigPro bioconductor package for RNA-seq time series.

Authors:  María José Nueda; Sonia Tarazona; Ana Conesa
Journal:  Bioinformatics       Date:  2014-06-03       Impact factor: 6.937

Review 9.  A survey of best practices for RNA-seq data analysis.

Authors:  Ana Conesa; Pedro Madrigal; Sonia Tarazona; David Gomez-Cabrero; Alejandra Cervera; Andrew McPherson; Michał Wojciech Szcześniak; Daniel J Gaffney; Laura L Elo; Xuegong Zhang; Ali Mortazavi
Journal:  Genome Biol       Date:  2016-01-26       Impact factor: 13.583

10.  Commensal microbiota modulate gene expression in the skin.

Authors:  Jacquelyn S Meisel; Georgia Sfyroera; Casey Bartow-McKenney; Ciara Gimblet; Julia Bugayev; Joseph Horwinski; Brian Kim; Jonathan R Brestoff; Amanda S Tyldsley; Qi Zheng; Brendan P Hodkinson; David Artis; Elizabeth A Grice
Journal:  Microbiome       Date:  2018-01-30       Impact factor: 14.650

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