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Article Dans Une Revue F1000Research Année : 2020

A pipeline to analyse time-course gene expression data

Résumé

The phenotypic diversity of cells is governed by a complex equilibrium between their genetic identity and their environmental interactions: Understanding the dynamics of gene expression is a fundamental question of biology. However, analysing time-course transcriptomic data raises unique challenging statistical and computational questions, requiring the development of novel methods and software. This workflow provides a step-by-step tutorial of the methodology used to analyse time-course data: (1) quality control and normalization of the dataset; (2) differential expression analysis using functional data analysis; (3) clustering of time-course data; (4) interpreting clusters with GO term and KEGG pathway enrichment analysis. As a case study, we apply this workflow to time-course transcriptomic data from mice exposed to four strains of influenza to showcase every step of the pipeline.
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Dates et versions

hal-03375800 , version 1 (16-11-2021)

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Nelle Varoquaux, Elizabeth Purdom. A pipeline to analyse time-course gene expression data. F1000Research, 2020, 9, pp.1447. ⟨10.12688/f1000research.27262.1⟩. ⟨hal-03375800⟩
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