Temporal profiling of cytokine-induced genes in pancreatic β-cells by meta-analysis and network inference

Miguel Lopes, Burak Kutlu, Michela Miani, Claus H Bang-Berthelsen, Joachim Størling, Flemming Pociot, Nathan Goodman, Lee Hood, Nils Welsh, Gianluca Bontempi, Decio L Eizirik

    45 Citationer (Scopus)

    Abstract

    Type 1 Diabetes (T1D) is an autoimmune disease where local release of cytokines such as IL-1β and IFN-γ contributes to β-cell apoptosis. To identify relevant genes regulating this process we performed a meta-analysis of 8 datasets of β-cell gene expression after exposure to IL-1β and IFN-γ. Two of these datasets are novel and contain time-series expressions in human islet cells and rat INS-1E cells. Genes were ranked according to their differential expression within and after 24 h from exposure, and characterized by function and prior knowledge in the literature. A regulatory network was then inferred from the human time expression datasets, using a time-series extension of a network inference method. The two most differentially expressed genes previously unknown in T1D literature (RIPK2 and ELF3) were found to modulate cytokine-induced apoptosis. The inferred regulatory network is thus supported by the experimental validation, providing a proof-of-concept for the proposed statistical inference approach.

    OriginalsprogEngelsk
    TidsskriftGenomics
    Vol/bind103
    Udgave nummer4
    Sider (fra-til)264-75
    Antal sider12
    ISSN0888-7543
    DOI
    StatusUdgivet - apr. 2014

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