Qualitative Dynamical Modelling Can Formally Explain Mesoderm Specification and Predict Novel Developmental Phenotypes
Abibatou Mbodj,
E Hilary Gustafson,
Lucia Ciglar,
Guillaume Junion,
Aitor Gonzalez,
Charles Girardot,
Laurent Perrin,
Eileen E M Furlong and
Denis Thieffry
PLOS Computational Biology, 2016, vol. 12, issue 9, 1-17
Abstract:
Given the complexity of developmental networks, it is often difficult to predict the effect of genetic perturbations, even within coding genes. Regulatory factors generally have pleiotropic effects, exhibit partially redundant roles, and regulate highly interconnected pathways with ample cross-talk. Here, we delineate a logical model encompassing 48 components and 82 regulatory interactions involved in mesoderm specification during Drosophila development, thereby providing a formal integration of all available genetic information from the literature. The four main tissues derived from mesoderm correspond to alternative stable states. We demonstrate that the model can predict known mutant phenotypes and use it to systematically predict the effects of over 300 new, often non-intuitive, loss- and gain-of-function mutations, and combinations thereof. We further validated several novel predictions experimentally, thereby demonstrating the robustness of model. Logical modelling can thus contribute to formally explain and predict regulatory outcomes underlying cell fate decisions.Author Summary: We delineate a logical model encompassing 48 components and 82 regulatory interactions controlling mesoderm specification during Drosophila development, thereby integrating all major genetic processes underlying the formation of four mesodermal tissues. The model is based on in vivo genetic data, partly confirmed by functional genomic data.
Date: 2016
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pcbi00:1005073
DOI: 10.1371/journal.pcbi.1005073
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