WASABI: a dynamic iterative framework for gene regulatory network inference

Abstract Background Inference of gene regulatory networks from gene expression data has been a long-standing and notoriously difficult task in systems biology. Recently, single-cell transcriptomic data have been massively used for gene regulatory network inference, with both successes and limitation...

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Main Authors: Arnaud Bonnaffoux, Ulysse Herbach, Angélique Richard, Anissa Guillemin, Sandrine Gonin-Giraud, Pierre-Alexis Gros, Olivier Gandrillon
Format: Article
Language:English
Published: BMC 2019-05-01
Series:BMC Bioinformatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12859-019-2798-1
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spelling doaj-51f5195ef2614a41b5b972d6f5f4f4762020-11-25T02:19:10ZengBMCBMC Bioinformatics1471-21052019-05-0120111910.1186/s12859-019-2798-1WASABI: a dynamic iterative framework for gene regulatory network inferenceArnaud Bonnaffoux0Ulysse Herbach1Angélique Richard2Anissa Guillemin3Sandrine Gonin-Giraud4Pierre-Alexis Gros5Olivier Gandrillon6University Lyon, ENS de Lyon, University Claude Bernard, CNRS UMR 5239, INSERM U1210, Laboratory of Biology and Modelling of the CellUniversity Lyon, ENS de Lyon, University Claude Bernard, CNRS UMR 5239, INSERM U1210, Laboratory of Biology and Modelling of the CellUniversity Lyon, ENS de Lyon, University Claude Bernard, CNRS UMR 5239, INSERM U1210, Laboratory of Biology and Modelling of the CellUniversity Lyon, ENS de Lyon, University Claude Bernard, CNRS UMR 5239, INSERM U1210, Laboratory of Biology and Modelling of the CellUniversity Lyon, ENS de Lyon, University Claude Bernard, CNRS UMR 5239, INSERM U1210, Laboratory of Biology and Modelling of the CellCosmotechUniversity Lyon, ENS de Lyon, University Claude Bernard, CNRS UMR 5239, INSERM U1210, Laboratory of Biology and Modelling of the CellAbstract Background Inference of gene regulatory networks from gene expression data has been a long-standing and notoriously difficult task in systems biology. Recently, single-cell transcriptomic data have been massively used for gene regulatory network inference, with both successes and limitations. Results In the present work we propose an iterative algorithm called WASABI, dedicated to inferring a causal dynamical network from time-stamped single-cell data, which tackles some of the limitations associated with current approaches. We first introduce the concept of waves, which posits that the information provided by an external stimulus will affect genes one-by-one through a cascade, like waves spreading through a network. This concept allows us to infer the network one gene at a time, after genes have been ordered regarding their time of regulation. We then demonstrate the ability of WASABI to correctly infer small networks, which have been simulated in silico using a mechanistic model consisting of coupled piecewise-deterministic Markov processes for the proper description of gene expression at the single-cell level. We finally apply WASABI on in vitro generated data on an avian model of erythroid differentiation. The structure of the resulting gene regulatory network sheds a new light on the molecular mechanisms controlling this process. In particular, we find no evidence for hub genes and a much more distributed network structure than expected. Interestingly, we find that a majority of genes are under the direct control of the differentiation-inducing stimulus. Conclusions Together, these results demonstrate WASABI versatility and ability to tackle some general gene regulatory networks inference issues. It is our hope that WASABI will prove useful in helping biologists to fully exploit the power of time-stamped single-cell data.http://link.springer.com/article/10.1186/s12859-019-2798-1Single-cell transcriptomicsGene network inferenceMultiscale modellingProteomicHigh parallel computingT2EC
collection DOAJ
language English
format Article
sources DOAJ
author Arnaud Bonnaffoux
Ulysse Herbach
Angélique Richard
Anissa Guillemin
Sandrine Gonin-Giraud
Pierre-Alexis Gros
Olivier Gandrillon
spellingShingle Arnaud Bonnaffoux
Ulysse Herbach
Angélique Richard
Anissa Guillemin
Sandrine Gonin-Giraud
Pierre-Alexis Gros
Olivier Gandrillon
WASABI: a dynamic iterative framework for gene regulatory network inference
BMC Bioinformatics
Single-cell transcriptomics
Gene network inference
Multiscale modelling
Proteomic
High parallel computing
T2EC
author_facet Arnaud Bonnaffoux
Ulysse Herbach
Angélique Richard
Anissa Guillemin
Sandrine Gonin-Giraud
Pierre-Alexis Gros
Olivier Gandrillon
author_sort Arnaud Bonnaffoux
title WASABI: a dynamic iterative framework for gene regulatory network inference
title_short WASABI: a dynamic iterative framework for gene regulatory network inference
title_full WASABI: a dynamic iterative framework for gene regulatory network inference
title_fullStr WASABI: a dynamic iterative framework for gene regulatory network inference
title_full_unstemmed WASABI: a dynamic iterative framework for gene regulatory network inference
title_sort wasabi: a dynamic iterative framework for gene regulatory network inference
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2019-05-01
description Abstract Background Inference of gene regulatory networks from gene expression data has been a long-standing and notoriously difficult task in systems biology. Recently, single-cell transcriptomic data have been massively used for gene regulatory network inference, with both successes and limitations. Results In the present work we propose an iterative algorithm called WASABI, dedicated to inferring a causal dynamical network from time-stamped single-cell data, which tackles some of the limitations associated with current approaches. We first introduce the concept of waves, which posits that the information provided by an external stimulus will affect genes one-by-one through a cascade, like waves spreading through a network. This concept allows us to infer the network one gene at a time, after genes have been ordered regarding their time of regulation. We then demonstrate the ability of WASABI to correctly infer small networks, which have been simulated in silico using a mechanistic model consisting of coupled piecewise-deterministic Markov processes for the proper description of gene expression at the single-cell level. We finally apply WASABI on in vitro generated data on an avian model of erythroid differentiation. The structure of the resulting gene regulatory network sheds a new light on the molecular mechanisms controlling this process. In particular, we find no evidence for hub genes and a much more distributed network structure than expected. Interestingly, we find that a majority of genes are under the direct control of the differentiation-inducing stimulus. Conclusions Together, these results demonstrate WASABI versatility and ability to tackle some general gene regulatory networks inference issues. It is our hope that WASABI will prove useful in helping biologists to fully exploit the power of time-stamped single-cell data.
topic Single-cell transcriptomics
Gene network inference
Multiscale modelling
Proteomic
High parallel computing
T2EC
url http://link.springer.com/article/10.1186/s12859-019-2798-1
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