Santé et Bio technologies Bio-informatique

Des modèles de population aux populations de modèles: observation, modélisation et contrôle de l'expression génique au niveau de la cellule unique

Iceberg

Keywords: control of cellular processes; automated microfluidic platform; quantitative models; stochasticity; cell population models

Summary

The dual ambition of Iceberg is summarized in the project title: From population models to model populations: observation, modeling and control of gene expression at the single cell level. The first objective is to explicitly represent cell heterogeneity in biomolecular process models. Indeed, within a cell culture, significant differences exist between cells, despite the fact that they all have the same genome. In models that aim to understand how cells function at the molecular level, this heterogeneity is often overlooked. This poses a fundamental problem since the average behavior of a set of individuals is generally not the behavior of an average individual (assuming that it exists). One possible solution is to model each cell in the population and therefore to reason with a set of models. The possibility to use this approach for modelling cell populations and its relevance had not been demonstrated and was one of the main objective of the project. The second objective was the development of an experimental platform combining microscopy and software for real-time observation and control of intracellular processes at the level of the individual cell. We focused on controlling a fundamental cellular process: gene expression.

Regarding the first objective, we considered mixed-effect models, a class of models using parameter distributions to capture the heterogeneity present in a given population and individual parameters for each member of the population. Using gene expression data in yeast, we demonstrated that it was indeed possible to attribute biologically-relevant parameters to individual cells.

For our second objective, we initially considered controlling gene expression in multicellular eukaryotes, using notably the well-established Tet-On system. However, experimental results were relatively disappointing, showing slow induction dynamics and high cell-to-cell and day-to-day variability. In contrast, we have been able to demonstrate that using real time control one could obtain in yeast a control of gene expression with a precision that was hitherto unachievable. Also, we could demonstrate that real time control approaches allow driving biological systems in configurations that are not naturally encountered by dynamically maintaining bacteria in the unstable configuration of the synthetic gene network that they harbored.  

Other important contributions of Iceberg include the development of a recombinase-based genome editing method for engineering multicellular eukaryotic cells, the functionnal characterization of the stochasticity of gene expression in multicellular eukaryotic cells and in connection with chromatin dynamics, the analysis of the functional impact of in-frame AKT1 duplications in juvenile granulosa cell tumors, of a method for approximate analysis of stochastic systems using symmetry-based model reductions, of controllers for stochastic gene expression systems, and of a tool for yeast image segmentation and cell tracking.

The author of this summary is the project coordinator, who is responsible for the content of this summary. The ANR declines any responsibility as for its contents.

General informations

Acronym: Iceberg
Reference Number: 10-BINF-0006
Project Region: Île-de-France
Discipline: 5 - Bio Med
PIA investment: 1,212,965 €
Start date: September 2011
End date: September 2017

Project coordination : Gregory BATT
Email: gregory.batt@inria.fr

Consortium du projet

Etablissement coordinateur : INRIA_Centre Saclay Ile-de-France
Partenaire(s) : Université de Lyon I (Claude Bernard), CNRS délégation Paris-Centre, Université de Paris

Useful links

Explorez notre base de projets financés

 

 

ANR makes available its datasets on funded projects, click here to find more.

Sign up for the latest news:
Subscribe to our newsletter