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INRIA - Internship - MICROCOSME Modelling and inference of mRNA degradation

Description
INRIA Internship - MICROCOSME Modelling and inference of mRNA degradation
Who we are?
Inria is the French national research institute dedicated to digital science and technology. World-class research, technological innovation and entrepreneurial risk are its DNA. Its 215 agile project teams, most
of which are joint with academic partners, involve more than 3,900 scientists in tackling the challenges of digital technology, often at the interface with other disciplines. https://inria.fr/fr
Inria is headquartered in Rocquencourt and has 9 research centres.
Inria Grenoble is active in the fields of high-performance computing, verification and embedded
systems, modeling of the environment at multiple levels, and data science and artificial intelligence. The center is a top-level scientific institute with an extensive network of international collaborations in
Europe and the rest of the world.
Context:
Advances in high-throughput technologies in biology has opened up the possibility of simultaneously
quantifying the amounts of components in the cell over time. The data account for the molecular responses of living organisms to perturbations, resulting from regulatory mechanisms that ensure adaptation and survival. Mechanistic modelling is essential to unravel these molecular mechanisms.
Indeed, model estimation from high-throughput data provides parameters that have a biological interpretation.
However, the integration of high-throughput data with mechanistic knowledge is limited by the model non-linearities and the availability of scalable computational approaches that are capable of disentangling biological and technical sources of variation. In the context of the study of the
degradation of bacterial mRNAs, we have shown that combining mechanistic and statistical modelling by means of non-linear mixed-effects modelling allows kinetic model parameters to be inferred from time-series transcriptomics data and new biological regulatory mechanisms to be uncovered [1,2]. The framework yields good estimation results, but several difficulties impede its extension to other high-throughput datasets.
[1] T.A. Etienne, M. Cocaign-Bousquet & D. Ropers (2020). Competitive effects in bacterial mRNA decay. Journal of Theoretical Biology, 504, 110333.
[2] T.A. Etienne, C. Roux, E. Cinquemani, L. Girbal, M. Cocaign-Bousquet & D. Ropers (2022). A nonlinear mixed-effects approach for the mechanistic interpretation of time-series transcriptomics data. Preprint.
Objective of the internship:
The objective of the internship is to adapt the modelling and statistical framework to other high-throughput datasets taking into account additional biological processes and conditions. This work will involve modelling and inference using time-series transcriptomic datasets of the model organism
Escherichia coli growing under different environmental conditions or subjected to genetic perturbations [3,4]. The work will be done in close collaboration with Muriel Cocaign-Bousquet and A. J. Carpousis (Toulouse Biotechnology Institute). Please note that there is a possibility to continue the work as a PhD student within the RECOM ANR project (funding
available).
[3] T. Esquerre, S. Laguerre, C. Turlan, A.J. Carpousis, L. Girbal & M. Cocaign-Bousquet (2014). Dual role of transcription and transcript stability in the regulation of gene expression in Escherichia coli cells cultured on glucose at different growth rates. Nucleic Acids Research, 42(4), 2460-2472.
[4] L. Hamouche, L. Poljak & A.J. Carpousis (2021). Polyribosome-dependent clustering of membrane-anchored RNA degradosomes to form sites of mRNA degradation in Escherichia coli. Mbio, 12(5), 10-1128.
Assignment:
– Develop estimation strategies (simplification and/or reduction of mechanistic models of mRNA degradation, choosing random effects for the non-linear mixed effects models) to estimate degradation parameters from transcriptomic datasets
– Apply the different estimation strategies to a dataset obtained in the bacterium E. coli growing under different environmental conditions, assess the quality of model estimation, and inter-pret the estimation results
– Adapt the estimation procedure to a new transcriptomic dataset obtained in the bacterium E.
coli subjected to genetic perturbations of the degradation machinery
Profile and Skills:
• Knowledge in statistics, model inference and dynamical systems
• Programming language: R or Python
• Interest in biological applications
• Aptitude for teamwork
• Good level of technical and scientific English, both spoken and written.
Useful link: https://team.inria.fr/microcosme/
Additional information:
- Périod: start in February-April 2025 (flexible).
- Duration: 4-6 months (flexible) - Location : Montbonnot-Saint-Martin
- Contact to Apply: Delphine Ropers (delphine.ropers@inria.fr)
experience
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Job localization
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1