| Keyword search (4,164 papers available) | ![]() |
"Potvin-Trottier L" Authored Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | A Bacteroides synthetic biology toolkit to build an in vivo malabsorption biosensor | McCallum G; Burckhardt JC; He J; Hong A; Potvin-Trottier L; Tropini C; | 41610848 BIOLOGY |
| 2 | Exploiting fluctuations in gene expression to detect causal interactions between genes | Joly-Smith E; Talpur MM; Allard P; Papazotos F; Potvin-Trottier L; Hilfinger A; | 41401079 BIOLOGY |
| 3 | Open-space microfluidics as a tool to study signaling dynamics | Proulx M; Clapperton-Richard P; Potvin-Trottier L; Piekny A; Gervais T; | 40995884 BIOLOGY |
| 4 | Measuring prion propagation in single bacteria elucidates mechanism of loss | Jager K; Orozco-Hidalgo MT; Springstein BL; Joly-Smith E; Papazotos F; McDonough E; Fleming E; McCallum G; Hilfinger A; Hochschild A; Potvin-Trottier L; | 36712035 BIOLOGY |
| 5 | Measuring prion propagation in single bacteria elucidates a mechanism of loss | Jager K; Orozco-Hidalgo MT; Springstein BL; Joly-Smith E; Papazotos F; McDonough E; Fleming E; McCallum G; Yuan AH; Hilfinger A; Hochschild A; Potvin-Trottier L; | 37738299 PHYSICS |
| 6 | Microfluidics for long-term single-cell time-lapse microscopy: Advances and applications | Allard P; Papazotos F; Potvin-Trottier L; | 36312536 BIOLOGY |
| 7 | Using Models to (Re-)Design Synthetic Circuits. | McCallum G, Potvin-Trottier L | 33405217 BIOLOGY |
| 8 | Isolating live cells after high-throughput, long-term, time-lapse microscopy. | Luro S, Potvin-Trottier L, Okumus B, Paulsson J | 31768062 BIOLOGY |
| 9 | Bacterial variability in the mammalian gut captured by a single-cell synthetic oscillator. | Riglar DT, Richmond DL, Potvin-Trottier L, Verdegaal AA, Naydich AD, Bakshi S, Leoncini E, Lyon LG, Paulsson J, Silver PA | 31604953 BIOLOGY |
| Title: | Exploiting fluctuations in gene expression to detect causal interactions between genes | ||||
| Authors: | Joly-Smith E, Talpur MM, Allard P, Papazotos F, Potvin-Trottier L, Hilfinger A | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/41401079/ | ||||
| DOI: | 10.7554/eLife.92497 | ||||
| Publication: | eLife | ||||
| Keywords: | E coli; causal effects; computational biology; gene regulation; network inference; physics of living systems; stochastic fluctuations; systems biology; | ||||
| PMID: | 41401079 | Category: | Date Added: | 2025-12-16 | |
| Dept Affiliation: |
BIOLOGY
1 Department of Physics, University of Toronto, Toronto, Canada. 2 Department of Chemical & Physical Sciences, University of Toronto Mississauga, Mississauga, Canada. 3 Centre for Applied Synthetic Biology, Concordia University, Montreal, Canada. 4 Department of Biology, Concordia University, Montreal, Canada. 5 Department of Physics, Concordia University, Montreal, Canada. 6 Department of Mathematics, University of Toronto, Toronto, Canada. 7 Department of Cell & Systems Biology, University of Toronto, Toronto, Canada. |
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Description: |
Characterizing and manipulating cellular behavior requires a mechanistic understanding of the causal interactions between cellular components. We present an approach to detect causal interactions between genes without the need to perturb the physiological state of cells. This approach exploits naturally occurring cell-to-cell variability which is experimentally accessible from static population snapshots of genetically identical cells without the need to follow cells over time. Our main contribution is a simple mathematical relation that constrains the propagation of gene expression noise through biochemical reaction networks. This relation allows us to rigorously interpret fluctuation data even when only a small part of a complex gene regulatory process can be observed. We show how this relation can, in theory, be exploited to detect causal interactions by synthetically engineering a passive reporter of gene expression, akin to the established 'dual reporter assay'. While the focus of our contribution is theoretical, we also present an experimental proof-of-principle to demonstrate the real-world applicability of our approach in certain circumstances. Our experimental data suggest that the method can detect causal interactions in specific synthetic gene regulatory circuits in Escherichia coli, confirming our theoretical result in a narrow set of controlled experimental settings. Further work is needed to show that the approach is practical on a large scale, with naturally occurring gene regulatory networks, or in organisms other than E. coli. |



