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Patterns of interdivision time correlations reveal hidden cell cycle factors

View ORCID ProfileFern A. Hughes, View ORCID ProfileAlexis R. Barr, View ORCID ProfilePhilipp Thomas
doi: https://doi.org/10.1101/2022.06.27.497837
Fern A. Hughes
1Department of Mathematics, Imperial College London and MRC London Institute of Medical Sciences
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Alexis R. Barr
2MRC London Institute of Medical Sciences and Institute of Clinical Sciences, Imperial College London
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  • For correspondence: a.barr@lms.mrc.ac.uk p.thomas@imperial.ac.uk
Philipp Thomas
3Department of Mathematics, Imperial College London
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  • For correspondence: a.barr@lms.mrc.ac.uk p.thomas@imperial.ac.uk
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Abstract

The time taken for cells to complete a round of cell division is a stochastic process controlled, in part, by intracellular factors. These factors can be inherited across cellular generations which gives rise to, often non-intuitive, correlation patterns in cell cycle timing between cells of different family relationships on lineage trees. Here, we formulate a framework of hidden inherited factors affecting the cell cycle that unifies known cell cycle control models and reveals three distinct interdivision time correlation patterns: aperiodic, alternator and oscillator. We use Bayesian inference with single-cell datasets of cell division in bacteria, mammalian and cancer cells, to identify the inheritance motifs that underlie these datasets. From our inference, we find that interdivision time correlation patterns do not identify a single cell cycle model but generally admit a broad posterior distribution of possible mechanisms. Despite this unidentifiability, we observe that the inferred patterns reveal interpretable inheritance dynamics and hidden rhythmicity of cell cycle factors. This reveals that cell cycle factors are commonly driven by circadian rhythms, but their period may differ in cancer. Our quantitative analysis thus reveals that correlation patterns are an emergent phenomenon that impact cell proliferation and these patterns may be altered in disease.

Competing Interest Statement

The authors have declared no competing interest.

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  • Revised after review

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted November 14, 2022.
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Patterns of interdivision time correlations reveal hidden cell cycle factors
Fern A. Hughes, Alexis R. Barr, Philipp Thomas
bioRxiv 2022.06.27.497837; doi: https://doi.org/10.1101/2022.06.27.497837
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Patterns of interdivision time correlations reveal hidden cell cycle factors
Fern A. Hughes, Alexis R. Barr, Philipp Thomas
bioRxiv 2022.06.27.497837; doi: https://doi.org/10.1101/2022.06.27.497837

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