Localization of protein aggregation in Escherichia coli is governed by diffusion and nucleoid macromolecular crowding effect
Anne-Sophie Coquel (Insa Lyon / INRIA Grenoble Rh\^one-Alpes / UCBL,, LIRIS), Jean-Pascal Jacob (MAP5), Ma\"el Primet (MAP5), Alice Demarez (MAP5),, Mariella Dimiccoli (MAP5), Thomas Julou (LPS), Lionel Moisan (MAP5), Ariel B., Lindner

TL;DR
This study demonstrates that protein aggregates in E. coli move passively via diffusion, with their localization influenced by cellular crowding and nucleoid regions, advancing understanding of bacterial aging mechanisms.
Contribution
The paper introduces a combined experimental and modeling approach showing that passive diffusion and macromolecular crowding govern aggregate localization in E. coli.
Findings
Protein aggregates diffuse passively within E. coli cells.
Aggregate diffusion constants depend on size, following Stokes-Einstein law.
Localization of aggregates is confined to nucleoid-free regions due to crowding.
Abstract
Aggregates of misfolded proteins are a hallmark of many age-related diseases. Recently, they have been linked to aging of Escherichia coli (E. coli) where protein aggregates accumulate at the old pole region of the aging bacterium. Because of the potential of E. coli as a model organism, elucidating aging and protein aggregation in this bacterium may pave the way to significant advances in our global understanding of aging. A first obstacle along this path is to decipher the mechanisms by which protein aggregates are targeted to specific intercellular locations. Here, using an integrated approach based on individual-based modeling, time-lapse fluorescence microscopy and automated image analysis, we show that the movement of aging-related protein aggregates in E. coli is purely diffusive (Brownian). Using single-particle tracking of protein aggregates in live E. coli cells, we estimated…
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