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Short-range Correlation of Stress Chains Near Solid-to-liquid Transition in Active Monolayers

JOURNAL OF THE ROYAL SOCIETY INTERFACE(2024)

Univ Copenhagen

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Abstract
Using a three-dimensional model of cell monolayers, we study the spatial organization of active stress chains as the monolayer transitions from a solid to a liquid state. The critical exponents that characterize this transition map the isotropic stress percolation onto the two-dimensional random percolation universality class, suggesting short-range stress correlations near this transition. This mapping is achieved via two distinct, independent pathways: (i) cell-cell adhesion and (ii) active traction forces. We unify our findings by linking the nature of this transition to high-stress fluctuations, distinctly linked to each pathway. The results elevate the importance of the transmission of mechanical information in dense active matter and provide a new context for understanding the non-equilibrium statistical physics of phase transition in active systems.
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Key words
active matter,random percolation,stress correlation,soft matter,critical phenomena
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