Figures and data
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Key model ingredients
(a) The local state is defined by areal density ρ and by orientational order quantified by the nematic parameter S and by the nematic direction n. (b) Isotropic active tension λ when the network is isotropic (S = 0), and (c) anisotropic tension when S ≠ 0, controlled by κ = λaniso/λ. Orientational order is driven by (d) active forces conjugate S and characterized by parameter λ⊙ and by (e) passive flow-induced alignment in the presence of deviatoric rate-of-deformation with coupling parameter β.
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Active patterns coupling nematic order and density driven by self-reinforcing flows
(a) Dimensionless order parameter characterizing relative orientation of nematic direction and high-density bands given by
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Control of nematic bundle pattern orientation, connectivity and dynamics
(a) Effect of orientational bias. (I) A uniform isotropic gel self-organizes into a labyrinth pattern with defects. (II) A small background anisotropic strain-rate efficiently orients nematic bundles. (III) A slight initial network alignment (S0 = 0.05) orients bundles, which later loose stability, bend, and generate/anneal defects. See Movie 4. (b) Depending on active tension anisotropy, nematic bundles are contractile and straighten (I, κ = -0.2), leading to quasi-steady networks, or extensile and wrinkle (II, κ = -0.8), leading to bundle breaking and recombination, and persistently dynamic networks (III). See Movie 5. (c) Promoting mechanical interaction between bundles. (I) Dynamical pattern obtained by reducing friction, and thereby increasing
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Assessment of activity parameters κ and λ⊙ through discrete network simulations
(a) Illustration of the computational domain of the discrete network as a uniform representative volume element of the gel. (b) Sketch of model ingredients and setup to compute tension along and perpendicular to the nematic direction. (c) Typical time-signal for parallel and perpendicular tensions following addition of crosslinkers and motors (translucent lines) along with time average (solid lines) for isotropic and anisotropic networks. Tension is normalized by mean tension
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Pattern formation for a range of values of anisotropic active parameter κ in the limit λ⊙ → 0.
(a) Pattern formation for canonical material parameters used in Fig. 2 except for λ⊙ = 0 while leaving c0 unchanged. (b) Here, in addition to λ⊙ = 0, we set β2 = 2ηηrot to the largest value allowed by the entropy production inequality. (c) Using the parameters as in (b), we further increase friction as detailed in Table I.
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Tension distribution along (σ║) and perpendicular to (σ⊥) the dense nematic bundles.
The left column shows the density distribution, the middle column the total tension along (solid) and perpendicular (dashed) to nematic bundles, and the right column the different contributions to the total tension dominated by the active (black) and the viscous (blue) components. In all cases, we consider for convenience fully nonlinear simulations in 1D to easily define the orthogonal directions relative to the self-organized pattern. (a) to (c) show patterns obtained for negative tension anisotropy κ of increasing magnitude and correspond to Fig. 3(b) in the main text, whereas (d) shows a chaotic pattern resulting from a large hydrodynamic length and corresponds to Fig. 3(c,I) in the main text. The model parameters used in the plots are the same as in Figs. 2 and 3 and are described in Tables I and II
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Discrete network simulations.
(I) Microstructural modeling approach using cytosim. (a) The nematic ordering of the network, S, measured with respect to a director
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Model parameters used in figures.
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Model parameters used in movies that do not directly reproduce figures.
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Global parameters adopted in this study and in previous microstructural models that used cytosim.
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Actin filament parameters adopted in this study and in previous microstructural models that used cytosim.
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