Abstract
Tuning cell rearrangements is essential in collective cell movement that underlies cancer progression, wound repair, and embryonic development. A key question is how tissue material properties and morphology emerge from cellular factors such as cell-cell adhesion. Here, we introduce a twodimensional active force-based model of tissue monolayers that captures the liquid-to-solid transition exhibited by tissues. Unlike the Vertex and Voronoi models, our model shows that reducing intercellular adhesion in near-confluent tissues leads to spontaneous neighbor exchanges and fluidization. Near the liquid-solid phase boundary, we also found glassy behavior characterized by subdiffusive dynamics, swirling cell motion, and non-Gaussian exponential tails in displacement distributions. These exponential tails collapse onto a single master curve, suggesting a universal ‘diffusion length’ in the glassy regime. Notably, we demonstrate that structural parameters based on cell shape cannot always distinguish tissue phases due to huge cell shape fluctuations that are not observed in Vertex and Voronoi models. Our general simulation framework streamlines previous approaches by removing many arbitrary features and can reproduce known model behaviors under different conditions, offering potential applications in developmental biology and physiology.
I. Introduction
Tissue fluidity is modulated in diverse biological contexts such as embryonic development [1, 2], wound healing [3, 4], and cancer progression [5, 6]. A solid-to-fluid transition can sculpt tissues during tail elongation in developing zebrafish embryos [1, 2, 7]. This phase transition also coincides with the cell-state switching and changes in gene expressions, called Epithelial-to-Mesenchymal transition (EMT) [1, 8]. EMT has been proposed to mimic an unjamming transition in tissues [9–11]. Fluid-solid transitions were also observed in cell monolayers [12, 13], where transitions occur either with increasing cell density (due to proliferation) [13] or with increasing cellular adhesion [12]. Tissue monolayers further undergo solid-to-fluid transitions by applying external compressive stress [10, 11]. How tissue-level transitions emerge from governing cellular parameters is an important question yet to be fully understood [9, 14, 15].
Two classes of computational frameworks mainly exist to explain tissue-level transitions: Self-propelled particle (SPP) models and models that treat cells as extended objects. SPP models describe cells as soft discs [16–18] and have been used to study the density (or packing fraction) dependent [19–23] and motility-driven [12, 19, 20, 23] jamming transitions. However, SPP models can not capture the cell shape changes in a confluent tissue where there are almost no gaps between cells (i.e., packing fraction close to unity). Meanwhile, the Vertex model and its variants [24–31], Self-propelled Voronoi model [32–34], Deformable Particle model [35], Cellular Potts model [36–38], and Phase Field model [39] describe cells as extended objects accounting for the cell geometry. Cell dynamics in all these models depend on energy functions, unlike SPP models that describe the force-based motion of cell centers. For instance, 2D Vertex and Self-propelled Voronoi (SPV) models define a shape-energy function that depends on each cell’s target area (a0) and perimeter (p0). These models predict a density-independent solid-to-fluid transition with an increasing target shape index, so, defined as a dimensionless parameter (s0 = p0/
In contrast, increasing cell-cell adhesion induces solidification in MDCK cell monolayers [12, 40] and organotypic cultures [41]. Also, the downregulation of adhesion molecules in the elongating zebrafish tail coincides with EMT and tissue fluidization [1, 8]. Thus, the role of intercellular adhesion on the tissue scale transitions is still debatable. We address this by introducing a 2D active force-based model of tissue monolayers, where each cell made with beads and springs represents a soft deformable object.
We combine the particle-like nature and force-based dynamics of SPP models with the spatial extension of cells as in Vertex and SPV models, eliminating the deficiencies of both types of models. For instance, our model displays spontaneous neighbor exchanges, while Vertex and SPV models implement these events in an ad hoc manner, using a threshold value on cellular edge lengths. Additionally, the interface of adjoining cells in Vertex and SPV models is represented by a shared (common) edge, making it impossible for adjoining cells to move relative to one another, thereby dictating a geometric constraint [42]. Our model removes this unphysical constraint, allowing for spontaneous fluctuations in cell shapes. Notably, our model significantly differs from topological energy-based models, like the Vertex and Voronoi models, where a single cell loses its physical meaning in isolation (see Section III in SI).
In our model, increasing cell-cell adhesion leads to liquid-to-solid transition, contrary to the predictions of Vertex and Voronoi models. Our observation is consistent with in vitro experiments on tissues [12, 41] and in vivo experiments on morphogenesis during embryonic development [1, 8]. Near the liquid-solid phase boundary, we also observe glassy dynamics with many signatures of dynamic heterogeneity. In the glassy regime, we collapse distinct exponential tails of displacement distributions onto a master curve, revealing a universal ‘diffusion length’ that explains the origin of dynamic heterogeneity. Our framework provides precise control over individual cell properties and cell-cell interaction to gain mechanistic insights into emerging tissue behavior, with potential applications in various developmental and physiological contexts.
II. Model
We adopted a force-based passive mechanical model of 2D soft grains (or cells) [43–45] instead of commonly used frameworks of energy-based Vertex or Voronoi models. A single cell is assumed to be a closed loop of beads connected by springs with stiffness Ks and natural length l0 (Fig. 1A(top), Fig. S1). Each bead encounters tangential tension from adjacent springs and internal pressure, P. These intracellular forces capture the roles of actomyosin cortex and cytoplasmic pressure, respectively. Thus, the total intracellular force experienced by the i-th bead in a cell is:
Here li is the bond length between i-th and (i − 1)- th beads; while
The distance between two interacting beads is rij = |ri,α − rj,β|, and the corresponding unit vector is
Additionally, we incorporate a polarity vector
Here, j-th bead belongs to another cell, interacting with the α-th cell. The unit polarity vector for the α-th cell further undergoes a rotational diffusion given by
Here, the angle θα defines

Model and configurations.
(A) A single cell modeled as a closed loop of beads and springs. Each bead experiences an outward-normal pressure and tangential spring forces (Top). Additionally, in an active cell, all beads move with a self-propulsion speed vo along a noisy polarity direction,
III. Results
We first explored how the cell shapes and tissue state qualitatively change with the variations of cell-cell adhesion (
To characterize the above phenomenon, we first evaluated the mean-squared displacement (MSD) of cell center trajectories, defined as 〈Δr2(Δt)〉 = 〈[
We further observed that cells spontaneously exchange their neighbors (known as T1 transition [46]) in the fluid phase (see Movie S1 and Fig. 2B). Correspondingly, the cell center trajectories appear diffusive in nature (Fig. 2B). In contrast, the trajectories look caged in the solid phase, as expected from the MSD curves (Fig. 2A). We then computed an effective diffusivity from the long-time MSD behavior [32], defined by Deff = limt→∞,〈Δr2(Δt)〉/4D0Δt, where D0 = υ02/2Dr can be regarded as the self-diffusivity for an isolated single cell [32]. The order parameter, Deff, showed a transition with increasing intercellular adhesion (Fig. 2D). We also measured the MSD exponents (β) by fitting the MSD curves at large times with the function: 〈Δr2(Δt)〉 ~ Δtβ. The MSD exponent was 1 for the fluid regime and showed a sharp drop as the tissue solidified (Fig. 2E).
Next, we explored the phase space spanned by the three dimensionless parameters, the intercellular adhesion (

Fluid to solid transition with increasing intercellular adhesion.
(A) MSD of cell centers for different values of
Since cells can modulate cortical tension during morphogenesis [49], we calculated the tension in cell-edges, defined as Ti = |li − l0| (ignoring the multiplicative constant), where li is the distance between i-th and (i − 1)-th beads in a cell and l0 is the natural spring length. Deep in the fluid phase, the tension is highly heterogeneous over the tissue (Fig. 4A), while it is homogeneous in the solid phase (Fig. 4B). We also calculated the average tension in the steady state (given by T = (∑M, N Ti)/MN, where M and N are the bead and cell numbers, respectively), and found that it is lower and display higher fluctuations in the fluid phase than the solid phase (Fig. 4C, Fig. S5). Thus, tension fluctuations decrease with the solidification, as recently shown in the ‘Dynamic Vertex Model’ (DVM) with active tension dynamics [7].

Tissue phase diagrams.
(A-C) Phase diagrams are shown in the 2D parameter space of 1/
However, tension fluctuation is an emerging property of our model, while in DMV, tension fluctuation was introduced via a dynamical equation for the edge tension.
We also measured the area fraction (ϕ) over time, defined as ϕ =
The Vertex and SPV models [26, 32] showed that the average shape index, hSi, serves as a structural order parameter. In DVM and SPV models [7, 32], hSi increases monotonically as the tissue fluidizes. In contrast, our model reveals that hSi behaves non-monotonically with adhesion near the fluid-solid transition, especially for lower
The cell shape heterogeneity that arises near the transition (Fig. 4G, H) may be linked with underlying dynamic heterogeneity in cell motion. To examine this, within a time window (t1 to t2), we measured the total normalized distance covered by individual cell centers,
To probe the glassy versus fluidic behavior, we plotted the vector field of cell center displacements for region-i and region-ii, corresponding to lower and higher adhesion strengths, respectively (see Fig. 5A, B). The displacement vectors are random for region-i but exhibit swirling patterns indicating spatial correlations in region-ii. Also, large and small displacements coexist in the vector field of region-ii, suggesting dynamic heterogeneity similar to polycrystalline materials and glasses [53, 56–58]. Notably, similar swirling displacement fields were observed in previous models [32, 59, 60] and epithelial monolayers [3, 12, 13, 61].

Tension and shape fluctuations in tissue monolayers.
(A-B) Heat maps showing cellular edge tensions in the tissue kept in fluid (A) and solid (B) phases, as shown by arrowheads in the phase diagram of Fig. 3A. Parameters:
Another quantity that can capture the glassy behavior is the non-Gaussian parameter defined by α2 (Δt) = 〈Δr4(Δt)〉/(2〈Δr2(Δt)〉2) − 1. It is non-zero if displacement distributions deviate from Gaussian [37, 57]. In Fig. 5C, α2 is almost zero in region-i (lower adhesion), for which diffusive cell dynamics is expected. In contrast, α2 has a sharp non-zero peak at the lag time Δt* in region-ii (higher adhesion), for which cell dynamics is subdiffusive. Accordingly, the displacement distribution P(Δ), measured at Δt*, is Gaussian in region-i, but it develops broad exponential tails in region-ii (Fig. 5D, 5E). Such non-zero peaks in α2 and corresponding nonGaussian tails in displacement distributions have been observed in inanimate glassy materials [53, 57, 58], and also in living systems like embryonic tissues [62] and cytoskeletal dynamics in human muscle cells [63].
The broad exponential tail in the displacement distribution (Fig. 5E) represents the motile cells performing random jumps between cages [53, 57, 63]. The lag time Δt*, at which a2 shows a peak (Fig. 5C), gives the cage breaking time scale [53, 57, 58]. Indeed, within a time window spanning At*, a sample trajectory in region-ii displays rare and quick hopping of a cell between cages formed by its neighbors (Fig. 5F(ii)), but the trajectory looks simply diffusive in region-i (Fig. 5F(i)).

Dynamic heterogeneity and glassy dynamics.
(A-B) Cell center displacements over a time window (from 105 to 2 × 106 iterations) for low and high adhesion strengths (marked by (i) and (ii), respectively, corresponding to Fig. 4G). For lower adhesion (region-i, A), instantaneous displacements are random and uncorrelated, whereas the displacement field shows swirling patterns for higher adhesion (region-ii, B). (C) The non-Gaussian parameter, α2(Δt), shows a peak for higher adhesion (region-ii) around the lag time Δt*. The shaded region spanning At* indicates the time window where the displacement fields (panels A, B) and trajectories (panel F) were observed. (D-E) Probability distributions of cell center displacements at the lag time Δt*. Black dashed lines indicate the best fit Gaussian. The Blue dashed line (in E) shows an exponential fit. (F) Sample cell center trajectories within a time window (corresponding to the shaded region in C). The trajectory is diffusive for lower adhesion (region-i), but a cage rearrangement event (hopping trajectory) was seen for higher adhesion (region-ii). (G) Probability distribution of diffusion coefficients (D) measured from time-averaged MSD curves of individual cells for the region-ii. The red line is an exponential fit. (H-I) Probability distributions of cell center displacements (H) and scaled displacements (I) for different values of
However, what could be the physical origin of the exponential tails in displacement distributions observed in the glassy regime (region-ii)? We found that the individual diffusion coefficients (D), measured from the time-averaged MSD curves, have a broad skewed distribution that has an exponential-like form (Fig. 5G). Thus, the exponential tails in displacement distributions (Fig. 5H) can stem from the cell-to-cell heterogeneity in individual diffusivities [64, 65]. Suppose individual cells in the ensemble follow independent diffusive dynamics characterized by Gaussian displacement distributions but with an exponentially distributed diffusion coefficient, D. Then, non-gaussian displacements can be achieved as the convolution of Gaussian — We can write the displacement distribution (at a lag time Δt*) as:
IV. Discussion
Summary and relevance
Our result of tissue solidification with adhesion, though contrasts the prediction of Vertex and Voronoi models [26, 32], are in line with in vitro experiments [12, 40, 41]. This also explains how the downregulation of adhesion molecules leads to in vivo tissue fluidization during zebrafish tail development [1, 8]. Similar to the experiment [1], adhesion-induced solidification accompanies a marginal change in packing fraction in our model. We also found tissue fluidization with increasing self-propulsion speed that captures a recent experiment on motility-driven unjamming in gastrulation [2]. We further show that the average shape index alone cannot be used as a structural order parameter to distinguish the phases due to large shape fluctuations near the transition point. Also, increased adhesion results in dynamic heterogeneity and glassy behavior near the phase boundary.
Our force-based framework, which is conceptually straightforward to implement, relies on a free energy function that obeys the Young-Laplace equation at the level of a single cell in equilibrium (see Section III, SI) — this is distinct from the topological energy functions used in Vertex, Voronoi, and Cellular Potts models [26, 32, 37]. Contrasting these models, we do not assume any target shape parameters since there is no experimental support and such parameters are difficult to physically interpret. Our model exhibits spontaneous neighbor exchange (T1 transitions) unlike the Vertex/Voronoi frameworks, where T1 transitions are performed using an ad hoc criterion of a threshold value on cellular edge lengths [7, 26]. Further, intercellular gaps naturally arise in our model, unlike the Voronoi tesselation framework, where cell-cell gaps are either completely absent [26, 32] or implemented by assuming extra ‘non-physical’ vertices [7]. We also observe the spontaneous formation of multicellular rosettes (where five or more cells share a vertex) [66] (Fig. S7). In contrast, rosettes were formed in Vertex models by implementing an ad hoc ‘edge collapse’ procedure that randomly reduces edge lengths to zero [30].
Connection with other models
To compare with the jamming in passive foams, we studied our model without the self-propulsion and adhesion (υ0 = 0, Kadh = 0). In a rigid box, we produced jammed states by inflating the cells with increasing pressure (i.e., with increasing packing fraction). We show that the tissue becomes confluent when the normalized area fraction reaches unity (ϕ/ϕmax = 1) at an average shape index 〈S〉 ≈ 3.81 (see Fig. S8 and Section V, SI). This is similar to the crowding-dependent jamming in the Deformable Particle (DP) model [35]. Interestingly, the Vertex and SPV models [26, 32] also show a liquid-to-solid transition at 〈S〉 « 3.81.
Note that the level of confluency can be described by ϕ/ϕmax = 1 implies full confluency) [35]. Though the absolute packing fraction cannot reach unity in our particle-based model (unlike Vertex and SPV models), we maintained a near-confluent regime, where (ϕ/ϕmax) ~ 0.94 − 1 across the transition (corresponding to Fig. 2–4). This is similar to the in vivo experiment on zebrafish tissues that show 80%–90% confluency [1].
However, to compare with Vertex and SPV models, we performed the Voronoi tessellation of space (using the cell centers) to obtain the Voronoi polygons corresponding to the cells (Fig. S9A) and measured the shape indices of the Voronoi cells, 〈S〉V or (see Section VI, SI). We found that the liquid-solid transition takes place at
As shown before, in the passive limit, our active model is similar to passive deformable particle (DP) models [35, 44]. However, including ‘active and noisy’ motility is crucial to observe the glass transition. Though a few studies included tunable confluency in the Voronoi framework [7, 67], our implementation is distinct and straightforward, inspired by DP models. There are also a few active models of deformable cells like ours [68, 69]. However, the intracellular pressure in these models depends on the instantaneous cell area, which is similar to vertex-based models but distinct from our constant pressure framework that aligns with in vivo measurement of osmotic pressure in tissues [70]. Recently, a computational package [71] has been developed to simulate various soft materials, including biological tissues, foams, bubbles, etc. However, this framework is overtly complex (with 23 parameters), while ours is a simple coarsegrained framework with a few parameters corresponding to experiments (such as adhesion, intracellular pressure, edge tension, etc.).
Application and future directions
Intriguingly, despite having a distinct single-cell energy function compared to the DP, Vertex, and SPV models, our model still shows the liquid-solid transitions at
Supplementary Information: Role of intercellular adhesion in modulating tissue fluidity
I. Model Details
A. Force inherent to an isolated cell
Motivated from previous studies [43–45], a single cell is modeled as a closed loop of beads connected through elastic springs with stiffness constant Ks and natural spring length l0 (Fig. S1). In our simulation, each cell is made up of 50 beads. Each bead experiences tangential tension forces from the two adjacent neighbor springs, and an internal pressure force, Pl0, directed (outward) normal to the line tension of the given spring. (Fig. S1).

Bead-spring model of a single cell.
The force components due to the tangential spring tension are shown in black arrows. The blue arrows denote the normal components of the pressure force. The neighbors of the i-th bead are the (i − 1)-th and (i + 1)-th beads.
In a coarse-grained view, these intracellular forces describe the roles of the actomyosin cortex and cytoplasmic pressure that give the cell its structural integrity. The intracellular force for the i-th bead can be explicitly written as follows:
Here, li is the bond length between i-th and (i − 1)-th bead pair, and li+1 is the bond length between (i + 1)-th and i-th beads, respectively. Also,
B. Effect of cell-cell interactions
The intercellular force arising due to cell-cell interactions consists of two parts: (i) the spring-like attractive force, which resembles the cell-cell adhesion through adhesive proteins (like E-cadherins), and (ii) the spring-like repulsion that prevents the interpenetration among neighboring cells. Two beads of two different cells would feel the force of adhesion or repulsion only when the Euclidean distance between them is below the cut-off range of the attractive or repulsive forces. Thus the interaction force on the i-th bead of α-th cell due to the j-th bead of β-th cell is as follows:
Here,
Now, considering all the contributions from other cells within the interaction ranges, the total force of interaction on the i-th bead of the α-th cell would be :
C. Active force term via self-propulsion and Equations of motion
In addition to the intracellular and intercellular forces, cells can also move via self-propulsion. As in the selfpropelled particle (SPP) model [19] and self-propelled Voronoi (SPV) model [32], we also incorporate a polarity vector
And, the unit polarity vector undergoes a rotational diffusion described as:
where, ζα(t) is a Gaussian white noise with zero mean and variance 2Dr, which specifies the timescale for reorientation of the polarity vectors as 1/Dr.
Thus Eq. (4) and Eq. (5) are the governing equations of motion in our model.
D. Non-dimensional Parameters
To non-dimensionalize our governing equations, we take the unit of length as l0 and the unit of time as
And, non-dimensional time (
Therefore, replacing the position vectors and time with the non-dimensionalized values in Eq. (4), we obtain
Here, Kint denotes the strength of adhesion or repulsion Kadh or Krep in a compact notation. Also,
and
Where,
II. Simulation Details
We consider a system of N = 256 cells in a square box of size L = 460l0 . Each cell contains M = 50 beads. The bead positions are updated by numerically integrating Eq. (4) and Eq. (5) using the Euler method. The time step is 10−3 and the total number of iterations is 107. The simulations are carried out using a periodic boundary condition.
A. Initialization procedure
Generating nearly confluent tissue configuration
To populate the desired number of cells in a given square box, we choose a smaller initial radius for each cell. In our simulation, the initial radius of each cell is taken as a = 10l0, and the box length is chosen to be L = 460l0. To avoid cell-cell overlap during the random generation of cells, the minimum separation between two cell centers is chosen to be 2a +
Equilibrium dynamics of the tissue configuration
The initially generated cell-system is then evolved by integrating Eq. (4) with
B. Dynamics of the active system
Simulation of the active system
After the passive system attained an equilibrium configuration (described above), we reset the time to zero. The final equilibrated configuration of the passive system is then used as the initial configuration for the active dynamics of the tissues. The system is then evolved for a further 107 iteration steps with a non-zero self-propulsion speed
Measurement of observable quantities
We found that after 105 iterations, the active system entered into a steady state, which was determined by observing the time evolution of the dynamical or structural observables like instantaneous area fraction and the shape index (as defined in the next section). The steady-state was confirmed when the observables fluctuated around a well-defined average value over time (as in Fig. 4(C-E), main text). We took this approximate steady-state reaching time as the reference time (t0 = 105 iterations) for measuring the dynamical quantities like MSD and the non-Gaussian parameter (as defined in the next section).
Code details
The main simulation as well as codes for analysing the data are all written in FORTRAN 90. We implemented the ‘cell linked-list’ algorithm [76] (which provides a significant speed-up) in the neighbor search process to compute the intercellular forces. The codes are available in the GitHub repository: https://github.com/PhyBi/Collective-Cell-Dynamics/tree/legacy.

List of system parameters.
III. Comparison of Our Model with the Topological Energy Function of Vertex and Voronoi Models
The free energy of our model fundamentally differs from the topological energy function of Vertex/Voronoi-type models. For instance, consider a single isolated cell at equilibrium. Under an isotropic pressure, the cell will attain the equilibrium shape of an n-sided regular polygon having n beads and n springs (with spring constant Ks and rest length l0). Following Fig. S2, the free energy is:

A single cell (at equilibrium) idealized as an n-sided regular polygon (here n = 8).
An isotropic pressure force Pl0 inflates the cell, pushing each vertex point outward and increasing the radius of the circumcircle from r0 to r. Correspondingly, the surface springs at the edges extend from l0 to (l0 + 2Δl). The diagram is not drawn to scale and is magnified for visual clarity.
where the first term is the work done by the pressure, the second term is the spring energy, and we invoke the geometric relation, Δl = (r − r0)sin(π/n) (see Fig. S2). Differentiating Eq. (11) with respect to r, we obtain at equilibrium:
Using the geometric relation, l0 = 2r0sin(π/n) (see Fig. S2), Eq. (12) can be reduced to
where T = Ks (2Δl) can be considered as the local surface tension at each edge. The Eq. (13) is basically the YoungLaplace (YL) equation, which is thus satisfied in our model. In contrast, the vertex energy function for a single cell is given by
where p and a are perimeter and area of a cell, while p0 and a0 are target perimeter and target area parameters, respectively. The first term in Eq. (14) is similar to the surface spring energy in our model. However, the 2nd term is the ‘area elasticity,’ which represents a pressure dependent on the cell’s instantaneous area (pressure, P = KA(a − a0)). This is inconsistent with the YL equation, which is arguably responsible for the tendency of rounding of a single cell during detachment [77, 78]. The YL equation was also invoked to quantify adhesion [78, 79], and it formed the basis of inferring tension at cellular edges from analysis of tissue images [80, 81]. Since the vertex energy function does not obey the YL equation, it can lead to skewed non-rounded shapes for a single cell at equilibrium, depending on independent choices of ao and po . Thus, a single isolated cell is poorly defined in this framework. An explicit ‘pressure’ term must be incorporated into the energy function to make it consistent with the YL equation (see [82]).
IV. Measured Observables
A. Mean Square Displacement (MSD)
To analyze the cell motions in the monolayer, we measured the mean square displacement (MSD) of the cell centers. The MSD is defined as
where
B. Effective Diffusivity
From the MSD, we determined the effective diffusivity Deff as a dynamical order parameter that differentiates the solid and fluid phases and is defined as
where D0 = υ02/2Dr is the self-diffusivity for an isolated single cell [32]. Deff is estimated from the slope of the linear fits to the MSD curves at long time (from 5 × 106 to 107 iterations).
C. Non-Gaussian Parameter
The non-Gaussian parameter (α2(Δt)), in 2D, is defined as [37] :
where Δr is as defined in Eq. (16). This parameter includes the 2nd and 4th order moments of the distribution of Δr. The parameter value is zero for a Gaussian distribution and becomes non-zero when the distribution deviates from the Gaussian. The higher-order moments capture the deviation of the distribution, especially in the tail part, which cannot be accounted for by MSD.
D. Area Fraction
The area fraction in our model can be calculated in the following two ways. First, the area fraction (ϕ) of the tissue monolayer at a particular time is given by
Here Aα is the area of the α-th cell, N is the cell number, and Abox = L2, is the area of the simulation box. This definition considers the beads as point particles. However, since we have a cut-off range of the repulsion interaction
Here M is the bead number per cell. We calculated that ϕ ranges 0.85 − 0.88 across the extreme fluid and solid phases (corresponding to Fig. 2 of our manuscript), while ϕ′ ~ 0.93 − 0.95 during the transition. Both these estimates show high confluency, and the area fraction changes negligibly across the transition, as found during the liquid-to-solid transition in dense zebrafish tissues [1].
E. Shape Index
Following previous studies [26, 32], the cell shape index (S) is defined as:
Where Pα is the perimeter and Aα is the area of the a-th cell at a particular time instant. S denotes the averaged shape index over all the cells at a particular instant. And, 〈S〉 indicates the average of S over time and over different simulations (ensemble average). While calculating 〈S〉, we averaged over the time window from 5 × 106 to 107 iterations when the system is deep in the steady state, as confirmed from the temporal evolution of shape index (S) (see Fig. 4E, main text).
We also measured 〈S〉V or, the averaged shape index obtained from the Voronoi tessellated polygons. Following standard protocol [35], we performed the Voronoi space tessellation from the actual cell center data in a simulated tissue, to obtain the corresponding Voronoi polygons (see Fig. S9A). Then we calculated the shape index, SV or, for each of the Voronoi polygons using Eq. 21. Note that, 〈S〉V or represents the ensemble average as well as the time average in the steady-state (as stated above for measuring 〈S〉).
F. Edge Tension
For the i-th bead of a particular cell at an instant, the edge tension is estimated as the extension of the corresponding spring length (apart from a multiplicative constant):
where, li is the instantaneous length of the spring between i-th and (i − 1)-th beads of the cell and l0 is the rest length. Then we calculated the average tension over all the beads of a cell and over all the cells as below:
G. Coordination Number
By definition, the number of cells with which a particular cell is ‘in contact’, is the coordination number (Z) of that particular cell [83]. Now, in our model, a particular cell, say the a-th cell, would be ‘in contact’ with the β-th cell and vice versa, if any two beads of the two cells come within the interaction ranges, either
V. Jamming Onset in the ‘Passive Limit’ of Our Model
The ‘passive-tissue’ limit of our model essentially means the absence of any active self-propulsion vector (υ0 = 0). In this limit, we studied the system without cell-cell adhesion (Kadh = 0) in order to compare with previous studies on the packing of soft grains [35, 43]. The intercellular interactions are purely repulsive in this case. We considered a system of N = 256 cells in a square box of size L = 460l0, each cell containing M = 50 beads (same system size as described in the ‘Simulation Details’ section). We followed the same initialization protocol stated in the ‘Simulation Details’ section. Here, we performed the simulations using a ‘stiff’ or ‘rigid’ boundary condition. The stiff/rigid boundary condition was implemented as follows: At a particular time instant t, if any bead of a cell touches the boundary lines of the square box, i.e., if the Euclidean distance between the bead and any of the boundary lines becomes smaller than the range of repulsion
The system was then evolved by integrating Eq. 4 with
Finally, for each value of
VI. The Confluent Limit of Our Model
As discussed in the previous section (Section V of the SI), the level of confluency may be described by the average area fraction normalized by the maximum area fraction in a parameter regime (ϕ/ϕmax). The tissue becomes confluent as ϕ/ϕmax → 1. Note that a particle-based description like our model cannot have ϕmax = 1 since two adjacent cells have distinct, non-overlapping adjoining edges unlike the Voronoi-tessellation-based models, where adjacent cells share a common edge with ‘zero-thickness’. In our case, ϕmax → 1 only when the bead number per cell approaches infinity. Nevertheless, 100% confluency is an idealization since in vivo tissues still show 80%-90% confluency (see Fig. 2e, 2h in [1]).
In the main paper, we kept the tissue at a near-confluent regime (where (ϕ/ϕmax) ~ 0.94 − 1 across the transition). We calculated that ϕ ranges 0.83 − 0.88 across the fluid and solid phases (corresponding to Fig. 2–4, main text), while ϕ′ ~ 0.91 − 0.96 during the transition (note the slightly different definition of packing fractions, ϕ, and ϕ′, as given in Eq. 19–20 in SI). These estimates show near-confluency, and the area fraction hardly changes across the transition.
As mentioned above, since our model does not attain ϕ = 1, we cannot directly compare the average shape indices of cells with the shape indices of the Voronoi cells in the Vertex and SPV models. Thus, for comparison, we performed the Voronoi tessellation of space (using the cell centers) to obtain the Voronoi polygons corresponding to the cells (Fig. S9A), and we then measured the shape indices of the Voronoi cells (〈S〉V or, as defined in Sec. IV E, SI). Interestingly, in this near-confluent regime, 〈S〉V or measured from the Voronoi polygons shows that the liquidsolid transition takes place at 〈S〉V or ≈ 3.81 for the low values of rotational noise strength (Dr), similar to the behavior of Vertex and SPV models [26, 32] (see Fig. S9B,C). However, for higher Dr, the phase boundary shifts from 〈S〉V or = 3.81 (Fig. S9C). Thus, our model replicates the behavior of the Vertex model in certain regimes if we treat 〈S〉V or as a structural order parameter. But, note that the actual shape index 〈S〉 measured from cell contours are nonmonotonic near the phase boundary (Fig. 4F, main text), contrasting the behavior of the Vertex model.
Furthermore, as our model has tunable confluency depending on parameter variations, we could achieve high confluency by increasing the natural spring length (l0 from 0.1 to 0.14) and explored the effect of increasing adhesion from zero to a much higher value (see Fig. S10(A-B)). Though the packing fraction did not alter up to the second decimal place (ϕ = 0.891 − 0.893), the MSD of cell centers still showed a liquid-solid transition, where the cell dynamics changed from sub-diffusive to caged (plateau) behavior with adhesion (Fig. S10C, D). The transition points are located based on a cut-off value of the MSD exponent (see Fig. S10D, where the cut-off exponent was set to 0.2). Notably, the average packing fraction (both ϕ and ϕ′) hardly changed across the liquid-solid transition, suggesting a rigidity-driven glass transition, not a crowding-dependent jamming (Fig. S10E). Also, note that the values of the area fraction in Fig. S10E are well above the critical packing fraction for jamming transition in passive foams — in previous simulations of the ‘deformable polygon model’ and ‘dynamic vertex model,’ the critical packing fraction for jamming was reported to be ϕc ~ 0.83 in 2D (see Fig. 2f in [7] and Fig. 4a in [84]). Thus, for the chosen parameters of our model, the tissue is already ‘jammed’ without adhesion, showing sub-diffusive dynamics with active cellular motility (Fig. S10C). However, with increasing adhesion, solidification arises from dampening the active motility of cells, which is caused by the increased resistance to shear forces between cells due to higher adhesion.
Moreover, the solidification in the highly confluent state accompanied a negligible change in the average contact number per cell (Z changes from 5.90 to 5.98 in Fig. S10F corresponding to the red and blue curves, representing the confluent limit). In this regard, a simple counting of constraints for passive non-adhesive spheres shows that the critical isotactic contact number for jamming is Zc ~ 4 in 2D. Note, the degrees of freedom for N cells is nDOF = 2N, while the number of constraints is nc = ZN/2 as each contact is shared between two cells. This leads to Zc = 4 when nDOF = nc (see [85]). However, another constraint counting argument based on the Voronoi tesselation of the 2D space suggests that the isostatic value of Z at the confluence should be
Additionally, in the confluent limit, we measured both the average shape indices from the Voronoi cells (〈S〉V or) and from the actual cell contours (〈S〉) (Fig. S10G, H). Notably, the liquid-solid transition boundaries (pinpointed by arrowheads in Fig. S10D) closely coincide with 〈S〉V or ≈ 3.81 (Fig. S10G), again exhibiting the Vertex and SPV model-like behavior [26, 32] for the given parameter choices. Nevertheless, the actual shape indices still show nonmonotonic behavior across the transition (Fig. S10H), similar to what was observed before (as in Fig. 4F, main text).
VII. Supplemental Figures

Fluid to solid transition with respect to three dimensionless parameters.
The mean-squared displacements of cell centers show transitions from the fluid-like diffusive to the solid-like sub-diffusive behavior (A) with increasing intracellular pressure (top to bottom:

Phase diagrams in the parameter space of (A)

Edge-tension distributions.
Probability distributions of the edge elongation (li − l0) in the tissue kept in fluid (blue) and solid (red) phases, corresponding to Fig. 4C (main paper). Parameters:

Cell-area distributions.
Probability distributions of the scaled cell-area, Ã = A/〈A〉, for region-i (red), ii (green), and iii (blue), corresponding to Fig. 4F. Solid lines are the fits with the generalized k-Gamma distribution,

Spontaneous formation of a muticellular rosette.
A configuration showing a five-cell junction (highlighted in red) known as a rosette that can be formed when five or more cells share a vertex. Parameters:

Jamming onset in the ‘passive limit’.
We obtained the ‘passive limit’ of our model by switching off the self-propulsion speed (υ0 = 0) in the absence of cell-cell adhesion (Kadh = 0). Jammed states are formed by systematically increasing the intracellular pressure (consequently increasing the packing fraction) in a box with rigid boundaries. For more details, see the SI text, Section V. (A-C) Steady state simulation snapshots with increasing packing fractions: ϕ/ϕmax — 0.84 (A), 0.95 (B), and 1.0 (C). (D) Normalized area fraction (ϕ/ϕmax) and (E) the average contact number per cell (Z), as functions of the averaged shape index (〈S〉). The tissue reaches the confluence when the normalized packing fraction becomes unity (ϕ/ϕmax − 1) at the measured shape index 〈S〈 ≈ 3.81 (shown by the vertical dashed line in D). The maximal packing fraction achieved is ϕmax = 0.883, as shown by the horizontal dotted line in panel D. The average coordination number Z ~ 5.7 indicates a jammed confluent state at 〈S〉 ∔ 3.81 (indicated by the vertical dashed line in E). Parameters:

Calculation of shape indices by Voronoi tessellation (corresponding to Fig. 4F).
(A) A configuration of polygonal cells (red solid lines), encompassing the original cells (grey), obtained from the Voronoi tesselation of the space in the liquid phase (corresponding to the blue star-marked point in panel B). (B) The effective diffusivity from long time MSD slope, Deff, is shown against

Solidification at highly confluent tissues.
(A-B) Tissue configurations for
Additional files
Acknowledgements
DD and SR thank DBT (Government of India, Project No. BT/RLF/Re-entry/51/2018) and IISER-Kolkata for financial support. We also thank Dapeng Bi (Northeastern University), Dibyendu Das (IIT Bombay), Anirban Sain (IIT Bombay) and Somajit Dey (IISER Kolkata) for their useful discussions.
References
- [1]A fluid-to-solid jamming transition underlies vertebrate body axis elongationNature 561:401–405Google Scholar
- [2]Morphogen gradient orchestrates patternpreserving tissue morphogenesis via motility-driven unjammingNature Physics :1–12Google Scholar
- [3]Collective migration of an epithelial monolayer in response to a model woundProceedings of the National Academy of Sciences 104:15988–15993Google Scholar
- [4]Dynamic heterogeneity influences the leaderfollower dynamics during epithelial wound closurePhilosophical Transactions of the Royal Society B 375:20190391Google Scholar
- [5]Unjamming and collective migration in mcf10a breast cancer cell linesBiochemical and Biophysical Research Communications 521:706–715Google Scholar
- [6]Jamming transitions in cancerJournal of physics D: Applied physics 50:483001Google Scholar
- [7]Embryonic tissues as active foamsNature Physics 17:859–866Google Scholar
- [8]Patterned disordered cell motion ensures vertebral column symmetryDevelopmental Cell 42:170–180Google Scholar
- [9]Collective migration and cell jammingDifferentiation 86:121–125Google Scholar
- [10]Unjamming and cell shape in the asthmatic airway epitheliumNature Materials 14:1040–1048Google Scholar
- [11]In primary airway epithelial cells, the unjamming transition is distinct from the epithelial-to-mesenchymal transitionNature Communications 11:12Google Scholar
- [12]Physics of active jamming during collective cellular motion in a monolayerProceedings of the National Academy of Sciences of the United States of America 112:15314–15319Google Scholar
- [13]Glass-like dynamics of collective cell migrationPNAS 108Google Scholar
- [14]Are cell jamming and unjamming essential in tissue development?Cells & development 168:203727Google Scholar
- [15]Mesoscale physical principles of collective cell organizationNature Physics 14:671–682Google Scholar
- [16]Phase transition in the collective migration of tissue cells: Experiment and modelPhysical Review E - Statistical, Nonlinear, and Soft Matter Physics 74Google Scholar
- [17]Self-propelled particle model for cell-sorting phenomenaPhysical Review Letters 100:6Google Scholar
- [18]Collective cell motion in an epithelial sheet can be quantitatively described by a stochastic interacting particle modelPLoS computational biology 9:e1002944Google Scholar
- [19]Active jamming: Self-propelled soft particles at high densityPhysical Review E - Statistical, Nonlinear, and Soft Matter Physics 84:10Google Scholar
- [20]Freezing and phase separation of self-propelled disksSoft Matter 10:2132–2140Google Scholar
- [21]Athermal phase separation of self-propelled particles with no alignmentPhysical review letters 108:235702Google Scholar
- [22]Nonequilibrium glassy dynamics of self-propelled hard disksPhysical Review Letters 112:6Google Scholar
- [23]Pushing the glass transition towards random close packing using self-propelled hard spheresNature communications 4:2704Google Scholar
- [24]A dynamic cell model for the formation of epithelial tissuesPhilosophical Magazine B 81:699–719Google Scholar
- [25]The influence of cell mechanics, cell-cell interactions, and proliferation on epithelial packingCurrent Biology 17:2095–2104Google Scholar
- [26]A density-independent rigidity transition in biological tissuesNature Physics 11:1074–1079Google Scholar
- [27]Energy barriers and cell migration in densely packed tissuesSoft matter 10:1885–1890Google Scholar
- [28]On the mechanism of wing size determination in fly developmentProceedings of the National Academy of Sciences 104:3835–3840Google Scholar
- [29]Mechanical heterogeneity in tissues promotes rigidity and controls cellular invasionPhysical review letters 123:058101Google Scholar
- [30]Multicellular rosettes drive fluid-solid transition in epithelial tissuesPhysical Review X 9:011029Google Scholar
- [31]Controlled neighbor exchanges drive glassy behavior, intermittency, and cell streaming in epithelial tissuesPhysical Review X 11:12Google Scholar
- [32]Motility-driven glass and jamming transitions in biological tissuesPhysical Review X 6Google Scholar
- [33]Coherent motions in confluent cell monolayer sheetsBiophysical journal 107:1532–1541Google Scholar
- [34]Active vertex model for cell-resolution description of epithelial tissue mechanicsPLoS computational biology 13:e1005569Google Scholar
- [35]Jamming of deformable polygonsPhysical review letters 121:248003Google Scholar
- [36]Collective cell motion in endothelial monolayersPhysical biology 7:046007Google Scholar
- [37]Glass transitions in the cellular potts modelEpl 116:10Google Scholar
- [38]Theory and simulation for equilibrium glassy dynamics in cellular potts model of confluent biological tissuePhysical Review E 103:062403Google Scholar
- [39]Solid-liquid transition of deformable and overlapping active particlesPhysical Review Letters 125:038003Google Scholar
- [40]Cell-cell adhesion impacts epithelia response to substrate stiffness: Morphology and gene expressionBiophysical Journal 121:336–346Google Scholar
- [41]Cell-cell adhesion and 3d matrix confinement determine jamming transitions in breast cancer invasionNature cell biology 22:1103–1115Google Scholar
- [42]Essay: Collections of deformable particles present exciting challenges for soft matter and biological physicsPhysical Review Letters 130:130002Google Scholar
- [43]Cell aggregation: Packing soft grainsPhysical Review E - Statistical, Nonlinear, and Soft Matter Physics 73Google Scholar
- [44]A new model for cell division and migration with spontaneous topology changesSoft Matter 10:4332–4339Google Scholar
- [45]Jamming and force distribution in growing epithelial tissuePhysical Review Research 3:5Google Scholar
- [46]Active t1 transitions in cellular networksThe European Physical Journal E 45:29Google Scholar
- [47]Collective migration and cell jamming in asthma, cancer and developmentJournal of cell science 129:3375–3383Google Scholar
- [48]Cytoplasmic pressure maintains epithelial integrity and inhibits cell motilityPhysical biology 18:066003Google Scholar
- [49]Forces in tissue morphogenesis and patterningCell 153:948–962Google Scholar
- [50]Emergence of gamma distributions in granular materials and packing modelsPhysical Review E 77:021309Google Scholar
- [51]Jamming and geometry of two-dimensional foamsEurophysics Letters 92:34002Google Scholar
- [52]On the origin of universal cell shape variability in confluent epithelial monolayerseLife 11:e76406https://doi.org/10.7554/eLife.76406Google Scholar
- [53]Properties of cage rearrangements observed near the colloidal glass transitionPhysical review letters 89:095704Google Scholar
- [54]Understanding slow and heterogeneous dynamics in model supercooled glass-forming liquidsACS omega 6:7229–7239Google Scholar
- [55]Emergence of bacterial glassPNAS Nexus :pgae238Google Scholar
- [56]Micromechanics of emergent patterns in plastic flowsScientific reports 3:2728Google Scholar
- [57]Three-dimensional direct imaging of structural relaxation near the colloidal glass transitionScience 287:627–631Google Scholar
- [58]Confined glassy dynamics at grain boundaries in colloidal crystalsProceedings of the National Academy of Sciences 108:11323–11326Google Scholar
- [59]Broad-tailed force distributions and velocity ordering in a heterogeneous membrane model for collective cell migrationEurophysics Letters 99:18004Google Scholar
- [60]Glassy swirls of active dumbbellsPhysical Review E 96:10Google Scholar
- [61]Velocity fields in a collectively migrating epitheliumBiophysical journal 98:1790–1800Google Scholar
- [62]Glassy dynamics in three-dimensional embryonic tissuesJournal of The Royal Society Interface 10:20130726Google Scholar
- [63]Cytoskeletal remodelling and slow dynamics in the living cellNature materials 4:557–561Google Scholar
- [64]Dynamic heterogeneity and non-gaussian statistics for acetylcholine receptors on live cell membraneNature communications 7:11701Google Scholar
- [65]When brownian diffusion is not gaussianNature materials 11:481–485Google Scholar
- [66]The roles and regulation of multicellular rosette structures during morphogenesisDevelopment 141:2549–2558Google Scholar
- [67]Confluent and nonconfluent phases in a model of cell tissuePhysical Review E 98:042418Google Scholar
- [68]Collective motion of cells modeled as ring polymersSoft Matter 18:1228–1238Google Scholar
- [69]Cellular mechanics of wound formation in single cell layer under cyclic stretchingBiophysical Journal 121:288–299Google Scholar
- [70]In situ quantification of osmotic pressure within living embryonic tissuesNature Communications 14:7023Google Scholar
- [71]Polyhoop: soft particle and tissue dynamics with topological transitionsComputer Physics Communications 299:109128Google Scholar
- [72]Jamming and arrest of cell motion in biological tissuesCurrent Opinion in Cell Biology 72:146–155Google Scholar
- [73]Convergent extension requires adhesion-dependent biomechanical integration of cell crawling and junction contractionCell Reports 39Google Scholar
- [74]Nmii forms a contractile transcellular sarcomeric network to regulate apical cell junctions and tissue geometryCurrent biology 23:731–736Google Scholar
- [75]Adhesion-regulated junction slippage controls cell intercalation dynamics in an apposed-cortex adhesion modelPLoS computational biology 18:e1009812Google Scholar
- [76]Computer Simulation of LiquidsOxford: Oxford University Press Google Scholar
- [77]Dynamics of cell rounding during detachmentIscience 26Google Scholar
- [78]Adhesion functions in cell sorting by mechanically coupling the cortices of adhering cellsscience 338:253–256Google Scholar
- [79]Rigidity percolation uncovers a structural basis for embryonic tissue phase transitionsCell 184:1914–1928Google Scholar
- [80]Variational method for image-based inference of internal stress in epithelial tissuesPhysical Review X 10:011072Google Scholar
- [81]Inferring cell junction tension and pressure from cell geometryDevelopment 148:dev192773Google Scholar
- [82]Bubbly vertex dynamics: a dynamical and geometrical model for epithelial tissues with curved cell shapesPhysical Review E 90:052711Google Scholar
- [83]2d foams above the jamming transition: Deformation mattersColloids and Surfaces A: Physicochemical and Engineering Aspects 534:52–57Google Scholar
- [84]The role of deformability in determining the structural and mechanical properties of bubbles and emulsionsSoft matter 15:5854–5865Google Scholar
- [85]Jamming and arrest of cell motion in biological tissuesCurrent Opinion in Cell Biology 72:146–155Google Scholar
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