The hybrid model represents an intermediate level of detail in between the
colony level model and the internal model. Bacteria are treated as individual agents
that behave according to Keller-Segel type stochastic differential
equations, while chemical species are modeled using partial differential
equations.
Partial Differential Equations
Spatial reaction-diffusion models that rely on
Partial Differential Equations (PDEs) are based on the assumption that the
collective behavior of individual entities, such as molecules or bacteria, can
be abstracted to the behavior of a continuous field that represents the density
of those entities. The brownian motion of molecules, for instance, is the result
of inherently stochastic processes that take place at the individual molecule
level, but is modeled at the density level by Fick’s laws of diffusion. These
PDE-based models provide a robust method to predict the evolution of large-scale
systems, but are only valid when the spatiotemporal scale is sufficiently large
to neglect small-scale stochastic fluctuations and physical granularity.
Moreover, such a continuous field approximation can only be made if the behavior
of the individual entities is well described.
Introduction
Partial Differential Equations
Spatial reaction-diffusion models that rely on
Partial Differential Equations (PDEs) are based on the assumption that the
collective behavior of individual entities, such as molecules or bacteria, can
be abstracted to the behavior of a continuous field that represents the density
of those entities. The brownian motion of molecules, for instance, is the result
of inherently stochastic processes that take place at the individual molecule
level, but is modeled at the density level by Fick’s laws of diffusion. These
PDE-based models provide a robust method to predict the evolution of large-scale
systems, but are only valid when the spatiotemporal scale is sufficiently large
to neglect small-scale stochastic fluctuations and physical granularity.
Moreover, such a continuous field approximation can only be made if the behavior
of the individual entities is well described.
Agent-based models
Agent-based models on the other hand explicitly treat the entities as individual
“agents” that behave according to a set of “agent rules”. An agent is an object
that acts independently from other agents and is influenced only by its local
environment. The goal in agent-based models is to study the emergent
systems-level properties of a collection of individual agents that follow
relatively simple rules. In smoothed particle hydrodynamics for example, fluids
are simulated by calculating the trajectory of each individual fluid particle at
every timestep. Fluid properties such as the momentum at a certain point can
then be sampled by taking a weighted sum of the momenta of the surrounding fluid
particles. A large advantage of agent-based models is that the agent rules are
arbitrarily complex and thus they allow us to model systems that do not
correspond to any existing or easily derivable PDE model. However, because every
agent is stored in memory and needs to be processed individually, simulating
agent-based models can be computationally intensive.
Hybrid Modeling Framework
In our system, there are both bacteria and chemical species that spread out
and interact on a petri dish to form patterns. On the one hand, the bacteria are
rather complex entities that move along chemical gradients and interact with one
another. Therefore they are ideally modeled using an agent-based model. On the
other hand, the diffusion and dynamics of the chemicals leucine and AHL are
easily described by well-established PDEs. To make use of the advantages of each
modeling approach, we decided to combine these two different types of modeling
in a hybrid modeling framework. In this framework we modeled the bacteria as
agents, while the chemical species were modeled using PDEs. There were two
challenges to our hybrid approach, namely coupling the models and matching them.
Coupling refers to the transfer of information between the models and matching
refers to dealing with different spatial and temporal scales to achieve
accurate, yet computationally tractable simulations.
In the following paragraphs we first introduce our hybrid model and its
coupling. Once the basic framework is established, the agent-based module and
PDE module are discussed in more depth and the issue of matching is highlighted.
We also expand on important aspects of the model and its implementation such as
boundary conditions and choice of timesteps. Then the results for the 1-D model
and 2-D model simulations are shown and summarized. Finally, the incorporation
of the internal model into the hybrid model is discussed and a proof of concept
is demonstrated.
Model Description
Hybrid Model
The main protagonists in our pattern-forming system are cell types A and B,
AHL and leucine. Cells A produce AHL as well as leucine. They are unaffected by
leucine, while cells B are repelled by leucine. AHL modulates the motility of
both cell types A and B, but in opposite ways. High concentrations of AHL will
render cell type A unable to swim but will activate cell type B’s motility.
Conversely, low concentrations of AHL causes swimming of cell type A and
incessant tumbling (thus immobility) of cell type B. Lastly, cells A express the
adhesin membrane protein, which causes them to stick to each other. Simply said,
our system should produce spots of immobile, sticky groups of A type cells,
surrounded by rings of B type cells. Any cell that finds itself outside of the
region that it should be in, is able to swim to their correct place and becomes
immobile there. More details can be found in the
research section.
Partial Differential Equations
As discussed in the previous paragraph, our hybrid model incorporates chemical
species using PDEs. In our system these are AHL and leucine. The diffusion of
AHL and leucine can be described by the heat equation (1).
$$\frac{\partial C(\vec{r},t)}{\partial t}=\nabla^2 C(\vec{r},t) \;\;\;
\text(1)$$
By using (1)
we assume that the diffusion speed is isotropic, i.e. the same in all spatial
directions. This also explains why it is called the heat equation, since heat
diffuses equally fast in all directions. A detailed explanation of the heat
equation can be found in box 1. The second factor that needs be taken into
account is the production of AHL and leucine by type A bacteria. In principle,
AHL and leucine production is dependent on the dynamically-evolving internal
states of all cells of type A. However, for our hybrid model we ignored the
inner life of all bacteria and instead assumed that AHL and leucine production
is directly proportional to the density of A type cells (2).
$$ \frac{\partial C(\vec{r},t)}{\partial t}=\alpha \cdot \rho_A(\vec{r},t)
\;\;\; \text{(2)}$$
In the last
paragraph we will reconsider this assumption and assign each cell an internal
model. Finally, AHL and leucine are organic molecules and like most organic
molecules they will degrade over time.
We assume first-order kinetics meaning
that the rate at which AHL and similarly leucine disappear is proportional to
their respective concentrations (3a and 3b) assuming neutral pH (citation).
$$ \frac{\partial C_{AHL}(\vec{r},t)}{\partial t}=-k_{AHL}\cdot C_{AHL}(\vec{r},t)
\;\;\; \text{(3a)} $$
$$ \frac{\partial C_{leucine}(\vec{r},t)}{\partial t}=-k_{leucine}\cdot C_{leucine}(\vec{r},t)
\;\;\; \text{(3b)} $$
Putting it all together, we obtain (4), both for AHL and leucine.
$$ \frac{\partial C(\vec{r},t)}{\partial t}=\nabla^2 C(\vec{r},t)+\alpha \cdot \rho_A(\vec{r},t)-k\cdot
C(\vec{r},t) \;\;\; \text{(4)} $$
Note that these equations have exactly the same form as the equations for AHL and leucine
in the colony level model. The crucial difference however lies in the
calculation of the density of cells of type A. In contrast to the colony level
model, the cell density is not calculated explicitly with a PDE and is therefore
not trivially known. Therefore a method to extract a density field from a
spatial distribution of agents is necessary. This is addressed in the
subparagraph below on coupling.
Agent-based
To model bacteria movement on the other hand, we used an agent-based model that
explicitly stored individual bacteria as agents. Spatial coordinates were
associated with each agent, which specified their location. After solving the
equation of motion for all agents based on their environment, these coordinates
were updated at every timestep. In principle, Newton’s second law of motion had
to be solved for all bacteria. However, since bacteria live in a low Reynolds
(high friction) environment, the inertia of the bacteria can be neglected. This
is because an applied force will immediately be balanced out by an opposing
frictional force, with no noticeable acceleration or deceleration phase taking
place.
This eliminates the inertial term and simplifies Newton’s second law to
(5).
$$ \frac{d^2 \vec{r}(t)}{dt^2}=\sum_{i} \vec{F}_{applied,i}-\gamma \cdot
\frac{d \vec{r}(t)}{dt}=0 $$
$$\Rightarrow \frac{d \vec{r}(t)}{dt}=\frac{1}{\gamma}
\cdot \sum_{i} \vec{F}_{applied,i} \;\;\; \text{(5)} $$
Basically, the velocity can be calculated as the sum of all applied
forces times a constant.
Stochastic Differential Equation
$$ d\vec{r}_i(t)=\mu \cdot \frac{\kappa}{S(\vec{r},t)} \cdot \nabla S(\vec{r},t)\cdot dt + \sqrt{2 \cdot
\mu}\cdot d\vec{W} \;\;\; (6) $$
However, the physical “chemotactic force” that propel bacteria is not easily
measured or derived. Therefore, we base the equation of motion in one dimension
on (6), a stochastic differential equation (SDE) that describes the motion
of a single particle in a N-particle system that is governed by a Keller-Segel
type PDE in the limit of $N \rightarrow \infty$,
more precisely the (7) PDE for chemotaxis
towards some chemoattractant S.
$$ \frac{\partial n(\vec{r},t)}{\partial t}=D_n \cdot \nabla^2 n - \nabla (n \cdot \chi(S(\vec{r},t))
\cdot\nabla S(\vec{r},t)) \;\;\; (7) $$
That means that when infinitely many particles
obey (6), they will exhibit Keller-Segel type spatial dynamics. In a sense,
we’re using a “reverse-engineered” particle equation that corresponds to the
Keller-Segel field equation. A detailed theoretical treatment of (6) is
outside the scope of this model description because it contains a stochastic
variable. The traditional rules of calculus do not apply anymore for stochastic
differential equations and a different mathematical theory called Ito calculus
is required. It is sufficient to say that the second term containing dW accounts
for Brownian motion in the form of random noise added to the displacement of the
agents, causing them to diffuse, and that it is governed by the diffusion
coefficient $\mu A$. The first term in (6) on the other hand is easily understood
as an advective or drift term (net motion) depending on S, pushing the agents
along a positive gradient (for negative chemotaxis the sign is reversed). The
chemotactic force hence points towards an increasing concentration of the
chemoattractant. The advective properties are governed by the chemotactic
sensitivity function $\chi (S)$. For our model we defined the chemotactic sensitivity
function as in (8).
$$ \chi(S(\vec{r},t))=\mu \cdot \frac{\kappa}{S(\vec{r},t)} \;\;\; (8) $$
The first important thing to note is that we assumed
$\chi (S)$ to be proportional to 1/S. This is because Keller and Segel proved that
their corresponding PDE model only yields travelling wave solutions if $\chi (S)$
contains a singularity at some critical concentration $S_{crit}$, and multiplying by
$1/S$ is the simplest way to introduce a singularity at $S_{crit} = 0$. Secondly, the
proportionality constant is composed of two factors, namely the bacterial
diffusion coefficient $\mu$ and chemotactic sensitivity constant $\kappa$. This is done for
two reasons. Firstly, when $\mu$ is lowered, both chemotactic and random motion is
reduced, which emulates the state of inactivated motility due to high or low
concentrations of AHL. Secondly, defining a separate chemotactic sensitivity
constant allows us to examine the effect of the relative strength of chemotaxis
versus random motion on pattern formation.
Cell-cell Interactions
In addition to chemotaxis and diffusion, cell-cell interactions play an
important role in pattern formation and also need to be modeled. Bacteria have
finite size and therefore multiple bacteria cannot occupy the same space.
Moreover, an important mechanism in our system is the aggregation of cells A due
to the sticky adhesin protein membrane. To take these mechanisms into account we
modeled two types of cell-cell interactions: the purely repulsive interaction of
cell B with another cell B and with cell A, and the repulsive-attractive
interaction of cell A with another cell A. The interaction between two cells is
usually expressed by a potential energy curve defined over the distance between
the centers of mass of the two cells. Note that the potential energy
remains constant after a certain distance, which means that the cells stop
interacting. Also, as two cells move closer together, they hit a wall where the
potential energy curve abruptly goes to infinity. The reason for this is that
two cells cannot occupy the same space and therefore smaller intercellular
distances are not allowed. Implementing this theoretical potential is however
not possible because the bacteria are stochastic and could randomly jump beyond
the potential wall, where the force is ill defined. Practically, we’ve decided
to define a piecewise quadratic potential (9a),
$$ E_{p,attraction}(r_{ij})=\left\{\begin{matrix}
0 & 2\cdot r_{cutoff}\leq r_{ij}\\
-\frac{1}{2}\cdot k_3 \cdot(r_{ij}-2\cdot r_0)^2 & 2\cdot r_0 \leq r_{ij} < 2 \cdot r_{cutoff} \\
-\frac{1}{2}\cdot k_2 \cdot(r_{ij}-2\cdot r_0)^2 & r_0 \leq r_{ij} < 2\cdot r_0\\
-\frac{1}{2}\cdot k_1 \cdot(r_{ij}-\frac{k_1+k_2}{k_1}\cdot r_0)^2 & 0 \leq r_{ij} < r_0
\end{matrix}\right. $$
$$ E_{p,repulsion}(r_{ij})=\left\{\begin{matrix}
0 & 2\cdot r_0\leq r_{ij}\\
-\frac{1}{2}\cdot k_2 \cdot(r_{ij}-2\cdot r_0)^2 & r_0 \leq r_{ij} < 2\cdot r_0\\
-\frac{1}{2}\cdot k_1 \cdot(r_{ij}-\frac{k_1+k_2}{k_1}\cdot r_0)^2 & 0 \leq r_{ij} < r_0
\end{matrix}\right. \;\;\; (9a) $$
$$ \vec{F}_{ij,attraction}(r_{ij})=\left\{\begin{matrix}
\vec{0} & 2\cdot r_{cutoff}\leq r_{ij}\\
k_3 \cdot(r_{ij}-2\cdot r_0) \cdot \vec{e}_{ij} & 2\cdot r_0 \leq r_{ij} < 2 \cdot r_{cutoff} \\
k_2 \cdot(r_{ij}-2\cdot r_0) \cdot \vec{e}_{ij} & r_0 \leq r_{ij} < 2\cdot r_0\\
k_1 \cdot(r_{ij}-\frac{k_1+k_2}{k_1}\cdot r_0) \cdot \vec{e}_{ij} & 0 \leq r_{ij} < r_0
\end{matrix}\right.
$$
$$ \vec{F}_{ij,repulsion}(r_{ij})=\left\{\begin{matrix}
\vec{0} & 2\cdot r_0\leq r_{ij}\\
k_2 \cdot(r_{ij}-2\cdot r_0) \cdot \vec{e}_{ij}& r_0 \leq r_{ij} < 2\cdot r_0\\
k_1 \cdot(r_{ij}-\frac{k_1+k_2}{k_1}\cdot r_0) \cdot \vec{e}_{ij}& 0 \leq r_{ij} < r_0
\end{matrix}\right. \;\;\; (9b)
$$
which results in a piecewise
linear force that resembles Hooke’s law, but with three different “spring
constants” acting in different intervals of intercellular distances (9b).
Between A type cells, there is a region of attraction (2*r0 < r < 2*rcutoff),
where the force points towards the other cell, hence moving them closer together.
In the repulsive domain (r < 2*r0), two regions were defined, emulating lower
repulsive forces (r0 < r < 2*r0) and higher repulsive forces due to a higher spring
constant when the cells are even closer (r < r0). For the purely repulsive interaction
scheme there is no attraction and therefore the spring constant for r > 2*r0 is zero.
More details about the implementation of the cell-cell interaction scheme, more specifically
regarding the nearest-neighbor search algorithm, can be found in the paragraph on the agent-based
module below.
Equation of Motion
Now we are ready to construct the equation of motion for cell type A and B as a
superposition of the Keller-Segel SDE (6) and the cell interaction forces,
yielding (10).
$$ d\vec{r}_{A_i}(t)= \sqrt{2 \cdot \mu_A}\cdot d\vec{W} + \frac{1}{\gamma}\cdot\Bigg( \sum^{A
\backslash \{ A_i\}}_j \frac{dE_{p,attraction}(r_{ij}(t))}{dr_{ij}}\cdot \vec{e}_{ij}+\sum^{B}_j
\frac{dE_{p,repulsion}(r_{ij}(t))}{dr_{ij}}\cdot \vec{e}_{ij} \Bigg)\cdot dt \;\;\; (10a)
$$
$$
d\vec{r}_{B_i}(t)= \chi(L(\vec{r},t),H(\vec{r},t)) \cdot \nabla L(\vec{r},t)\cdot dt + \sqrt{2
\cdot \mu_B(H(\vec{r},t))}\cdot d\vec{W} +
$$
$$
\frac{1}{\gamma}\cdot\Bigg( \sum^{A\cup B\backslash
\{ B_i\}}_j \frac{dE_{p,repulsion}(r_{ij}(t))}{dr_{ij}}\cdot \vec{e}_{ij} \Bigg)\cdot dt
$$
$$
\chi(L(\vec{r},t),H(\vec{r},t))= \mu_{B}(H(\vec{r},t)) \cdot \frac{\kappa}{L(\vec{r},t)}
$$
$$
\mu_A(H(\vec{r},t))=\left\{\begin{matrix}\mu_{A,high} & H(\vec{r},t) < H_{A,threshold}\\
\mu_{A,low} & H(\vec{r},t) \geq H_{A,threshold}\end{matrix}\right.
$$
$$
\mu_B(H(\vec{r},t))=\left\{\begin{matrix}
\mu_{B,high} & H(\vec{r},t) < H_{B,threshold}\\
\mu_{B,low} & H(\vec{r},t) \geq H_{B,threshold}
\end{matrix}\right. \;\;\; \text{(10b)}
$$
Bacteria of type A are not attracted nor repelled by leucine,
so the chemotactic term falls away. All cell-cell forces are summed up to find a
net force, taking into account the two different potentials due to the different
interaction types. As discussed before, this net force times a constant yields
the velocity due to that force, which is then multiplied by dt to obtain the
displacement. For B type cells, the chemotactic term models the repulsive
chemotaxis away from leucine. The chemotactic sensitivity function has a
negative sign signifying that B type cells are repelled by leucine. The cell
interaction term in this case is simpler because B type cells only interact
repulsively. Note that the diffusion coefficient of cell types A and B switches
based on the local concentration of AHL relative to a threshold AHL value, which
simulates the dependency of cellular motility on AHL. The agent-based module is
now fully defined but one crucial issue was skipped: AHL and leucine
concentrations are calculated using PDEs and are therefore only known at grid
points. Agents on the other hand reside in the space between grid points and
require local concentrations as inputs to calculate their next step. This
problem is part of the coupling aspect in our hybrid modeling framework and is
discussed below.
Heat equation
The left-hand side of (1) is the rate of accumulation of a chemical and the right-hand side is the second spatial derivative of its concentration field. The equation can be understood by considering a one-dimensional concentration profile: if the concentration can be approximated as a convex parabolic function, the second derivative is positive and therefore the rate of accumulation is positive (i.e. more accumulation). If on the other hand the concentration resembles a concave parabolic function, the second derivative is negative and the rate of accumulation as well (i.e. depletion). A special case occurs when the concentration profile takes on a linear form. Everything that moves into the point goes out to the other side and a result there is no accumulation over time.
Figure 1
Illustration of the heat euqation. Click to enlarge
Coupling
Agent-based to PDE
As described above, the agents’ effect in the PDE is modeled as a source term
that is proportional to the agent density. This approach is essentially the same
approach taken in the colony level model for the bacterial production of AHL and
leucine. However, in the colony level model the bacteria density is explicitly
calculated at the grid points, while the agent-based model essentially considers
a set of points in space. A simple first-order approach would be to determine
the closest grid point to any agent and simply increment a counter belonging to
that grid point. This results in a histogram, which can be used directly to
represent the agent density. However, the resulting density is a blocky,
nonsmooth function which poorly represents the underlying agent distribution.
The effect of a single agent is artificially confined to a single grid point,
while in reality an agent’s influence could reach much further than a single
grid point. The shape of a histogram is also very dependent on the bin size,
which in this case corresponds to the grid spacing so it cannot be independently
tuned. To decouple grid spacing and agent density and achieve a smoother density
function, we made use of a more sophisticated technique called kernel density
estimation (KDE).
KDE is used in statistics to estimate the probability density of a set discrete
data derived from a random process. The basic idea consists of defining a
kernel function that represents the density of a single data point, then
centering kernel functions on every data point and summing them all up to
achieve a smooth overall density function, as demonstrated in the figure below.
Figure 2
Kernel sum. Click to enlarge
This
kernel function can be anything as long is it continuous, symmetric and
integrates to 1, since it represents one data point or an agent in our case.
Some of the most common kernel functions include gaussian kernels, triangular
kernels and epanechnikov kernels.
During our simulations we have found the epanechnikov kernel particularly useful.
In two dimensions these are defined as:
$$k(x,y) = \left\{\begin{matrix} \frac{3}{4h} * (1 - ((x/h)^2 + (y/h)^2)) & \text{if } ((x/h)^2 +
(y/h)^2) \leq 1 \\
0 & \text{else} \end{matrix}\right. \;\;\; (11) $$
Importantly, the scaled functions inherit the kernel function
properties, but are either broader or narrower. The degree to which the shape of
a kernel function is stretched or squeezed depends on the scaling factor h
, which is why it is called the bandwidth. This parameter gives us the
freedom to define how far the influence of an agent reaches and how smooth the
resulting density function looks like. Using a KDE allows us to define the agent density at any
point by referring to the kernel sum.
Figure 3
Epanechnikov kernels with bandwidths with various bandwidths. Click to enlarge
Figure 4
Gaussian, triangular and Epanechnikov kernel functions. Click to enlarge
PDE to agent-based
The final component of our hybrid model is the mapping of the PDE model to the agent-based model.
The latter model works with discrete objects that have continuous coordinates, which means that they can be located
at any point of the domain.
As we have seen, the agents need the local concentration of AHL and leucine, as well as the gradient of leucine in
order to update their positions. In the PDE model however, the domain is discretized into a grid and concentrations
are only defined at grid points. Therefore, in order to transfer information from the PDE model to the agent-based
model we need to translate these grid values into values for any given position within the domain. We achieved this
for the 1-D hybrid model by taking the two nearest grid points to any agent and employing linear interpolation to
derive an approximate local field value. Similarly, for the 2-D hybrid model we took the four nearest grid points
and employed bilinear interpolation.
Implementation
Agent-based Module
Nearest-Neighbor Algorithm
The cell-cell interactions have already been fully described in the paragraphs above. However, solving the equation of motion of an agent in its current form requires the computation of the force due to every other agent. If we take N to be the number of agents, that means $N*(N-1)$ amount of force computations are needed in total and therefore the computation time grows as $O(N^2)$. To put this in perspective, if we simulate a thousand agents, the amount of interactions adds up to around one million. This puts a heavy computational load on the model which can be reduced greatly by using a smarter algorithm. The crucial observation here is that the force goes to zero when the distance between two cells is larger than $2\cdot r_{cutoff}$. An agent therefore only interacts with its nearest neighbors, meaning that the naive implementation wastes a lot of time computing interactions which have no effect anyways. Moreover, as the simulation progresses, an agent’s neighbors do not vary greatly from one timestep to another. A more efficient approach then consists of periodically searching for the nearest neighbors within a fixed radius, storing them in a list for every agent and updating their coordinates for all intermediate timesteps.
Since the agents are programmed to repel each other when they approach each other too closely, they will evolve to a rather uniform distribution. The most appropriate fixed-radius nearest neighbor search algorithm in that case is the cell technique. In this algorithm, the agents are structured by placing a rectangular grid of cells over the domain and assigning every agent to a cell (fig9). Determining which cell an agent belongs to is easily done by rounding down the x and y-coordinates to the nearest multiple of the grid spacing. If the grid spacing is chosen so that interactions do not reach further than adjacent cells, every agent only needs to look for neighbors in 9 cells (its own cells plus 8 adjacent cells) instead of the entire domain.
Partial Differential Equations Module
Computational Scheme
As mentioned earlier the concentrations of AHL and Leucine are modeled using partial differential equations.
In the colony level model these equations are solved explicitly. Explicit schemes do not require a lot of
work per time step, but unfortunately are not unconditionally stable. In two dimensions the grid ratios
$dt/dx^2$ and $dt/dy^2$ can not exceed $dt/dx^2 + dt/dy^2 \leq \frac{1}{2}$ for the solver to be stable.
When computing the solution of the hybrid model this requrement forces us to spend a lot of CPU time solving
partial differential equations that could be better spent simulation the agents. Therefore an implicit ADI
Alternating direction implicit scheme has been implemented. ADI-schemes are unconditionally stable, which
allows it to take large time steps with the PDE solver. We used the following scheme:
$$ (1 - \frac{1}{2} \mu_x \delta_x^2) U^{n+\frac{1}{2}} + \frac{1}{4}kU^{n+\frac{1}{2}}
= (1 + \frac{1}{2} \mu_y \delta_y^2) U^n - \frac{1}{4}kU^n + \frac{\alpha}{2} \rho_A $$
$$ (1 - \frac{1}{2} \mu_y \delta_y^2) U^{n+1} + \frac{1}{4}kU^{n+1} =
(1 + \frac{1}{2} \mu_x \delta_x^2)U^{n+\frac{1}{2}} - \frac{1}{4}kU^{n+\frac{1}{2}} + \frac{\alpha}{2} \rho_A $$
In the equations above $\mu$ denotes grid ratios and $\delta^2$ central differences. The production and
degradation terms have been incorporated at every time level with a factor of $\frac{1}{4}$.
The image below shows the computational molecule of the ADI scheme we chose to implement:
Figure 4
ADI-Molecule. Click to enlarge
Matching
Decoupling of timesteps
In order to benefit from the implicit PDE-solver described above the agent's time steps are chosen smaller
then the time steps of the PDE solver. However type A cells produce molecules continuously as they move
trough space. Therefore we record their positions and average over the kernel functions centered at
past positions since the last PDE evaluation. That way we avoid blurring the results of the PDE solver
too much, when the time step of the agents is reduced.
Last but not least we want to point out the relationship between kernel bandwidth and the grid on which the
PDE is solved. The larger the kernel bandwidth $h$ is chosen the coarser the PDE grid can be without loosing
cells between grid points. If the the diameter of the kernel functions is smaller then the distance between
PDE grid points it can happen, that the kernel does not overlap with any PDE grid points. In this case a cells
contribution to the molecule concentrations at the next time step could be lost. When the PDE grid is
widened to save computing time it is thus necessary to increase the Kernel bandwidth as well. However this
increase can lead to a situation where the Kernel function covers significantly more space then the actual
diameter of a bacterium. In these cases the Kernel function can be interpreted as a probability function for
a cells position. However we avoided too large bandwiths and PDE grids by running our 2-D simulations at the
Flemish Supercomputer Center (VSC).
Figure 6
Logo of the Flemish Supercomputer Center. Click to enlarge
1-D Hybrid Model
The video box above shows one dimensional simulation results for the hybrid model. A constant speed and random step
simulation has been computed. We observe that the bacteria form a traveling wave in both cases, which is essential
for pattern formation. These results are also similar to what we get from the continuous model, which confirms our
results.
2-D Hybrid Model
The videos above show simulation videos computed at the Flemish supercomputing center, for three different
initial conditions similar to the ones we used for the colony level model. The first and second condition start
from 9 mixed or 5 colonies of both cell types, arranged in a block or star shape. These first two gradually
separate in a manner similar to what we would we also saw in the colony level model. The result for random
initial data is fundamentally different. As the agent based approach allows for better implementation
of adhesion large cell type A bands form. The AHL and Leucine produced by the type A bacteria causes the
B type cells to move away leading to a pattern which we could not produce using PDEs alone, this
beautifully illustrates the added value of hybrid modeling.
Incorporation of internal model
Up until now, we have largely ignored the inner life of the bacteria. This inner life consists of transcriptional networks and protein kinetics. Instead we assumed that AHL and leucine production is directly proportional to the density of type A cells. This only works in theory, since bacteria will be affected by their surroundings and the way their dynamics react to it. For example bacteria surrounded by a large concentration of AHL, will have more CheZ and will react more on the presence of Leucine. Also bacteria have different histories and will have different levels of transcription factors and different levels of proteins in their plasma. The proteins are not directly degraded and will still be present in the cytoplasm of the bacteria long after the network has been deactivated. From this, it is clear that 2 bacteria, although surrounded by the same AHL and leucine concentrations, can show different behavior and reaction kinetics.
This results in a heterogeneity of the bacterial population that has not yet been accounted for. To make up for this anomaly, we decided to add an internal model to every agent. This way we will get more realistic simulations. Every agent will get their own levels of CheZ, LuxR, LuxI and so on and will have individual reactions on their surroundings. We hope that this way we can get closer to the behavior of real bacteria.
Benjamin Franz and Radek Erban.
Hybrid modelling of individual movement and collective behaviour.
Lecture Notes in Mathematics, 2071:129-157, 2013.
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Zaiyi Guo, Peter M A Sloot, and Joc Cing Tay.
A hybrid agent-based approach for modeling microbiological systems.
Journal of Theoretical Biology, 255(2):163-175, 2008.
[ DOI ]
E F Keller and L A Segel.
Traveling bands of chemotactic bacteria: a theoretical analysis.
Journal of theoretical biology, 30(2):235-248, 1971.
[ DOI ]