96 research outputs found
Diffusion vs. direct transport in the precision of morphogen readout
Morphogen profiles allow cells to determine their position within a
developing organism, but the mechanisms behind the formation of these profiles
are still not well agreed upon. Here we derive fundamental limits to the
precision of morphogen concentration sensing for two canonical models: the
diffusion of morphogen through extracellular space and the direct transport of
morphogen from source cell to target cell, e.g. via cytonemes. We find that
direct transport establishes a morphogen profile without adding extrinsic
noise. Despite this advantage, we find that for sufficiently large values of
population size and profile length, the diffusion mechanism is many times more
precise due to a higher refresh rate of morphogen molecules. Our predictions
are supported by data from a wide variety of morphogens in developing
organisms
Fundamental limits to collective concentration sensing in cell populations
The precision of concentration sensing is improved when cells communicate.
Here we derive the physical limits to concentration sensing for cells that
communicate over short distances by directly exchanging small molecules
(juxtacrine signaling), or over longer distances by secreting and sensing a
diffusive messenger molecule (autocrine signaling). In the latter case, we find
that the optimal cell spacing can be large, due to a tradeoff between
maintaining communication strength and reducing signal cross-correlations. This
leads to the surprising result that autocrine signaling allows more precise
sensing than juxtacrine signaling for sufficiently large populations. We
compare our results to data from a wide variety of communicating cell types.Comment: 29 pages, 3 figure
Collective chemotaxis through noisy multicellular gradient sensing
Collective cell migration in response to a chemical cue occurs in many
biological processes such as morphogenesis and cancer metastasis. Clusters of
migratory cells in these systems are capable of responding to gradients of less
than 1% difference in chemical concentration across a cell length.
Multicellular systems are extremely sensitive to their environment and while
the limits to multicellular sensing are becoming known, how this information
leads to coherent migration remains poorly understood. We develop a
computational model of multicellular sensing and migration in which groups of
cells collectively measure noisy chemical gradients. The output of the sensing
process is coupled to individual cells polarization to model migratory
behavior. Through the use of numerical simulations, we find that larger
clusters of cells detect the gradient direction with higher precision and thus
achieve stronger polarization bias, but larger clusters also induce more drag
on collective motion. The trade-off between these two effects leads to an
optimal cluster size for most efficient migration. We discuss how our model
could be validated using simple, phenomenological experiments.Comment: 11 pages, 4 figures, 1 tabl
Limits to the precision of gradient sensing with spatial communication and temporal integration
Gradient sensing requires at least two measurements at different points in
space. These measurements must then be communicated to a common location to be
compared, which is unavoidably noisy. While much is known about the limits of
measurement precision by cells, the limits placed by the communication are not
understood. Motivated by recent experiments, we derive the fundamental limits
to the precision of gradient sensing in a multicellular system, accounting for
communication and temporal integration. The gradient is estimated by comparing
a "local" and a "global" molecular reporter of the external concentration,
where the global reporter is exchanged between neighboring cells. Using the
fluctuation-dissipation framework, we find, in contrast to the case when
communication is ignored, that precision saturates with the number of cells
independently of the measurement time duration, since communication establishes
a maximum lengthscale over which sensory information can be reliably conveyed.
Surprisingly, we also find that precision is improved if the local reporter is
exchanged between cells as well, albeit more slowly than the global reporter.
The reason is that while exchange of the local reporter weakens the comparison,
it decreases the measurement noise. We term such a model "regional
excitation--global inhibition" (REGI). Our results demonstrate that fundamental
sensing limits are necessarily sharpened when the need to communicate
information is taken into account.Comment: 14 pages, 4 figure
Emergent versus Individual-based Multicellular Chemotaxis
Multicellular chemotaxis can occur via individually chemotaxing cells that
are mechanically coupled. Alternatively, it can emerge collectively, from cells
chemotaxing differently in a group than they would individually. Here we
consider collective movement that emerges from cells on the exterior of the
collective responding to chemotactic signals, whereas bulk cells remain
uninvolved in sensing and directing the collective. We find that the precision
of this type of emergent chemotaxis is higher than that of individual-based
chemotaxis for one-dimensional cell chains and two-dimensional cell sheets, but
not three-dimensional cell clusters. We describe the physical origins of these
results, discuss their biological implications, and show how they can be tested
using common experimental measures such as the chemotactic index.Comment: 17 pages, 4 figures, 1 tabl
Positive feedback can lead to dynamic nanometer-scale clustering on cell membranes
Clustering of molecules on biological membranes is a widely observed
phenomenon. In some cases, such as the clustering of Ras proteins on the
membranes of mammalian cells, proper cell signaling is critically dependent on
the maintenance of these clusters. Yet, the mechanism by which clusters form
and are maintained in these systems remains unclear. Recently, it has been
discovered that activated Ras promotes further Ras activation. Here we show
using particle-based simulation that this positive feedback is sufficient to
produce persistent clusters of active Ras molecules at the nanometer scale via
a dynamic nucleation mechanism. Furthermore, we find that our cluster
statistics are consistent with experimental observations of the Ras system.
Interestingly, we show that our model does not support a Turing regime of
macroscopic reaction-diffusion patterning, and therefore that the clustering we
observe is a purely stochastic effect, arising from the coupling of positive
feedback with the discrete nature of individual molecules. These results
underscore the importance of stochastic and dynamic properties of reaction
diffusion systems for biological behavior
Spatial partitioning improves the reliability of biochemical signaling
Spatial heterogeneity is a hallmark of living systems, even at the molecular
scale in individual cells. A key example is the partitioning of membrane-bound
proteins via lipid domain formation or cytoskeleton-induced corralling. Yet the
impact of this spatial heterogeneity on biochemical signaling processes is
poorly understood. Here we demonstrate that partitioning improves the
reliability of biochemical signaling. We exactly solve a stochastic model
describing a ubiquitous motif in membrane signaling. The solution reveals that
partitioning improves signaling reliability via two effects: it moderates the
non-linearity of the switching response, and it reduces noise in the response
by suppressing correlations between molecules. An optimal partition size arises
from a trade-off between minimizing the number of proteins per partition to
improve signaling reliability and ensuring sufficient proteins per partition to
maintain signal propagation. The predicted optimal partition size agrees
quantitatively with experimentally observed systems. These results persist in
spatial simulations with explicit diffusion barriers. Our findings suggest that
molecular partitioning is not merely a consequence of the complexity of
cellular substructures, but also plays an important functional role in cell
signaling.Comment: 32 pages, 14 figure
Optimal Prediction by Cellular Signaling Networks
Living cells can enhance their fitness by anticipating environmental change.
We study how accurately linear signaling networks in cells can predict future
signals. We find that maximal predictive power results from a combination of
input-noise suppression, linear extrapolation, and selective readout of
correlated past signal values. Single-layer networks generate exponential
response kernels, which suffice to predict Markovian signals optimally.
Multilayer networks allow oscillatory kernels that can optimally predict
non-Markovian signals. At low noise, these kernels exploit the signal
derivative for extrapolation, while at high noise, they capitalize on signal
values in the past that are strongly correlated with the future signal. We show
how the common motifs of negative feedback and incoherent feed-forward can
implement these optimal response functions. Simulations reveal that E. coli can
reliably predict concentration changes for chemotaxis, and that the integration
time of its response kernel arises from a trade-off between rapid response and
noise suppression.Comment: 5 pages, 4 figures; 15 supplementary pages with 12 figure
Prediction and Dissipation in Biochemical Sensing
Cells sense and predict their environment via energy-dissipating pathways.
However, it is unclear whether dissipation helps or harms prediction. Here we
study dissipation and prediction for a minimal sensory module of receptors that
reversibly bind ligand. We find that the module performs short-term prediction
optimally when operating in an adiabatic regime where dissipation vanishes. In
contrast, beyond a critical forecast interval, prediction becomes most precise
in a regime of maximal dissipation, suggesting that dissipative sensing in
biological systems can serve to enhance prediction performance.Comment: 9 pages, 5 figure
Effects of cell-cell adhesion on migration of multicellular clusters
Collections of cells exhibit coherent migration during morphogenesis, cancer
metastasis, and wound healing. In many cases, bigger clusters split, smaller
sub-clusters collide and reassemble, and gaps continually emerge. The
connections between cell-level adhesion and cluster-level dynamics, as well as
the resulting consequences for cluster properties such as migration velocity,
remain poorly understood. Here we investigate collective migration of one- and
two-dimensional cell clusters that collectively track chemical gradients using
a mechanism based on contact inhibition of locomotion. We develop both a
minimal description based on the lattice gas model of statistical physics, and
a more realistic framework based on the cellular Potts model which captures
cell shape changes and cluster rearrangement. In both cases, we find that cells
have an optimal adhesion strength that maximizes cluster migration speed. The
optimum negotiates a tradeoff between maintaining cell-cell contact and
maintaining cluster fluidity, and we identify maximal variability in the
cluster aspect ratio as a revealing signature. Our results suggest a collective
benefit for intermediate cell-cell adhesion.Comment: 10 pages, 6 figure
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