Techniques for analysing pattern formation in populations of stem cells and their progeny
Authored by Helen M Byrne, John A Fozard, Glen R Kirkham, Lee D K Buttery, John R King, Oliver E Jensen
Date Published: 2011
DOI: 10.1186/1471-2105-12-396
Sponsors:
No sponsors listed
Platforms:
C
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
https://www-ncbi-nlm-nih-gov.ezproxy1.lib.asu.edu/pmc/articles/PMC3252362/bin/1471-2105-12-396-S1.ZIP
Abstract
Background: To investigate how patterns of cell differentiation are
related to underlying intra- and inter-cellular signalling pathways, we
use a stochastic individual-based model to simulate pattern formation
when stem cells and their progeny are cultured as a monolayer. We assume
that the fate of an individual cell is regulated by the signals it
receives from neighbouring cells via either diffusive or juxtacrine
signalling. We analyse simulated patterns using two different spatial
statistical measures that are suited to planar multicellular systems:
pair correlation functions (PCFs) and quadrat histograms (QHs).
Results: With a diffusive signalling mechanism, pattern size (revealed
by PCFs) is determined by both morphogen decay rate and a sensitivity
parameter that determines the degree to which morphogen biases
differentiation; high sensitivity and slow decay give rise to
large-scale patterns. In contrast, with juxtacrine signalling, high
sensitivity produces well-defined patterns over shorter lengthscales.
QHs are simpler to compute than PCFs and allow us to distinguish between
random differentiation at low sensitivities and patterned states
generated at higher sensitivities.
Conclusions: PCFs and QHs together provide an effective means of
characterising emergent patterns of differentiation in planar
multicellular aggregates.
Tags
lateral inhibition
Dynamics
Extracellular-matrix
Systems
biology
Fate
Osteogenic differentiation
Lineage-commitment
Gradient formation
Mesenchymal cells
Vertebrate limb