A Bayesian Approach to Modelling Biological Pattern Formation with Limited Data
Pattern formation in biological tissues plays an important role in the development of living organisms. Since the classical work of Alan Turing, a pre-eminent way of modelling has been through reaction-diffusion mechanisms. More recently, alternative models have been proposed, that link dynamics of...
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Zusammenfassung: | Pattern formation in biological tissues plays an important role in the
development of living organisms. Since the classical work of Alan Turing, a
pre-eminent way of modelling has been through reaction-diffusion mechanisms.
More recently, alternative models have been proposed, that link dynamics of
diffusing molecular signals with tissue mechanics. In order to distinguish
among different models, they should be compared to experimental observations.
However, in many experimental situations only the limiting, stationary regime
of the pattern formation process is observable, without knowledge of the
transient behaviour or the initial state. The unstable nature of the underlying
dynamics in all alternative models seriously complicates model and parameter
identification, since small changes in the initial condition lead to distinct
stationary patterns. To overcome this problem the initial state of the model
can be randomised. In the latter case, fixed values of the model parameters
correspond to a family of patterns rather than a fixed stationary solution, and
standard approaches to compare pattern data directly with model outputs, e.g.,
in the least squares sense, are not suitable. Instead, statistical
characteristics of the patterns should be compared, which is difficult given
the typically limited amount of available data in practical applications. To
deal with this problem, we extend a recently developed statistical approach for
parameter identification using pattern data, the so-called Correlation Integral
Likelihood (CIL) method. We suggest modifications that allow increasing the
accuracy of the identification process without resizing the data set. The
proposed approach is tested using different classes of pattern formation
models. For all considered equations, parallel GPU-based implementations of the
numerical solvers with efficient time stepping schemes are provided. |
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DOI: | 10.48550/arxiv.2203.14742 |