Automated parameter estimation for biological models using Bayesian statistical model checking
Authored by Faraz Hussain, Christopher J Langmead, Qi Mi, Joyeeta Dutta-Moscato, Yoram Vodovotz, Sumit K Jha
Date Published: 2015
DOI: 10.1186/1471-2105-16-s17-s8
Sponsors:
United States National Institutes of Health (NIH)
Air Force Research
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Abstract
Background: Probabilistic models have gained widespread acceptance in
the systems biology community as a useful way to represent complex
biological systems. Such models are developed using existing knowledge
of the structure and dynamics of the system, experimental observations, and inferences drawn from statistical analysis of empirical data. A key
bottleneck in building such models is that some system variables cannot
be measured experimentally. These variables are incorporated into the
model as numerical parameters. Determining values of these parameters
that justify existing experiments and provide reliable predictions when
model simulations are performed is a key research problem. Domain
experts usually estimate the values of these parameters by fitting the
model to experimental data. Model fitting is usually expressed as an
optimization problem that requires minimizing a cost-function which
measures some notion of distance between the model and the data. This
optimization problem is often solved by combining local and global
search methods that tend to perform well for the specific application
domain. When some prior information about parameters is available, methods such as Bayesian inference are commonly used for parameter
learning. Choosing the appropriate parameter search technique requires
detailed domain knowledge and insight into the underlying system.
Results: Using an agent-based model of the dynamics of acute
inflammation, we demonstrate a novel parameter estimation algorithm by
discovering the amount and schedule of doses of bacterial
lipopolysaccharide that guarantee a set of observed clinical outcomes
with high probability. We synthesized values of twenty-eight unknown
parameters such that the parameterized model instantiated with these
parameter values satisfies four specifications describing the dynamic
behavior of the model.
Conclusions: We have developed a new algorithmic technique for
discovering parameters in complex stochastic models of biological
systems given behavioral specifications written in a formal mathematical
logic. Our algorithm uses Bayesian model checking, sequential hypothesis
testing, and stochastic optimization to automatically synthesize
parameters of probabilistic biological models.
Tags
Simulation
Acute inflammatory response
Reduced mathematical-model
Systems
biology
Biochemical pathways
Dynamical-systems