About
Systems Biology models often have numerous parameters, such as kinetic constants, decay rates and drift/diffusion terms, which are unknown or only weakly constrained by existing experimental knowledge. A crucial problem for Systems Biology is that these parameters are often very difficult to measure directly. Furthermore, they may vary greatly according to their in vivo context. As a result, methods for the estimation of these parameters are of great interest. Standard approaches include maximum likelihood or least squares methods, using various optimisation heuristics such as simulated annealing and evolutionary algorithms. Although these approaches have had some success, it is very difficult to estimate the parameters when there are many interactions in the system under consideration. In this case the likelihood surface may have many local optima, the parameters may be poorly determined because there is not enough data, or there may be ambiguities brought about by symmetries or redundancy in the system.
These same issues arise in machine learning. However, the problems in Systems Biology have an additional facet. In machine learning the models of interest are typically general function approximators, whereas in Systems Biology models are intended to provide a mechanistic description of the system, often using ordinary or stochastic differential equations.
Recently, attention in machine learning and statistical inference has turned to parameter estimation in these models. The main goal of this workshop is to bridge the divide between the fields by bringing together experts in machine learning and statistics with systems biologists and bioinformaticians.
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Uploaded videos:
Invited talks
Benchmarking parameter estimation and reverse engineering strategies
Apr 04, 2007
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7549 Views
Model Reduction for Parameter Estimation
Apr 04, 2007
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6551 Views
Bayesian Inference for Systems Biological Models via a Diffusion Approximation
Apr 04, 2007
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5213 Views
Reaction and Diffusion on Fractal Sets
Apr 04, 2007
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8303 Views
Lectures
Conservation Laws and Identifiability of Models for Cellular Metabolism
Apr 04, 2007
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5076 Views
Experimental Design for Efficient Identification of Gene Regulatory Networks usi...
Apr 04, 2007
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5863 Views
Reconstructing Transcriptional Networks using Bayesian State Space Model
Apr 04, 2007
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5304 Views
Modelling Transcriptional Regulation with Gaussian Processes
Apr 04, 2007
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5214 Views
Parameter Estimation of ODE's with Regression Splines: Application to Biological...
Apr 04, 2007
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8652 Views
Identifiability of Delay Parameters for Nonlinear Time-delay Systems with Applic...
Apr 04, 2007
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421171 Views
Dynamic Modelling of Microarray Data
Apr 04, 2007
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6232 Views
Maximum Likelihood Estimation for a Gene Regulatory Network Defined by Different...
Apr 04, 2007
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8349 Views
System Identification of Enzymatic Control Processes Using Population Monte Carl...
Apr 04, 2007
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6957 Views
Estimating Parameters and Hidden Variables in a Non-linear State-space Model of ...
Apr 04, 2007
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7517 Views
Spatiotemporal Modelling of Intracellular Signalling in Bacterial Chemotaxis
Apr 04, 2007
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5774 Views
Debate
Debate about future meetings
Apr 05, 2007
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3234 Views