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Efficient Optimization of Stimuli for Model-Based Design of Experiments to Resolve Dynamical Uncertainty

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TLDR
This work identifies data-consistent representative parameters using sparse grid interpolants, constructs the optimal input sequence from a greedy search, and defines the associated optimal measurements using a scenario tree and suggests that the ability to design an input sequence paired with its associated measurements is particularly important when limited by the number of measurements.
Abstract
This model-based design of experiments (MBDOE) method determines the input magnitudes of an experimental stimuli to apply and the associated measurements that should be taken to optimally constrain the uncertain dynamics of a biological system under study. The ideal global solution for this experiment design problem is generally computationally intractable because of parametric uncertainties in the mathematical model of the biological system. Others have addressed this issue by limiting the solution to a local estimate of the model parameters. Here we present an approach that is independent of the local parameter constraint. This approach is made computationally efficient and tractable by the use of: (1) sparse grid interpolation that approximates the biological system dynamics, (2) representative parameters that uniformly represent the data-consistent dynamical space, and (3) probability weights of the represented experimentally distinguishable dynamics. Our approach identifies data-consistent representative parameters using sparse grid interpolants, constructs the optimal input sequence from a greedy search, and defines the associated optimal measurements using a scenario tree. We explore the optimality of this MBDOE algorithm using a 3-dimensional Hes1 model and a 19-dimensional T-cell receptor model. The 19-dimensional T-cell model also demonstrates the MBDOE algorithm’s scalability to higher dimensions. In both cases, the dynamical uncertainty region that bounds the trajectories of the target system states were reduced by as much as 86% and 99% respectively after completing the designed experiments in silico. Our results suggest that for resolving dynamical uncertainty, the ability to design an input sequence paired with its associated measurements is particularly important when limited by the number of measurements.

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Citations
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Journal ArticleDOI

The Limitations of Model-Based Experimental Design and Parameter Estimation in Sloppy Systems.

TL;DR: The limits of accurate parameter estimation in sloppy systems are explored and it is argued that identifying underlying mechanisms controlling system behavior is better approached by considering a hierarchy of models of varying detail rather than focusing on parameters estimation in a single model.
Journal ArticleDOI

New opportunities for optimal design of dynamic experiments in systems and synthetic biology

TL;DR: This work reviews developments and illustrates how the convergence of these approaches facilitates the construction of accurate biological models of both natural and engineered cellular systems.
Journal ArticleDOI

Optimal Experimental Design for Parameter Estimation of an IL-6 Signaling Model

TL;DR: In this paper, optimal experimental design is utilized to reduce the parameter uncertainty of an IL-6 signaling model consisting of ordinary differential equations, thereby increasing the accuracy of the estimated parameter values and, potentially, the model itself.
Journal ArticleDOI

Multi-Objective Optimization of Experiments Using Curvature and Fisher Information Matrix

TL;DR: This work developed a multi-objective optimization (MOO) MBDOE, for which the model nonlinearity was taken into consideration through the use of curvature, and demonstrated the advantages over existing FIM-based and other curvature-based MBDOEs in an application to the kinetic modeling of fed-batch fermentation of baker’s yeast.
Journal ArticleDOI

A scalable method for parameter identification in kinetic models of metabolism using steady-state data.

TL;DR: This work presents a scalable methodology to structurally identify parameters for each flux in a kinetic model of metabolism based on the availability of steady state data that can be used in combination with other identifiability and experimental design algorithms that use dynamic data to determine the most informative experiments requiring the least resources to perform.
References
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Model selection

H Linhart, +1 more
Journal ArticleDOI

Model-based design of experiments for parameter precision: State of the art

TL;DR: An overview and critical analysis of the state of the art in this sector are proposed and the main contributions to model-based experiment design procedures in terms of novel criteria, mathematical formulations and numerical implementations are highlighted.
Journal ArticleDOI

Optimal input signals for parameter estimation in dynamic systems--Survey and new results

TL;DR: This paper surveys the field of optimal input design for parameter estimation as it has developed over the last two decades, with a derivation of the Fisher information matrix for multiinput multioutput systems with process noise.
Journal ArticleDOI

Simulation-based optimal Bayesian experimental design for nonlinear systems

TL;DR: This work proposes a general mathematical framework and an algorithmic approach for optimal experimental design with nonlinear simulation-based models, and focuses on finding sets of experiments that provide the most information about targeted sets of parameters.
Journal ArticleDOI

Systems biology: experimental design

TL;DR: In this minireview, the existing approaches concerning this optimization for parameter estimation and model discrimination are summarized and relevant classical aspects of experimental design, such as randomization, replication and confounding, are reviewed.
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