Hierarchical optimization for the efficient parametrization of ODE models

高效参数化常微分方程模型的分层优化

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Abstract

MOTIVATION: Mathematical models are nowadays important tools for analyzing dynamics of cellular processes. The unknown model parameters are usually estimated from experimental data. These data often only provide information about the relative changes between conditions, hence, the observables contain scaling parameters. The unknown scaling parameters and corresponding noise parameters have to be inferred along with the dynamic parameters. The nuisance parameters often increase the dimensionality of the estimation problem substantially and cause convergence problems. RESULTS: In this manuscript, we propose a hierarchical optimization approach for estimating the parameters for ordinary differential equation (ODE) models from relative data. Our approach restructures the optimization problem into an inner and outer subproblem. These subproblems possess lower dimensions than the original optimization problem, and the inner problem can be solved analytically. We evaluated accuracy, robustness and computational efficiency of the hierarchical approach by studying three signaling pathways. The proposed approach achieved better convergence than the standard approach and required a lower computation time. As the hierarchical optimization approach is widely applicable, it provides a powerful alternative to established approaches. AVAILABILITY AND IMPLEMENTATION: The code is included in the MATLAB toolbox PESTO which is available at http://github.com/ICB-DCM/PESTO. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

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