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Dynamic Optimization with Particle Swarms (DOPS): a meta-heuristic for parameter estimation in biochemical models
Authors:Adithya Sagar  Rachel LeCover  Christine Shoemaker  Jeffrey Varner
Institution:1.Robert Fredrick Smith School of Chemical and Biomolecular Engineering, Cornell University,Ithaca,USA;2.School of Civil and Environmental Engineering,Ithaca,USA
Abstract:

Background

Mathematical modeling is a powerful tool to analyze, and ultimately design biochemical networks. However, the estimation of the parameters that appear in biochemical models is a significant challenge. Parameter estimation typically involves expensive function evaluations and noisy data, making it difficult to quickly obtain optimal solutions. Further, biochemical models often have many local extrema which further complicates parameter estimation. Toward these challenges, we developed Dynamic Optimization with Particle Swarms (DOPS), a novel hybrid meta-heuristic that combined multi-swarm particle swarm optimization with dynamically dimensioned search (DDS). DOPS uses a multi-swarm particle swarm optimization technique to generate candidate solution vectors, the best of which is then greedily updated using dynamically dimensioned search.

Results

We tested DOPS using classic optimization test functions, biochemical benchmark problems and real-world biochemical models. We performed \(\mathcal {T}\) = 25 trials with \(\mathcal {N}\) = 4000 function evaluations per trial, and compared the performance of DOPS with other commonly used meta-heuristics such as differential evolution (DE), simulated annealing (SA) and dynamically dimensioned search (DDS). On average, DOPS outperformed other common meta-heuristics on the optimization test functions, benchmark problems and a real-world model of the human coagulation cascade.

Conclusions

DOPS is a promising meta-heuristic approach for the estimation of biochemical model parameters in relatively few function evaluations. DOPS source code is available for download under a MIT license at http://www.varnerlab.org.
Keywords:
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