A modified particle swarm optimization algorithm for parameter estimation of a biological system.

Raziyeh Mosayebi, Fariba Bahrami
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引用次数: 6

Abstract

Background: Mathematical modeling has achieved a broad interest in the field of biology. These models represent the associations among the metabolism of the biological phenomenon with some mathematical equations such that the observed time course profile of the biological data fits the model. However, the estimation of the unknown parameters of the model is a challenging task. Many algorithms have been developed for parameter estimation, but none of them is entirely capable of finding the best solution. The purpose of this paper is to develop a method for precise estimation of parameters of a biological model.

Methods: In this paper, a novel particle swarm optimization algorithm based on a decomposition technique is developed. Then, its root mean square error is compared with simple particle swarm optimization, Iterative Unscented Kalman Filter and Simulated Annealing algorithms for two different simulation scenarios and a real data set related to the metabolism of CAD system.

Results: Our proposed algorithm results in 54.39% and 26.72% average reduction in root mean square error when applied to the simulation and experimental data, respectively.

Conclusion: The results show that the metaheuristic approaches such as the proposed method are very wise choices for finding the solution of nonlinear problems with many unknown parameters.

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一种用于生物系统参数估计的改进粒子群算法。
背景:数学建模在生物学领域引起了广泛的兴趣。这些模型用一些数学方程来表示生物现象的代谢之间的联系,使观察到的生物数据的时间过程曲线与模型相拟合。然而,模型中未知参数的估计是一项具有挑战性的任务。已经开发了许多用于参数估计的算法,但它们都不能完全找到最佳解。本文的目的是发展一种精确估计生物模型参数的方法。方法:提出了一种基于分解技术的粒子群优化算法。然后,针对两种不同的仿真场景和CAD系统代谢相关的真实数据集,将其与简单粒子群算法、迭代无气味卡尔曼滤波算法和模拟退火算法的均方根误差进行了比较。结果:本文提出的算法对仿真数据和实验数据的均方根误差平均降低54.39%和26.72%。结论:本文所提出的元启发式方法是求解具有许多未知参数的非线性问题的明智选择。
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来源期刊
Theoretical Biology and Medical Modelling
Theoretical Biology and Medical Modelling MATHEMATICAL & COMPUTATIONAL BIOLOGY-
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审稿时长
6-12 weeks
期刊介绍: Theoretical Biology and Medical Modelling is an open access peer-reviewed journal adopting a broad definition of "biology" and focusing on theoretical ideas and models associated with developments in biology and medicine. Mathematicians, biologists and clinicians of various specialisms, philosophers and historians of science are all contributing to the emergence of novel concepts in an age of systems biology, bioinformatics and computer modelling. This is the field in which Theoretical Biology and Medical Modelling operates. We welcome submissions that are technically sound and offering either improved understanding in biology and medicine or progress in theory or method.
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