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首页> 外文期刊>Journal of biological systems >USING AN IMPROVED BEE MEMORY DIFFERENTIAL EVOLUTION ALGORITHM FOR PARAMETER ESTIMATION TO SIMULATE BIOCHEMICAL PATHWAYS
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USING AN IMPROVED BEE MEMORY DIFFERENTIAL EVOLUTION ALGORITHM FOR PARAMETER ESTIMATION TO SIMULATE BIOCHEMICAL PATHWAYS

机译:使用改进的蜜蜂记忆微分进化算法进行参数估计,以模拟生物化学途径

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摘要

When analyzing a metabolic pathway in a mathematical model, it is important that the essential parameters are estimated correctly. However, this process often faces few problems like when the number of unknown parameters increase, trapping of data in the local minima, repeated exposure to bad results during the search process and occurrence of noisy data. Thus, this paper intends to present an improved bee memory differential evolution (IBMDE) algorithm to solve the mentioned problems. This is a hybrid algorithm that combines the differential evolution (DE) algorithm, the Kalman filter, artificial bee colony (ABC) algorithm, and a memory feature. The aspartate and threonine biosynthesis pathway, and cell cycle pathway are the metabolic pathways used in this paper. For three production simulation pathways, the IBMDE managed to robustly produce the estimated optimal kinetic parameter values with significantly reduced errors. Besides, it also demonstrated faster convergence time compared to the Nelder-Mead (NM), simulated annealing (SA), the genetic algorithm (GA) and DE, respectively. Most importantly, the kinetic parameters that were generated by the IBMDE have improved the production rates of desired metabolites better than other estimation algorithms. Meanwhile, the results proved that the IBMDE is a reliable estimation algorithm.
机译:在数学模型中分析代谢途径时,重要的是正确估计基本参数。但是,此过程通常很少遇到问题,例如未知参数的数量增加,局部最小值中的数据捕获,在搜索过程中反复暴露于不良结果以及出现嘈杂的数据。因此,本文旨在提出一种改进的蜂存储器差分进化算法(IBMDE),以解决上述问题。这是一种混合算法,结合了差分进化(DE)算法,卡尔曼滤波器,人工蜂群(ABC)算法和存储功能。天门冬氨酸和苏氨酸的生物合成途径以及细胞周期途径是本文使用的代谢途径。对于三个生产模拟路径,IBMDE设法可靠地产生估计的最佳动力学参数值,并且误差大大减少。此外,与Nelder-Mead(NM),模拟退火(SA),遗传算法(GA)和DE相比,它还显示出更快的收敛时间。最重要的是,由IBMDE生成的动力学参数比其他估算算法更好地提高了所需代谢产物的生产率。同时,结果证明了IBMDE是一种可靠的估计算法。

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