Alzahrani Dalal Y, Siam F M, Abdullah F A
Department of Mathematical Sciences, Faculty of Science, Universiti Teknologi Malaysia, 81310, Johor Bahru, Malaysia.
Department of Mathematics, Faculty of Science, Al Baha University, Baljurashi, Saudi Arabia.
Interdiscip Sci. 2025 Aug 3. doi: 10.1007/s12539-025-00736-0.
Despite the current developments in mathematical modelling of biological process, some phenomena such as those encountered with the aspects of cell populations remain poorly understood. Fractional differential equations (FDEs) recently have received a significant amount of attention and demonstrated its rigor in representing real-world problems as opposed to traditional differential equations. In the present work, a systematic investigation using a mathematical approach dealing with the effects of ionizing radiation and using FDEs is proposed to illuminate some biological properties of the cell populations. For this purpose, the theoretical revelation of the cells population memory was treated within the context of FDEs, where the Mittag-Leffler function and Caputo derivatives are used to consider genetic potentials and memory traces. The model verification based on the parameter estimation algorithms is then accomplished by the implementation of two evolutionary hybrid optimization methods, namely the genetic algorithm-sequential quadratic programming (GA-SQP) and the particle swarm optimization-sequential quadratic programming (PSO-SQP). These algorithms have recently gained prominence as they present a practical approach to managing cell populations as well as their ability to effectively estimate the quality of the proposed solution by achieving the optimal solution. Insights and knowledge derived from the optimization of the objective function used in these two algorithms, whether through maximization or minimization, significantly contribute to the enhancement of evolutionary computation within the same cell population. The performance of these two algorithms is illustrated by determining the difference between the optimal results determined from GA-SQP and PSO-SQP algorithms. Both Control data and Bismuth Oxide Nanoparticles (BIONPS) survival experimental data are used. The reliability of the algorithms is elucidated based on the number of iterations, the computational time as well as the sum of squared error values. The linear quadratic method is used for treating the evolutionary computation of the cell population. By contrasting the theoretical findings with experimental results, it turns out that both PSO-SQP and GA-SQP optimization methods provide a correlation value close to experimental data and the estimated survival data. This emerging methodology reliably demonstrates the capability of the model to accurately fit the experimental data. Interestingly, a greater efficiency and effectiveness of the proposed PSO-SQP algorithm than the GA-SQP algorithm is observed suggesting hence the superiority of the PSO-SQP algorithm for determining the most realistic estimates of all the six model parameters studied herein.
尽管目前生物过程的数学建模有了新进展,但一些现象,如细胞群体方面遇到的现象,仍未得到充分理解。分数阶微分方程(FDEs)最近受到了大量关注,并在表示现实世界问题方面展现出相较于传统微分方程的严谨性。在本研究中,提出了一种使用数学方法处理电离辐射影响并采用FDEs的系统研究,以阐明细胞群体的一些生物学特性。为此,在FDEs的背景下探讨了细胞群体记忆的理论揭示,其中米塔格 - 莱夫勒函数和卡普托导数用于考虑遗传潜力和记忆痕迹。基于参数估计算法的模型验证随后通过两种进化混合优化方法实现,即遗传算法 - 序列二次规划(GA - SQP)和粒子群优化 - 序列二次规划(PSO - SQP)。这些算法最近受到关注,因为它们提供了一种管理细胞群体的实用方法,以及通过获得最优解有效估计所提解决方案质量的能力。从这两种算法中用于优化目标函数所获得的见解和知识,无论是通过最大化还是最小化,都显著有助于增强同一细胞群体内的进化计算。通过确定GA - SQP和PSO - SQP算法确定的最优结果之间的差异来说明这两种算法的性能。同时使用了对照数据和氧化铋纳米颗粒(BIONPs)存活实验数据。基于迭代次数、计算时间以及平方误差值之和来阐明算法的可靠性。线性二次方法用于处理细胞群体的进化计算。通过将理论结果与实验结果对比发现,PSO - SQP和GA - SQP优化方法都提供了与实验数据和估计存活数据接近的相关值。这种新兴方法可靠地证明了该模型准确拟合实验数据的能力。有趣的是,观察到所提PSO - SQP算法比GA - SQP算法具有更高的效率和有效性,这表明PSO - SQP算法在确定本文研究的所有六个模型参数的最现实估计方面具有优越性。