Shakeri Ehsan, Latif-Shabgahi Gholamreza, Esmaeili Abharian Amir
Faculty of Electrical Engineering, Shahid Beheshti University, Abbaspour Campus, Tehran, Iran.
Department of Electrical Engineering, Garmsar Branch, Islamic Azad University, Garmsar, Iran.
IET Syst Biol. 2018 Apr;12(2):73-82. doi: 10.1049/iet-syb.2017.0032.
In recent years, many efforts have been made to present optimal strategies for cancer therapy through the mathematical modelling of tumour-cell population dynamics and optimal control theory. In many cases, therapy effect is included in the drift term of the stochastic Gompertz model. By fitting the model with empirical data, the parameters of therapy function are estimated. The reported research works have not presented any algorithm to determine the optimal parameters of therapy function. In this study, a logarithmic therapy function is entered in the drift term of the Gompertz model. Using the proposed control algorithm, the therapy function parameters are predicted and adaptively adjusted. To control the growth of tumour-cell population, its moments must be manipulated. This study employs the probability density function (PDF) control approach because of its ability to control all the process moments. A Fokker-Planck-based non-linear stochastic observer will be used to determine the PDF of the process. A cost function based on the difference between a predefined desired PDF and PDF of tumour-cell population is defined. Using the proposed algorithm, the therapy function parameters are adjusted in such a manner that the cost function is minimised. The existence of an optimal therapy function is also proved. The numerical results are finally given to demonstrate the effectiveness of the proposed method.
近年来,人们通过肿瘤细胞群体动力学的数学建模和最优控制理论,为癌症治疗提出了许多优化策略。在许多情况下,治疗效果包含在随机Gompertz模型的漂移项中。通过将模型与经验数据拟合,估计治疗函数的参数。已报道的研究工作尚未提出任何确定治疗函数最优参数的算法。在本研究中,将对数治疗函数引入Gompertz模型的漂移项中。使用所提出的控制算法,预测并自适应调整治疗函数参数。为了控制肿瘤细胞群体的生长,必须操纵其矩。由于其能够控制所有过程矩,本研究采用概率密度函数(PDF)控制方法。将使用基于福克 - 普朗克的非线性随机观测器来确定过程的PDF。定义一个基于预定义期望PDF与肿瘤细胞群体PDF之间差异的代价函数。使用所提出的算法,以使代价函数最小化的方式调整治疗函数参数。还证明了最优治疗函数的存在性。最后给出数值结果以证明所提方法的有效性。