Studying the Logistic Model

Jacob D. Baxley, David E. Lambert, P. Grigolini
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Abstract

Several studies have used the logistic equation to model the growth of cancer cell populations 1 as seen in Eq. ( 1 ). This has included correlated multiplicative, [Formula: see text] and additive, [Formula: see text], noise terms. These noise terms can affect the growth rate, [Formula: see text], and death rate, [Formula: see text], of tumor cells and can be induced from factors such as radiotherapy or other cancer treatments. Depending on the intensity of the noise the terms, the fluctuations can induce a phase transition. Noise-induced transitions of nonlinear stochastic systems have applications in the fields of physics, chemistry and biology. [Formula: see text] We study the logistic differential equation with a multiplicative noise term before and at phase transition. Computational methods used to investigate this cancer cell model include a Diffusion Entropy Analysis method and a waiting time distribution method. 2 , 3 , 4 DEA will establish the scaling of a simulated series without altering the data through detrending. We hypothesize the treatment that causes a phase transition in the logistic model will induce tumor extinction and management. Understanding how to better evaluate and study cancer cell growth models will assist in assessing the efficacy of cancer treatments. Future work will include running simulations with a modified DEA method that includes the use of stripes. 2 For better statistics, the code will be adopted to run ensembles of simulated data instead of a single series. Generating and analyzing these large datasets can be computationally expensive. Through multiprocessing and the use of a supercomputer, we believe these computational limitations can be overcome.
Logistic模型研究
有几项研究使用logistic方程来模拟癌细胞群的生长,如Eq.(1)所示。这包括相关乘法,[公式:见文本]和加法,[公式:见文本],噪声项。这些噪声项可影响肿瘤细胞的生长率[公式:见文]和死亡率[公式:见文],并可由放射治疗或其他癌症治疗等因素引起。根据噪声的强度,波动可以引起相变。非线性随机系统的噪声诱导跃迁在物理、化学和生物学等领域都有广泛的应用。[公式:见文]我们研究了在相变前和相变时具有乘性噪声项的logistic微分方程。用于研究这种癌细胞模型的计算方法包括扩散熵分析法和等待时间分布法。2,3,4 DEA将在不通过去趋势改变数据的情况下建立模拟序列的尺度。我们假设在logistic模型中引起相变的治疗将诱导肿瘤的消失和管理。了解如何更好地评估和研究癌细胞生长模型将有助于评估癌症治疗的疗效。未来的工作将包括使用改进的DEA方法进行模拟,其中包括使用条纹。2为了更好的统计,将采用该代码运行模拟数据的集合,而不是单个序列。生成和分析这些大型数据集在计算上是非常昂贵的。通过多处理和超级计算机的使用,我们相信这些计算限制可以被克服。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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3 weeks
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