入侵过程和流行病COVID波建模中的预测计算结构和混合自动化

IF 1.1 4区 物理与天体物理 Q4 PHYSICS, APPLIED
A. Yu. Perevaryukha
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引用次数: 0

摘要

细胞生物物理学、入侵或流行病学领域的快速过程以其变体的多样性来区分;因此,他们需要原始的数学描述方法来长期预测生物物理系统的状态。没有对生物物理相互作用的动力学进行预测,就不可能改进对自然物体进行工业开发的技术。基于微分方程系统的经典模型不能描述外来物种侵略性入侵期间观察到的真实过程的动力学。已知的“捕食者/猎物”系统模型假设了两个竞争物种的周期性动力学,但实际上,模型方程的振荡解只是一个数学假设。在真实的生物系统中,引入进攻性捕食者或寄生虫后,发展情景的变体更为复杂。入侵期间的动态变得极端。在对纤毛虫的实验室实验中,注入的捕食者在一次快速爆发后完全摧毁了整个猎物种群,而不是与猎物进行异步振荡。突变的过程是非常相关的,例如,在冠状病毒新毒株抗原呈递期间产生免疫反应,以及激活免疫记忆杀伤细胞的特异性t淋巴细胞以破坏感染细胞。在我们的工作中,极端发展的建模是基于在研究过程的突变阶段中选择的多事性和可变性方面,例如,寄生虫对繁殖入侵者的适应,这是对抗入侵的重要方式。对于快速变化的生物物理过程,我们提出用事件性、延迟、触发切换和切换发展阶段逻辑的成分来扩展微分方程模型。在此之前,我们提出了混合模型中连续-离散时间事件层次结构的原始形式化。在本文中,我们将介绍一种在模型中包含谓词的方法,即允许我们计算入侵过程行为中的变化序列的逻辑函数。我们的预测逻辑方法对于基于情景比较分析的COVID-19流行的危险和快速侵入过程和波的转换计算建模非常重要。基于对一组微分方程系统的右侧定义的混合自动机行为的预测选择,我们还形式化了对生物系统具有受控影响的场景下的决策逻辑。covid - 19后的免疫缺陷是大流行留下的最复杂的遗产。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicative Computing Structures and Hybrid Automates in Modeling Invasive Processes and Epidemic COVID Waves

Predicative Computing Structures and Hybrid Automates in Modeling Invasive Processes and Epidemic COVID Waves

Rapid processes in the area of cell biophysics, invasions, or epidemiology are distinguished by the variety of their variants; therefore, they require original methods of mathematical description for long-term prediction of the state of biophysical systems. Without building predictions of the dynamics of biophysical interaction, it is impossible to improve the technology of industrial exploitation of natural objects. Classical models based on systems of differential equations do not describe the dynamics of real processes that are observed during aggressive invasions of alien species. Known models of “predator/prey” systems assumed the cyclical dynamics of two rival species, but in reality, the oscillatory solution of the model’s equations is only a mathematical hypothesis. In real biosystems, the variants for the development of scenarios after the introduction of an aggressive predator or parasite are more complicated. Dynamics during invasions becomes extreme. In laboratory experiments with ciliates, instead of asynchronous oscillations with the prey, the infused predator after a rapid outbreak completely destroyed the entire population of prey. Processes with abrupt metamorphoses are extremely relevant, for example, the development of an immune response during the presentation of antigens of new strains of coronavirus and the activation of specific T-lymphocytes of immune memory killer cells to destroy infected cells. Modeling of extreme development in our works is based on the aspects of eventfulness and variability of choice during abrupt changes in the stages of the process under study, for example, adaptation of a parasite against a breeding invader, which is an important way to combat invasions. For rapidly changing biophysical processes, we proposed to expand the models in differential equations with the components of eventfulness, delay, trigger switching, and the logic of switching stages of development. Previously, we proposed an original formalization of the event hierarchy for continuous-discrete time in a hybrid model. In the article, we will present a method for including predicates in the model, i.e., logical functions that allow us to calculate the sequence of changes in the behavior of the invasive process. Our predictive logic approach is important for computational modeling with transformations in dangerous and fast invasive processes and waves of the COVID-19 epidemic based on a comparative analysis of scenarios. Based on the predicative choice of the behavior of a hybrid automaton defined for a set of right-hand sides of systems of differential equations, we also formalize the decision-making logic in scenarios with a controlled impact on biosystems. Post-COVID immunodeficiency is the most complex legacy of the pandemic.

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来源期刊
Technical Physics
Technical Physics 物理-物理:应用
CiteScore
1.30
自引率
14.30%
发文量
139
审稿时长
3-6 weeks
期刊介绍: Technical Physics is a journal that contains practical information on all aspects of applied physics, especially instrumentation and measurement techniques. Particular emphasis is put on plasma physics and related fields such as studies of charged particles in electromagnetic fields, synchrotron radiation, electron and ion beams, gas lasers and discharges. Other journal topics are the properties of condensed matter, including semiconductors, superconductors, gases, liquids, and different materials.
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