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Fractal Physiology and the Fractional Calculus: A Perspective

机译:分形生理学和分数微积分:一个角度

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摘要

This paper presents a restricted overview of Fractal Physiology focusing on the complexity of the human body and the characterization of that complexity through fractal measures and their dynamics, with fractal dynamics being described by the fractional calculus. Not only are anatomical structures (Grizzi and Chiriva-Internati, ), such as the convoluted surface of the brain, the lining of the bowel, neural networks and placenta, fractal, but the output of dynamical physiologic networks are fractal as well (Bassingthwaighte et al., ). The time series for the inter-beat intervals of the heart, inter-breath intervals and inter-stride intervals have all been shown to be fractal and/or multifractal statistical phenomena. Consequently, the fractal dimension turns out to be a significantly better indicator of organismic functions in health and disease than the traditional average measures, such as heart rate, breathing rate, and stride rate. The observation that human physiology is primarily fractal was first made in the 1980s, based on the analysis of a limited number of datasets. We review some of these phenomena herein by applying an allometric aggregation approach to the processing of physiologic time series. This straight forward method establishes the scaling behavior of complex physiologic networks and some dynamic models capable of generating such scaling are reviewed. These models include simple and fractional random walks, which describe how the scaling of correlation functions and probability densities are related to time series data. Subsequently, it is suggested that a proper methodology for describing the dynamics of fractal time series may well be the fractional calculus, either through the fractional Langevin equation or the fractional diffusion equation. A fractional operator (derivative or integral) acting on a fractal function, yields another fractal function, allowing us to construct a fractional Langevin equation to describe the evolution of a fractal statistical process. Control of physiologic complexity is one of the goals of medicine, in particular, understanding and controlling physiological networks in order to ensure their proper operation. We emphasize the difference between homeostatic and allometric control mechanisms. Homeostatic control has a negative feedback character, which is both local and rapid. Allometric control, on the other hand, is a relatively new concept that takes into account long-time memory, correlations that are inverse power law in time, as well as long-range interactions in complex phenomena as manifest by inverse power-law distributions in the network variable. We hypothesize that allometric control maintains the fractal character of erratic physiologic time series to enhance the robustness of physiological networks. Moreover, allometric control can often be described using the fractional calculus to capture the dynamics of complex physiologic networks.
机译:本文对分形生理学进行了有限的概述,其重点是人体的复杂性以及通过分形度量及其动力学来表征这种复杂性,其中分形动力学由分数演算来描述。不仅是解剖结构(Grizzi和Chiriva-Internati,),例如大脑的曲面,肠壁,神经网络和胎盘,分形,而且动态生理网络的输出也是分形的(Bassingthwaighte等)等)。心脏的心跳间隔,呼吸间隔和步幅间隔的时间序列都已显示为分形和/或多重分形统计现象。因此,与传统的平均测量方法(例如心率,呼吸频率和步幅)相比,分形维数是健康和疾病中机体功能的更好指标。关于人类生理学主要是分形的观察是在1980年代首次进行的,它是基于对有限数量的数据集的分析。我们在本文中通过将异速聚合方法应用于生理时间序列的处理来回顾其中的一些现象。这种简单的方法建立了复杂生理网络的缩放行为,并对一些能够产生这种缩放的动态模型进行了回顾。这些模型包括简单的和随机的随机游动,它们描述了相关函数的缩放比例和概率密度如何与时间序列数据相关。随后,建议通过分数兰格文方程或分数扩散方程来描述分数时间序列动力学的适当方法很可能是分数演算。作用于分形函数的分数算子(导数或积分)产生另一个分形函数,从而使我们能够构造分数Langevin方程来描述分形统计过程的演化。控制生理复杂性是医学的目标之一,尤其是理解和控制生理网络以确保其正常运行。我们强调稳态和异位控制机制之间的差异。稳态控制具有局部和快速的负反馈特性。另一方面,异速控制是一个相对较新的概念,它考虑到了长期记忆,时间上逆幂定律的相关性以及复杂现象中的长距离相互作用,这些现象通过逆幂定律分布体现出来。网络变量。我们假设异速控制保持不稳定的生理时间序列的分形特征,以增强生理网络的鲁棒性。此外,通常可以使用分数演算来描述异速控制,以捕获复杂生理网络的动态。

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