Inserm, U1172-LilNCog-Lille Neuroscience & Cognition, University of Lille, Lille, France.
Department of Nuclear Medicine, Lille University Medical Centre, Lille, France.
Adv Neurobiol. 2024;36:79-93. doi: 10.1007/978-3-031-47606-8_4.
The characteristics of biomedical signals are not captured by conventional measures like the average amplitude of the signal. The methodologies derived from fractal geometry have been a very useful approach to study the degree of irregularity of a signal. The monofractal analysis of a signal is defined by a single power-law exponent in assuming a scale invariance in time and space. However, temporal and spatial variation in the scale-invariant structure of the biomedical signal often appears. In this case, multifractal analysis is well-suited because it is defined by a multifractal spectrum of power-law exponents. There are several approaches to the implementation of this analysis, and there are numerous ways to present these.In this chapter, we review the use of multifractal analysis for the purpose of characterizing signals in neuroimaging. After describing the tenets of multifractal analysis, we present several approaches to estimating the multifractal spectrum. Finally, we describe the applications of this spectrum on biomedical signals in the characterization of several diseases in neurosciences.
生物医学信号的特征无法通过传统的测量方法(如信号的平均幅度)来捕捉。分形几何衍生出的方法是研究信号不规则程度的非常有用的方法。单分形分析假设信号在时间和空间上具有标度不变性,由单个幂律指数定义。然而,生物医学信号的标度不变结构在时间和空间上经常会出现变化。在这种情况下,多重分形分析非常适用,因为它由多重分形幂律指数谱定义。实现这种分析的方法有几种,并且有很多方法可以展示这些方法。在本章中,我们回顾了多重分形分析在神经影像学中用于特征信号的应用。在描述了多重分形分析的原理之后,我们提出了几种估计多重分形谱的方法。最后,我们描述了这种谱在神经科学中几种疾病的生物医学信号特征化中的应用。