Clinical Sensitivity of Fractal Neurodynamics
- PMID: 38468039
- DOI: 10.1007/978-3-031-47606-8_15
Clinical Sensitivity of Fractal Neurodynamics
Abstract
Among the significant advances in the understanding of the organization of the neuronal networks that coordinate the body and brain, their complex nature is increasingly important, resulting from the interaction between the very large number of constituents strongly organized hierarchically and at the same time with "self-emerging." This awareness drives us to identify the measures that best quantify the "complexity" that accompanies the continuous evolutionary dynamics of the brain. In this chapter, after an introductory section (Sect. 15.1), we examine how the Higuchi fractal dimension is able to perceive physiological processes (15.2), neurological (15.3) and psychiatric (15.4) disorders, and neuromodulation effects (15.5), giving a mention of other methods of measuring neuronal electrical activity in addition to electroencephalography, such as magnetoencephalography and functional magnetic resonance. Conscious that further progress will support a deeper understanding of the temporal course of neuronal activity because of continuous interaction with the environment, we conclude confident that the fractal dimension has begun to uncover important features of the physiology of brain activity and its alterations.
Keywords: Body organization; Brain; Higuchi fractal dimension; Neurological and psychiatric disorders; Neuronal networks; Neurophysiology.
© 2024. The Author(s), under exclusive license to Springer Nature Switzerland AG.
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