Brain Complexity and Psychiatric Disorders.

Ronald Miguel Hernández, Jacqueline Cynthia Ponce-Meza, Miguel Ángel Saavedra-López, Walter Antonio Campos Ugaz, Roxana Monteza Chanduvi, Walter Campos Monteza
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Abstract

Objective: In recent years, researchers and neuroscientists have begun to use a variety of nonlinear techniques for analyzing neurophysiologic signals derived from fMRI, MEG, and EEG in order to describe the complex dynamical aspects of neural mechanisms. In this work, we first attempted to describe different algorithms to estimate neural complexity in a simple manner understandable for psychiatrists, psychologists, and neuroscientists. Then, we reviewed the findings of the brain complexity analysis in psychiatric disorders and their clinical implications. Method : A non-systematic comprehensive literature search was conducted for original studies on the complexity analysis of neurophysiological signals such as electroencephalogram, magnetoencephalogram, and blood-oxygen-level-dependent obtained from functional magnetic resonance imaging or functional near infrared spectroscopy. The search encompassed online scientific databases such as PubMed and Google Scholar. Results: Complexity measures mainly include entropy-based methods, the correlation dimension, fractal dimension, Lempel-Ziv complexity, and the Lyapunov exponent. There are important differences in the physical notions between these measures. Our literature review shows that dementia, autism, and adult ADHD exhibit less complexity in their neurophysiologic signals than healthy controls. However, children with ADHD, drug-naïve young schizophrenic patients with positive symptoms, and patients with mood disorders (i.e., depression and bipolar disorder) exhibit higher complexity in their neurophysiologic signals compared to healthy controls. In addition, contradictory findings still exist in some psychiatric disorders such as schizophrenia regarding brain complexity, which can be due to technical issues, large heterogeneity in psychiatric disorders, and interference of typical factors. Conclusion: In summary, complexity analysis may present a new dimension to understanding psychiatric disorders. While complexity analysis is still far from having practical applications in routine clinical settings, complexity science can play an important role in comprehending the system dynamics of psychiatric disorders.

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大脑复杂性与精神疾病。
目的:近年来,研究人员和神经科学家已经开始使用各种非线性技术来分析从fMRI、MEG和EEG获得的神经生理学信号,以描述神经机制的复杂动力学方面。在这项工作中,我们首先试图描述不同的算法,以一种精神病学家、心理学家和神经科学家可以理解的简单方式来估计神经复杂性。然后,我们回顾了精神疾病大脑复杂性分析的发现及其临床意义。方法:通过非系统的综合文献检索,对功能磁共振成像或功能近红外光谱获得的脑电图、脑磁图和血氧水平依赖性神经生理学信号的复杂性分析进行原始研究。搜索包括PubMed和Google Scholar等在线科学数据库。结果:复杂性度量主要包括基于熵的方法、相关维数、分形维数、Lempel-Ziv复杂性和李雅普诺夫指数。这些度量之间在物理概念上存在重要差异。我们的文献综述表明,与健康对照组相比,痴呆症、自闭症和成人多动症的神经生理学信号表现出较少的复杂性。然而,与健康对照组相比,患有多动症的儿童、有阳性症状的药物天真的年轻精神分裂症患者以及情绪障碍(即抑郁症和双相情感障碍)患者的神经生理学信号表现出更高的复杂性。此外,在一些精神疾病中,如精神分裂症,在大脑复杂性方面仍然存在矛盾的发现,这可能是由于技术问题、精神疾病的巨大异质性和典型因素的干扰。结论:总之,复杂性分析可能为理解精神障碍提供一个新的维度。尽管复杂性分析在常规临床环境中仍远未得到实际应用,但复杂性科学可以在理解精神障碍的系统动力学方面发挥重要作用。
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来源期刊
Iranian Journal of Psychiatry
Iranian Journal of Psychiatry Medicine-Psychiatry and Mental Health
CiteScore
4.00
自引率
0.00%
发文量
42
审稿时长
4 weeks
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