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Functional brain networks: great expectations, hard times and the big leap forward

机译:功能性大脑网络:巨大的期望,艰难的时刻和巨大的飞跃

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摘要

Many physical and biological systems can be studied using complex network theory, a new statistical physics understanding of graph theory. The recent application of complex network theory to the study of functional brain networks has generated great enthusiasm as it allows addressing hitherto non-standard issues in the field, such as efficiency of brain functioning or vulnerability to damage. However, in spite of its high degree of generality, the theory was originally designed to describe systems profoundly different from the brain. We discuss some important caveats in the wholesale application of existing tools and concepts to a field they were not originally designed to describe. At the same time, we argue that complex network theory has not yet been taken full advantage of, as many of its important aspects are yet to make their appearance in the neuroscience literature. Finally, we propose that, rather than simply borrowing from an existing theory, functional neural networks can inspire a fundamental reformulation of complex network theory, to account for its exquisitely complex functioning mode.
机译:可以使用复杂的网络理论来研究许多物理和生物系统,这是对图论的新的统计物理学理解。复杂网络理论在功能性大脑网络研究中的最新应用引起了极大的热情,因为它可以解决该领域迄今为止的非标准问题,例如大脑功能的效率或对损伤的脆弱性。然而,尽管它具有很高的通用性,但该理论最初旨在描述与大脑截然不同的系统。我们讨论了将现有工具和概念大规模应用到最初并非旨在描述的领域中的一些重要警告。同时,我们认为复杂网络理论尚未得到充分利用,因为它的许多重要方面尚未在神经科学文献中出现。最后,我们提出,功能神经网络不仅可以借鉴现有理论,还可以激发复杂网络理论的基本重新表述,以解决其复杂的功能模式。

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