Beggs John M
Department of Physics, Indiana University Bloomington, Bloomington, IN, United States.
Program in Neuroscience, Indiana University Bloomington, Bloomington, IN, United States.
Front Comput Neurosci. 2022 Sep 15;16:703865. doi: 10.3389/fncom.2022.703865. eCollection 2022.
The hypothesis that living neural networks operate near a critical phase transition point has received substantial discussion. This "criticality hypothesis" is potentially important because experiments and theory show that optimal information processing and health are associated with operating near the critical point. Despite the promise of this idea, there have been several objections to it. While earlier objections have been addressed already, the more recent critiques of Touboul and Destexhe have not yet been fully met. The purpose of this paper is to describe their objections and offer responses. Their first objection is that the well-known Brunel model for cortical networks does not display a peak in mutual information near its phase transition, in apparent contradiction to the criticality hypothesis. In response I show that it does have such a peak near the phase transition point, provided it is not strongly driven by random inputs. Their second objection is that even simple models like a coin flip can satisfy multiple criteria of criticality. This suggests that the emergent criticality claimed to exist in cortical networks is just the consequence of a random walk put through a threshold. In response I show that while such processes can produce many signatures criticality, these signatures (1) do not emerge from collective interactions, (2) do not support information processing, and (3) do not have long-range temporal correlations. Because experiments show these three features are consistently present in living neural networks, such random walk models are inadequate. Nevertheless, I conclude that these objections have been valuable for refining research questions and should always be welcomed as a part of the scientific process.
关于活体神经网络在临界相变点附近运行的假说已引发了大量讨论。这一“临界性假说”可能具有重要意义,因为实验和理论表明,最优信息处理与健康状况与在临界点附近运行相关。尽管这一观点颇具前景,但也存在一些反对意见。虽然早期的反对意见已得到回应,但图布尔(Touboul)和德斯特谢(Destexhe)最近提出的批评尚未得到充分回应。本文旨在阐述他们的反对意见并给出回应。他们的第一个反对意见是,著名的用于皮层网络的布鲁内尔(Brunel)模型在其相变附近的互信息并未出现峰值,这明显与临界性假说相矛盾。对此我的回应是,只要该模型不受随机输入的强烈驱动,它在相变点附近确实会有这样一个峰值。他们的第二个反对意见是,即使像抛硬币这样的简单模型也能满足多个临界性标准。这表明,声称存在于皮层网络中的涌现临界性仅仅是通过阈值的随机游走的结果。对此我的回应是,虽然这类过程能够产生许多临界性特征,但这些特征(1)并非源自集体相互作用,(2)不支持信息处理,(3)不存在长程时间相关性。由于实验表明这三个特征在活体神经网络中始终存在,所以这类随机游走模型并不适用。然而,我得出的结论是,这些反对意见对于完善研究问题很有价值,并且作为科学过程的一部分应始终受到欢迎。