Bernáez Timón Laura, Ekelmans Pierre, Kraynyukova Nataliya, Rose Tobias, Busse Laura, Tchumatchenko Tatjana
Institute for Physiological Chemistry, University of Mainz Medical Center, Mainz, Germany.
Frankfurt Institute for Advanced Studies, Frankfurt, Germany.
J Physiol. 2023 Aug;601(15):3037-3053. doi: 10.1113/JP282755. Epub 2022 Sep 25.
Due to the staggering complexity of the brain and its neural circuitry, neuroscientists rely on the analysis of mathematical models to elucidate its function. From Hodgkin and Huxley's detailed description of the action potential in 1952 to today, new theories and increasing computational power have opened up novel avenues to study how neural circuits implement the computations that underlie behaviour. Computational neuroscientists have developed many models of neural circuits that differ in complexity, biological realism or emergent network properties. With recent advances in experimental techniques for detailed anatomical reconstructions or large-scale activity recordings, rich biological data have become more available. The challenge when building network models is to reflect experimental results, either through a high level of detail or by finding an appropriate level of abstraction. Meanwhile, machine learning has facilitated the development of artificial neural networks, which are trained to perform specific tasks. While they have proven successful at achieving task-oriented behaviour, they are often abstract constructs that differ in many features from the physiology of brain circuits. Thus, it is unclear whether the mechanisms underlying computation in biological circuits can be investigated by analysing artificial networks that accomplish the same function but differ in their mechanisms. Here, we argue that building biologically realistic network models is crucial to establishing causal relationships between neurons, synapses, circuits and behaviour. More specifically, we advocate for network models that consider the connectivity structure and the recorded activity dynamics while evaluating task performance.
由于大脑及其神经回路极其复杂,神经科学家依靠数学模型分析来阐明其功能。从1952年霍奇金和赫胥黎对动作电位的详细描述至今,新理论和不断增强的计算能力开辟了研究神经回路如何实现行为背后计算的新途径。计算神经科学家已经开发出许多神经回路模型,这些模型在复杂性、生物真实性或涌现的网络特性方面存在差异。随着详细解剖重建或大规模活动记录等实验技术的最新进展,丰富的生物学数据变得更加可得。构建网络模型时面临的挑战是,要么通过高度的细节,要么通过找到合适的抽象层次来反映实验结果。与此同时,机器学习促进了人工神经网络的发展,这些网络经过训练以执行特定任务。虽然它们在实现面向任务的行为方面已被证明是成功的,但它们通常是抽象结构,在许多特征上与脑回路的生理学不同。因此,尚不清楚能否通过分析实现相同功能但机制不同的人工网络来研究生物回路中计算的潜在机制。在此,我们认为构建具有生物真实性的网络模型对于建立神经元、突触、回路和行为之间的因果关系至关重要。更具体地说,我们提倡在评估任务表现时考虑连接结构和记录的活动动态的网络模型。