School of Natural Sciences, Macquarie University, Sydney, New South Wales, Australia.
Brain Behav Evol. 2024;99(2):109-122. doi: 10.1159/000532013. Epub 2023 Jul 24.
The comparative approach is a powerful way to explore the relationship between brain structure and cognitive function. Thus far, the field has been dominated by the assumption that a bigger brain somehow means better cognition. Correlations between differences in brain size or neuron number between species and differences in specific cognitive abilities exist, but these correlations are very noisy. Extreme differences exist between clades in the relationship between either brain size or neuron number and specific cognitive abilities. This means that correlations become weaker, not stronger, as the taxonomic diversity of sampled groups increases. Cognition is the outcome of neural networks. Here we propose that considering plausible neural network models will advance our understanding of the complex relationships between neuron number and different aspects of cognition. Computational modelling of networks suggests that adding pathways, or layers, or changing patterns of connectivity in a network can all have different specific consequences for cognition. Consequently, models of computational architecture can help us hypothesise how and why differences in neuron number might be related to differences in cognition. As methods in connectomics continue to improve and more structural information on animal brains becomes available, we are learning more about natural network structures in brains, and we can develop more biologically plausible models of cognitive architecture. Natural animal diversity then becomes a powerful resource to both test the assumptions of these models and explore hypotheses for how neural network structure and network size might delimit cognitive function.
比较方法是探索大脑结构和认知功能之间关系的有力手段。到目前为止,该领域一直假设大脑越大,认知能力就越好。物种之间大脑大小或神经元数量的差异与特定认知能力的差异之间存在相关性,但这些相关性非常嘈杂。在大脑大小或神经元数量与特定认知能力之间的关系上,不同进化枝之间存在极端差异。这意味着随着取样群体的分类多样性的增加,相关性变得更弱,而不是更强。认知是神经网络的结果。在这里,我们提出考虑合理的神经网络模型将有助于我们理解神经元数量与认知的不同方面之间的复杂关系。网络的计算模型表明,增加途径、层或改变网络的连接模式都可能对认知有不同的具体影响。因此,计算架构模型可以帮助我们假设神经元数量的差异如何以及为什么可能与认知的差异有关。随着连接组学方法的不断改进,以及更多关于动物大脑的结构信息的出现,我们对大脑中的自然网络结构有了更多的了解,并且可以开发出更符合生物学的认知架构模型。然后,自然动物多样性成为一种强大的资源,可以用来检验这些模型的假设,并探索神经网络结构和网络大小如何限制认知功能的假设。