Pulvermüller Friedemann, Tomasello Rosario, Henningsen-Schomers Malte R, Wennekers Thomas
Brain Language Laboratory, Department of Philosophy and Humanities, WE4, Freie Universität Berlin, Berlin, Germany.
Berlin School of Mind and Brain, Humboldt-Universität zu Berlin, Berlin, Germany.
Nat Rev Neurosci. 2021 Aug;22(8):488-502. doi: 10.1038/s41583-021-00473-5. Epub 2021 Jun 28.
Neural network models are potential tools for improving our understanding of complex brain functions. To address this goal, these models need to be neurobiologically realistic. However, although neural networks have advanced dramatically in recent years and even achieve human-like performance on complex perceptual and cognitive tasks, their similarity to aspects of brain anatomy and physiology is imperfect. Here, we discuss different types of neural models, including localist, auto-associative, hetero-associative, deep and whole-brain networks, and identify aspects under which their biological plausibility can be improved. These aspects range from the choice of model neurons and of mechanisms of synaptic plasticity and learning to implementation of inhibition and control, along with neuroanatomical properties including areal structure and local and long-range connectivity. We highlight recent advances in developing biologically grounded cognitive theories and in mechanistically explaining, on the basis of these brain-constrained neural models, hitherto unaddressed issues regarding the nature, localization and ontogenetic and phylogenetic development of higher brain functions. In closing, we point to possible future clinical applications of brain-constrained modelling.
神经网络模型是增进我们对复杂大脑功能理解的潜在工具。为实现这一目标,这些模型需要在神经生物学上具有现实意义。然而,尽管神经网络近年来取得了巨大进展,甚至在复杂的感知和认知任务上达到了类人性能,但它们与大脑解剖学和生理学方面的相似性并不完美。在这里,我们讨论了不同类型的神经模型,包括局部主义、自联想、异联想、深度和全脑网络,并确定了可以提高其生物学合理性的方面。这些方面涵盖从模型神经元的选择、突触可塑性和学习机制的选择到抑制和控制的实现,以及包括区域结构和局部及长程连接性在内的神经解剖学特性。我们强调了在发展基于生物学的认知理论以及基于这些受大脑约束的神经模型对迄今为止尚未解决的关于高级大脑功能的性质、定位以及个体发生和系统发生发展的问题进行机制性解释方面的最新进展。最后,我们指出了受大脑约束建模未来可能的临床应用。