Kozachkov Leo, Slotine Jean-Jacques, Krotov Dmitry
Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA 02139.
Thomas J. Watson Research Center, International Business Machines Research, Yorktown Heights, NY 10598.
Proc Natl Acad Sci U S A. 2025 May 27;122(21):e2417788122. doi: 10.1073/pnas.2417788122. Epub 2025 May 23.
Astrocytes, the most abundant type of glial cell, play a fundamental role in memory. Despite most hippocampal synapses being contacted by an astrocyte, there are no current theories that explain how neurons, synapses, and astrocytes might collectively contribute to memory function. We demonstrate that fundamental aspects of astrocyte morphology and physiology naturally lead to a dynamic, high-capacity associative memory system. The neuron-astrocyte networks generated by our framework are closely related to popular machine learning architectures known as Dense Associative Memories. Adjusting the connectivity pattern, the model developed here leads to a family of associative memory networks that includes a Dense Associative Memory and a Transformer as two limiting cases. In the known biological implementations of Dense Associative Memories, the ratio of stored memories to the number of neurons remains constant, despite the growth of the network size. Our work demonstrates that neuron-astrocyte networks follow a superior memory scaling law, outperforming known biological implementations of Dense Associative Memory. Our model suggests an exciting and previously unnoticed possibility that memories could be stored, at least in part, within the network of astrocyte processes rather than solely in the synaptic weights between neurons.
星形胶质细胞是最丰富的神经胶质细胞类型,在记忆中起着基础性作用。尽管大多数海马体突触都与星形胶质细胞接触,但目前尚无理论能解释神经元、突触和星形胶质细胞如何共同促进记忆功能。我们证明,星形胶质细胞形态和生理学的基本特征自然地导致了一个动态、高容量的联想记忆系统。我们的框架所生成的神经元 - 星形胶质细胞网络与被称为密集联想记忆的流行机器学习架构密切相关。通过调整连接模式,这里开发的模型产生了一系列联想记忆网络,其中包括密集联想记忆和Transformer作为两个极限情况。在密集联想记忆的已知生物学实现中,尽管网络规模不断扩大,但存储的记忆数量与神经元数量的比率保持不变。我们的研究表明,神经元 - 星形胶质细胞网络遵循一种更优的记忆缩放规律,优于密集联想记忆的已知生物学实现。我们的模型提出了一种令人兴奋且此前未被注意到的可能性,即记忆可能至少部分存储在星形胶质细胞突起网络中,而不仅仅存储在神经元之间的突触权重中。