George Dileep, Lázaro-Gredilla Miguel, Lehrach Wolfgang, Dedieu Antoine, Zhou Guangyao, Marino Joseph
Google DeepMind, London, UK.
Sci Adv. 2025 Feb 7;11(6):eadr6698. doi: 10.1126/sciadv.adr6698. Epub 2025 Feb 5.
Understanding cortical microcircuitry requires theoretical models that can tease apart their computational logic from biological details. Although Bayesian inference serves as an abstract framework of cortical computation, precisely mapping concrete instantiations of computational models to biology under real-world tasks is necessary to produce falsifiable neural models. On the basis of a recent generative model, recursive cortical networks, that demonstrated excellent performance on vision benchmarks, we derive a theoretical cortical microcircuit by placing the requirements of the computational model within biological constraints. The derived model suggests precise algorithmic roles for the columnar and laminar feed-forward, feedback, and lateral connections, the thalamic pathway, blobs and interblobs, and the innate lineage-specific interlaminar connectivity within cortical columns. The model also explains several visual phenomena, including the subjective contour effect and neon-color spreading effect, with circuit-level precision. Our model and methodology provides a path forward in understanding cortical and thalamic computations.
理解皮层微电路需要理论模型,这些模型能够从生物学细节中梳理出其计算逻辑。尽管贝叶斯推理作为皮层计算的抽象框架,但要生成可证伪的神经模型,还需要将计算模型的具体实例精确映射到现实世界任务中的生物学过程。基于最近的一种生成模型——递归皮层网络,该模型在视觉基准测试中表现出色,我们通过将计算模型的要求置于生物学约束之下来推导理论皮层微电路。推导得出的模型揭示了柱状和层状前馈、反馈及侧向连接、丘脑通路、斑点和斑间区域以及皮层柱内先天的谱系特异性层间连接的精确算法作用。该模型还能在电路层面精确解释几种视觉现象,包括主观轮廓效应和霓虹色扩散效应。我们的模型和方法为理解皮层和丘脑计算提供了一条前进的道路。