Margalit Eshed, Lee Hyodong, Finzi Dawn, DiCarlo James J, Grill-Spector Kalanit, Yamins Daniel L K
Neurosciences Graduate Program, Stanford University, Stanford, CA 94305, USA.
Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.
Neuron. 2024 Jul 17;112(14):2435-2451.e7. doi: 10.1016/j.neuron.2024.04.018. Epub 2024 May 10.
A key feature of cortical systems is functional organization: the arrangement of functionally distinct neurons in characteristic spatial patterns. However, the principles underlying the emergence of functional organization in the cortex are poorly understood. Here, we develop the topographic deep artificial neural network (TDANN), the first model to predict several aspects of the functional organization of multiple cortical areas in the primate visual system. We analyze the factors driving the TDANN's success and find that it balances two objectives: learning a task-general sensory representation and maximizing the spatial smoothness of responses according to a metric that scales with cortical surface area. In turn, the representations learned by the TDANN are more brain-like than in spatially unconstrained models. Finally, we provide evidence that the TDANN's functional organization balances performance with between-area connection length. Our results offer a unified principle for understanding the functional organization of the primate ventral visual system.
功能不同的神经元以特征性空间模式排列。然而,皮质中功能组织出现的潜在原则却知之甚少。在这里,我们开发了地形深度人工神经网络(TDANN),这是第一个能够预测灵长类视觉系统中多个皮质区域功能组织若干方面的模型。我们分析了推动TDANN成功的因素,发现它平衡了两个目标:学习任务通用的感觉表征,并根据与皮质表面积成比例的度量标准最大化反应的空间平滑度。反过来,TDANN学习到的表征比空间无约束模型中的表征更像大脑。最后,我们提供证据表明,TDANN的功能组织在性能与区域间连接长度之间取得了平衡。我们的结果为理解灵长类腹侧视觉系统的功能组织提供了一个统一的原则。