Ujfalussy Balázs B, Makara Judit K, Branco Tiago, Lengyel Máté
Computational and Biological Learning Lab, Department of Engineering, University of Cambridge, Cambridge, United Kingdom.
Wigner Research Centre for Physics, Hungarian Academy of Sciences, Budapest, Hungary.
Elife. 2015 Dec 24;4:e10056. doi: 10.7554/eLife.10056.
Cortical neurons integrate thousands of synaptic inputs in their dendrites in highly nonlinear ways. It is unknown how these dendritic nonlinearities in individual cells contribute to computations at the level of neural circuits. Here, we show that dendritic nonlinearities are critical for the efficient integration of synaptic inputs in circuits performing analog computations with spiking neurons. We developed a theory that formalizes how a neuron's dendritic nonlinearity that is optimal for integrating synaptic inputs depends on the statistics of its presynaptic activity patterns. Based on their in vivo preynaptic population statistics (firing rates, membrane potential fluctuations, and correlations due to ensemble dynamics), our theory accurately predicted the responses of two different types of cortical pyramidal cells to patterned stimulation by two-photon glutamate uncaging. These results reveal a new computational principle underlying dendritic integration in cortical neurons by suggesting a functional link between cellular and systems--level properties of cortical circuits.
皮层神经元以高度非线性的方式在其树突中整合数千个突触输入。目前尚不清楚单个细胞中的这些树突非线性如何在神经回路水平上对计算产生影响。在这里,我们表明,树突非线性对于在由发放神经元执行模拟计算的回路中高效整合突触输入至关重要。我们提出了一种理论,该理论形式化了对于整合突触输入而言最优的神经元树突非线性如何依赖于其突触前活动模式的统计信息。基于它们在体内的突触前群体统计信息(发放率、膜电位波动以及由于群体动力学引起的相关性),我们的理论准确预测了两种不同类型的皮层锥体细胞对双光子谷氨酸解笼锁刺激模式的反应。这些结果揭示了皮层神经元树突整合背后的一种新的计算原理,表明了皮层回路的细胞水平和系统水平特性之间的功能联系。