Department of Biomedical Engineering, University of Wisconsin-Madison, Madison, Wisconsin, United States.
Department of Electrical and Computer Engineering, University of Wisconsin-Madison, Madison, Wisconsin, United States.
J Neurophysiol. 2023 Jun 1;129(6):1505-1514. doi: 10.1152/jn.00100.2023. Epub 2023 May 24.
Reconstructing connectivity of neuronal networks from single-cell activity is essential to understanding brain function, but the challenge of deciphering connections from populations of silent neurons has been largely unmet. We demonstrate a protocol for deriving connectivity of simulated silent neuronal networks using stimulation combined with a supervised learning algorithm, which enables inferring connection weights with high fidelity and predicting spike trains at the single-spike and single-cell levels with high accuracy. We apply our method on rat cortical recordings fed through a circuit of heterogeneously connected leaky integrate-and-fire neurons firing at typical lognormal distributions and demonstrate improved performance during stimulation for multiple subpopulations. These testable predictions about the number and protocol of the required stimulations are expected to enhance future efforts for deriving neuronal connectivity and drive new experiments to better understand brain function. We introduce a new concept for reverse engineering silent neuronal networks using a supervised learning algorithm combined with stimulation. We quantify the performance of the algorithm and the precision of deriving synaptic weights in inhibitory and excitatory subpopulations. We then show that stimulation enables deciphering connectivity of heterogeneous circuits fed with real electrode array recordings, which could extend in the future to deciphering connectivity in broad biological and artificial neural networks.
从单细胞活动重建神经元网络的连接对于理解大脑功能至关重要,但从沉默神经元群体中破译连接的挑战在很大程度上尚未得到解决。我们展示了一种使用刺激结合监督学习算法推导模拟沉默神经元网络连接的方案,该方案能够以高精度推断连接权重,并以高精度预测单峰和单细胞水平的尖峰列车。我们将我们的方法应用于大鼠皮层记录,这些记录通过一个由在典型对数正态分布下发射的异质连接漏电流积分和放电神经元组成的电路进行传递,并在多个亚群的刺激期间证明了性能的提高。这些关于所需刺激的数量和方案的可测试预测有望增强未来推导神经元连接的努力,并推动新的实验以更好地理解大脑功能。我们引入了一个使用监督学习算法结合刺激来反向工程沉默神经元网络的新概念。我们量化了算法的性能和在抑制和兴奋亚群中推导突触权重的精度。然后,我们表明刺激能够破译用真实电极阵列记录馈送的异质电路的连接,这在未来可能会扩展到破译广泛的生物和人工神经网络的连接。