Jonas Verhellen, Kosio Beshkov, Sebastian Amundsen, Torbjørn V Ness, Gaute T Einevoll
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引用次数: 0
摘要
人脑在从分子到电路的多个层次上运行,要了解这些复杂的过程需要综合的研究努力。模拟生物物理上的精细神经元模型是研究局部神经回路的一种计算昂贵但有效的方法。最近的创新表明,人工神经网络(ANN)可以准确预测这些详细模型在尖峰、电位和光学读数方面的行为。虽然与传统的基于微分方程的建模相比,这些方法有可能将大型网络模拟的速度提高几个数量级,但它们目前只能预测神经元体或少数几个神经元区的电压输出。我们的新方法基于多任务学习(MTL)的增强型先进架构,可同时预测神经元模型每个区室的膜电位,速度比传统模拟方法快两个数量级。通过同时预测所有膜电位,我们的方法不仅可以将模型输出与更广泛的实验记录(贴片电极、电压敏感染料成像)进行比较,而且还为通过基于 ANN 的模拟预测局部场电位(LFP)、脑电图(EEG)信号和脑磁图(MEG)信号提供了第一块基石。虽然 LFP 和 EEG 是重要的下游应用,但本文的重点在于预测每个隔室中的树突电压,以捕捉生物物理上精细的神经元模型的整个电生理学。由于涉及大量数据、相邻隔室之间存在相关性以及膜电位的非高斯分布,它进一步为 MTL 架构提出了一个具有挑战性的基准。
Multitask learning of a biophysically-detailed neuron model.
The human brain operates at multiple levels, from molecules to circuits, and understanding these complex processes requires integrated research efforts. Simulating biophysically-detailed neuron models is a computationally expensive but effective method for studying local neural circuits. Recent innovations have shown that artificial neural networks (ANNs) can accurately predict the behavior of these detailed models in terms of spikes, electrical potentials, and optical readouts. While these methods have the potential to accelerate large network simulations by several orders of magnitude compared to conventional differential equation based modelling, they currently only predict voltage outputs for the soma or a select few neuron compartments. Our novel approach, based on enhanced state-of-the-art architectures for multitask learning (MTL), allows for the simultaneous prediction of membrane potentials in each compartment of a neuron model, at a speed of up to two orders of magnitude faster than classical simulation methods. By predicting all membrane potentials together, our approach not only allows for comparison of model output with a wider range of experimental recordings (patch-electrode, voltage-sensitive dye imaging), it also provides the first stepping stone towards predicting local field potentials (LFPs), electroencephalogram (EEG) signals, and magnetoencephalography (MEG) signals from ANN-based simulations. While LFP and EEG are an important downstream application, the main focus of this paper lies in predicting dendritic voltages within each compartment to capture the entire electrophysiology of a biophysically-detailed neuron model. It further presents a challenging benchmark for MTL architectures due to the large amount of data involved, the presence of correlations between neighbouring compartments, and the non-Gaussian distribution of membrane potentials.
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