Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, China.
MOE Key Laboratory of Computational Neuroscience and Brain-Inspired Intelligence, and MOE Frontiers Center for Brain Science, Shanghai, China.
Nat Commun. 2023 Apr 21;14(1):2298. doi: 10.1038/s41467-023-37982-z.
Neural representation is often described by the tuning curves of individual neurons with respect to certain stimulus variables. Despite this tradition, it has become increasingly clear that neural tuning can vary substantially in accordance with a collection of internal and external factors. A challenge we are facing is the lack of appropriate methods to accurately capture the moment-to-moment tuning variability directly from the noisy neural responses. Here we introduce an unsupervised statistical approach, Poisson functional principal component analysis (Pf-PCA), which identifies different sources of systematic tuning fluctuations, moreover encompassing several current models (e.g.,multiplicative gain models) as special cases. Applying this method to neural data recorded from macaque primary visual cortex- a paradigmatic case for which the tuning curve approach has been scientifically essential- we discovered a simple relationship governing the variability of orientation tuning, which unifies different types of gain changes proposed previously. By decomposing the neural tuning variability into interpretable components, our method enables discovery of unexpected structure of the neural code, capturing the influence of the external stimulus drive and internal states simultaneously.
神经表示通常通过个体神经元对特定刺激变量的调谐曲线来描述。尽管有这样的传统,但越来越明显的是,神经调谐可以根据一系列内部和外部因素发生很大的变化。我们面临的一个挑战是缺乏适当的方法来从嘈杂的神经反应中准确地捕捉到瞬间的调谐可变性。在这里,我们介绍了一种无监督的统计方法,泊松函数主成分分析(Pf-PCA),它可以识别不同的系统调谐波动源,并且包含了几个当前的模型(例如,乘法增益模型)作为特例。将该方法应用于从猕猴初级视觉皮层记录的神经数据-这是调谐曲线方法在科学上至关重要的典型案例-我们发现了一个简单的关系,它可以控制朝向调谐的可变性,该关系将以前提出的不同类型的增益变化统一起来。通过将神经调谐可变性分解为可解释的成分,我们的方法可以发现神经代码的意外结构,同时捕捉外部刺激驱动和内部状态的影响。