Department of Neurobiology, University of Pittsburgh, Pittsburgh, PA, USA; Center for Neuroscience, University of Pittsburgh, Pittsburgh, PA, USA; Center for the Neural Basis of Cognition, University of Pittsburgh, Pittsburgh, PA, USA; Department of Bioengineering, University of Pittsburgh, Pittsburgh, PA, USA; Department of Communication Science and Disorders, University of Pittsburgh, Pittsburgh, PA, USA.
Department of Neurobiology, University of Pittsburgh, Pittsburgh, PA, USA; Center for Neuroscience, University of Pittsburgh, Pittsburgh, PA, USA; Center for the Neural Basis of Cognition, University of Pittsburgh, Pittsburgh, PA, USA.
Hear Res. 2023 Mar 1;429:108697. doi: 10.1016/j.heares.2023.108697. Epub 2023 Jan 14.
To generate insight from experimental data, it is critical to understand the inter-relationships between individual data points and place them in context within a structured framework. Quantitative modeling can provide the scaffolding for such an endeavor. Our main objective in this review is to provide a primer on the range of quantitative tools available to experimental auditory neuroscientists. Quantitative modeling is advantageous because it can provide a compact summary of observed data, make underlying assumptions explicit, and generate predictions for future experiments. Quantitative models may be developed to characterize or fit observed data, to test theories of how a task may be solved by neural circuits, to determine how observed biophysical details might contribute to measured activity patterns, or to predict how an experimental manipulation would affect neural activity. In complexity, quantitative models can range from those that are highly biophysically realistic and that include detailed simulations at the level of individual synapses, to those that use abstract and simplified neuron models to simulate entire networks. Here, we survey the landscape of recently developed models of auditory cortical processing, highlighting a small selection of models to demonstrate how they help generate insight into the mechanisms of auditory processing. We discuss examples ranging from models that use details of synaptic properties to explain the temporal pattern of cortical responses to those that use modern deep neural networks to gain insight into human fMRI data. We conclude by discussing a biologically realistic and interpretable model that our laboratory has developed to explore aspects of vocalization categorization in the auditory pathway.
为了从实验数据中获得深入的见解,理解各个数据点之间的相互关系,并将其置于结构化框架内的背景下是至关重要的。定量建模可以为此提供基础。我们在这篇综述中的主要目标是为实验听觉神经科学家提供一系列可用的定量工具的概述。定量建模具有优势,因为它可以对观察到的数据进行紧凑的总结,明确潜在的假设,并对未来的实验进行预测。定量模型可以用于描述或拟合观察到的数据,用于测试关于神经回路如何解决任务的理论,用于确定观察到的生物物理细节如何有助于测量的活动模式,或者用于预测实验操作将如何影响神经活动。在复杂性方面,定量模型可以从高度生理现实的模型,包括单个突触级别的详细模拟,到使用抽象和简化的神经元模型来模拟整个网络的模型。在这里,我们调查了最近开发的听觉皮层处理模型的概况,重点介绍了一小部分模型,以展示它们如何帮助我们深入了解听觉处理的机制。我们讨论了从使用突触特性细节来解释皮质反应的时间模式的模型,到使用现代深度神经网络来深入了解人类 fMRI 数据的模型的例子。最后,我们讨论了我们实验室开发的一个具有生物学意义且可解释的模型,用于探索听觉通路中发声分类的各个方面。