Ley Anke, Vroomen Jean, Formisano Elia
Department of Medical Psychology and Neuropsychology, Tilburg School of Social and Behavioral Sciences, Tilburg University Tilburg, Netherlands ; Department of Cognitive Neuroscience, Faculty of Psychology and Neuroscience, Maastricht University Maastricht, Netherlands.
Department of Medical Psychology and Neuropsychology, Tilburg School of Social and Behavioral Sciences, Tilburg University Tilburg, Netherlands.
Front Neurosci. 2014 Jun 3;8:132. doi: 10.3389/fnins.2014.00132. eCollection 2014.
The transformation of acoustic signals into abstract perceptual representations is the essence of the efficient and goal-directed neural processing of sounds in complex natural environments. While the human and animal auditory system is perfectly equipped to process the spectrotemporal sound features, adequate sound identification and categorization require neural sound representations that are invariant to irrelevant stimulus parameters. Crucially, what is relevant and irrelevant is not necessarily intrinsic to the physical stimulus structure but needs to be learned over time, often through integration of information from other senses. This review discusses the main principles underlying categorical sound perception with a special focus on the role of learning and neural plasticity. We examine the role of different neural structures along the auditory processing pathway in the formation of abstract sound representations with respect to hierarchical as well as dynamic and distributed processing models. Whereas most fMRI studies on categorical sound processing employed speech sounds, the emphasis of the current review lies on the contribution of empirical studies using natural or artificial sounds that enable separating acoustic and perceptual processing levels and avoid interference with existing category representations. Finally, we discuss the opportunities of modern analyses techniques such as multivariate pattern analysis (MVPA) in studying categorical sound representations. With their increased sensitivity to distributed activation changes-even in absence of changes in overall signal level-these analyses techniques provide a promising tool to reveal the neural underpinnings of perceptually invariant sound representations.
将声学信号转换为抽象的感知表征,是在复杂自然环境中对声音进行高效且目标导向的神经处理的核心。虽然人类和动物的听觉系统具备完美处理声音频谱时间特征的能力,但要进行充分的声音识别和分类,需要神经声音表征对无关刺激参数保持不变。至关重要的是,相关与无关因素不一定是物理刺激结构所固有的,而是需要随着时间推移通过整合来自其他感官的信息来学习。本综述讨论了分类声音感知的主要原则,特别关注学习和神经可塑性的作用。我们根据分层以及动态和分布式处理模型,研究了听觉处理通路中不同神经结构在形成抽象声音表征中的作用。虽然大多数关于分类声音处理的功能磁共振成像研究使用语音,但本综述的重点在于实证研究的贡献,这些研究使用自然或人工声音,能够区分声学和感知处理水平,并避免干扰现有的类别表征。最后,我们讨论了现代分析技术,如多变量模式分析(MVPA)在研究分类声音表征方面的机遇。这些分析技术对分布式激活变化的敏感性增加,即使在整体信号水平没有变化的情况下也是如此,它们为揭示感知不变声音表征的神经基础提供了一个有前景的工具。