Wellcome Trust Centre for Neuroimaging, Sobell Department of Motor Neuroscience and Movement Disorders, Institute of Neurology, University College London, UK.
Neuroimage. 2012 Jan 2;59(1):340-8. doi: 10.1016/j.neuroimage.2011.07.066. Epub 2011 Jul 30.
Neuronal responses exhibit two stimulus or task-related components: evoked and induced. The functional role of induced responses has been ascribed to 'top-down' modulation through backward connections and lateral interactions; as opposed to the bottom-up driving processes that may predominate in evoked components. The implication is that evoked and induced components may reflect different neuronal processes. The conventional way of separating evoked and induced responses assumes that they can be decomposed linearly; in that induced responses are the average of the power minus the power of the average (the evoked component). However, this decomposition may not hold if both components are generated by nonlinear processes. In this work, we propose a Dynamic Causal Model that models evoked and induced responses at the same time. This allows us to explain both components in terms of shared mechanisms (coupling) and changes in coupling that are necessary to explain any induced components. To establish the face validity of our approach, we used Bayesian Model Selection to show that the scheme can disambiguate between models of synthetic data that did and did not contain induced components. We then repeated the analysis using MEG data during a hand grip task to ask whether induced responses in motor control circuits are mediated by 'top-down' or backward connections. Our result provides empirical evidence that induced responses are more likely to reflect backward message passing in the brain, while evoked and induced components share certain characteristics and mechanisms.
诱发性和诱导性。诱导反应的功能作用被归因于通过反向连接和侧向相互作用的“自上而下”调制;而不是可能在诱发性成分中占主导地位的自下而上的驱动过程。这意味着诱发性和诱导性成分可能反映了不同的神经元过程。分离诱发性和诱导性反应的传统方法假设它们可以线性分解;即诱导反应是功率减去平均值的功率(诱发性成分)的平均值。然而,如果这两个成分都是由非线性过程产生的,这种分解可能不成立。在这项工作中,我们提出了一个动态因果模型,同时对诱发性和诱导性反应进行建模。这使我们能够根据共享机制(耦合)以及解释任何诱导成分所需的耦合变化来解释这两个成分。为了建立我们方法的表面有效性,我们使用贝叶斯模型选择来表明,该方案可以区分是否包含诱导成分的合成数据模型。然后,我们使用手部握持任务期间的 MEG 数据重复了分析,以询问运动控制回路中的诱导反应是否是由“自上而下”或反向连接介导的。我们的结果提供了经验证据,表明诱导反应更可能反映大脑中的反向信息传递,而诱发性和诱导性成分则具有某些共同的特征和机制。