University of Cambridge Department of Clinical Neurosciences, CB2 2QQ, UK.
Neuroimage. 2010 Sep;52(3):1015-26. doi: 10.1016/j.neuroimage.2009.12.080. Epub 2010 Jan 4.
Dynamic causal modelling (DCM) of functional magnetic resonance imaging (fMRI) data offers new insights into the pathophysiology of neurological disease and mechanisms of effective therapies. Current applications can be used both to identify the most likely functional brain network underlying observed data and estimate the networks' connectivity parameters. We examined the reproducibility of DCM in healthy subjects (young 18-48 years, n=27; old 50-80 years, n=15) in the context of action selection. We then examined the effects of Parkinson's disease (50-78 years, Hoehn and Yahr stage 1-2.5, n=16) and dopaminergic therapy. Forty-eight models were compared, for each of 90 sessions from 58 subjects. Model-evidences clustered according to sets of structurally similar models, with high correlations over two sessions in healthy older subjects. The same model was identified as most likely in healthy controls on both sessions and in medicated patients. In this most likely network model, the selection of action was associated with enhanced coupling between prefrontal cortex and the pre-supplementary motor area. However, the parameters for intrinsic connectivity and contextual modulation in this model were poorly correlated across sessions. A different model was identified in patients with Parkinson's disease after medication withdrawal. In "off" patients, action selection was associated with enhanced connectivity from prefrontal to lateral premotor cortex. This accords with independent evidence of a dopamine-dependent functional disconnection of the SMA in Parkinson's disease. Together, these results suggest that DCM model selection is robust and sensitive enough to study clinical populations and their pharmacological treatment. For critical inferences, model selection may be sufficient. However, caution is required when comparing groups or drug effects in terms of the connectivity parameter estimates, if there are significant posterior covariances among parameters.
功能磁共振成像(fMRI)数据的动态因果建模(DCM)为神经疾病的病理生理学和有效治疗机制提供了新的见解。当前的应用既可以用来识别观察到的数据背后最有可能的功能大脑网络,也可以估计网络的连接参数。我们在行动选择的背景下检查了健康受试者(年轻组 18-48 岁,n=27;老年组 50-80 岁,n=15)中 DCM 的可重复性。然后,我们检查了帕金森病(50-78 岁,Hoehn 和 Yahr 分期 1-2.5,n=16)和多巴胺能治疗的影响。比较了 58 名受试者的 90 个时段中的 48 个模型。模型证据根据结构相似的模型集聚类,在健康老年受试者中两个时段之间具有高度相关性。在健康对照组中,同一模型在两个时段和接受药物治疗的患者中被确定为最有可能的模型。在这个最有可能的网络模型中,动作的选择与前额叶皮层和补充运动前区之间增强的耦合有关。然而,在该模型中,内在连接性和上下文调制的参数在各时段之间相关性较差。在停药后的帕金森病患者中,识别出了一个不同的模型。在“关闭”患者中,动作选择与来自前额叶到外侧运动前皮质的增强连接有关。这与帕金森病中 SMA 的多巴胺依赖性功能脱节的独立证据一致。这些结果表明,DCM 模型选择足够稳健和敏感,可以研究临床人群及其药物治疗。对于关键推断,模型选择可能就足够了。然而,如果参数之间存在显著的后验协方差,则在连接参数估计方面比较组或药物效果时需要谨慎。