Department of Neurology, Thomas Jefferson University, Philadelphia, PA, 19107, USA.
Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, 19104, USA.
Brain. 2018 May 1;141(5):1375-1389. doi: 10.1093/brain/awy042.
Temporal lobe epilepsy tends to reshape the language system causing maladaptive reorganization that can be characterized by task-based functional MRI, and eventually can contribute to surgical decision making processes. However, the dynamic interacting nature of the brain as a complex system is often neglected, with many studies treating the language system as a static monolithic structure. Here, we demonstrate that as a specialized and integrated system, the language network is inherently dynamic, characterized by rich patterns of regional interactions, whose transient dynamics are disrupted in patients with temporal lobe epilepsy. Specifically, we applied tools from dynamic network neuroscience to functional MRI data collected from 50 temporal lobe epilepsy patients and 30 matched healthy controls during performance of a verbal fluency task, as well as during rest. By assigning 16 language-related regions into four subsystems (i.e. bilateral frontal and temporal), we observed regional specialization in both the probability of transient interactions and the frequency of such changes, in both healthy controls and patients during task performance but not rest. Furthermore, we found that both left and right temporal lobe epilepsy patients displayed reduced interactions within the left frontal 'core' subsystem compared to the healthy controls, while left temporal lobe epilepsy patients were unique in showing enhanced interactions between the left frontal 'core' and the right temporal subsystems. Also, both patient groups displayed reduced flexibility in the transient interactions of the left temporal and right frontal subsystems, which formed the 'periphery' of the language network. Importantly, such group differences were again evident only during task condition. Lastly, through random forest regression, we showed that dynamic reconfiguration of the language system tracks individual differences in verbal fluency with superior prediction accuracy compared to traditional activation-based static measures. Our results suggest dynamic network measures may be an effective biomarker for detecting the language dysfunction associated with neurological diseases such as temporal lobe epilepsy, specifying both the type of neuronal communications that are missing in these patients and those that are potentially added but maladaptive. Further advancements along these lines, transforming how we characterize and map language networks in the brain, have a high probability of altering clinical decision making in neurosurgical centres.10.1093/brain/awy042_video1awy042media15754656112001.
颞叶癫痫往往会重塑语言系统,导致适应性重组,这可以通过基于任务的功能磁共振成像来进行特征描述,最终有助于手术决策过程。然而,大脑作为一个复杂系统的动态交互性质往往被忽视,许多研究将语言系统视为一个静态的整体结构。在这里,我们证明了作为一个专门的和集成的系统,语言网络本质上是动态的,具有丰富的区域相互作用模式,其瞬态动力学在颞叶癫痫患者中被破坏。具体来说,我们应用动态网络神经科学的工具,对 50 名颞叶癫痫患者和 30 名匹配的健康对照组在执行言语流畅性任务以及休息期间收集的功能磁共振成像数据进行了分析。我们将 16 个与语言相关的区域分配到四个子系统(即双侧额叶和颞叶)中,我们观察到在健康对照组和患者在任务执行期间,无论是在任务执行期间还是在休息期间,区域之间的瞬态相互作用的概率以及这种变化的频率都存在区域专业化。此外,我们发现,与健康对照组相比,左、右颞叶癫痫患者的左额核心子系统内的相互作用减少,而左颞叶癫痫患者的左额核心子系统和右颞子系统之间的相互作用增强是独特的。此外,两组患者的左颞叶和右额叶子系统的瞬态相互作用的灵活性都降低了,这些子系统构成了语言网络的“外围”。重要的是,只有在任务条件下,才能再次观察到这种组间差异。最后,通过随机森林回归,我们表明语言系统的动态重构可以跟踪言语流畅性的个体差异,其预测准确性优于传统的基于激活的静态测量。我们的研究结果表明,动态网络测量可能是检测与颞叶癫痫等神经疾病相关的语言功能障碍的有效生物标志物,具体说明这些患者中缺失的神经元通信类型和可能存在但适应性不良的神经元通信类型。沿着这些方向的进一步发展,改变了我们在大脑中描述和映射语言网络的方式,很有可能改变神经外科中心的临床决策。