Department of Psychiatry and Behavioral Sciences, Stanford University, Stanford, CA, USA; Department of Computer Science, University of Texas at Austin, TX, USA.
Department of Psychology, University of California, Davis, CA, USA; Center for Mind and Brain, University of California, Davis, CA, USA.
Neuroimage. 2015 Jul 1;114:88-104. doi: 10.1016/j.neuroimage.2015.03.073. Epub 2015 Apr 8.
Meditation training has been shown to enhance attention and improve emotion regulation. However, the brain processes associated with such training are poorly understood and a computational modeling framework is lacking. Modeling approaches that can realistically simulate neurophysiological data while conforming to basic anatomical and physiological constraints can provide a unique opportunity to generate concrete and testable hypotheses about the mechanisms supporting complex cognitive tasks such as meditation. Here we applied the mean-field computational modeling approach using the scalp-recorded electroencephalogram (EEG) collected at three assessment points from meditating participants during two separate 3-month-long shamatha meditation retreats. We modeled cortical, corticothalamic, and intrathalamic interactions to generate a simulation of EEG signals recorded across the scalp. We also present two novel extensions to the mean-field approach that allow for: (a) non-parametric analysis of changes in model parameter values across all channels and assessments; and (b) examination of variation in modeled thalamic reticular nucleus (TRN) connectivity over the retreat period. After successfully fitting whole-brain EEG data across three assessment points within each retreat, two model parameters were found to replicably change across both meditation retreats. First, after training, we observed an increased temporal delay between modeled cortical and thalamic cells. This increase provides a putative neural mechanism for a previously observed reduction in individual alpha frequency in these same participants. Second, we found decreased inhibitory connection strength between the TRN and secondary relay nuclei (SRN) of the modeled thalamus after training. This reduction in inhibitory strength was found to be associated with increased dynamical stability of the model. Altogether, this paper presents the first computational approach, taking core aspects of physiology and anatomy into account, to formally model brain processes associated with intensive meditation training. The observed changes in model parameters inform theoretical accounts of attention training through meditation, and may motivate future study on the use of meditation in a variety of clinical populations.
冥想训练已被证明可以提高注意力并改善情绪调节。然而,与这种训练相关的大脑过程还知之甚少,并且缺乏计算建模框架。能够真实地模拟神经生理数据同时符合基本解剖和生理约束的建模方法,可以为支持冥想等复杂认知任务的机制提供独特的机会,生成具体且可测试的假设。在这里,我们应用了基于平均场的计算建模方法,使用在两个单独的为期 3 个月的 Shamatha 冥想静修期间,从冥想参与者在三个评估点记录的头皮脑电图 (EEG) 来进行模拟。我们对皮质、皮质丘脑和丘脑内的相互作用进行建模,以生成头皮上记录的 EEG 信号的模拟。我们还提出了平均场方法的两个新扩展,允许:(a)对所有通道和评估中模型参数值的变化进行非参数分析;(b)在静修期间检查模型化丘脑网状核 (TRN) 连接的变化。在成功拟合了每个静修期间三个评估点的全脑 EEG 数据后,发现有两个模型参数在两个冥想静修中都可以重复变化。首先,经过训练后,我们观察到模拟皮质和丘脑细胞之间的时间延迟增加。这种增加为之前在这些相同参与者中观察到的个体 alpha 频率降低提供了一个潜在的神经机制。其次,我们发现训练后模型化丘脑的丘脑网状核 (TRN) 和二级中继核 (SRN) 之间的抑制性连接强度降低。这种抑制强度的降低与模型的动态稳定性增加有关。总的来说,本文提出了第一个计算方法,该方法考虑了生理学和解剖学的核心方面,正式模拟了与密集冥想训练相关的大脑过程。模型参数的变化为通过冥想进行注意力训练的理论解释提供了信息,并可能激发未来在各种临床人群中使用冥想的研究。