Department of Neuroscience, Imaging and Clinical Sciences, "Gabriele d'Annunzio" University Chieti- Pescara, Via dei Vestini 33, 66013, Chieti, Italy.
Department of Psychology, "La Sapienza" University Rome, 00185, Rome, Italy.
Brain Topogr. 2023 May;36(3):409-418. doi: 10.1007/s10548-023-00950-3. Epub 2023 Mar 28.
Neuroimaging studies have provided evidence that extensive meditation practice modifies the functional and structural properties of the human brain, such as large-scale brain region interplay. However, it remains unclear how different meditation styles are involved in the modulation of these large-scale brain networks. Here, using machine learning and fMRI functional connectivity, we investigated how focused attention and open monitoring meditation styles impact large-scale brain networks. Specifically, we trained a classifier to predict the meditation style in two groups of subjects: expert Theravada Buddhist monks and novice meditators. We showed that the classifier was able to discriminate the meditation style only in the expert group. Additionally, by inspecting the trained classifier, we observed that the Anterior Salience and the Default Mode networks were relevant for the classification, in line with their theorized involvement in emotion and self-related regulation in meditation. Interestingly, results also highlighted the role of specific couplings between areas crucial for regulating attention and self-awareness as well as areas related to processing and integrating somatosensory information. Finally, we observed a larger involvement of left inter-hemispheric connections in the classification. In conclusion, our work supports the evidence that extensive meditation practice modulates large-scale brain networks, and that the different meditation styles differentially affect connections that subserve style-specific functions.
神经影像学研究提供了证据,表明广泛的冥想练习可以改变大脑的功能和结构特性,如大脑区域的大范围相互作用。然而,目前尚不清楚不同的冥想方式如何参与调节这些大规模的大脑网络。在这里,我们使用机器学习和 fMRI 功能连接,研究了专注冥想和开放监控冥想方式如何影响大脑的大规模网络。具体来说,我们训练了一个分类器来预测两组被试者的冥想方式:资深的上座部佛教僧侣和新手冥想者。我们发现,只有在专家组中,分类器才能区分冥想方式。此外,通过检查训练好的分类器,我们观察到前注意网络和默认模式网络与冥想中情绪和自我相关调节的理论假设有关,这与分类器有关。有趣的是,结果还强调了调节注意力和自我意识的关键区域之间的特定耦合,以及与躯体感觉信息处理和整合相关的区域的作用。最后,我们观察到分类中左半球间连接的更大参与。总之,我们的工作支持了这样的证据,即广泛的冥想练习可以调节大脑的大规模网络,而不同的冥想方式会以不同的方式影响支持特定功能的连接。