Mining the Mind: Linear Discriminant Analysis of MEG source reconstruction time series supports dynamic changes in deep brain regions during meditation sessions
D. Calvetti, B. Johnson, A. Pascarella, F. Pitolli, E. Somersalo, B., Vantaggi

TL;DR
This study uses MEG data and linear discriminant analysis to identify brain regions that differentiate meditation states from resting state, revealing dynamic activity changes in deep brain structures during meditation.
Contribution
It introduces a novel application of LDA on MEG spectral data to distinguish meditation states and identifies key deep brain regions involved in meditation-related brain activity.
Findings
Cingulate and insular cortices are significant in state separation.
Deep structures like accumbens, caudate, putamen, thalamus, and amygdala are involved.
LDA effectively classifies meditation and resting states based on spectral features.
Abstract
Meditation practices have been claimed to have a positive effect on the regulation of mood and emotion for quite some time by practitioners, and in recent times there has been a sustained effort to provide a more precise description of the changes induced by meditation on human brain. Longitudinal studies have reported morphological changes in cortical thickness and volume in selected brain regions due to meditation practice, which is interpreted as evidence for effectiveness of it beyond the subjective self reporting. Evidence based on real time monitoring of meditating brain by functional imaging modalities such as MEG or EEG remains a challenge. In this article we consider MEG data collected during meditation sessions of experienced Buddhist monks practicing focused attention (Samatha) and open monitoring (Vipassana) meditation, contrasted by resting state with eyes closed. The MEG…
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