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Antoine Lutz, Lawrence
L. Greischar, Nancy B. Rawlings, Matthieu Ricard, Richard J. Davidson
Practitioners understand “meditation,”
or mental training, to be a process of familiarization with one's
own mental life leading to long-lasting changes in cognition and
emotion. Little is known about this process and its impact on the
brain. Here we find that long-term Buddhist practitioners self-induce
sustained electroencephalographic high-amplitude gamma-band oscillations
and phase-synchrony during meditation. These electroencephalogram
patterns differ from those of controls, in particular over lateral
frontoparietal electrodes. In addition, the ratio of gamma-band
activity (25-42 Hz) to slow oscillatory activity (4-13 Hz) is initially
higher in the resting baseline before meditation for the practitioners
than the controls over medial frontoparietal electrodes. This difference
increases sharply during meditation over most of the scalp electrodes
and remains higher than the initial baseline in the postmeditation
baseline. These data suggest that mental training involves temporal
integrative mechanisms and may induce short-term and long-term neural
changes.
Little is known about the process of meditation
and its impact on the brain (1, 2). Previous studies show the general
role of neural synchrony, in particular in the gamma-band frequencies
(25-70Hz), in mental processes such as attention, working-memory,
learning, or conscious perception (3-7). Such synchronizations of
oscillatory neural discharges are thought to play a crucial role
in the constitution of transient networks that integrate distributed
neural processes into highly ordered cognitive and affective functions
(8, 9) and could induce synaptic changes (10, 11). Neural synchrony
thus appears as a promising mechanism for the study of brain processes
underlining mental training.
The subjects were eight long-term Buddhist practitioners
(mean age, 49 ± 15 years) and 10 healthy student volunteers
(mean age, 21 ± 1.5 years). Buddhist practitioners underwent
mental training in the same Tibetan Nyingmapa and Kagyupa traditions
for 10,000 to 50,000 h over time periods ranging from 15 to 40 years.
The length of their training was estimated based on their daily
practice and the time they spent in meditative retreats. Eight hours
of sitting meditation was counted per day of retreat. Control subjects
had no previous meditative experience but had declared an interest
in meditation. Controls underwent meditative training for 1 week
before the collection of the data.
We first collected an initial electroencephalogram
(EEG) baseline consisting of four 60-s blocks of ongoing activity
with a balanced random ordering of eyes open or closed for each
block. Then, subjects generated three meditative states, only one
of which will be described in this report. During each meditative
session, a 30-s block of resting activity and a 60-s block of meditation
were collected four times sequentially. The subjects were verbally
instructed to begin the meditation and meditated at least 20 s before
the start of the meditation block. We focus here on the last objectless
meditative practice during which both the controls and Buddhist
practitioners generated a state of “unconditional loving-kindness
and compassion.”
Meditative Instruction. The state of unconditional
loving-kindness and compassion is described as an “unrestricted
readiness and availability to help living beings.” This practice
does not require concentration on particular objects, memories,
or images, although in other meditations that are also part of their
long-term training, practitioners focus on particular persons or
groups of beings. Because “benevolence and compassion pervades
the mind as a way of being,” this state is called “pure
compassion” or “nonreferential compassion” (dmigs
med snying rje in Tibetan). A week before the collection of the
data, meditative instructions were given to the control subjects,
who were asked to practice daily for 1 h. The quality of their training
was verbally assessed before EEG collection. During the training
session, the control subjects were asked to think of someone they
care about, such as their parents or beloved, and to let their mind
be invaded by a feeling of love or compassion (by imagining a sad
situation and wishing freedom from suffering and well being for
those involved) toward these persons. After some training, the subjects
were asked to generate such feeling toward all sentient beings without
thinking specifically about anyone in particular. During the EEG
data collection period, both controls and long-term practitioners
tried to generate this nonreferential state of loving-kindness and
compassion. During the neutral states, all of the subjects were
asked to be in a nonmeditative, relaxed state.
EEG Recordings and Protocol. EEG data were recorded
at standard extended 10/20 positions with a 128-channel Geodesic
Sensor Net (Electrical Geodesics, Eugene, OR), sampled at 500 Hz,
and referenced to the vertex (Cz) with analog band-pass filtering
between 0.1 and 200 Hz. EEG signals showing eye movements or muscular
artifacts were manually excluded from the study. A digital notch
filter was applied to the data at 60 Hz to remove any artifacts
caused by alternating current line noise.
Bad channels were replaced by using spherical spline
interpolation (12). Two-second epochs without artifact were extracted
after the digital rereferencing to the average reference.
For
each electrode and for each 2-s epoch, the power spectral distribution
was computed by using Welch's method (13), which averages power
values across sliding and overlapping 512-ms time windows. To compute
the relative gamma activity, the power spectral distribution was
computed on the z-transformed EEG by using the mean and SD of the
signal in each 2-s window. This distribution was averaged through
all electrodes, and the ratio between gamma and slow rhythms was
computed. Intraindividual analyses were run on this measure and
a group analysis was run on the average ratio across 2-s windows.
The group analysis of the topography was performed by averaging
the power spectral distribution for each electrode in each block
and then computing the ratio of gamma to slow rhythms before averaging
across blocks.
Despite careful visual examination, the electroencephalographic
spectral analysis was hampered by the possible contamination of
brain signals by muscle activity. Here we assume that the spectral
emission between 80 and 120 Hz provided an adequate measure of the
muscle activity (14, 15). The muscle EEG signature is characterized
by a broad-band spectrum profile (8-150 Hz) peaking at 70-80 Hz
(16). Thus, the variation through time of the average spectral power
in the 80-120 Hz frequency band provided a way to quantify the variations
of the muscle contribution to the EEG gamma activity through time.
To estimate the gamma activity, adjusted for the very high frequencies,
we performed a covariance analysis for each region of interest (ROI)
for each subject. The dependent variable was the average gamma activity
(25-42 Hz) in each ROI. The continuous predictor was the electromyogram
activity (80-120 Hz power). The categorical predictors were the
blocks (initial baseline with eyes open and neutral blocks from
2 to 4) and the mental states (ongoing neutral versus meditation).
For the group analysis, separate repeated ANOVAs were
then performed on the relative gamma and adjusted gamma variation
between states, with the blocks as the within factor and the group
(practitioners versus controls) as the categorical predictor. For
the intrasubject analysis, we compared separately the relative gamma
and the raw gamma activity averaged within the ROIs in the initial
baseline state versus the meditative state.
Electrodes
of interest were referenced to a local average potential defined
as the average potential of its six surrounding neighbors. This
referencing montage restricted the electrical measurement to local
sources only and prevented spurious long-range synchrony from being
detected if the muscle activity over one electrode propagated to
another distant electrode. The methods used to measure long-range
synchronization are described in detail in Supporting Methods, which
is published as supporting information on the PNAS web site. In
summary, for each epoch and electrode, the instantaneous phase of
the signal was extracted at each frequency band between 25 and 42
Hz in 2-Hz steps by using a convolution with Morlet wavelets. The
stability through time of their phase difference was quantified
in comparison with white-noise signals as independent surrogates.
A measure of synchronous activity was defined as the number of electrode
pairs among the 294 studied combinations that had higher synchrony
density on average across frequencies than would be expected to
occur between independent signals. The electrode pairs were taken
between the ROIs when we measured the scalp distribution of gamma
activity (see Fig. 3a). A repeated-measures ANOVA was performed
on the average size of the synchrony pattern across all frequency
bands and epochs in each block with the original resting state and
the meditative state as the within factors and the group (practitioners
versus controls) as the between-groups factor.
Absolute gamma power and long-distance synchrony
during mental training. (a) Scalp distribution of gamma activity
during meditation. The color scale indicates the percentage
of subjects in each group that had an increase of gamma activity
during the mental training. (Left) Controls. (Right) Practitioners.
An increase was defined as a change in average gamma activity
of >1 SD during the meditative state compared with the
neutral state. Black circles indicate the electrodes of interest
for the group analysis. (b) Adjusted gamma variation between
neutral and meditative states over electrodes F3-8, Fc3-6,
T7-8, Tp7-10, and P7-10 for controls and long-time practitioners
[F(1, 16) = 4.6, P < 0.05; ANOVA]. (c) Interaction between
the group and state variables for the number of electrode
pairs between ROIs that exhibited synchrony higher than noise
surrogates [F(1, 16) = 6.5, P < 0.05; ANOVA]. The blue
line represents the controls; the red line represents the
practitioners. (d) Correlation between the length of the long-term
practitioners' meditation training and the ratio of relative
gamma activity averaged across electrodes in the initial baseline
(P < 0.02). Dotted lines represent 95% confidence intervals.
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Absolute gamma power and long-distance synchrony during
mental training. (a) Scalp distribution of gamma activity during
meditation. The color scale indicates the percentage of subjects
in each group that had an increase of gamma activity during the
mental training. (Left) Controls. (Right) Practitioners. An increase
was defined as a change in average gamma activity of >1 SD during
the meditative state compared with the neutral state. Black circles
indicate the electrodes of interest for the group analysis. (b)
Adjusted gamma variation between neutral and meditative states over
electrodes F3-8, Fc3-6, T7-8, Tp7-10, and P7-10 for controls and
long-time practitioners [F(1, 16) = 4.6, P < 0.05; ANOVA]. (c)
Interaction between the group and state variables for the number
of electrode pairs between ROIs that exhibited synchrony higher
than noise surrogates [F(1, 16) = 6.5, P < 0.05; ANOVA]. The
blue line represents the controls; the red line represents the practitioners.
(d) Correlation between the length of the long-term practitioners'
meditation training and the ratio of relative gamma activity averaged
across electrodes in the initial baseline (P < 0.02). Dotted
lines represent 95% confidence intervals.
We first computed the power spectrum density over
each electrode in the EEG signals visually free from artifacts.
This procedure was adapted to detect change in local synchronization
(6, 9). Local synchronization occurs when neurons recorded by a
single electrode transiently oscillate at the same frequency with
a common phase: Their local electric field adds up to produce a
burst of oscillatory power in the signal reaching the electrode.
Thus, the power spectral density provides an estimation of the average
of these peaks of energy in a time window. During meditation, we
found high-amplitude gamma oscillations in the EEGs of long-time
practitioners (subjects S1-S8) that were not present in the initial
baseline. Fig. 1a provides a representative example of the raw EEG
signal (25-42 Hz) for subject S4. An essential aspect of these gamma
oscillations is that their amplitude monotonically increased over
the time of the practice (Fig. 1b).
High-amplitude gamma activity during mental
training. (a) Raw electroencephalographic signals. At t
= 45 s, practitioner S4 started generating a state of nonreferential
compassion, block 1. (b) Time course of gamma activity power
over the electrodes displayed in a during four blocks computed
in a 20-s sliding window every 2 s and then averaged over
electrodes. (c) Time course of subjects' cross-hemisphere
synchrony between 25 and 42 Hz. The density of long-distance
synchrony above a surrogate threshold was calculated in
a 20-s sliding window every 2 s for each cross-hemisphere
electrode pair and was then averaged across electrode pairs
(see Methods). Colors denote different trial blocks: blue,
block 1; red, block 2; green, block 3; black, block 4.
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High-amplitude gamma activity during mental training.
(a) Raw electroencephalographic signals. At t = 45 s, practitioner
S4 started generating a state of nonreferential compassion, block
1. (b) Time course of gamma activity power over the electrodes displayed
in a during four blocks computed in a 20-s sliding window every
2 s and then averaged over electrodes. (c) Time course of subjects'
cross-hemisphere synchrony between 25 and 42 Hz. The density of
long-distance synchrony above a surrogate threshold was calculated
in a 20-s sliding window every 2 s for each cross-hemisphere electrode
pair and was then averaged across electrode pairs (see Methods).
Colors denote different trial blocks: blue, block 1; red, block
2; green, block 3; black, block 4.
Relative Gamma Power. We characterized these changes
in gamma oscillations in relation to the slow rhythms (4-13 Hz)
that are thought to play a complementary function to fast rhythms
(3). Fig. 2a shows the intraindividual analysis of this ratio averaged
through all electrodes. This ratio, which was averaged across all
electrodes, presented an increase compared with the initial baseline,
which was greater than twice the baseline SD for two controls and
all of the practitioners. The ratio of gamma-band activity (25-42
Hz) compared to slow rhythms was initially higher in the baseline
before meditation for the practitioners compared with the controls
(t = 4.0, df = 16, P < 0.001; t test) (Fig. 2b). This effect
remained when we compared the three youngest practitioners with
the controls (25, 34, and 36 years old, respectively) (t = 2.2,
df = 11, P < 0.05; t test). This result suggests that the mean
age difference between groups does not fully account for this baseline
difference (17).
Fig. 2.
 Fig.
2.
Relative gamma power during mental training. (a and b)
Intraindividual analysis on the ratio of gamma (25-42 Hz)
to slow (4-13 Hz) oscillations averaged through all electrodes.
(a) The abscissa represents the subject numbers, the ordinate
represents the difference in the mean ratio between the
initial state and meditative state, and the black and red
stars indicate that this increase is >2- and 3-fold,
respectively, the baseline SD. (b) Interaction between the
subject and the state factors for this ratio [F(2, 48) =
3.5, P < 0.05; ANOVA]. IB, initial baseline; OB, ongoing
baseline; MS, meditative state. (c-e) Comparisons of this
ratio between controls and practitioners over each electrode
[t > 2.6, P < 0.01, scaling (-2.5, 4); t test] during
the premeditative initial baseline (c), between the ongoing
baseline and the meditative state (d), and between the ongoing
baseline and the initial baseline (e).
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Relative gamma power during mental training. (a and
b) Intraindividual analysis on the ratio of gamma (25-42 Hz) to
slow (4-13 Hz) oscillations averaged through all electrodes. (a)
The abscissa represents the subject numbers, the ordinate represents
the difference in the mean ratio between the initial state and meditative
state, and the black and red stars indicate that this increase is
>2- and 3-fold, respectively, the baseline SD. (b) Interaction
between the subject and the state factors for this ratio [F(2, 48)
= 3.5, P < 0.05; ANOVA]. IB, initial baseline; OB, ongoing baseline;
MS, meditative state. (c-e) Comparisons of this ratio between controls
and practitioners over each electrode [t > 2.6, P < 0.01,
scaling (-2.5, 4); t test] during the premeditative initial baseline
(c), between the ongoing baseline and the meditative state (d),
and between the ongoing baseline and the initial baseline (e).
This baseline difference increased sharply during
meditation, as revealed by an interaction between the state and
group factors [F(2, 48) = 3.7, P < 0.05; ANOVA] (Fig. 2b). This
difference was still found in comparisons between gamma activity
and both theta (4-8 Hz) and alpha activity. To localize these differences
on the scalp, similar analyses were performed on each individual
electrode. Fig. 2c shows a higher ratio of fast versus slow oscillations
for the long-term practitioners versus the controls in the initial
baseline over medial frontoparietal electrodes (t > 2.59, P =
0.01; t test). Similarly, Fig. 2d shows a group difference between
the ongoing baseline states and the meditative state, in particular
over the frontolateral and posterior electrodes. Interestingly,
the postmeditative baseline (neutral states in blocks 2, 3, and
4) also revealed a significant increase in this ratio compared with
the premeditation baseline over mainly anterior electrodes (Fig.
2e).
These data suggest that the two groups had different
electrophysiological spectral profiles in the baseline, which are
characterized by a higher ratio of gamma-band oscillatory rhythm
to slow oscillatory rhythms for the long-term practitioners than
for the controls. This group difference is enhanced during the meditative
practice and continues into the postmeditative resting blocks.
Absolute Gamma Power. We then studied the variation
through time of the ongoing gamma-band activity itself. The gamma-band
activity (25-42 Hz) was first z-transformed in each block and compared
over each electrode with the mean and SD of their respective neutral
block (ongoing baseline). The normalized gamma activity was then
averaged across the blocks. Fig. 3a shows the percentage of subjects
presenting an increase of at least 1 SD during meditation compared
with neutral state. A common topographical pattern of gamma activity
emerged across the long-term practitioners but not across the control
subjects. This pattern was located bilaterally over the parieto-temporal
and midfrontal electrodes. Fig. 3a shows four ROIs containing seven
electrodes each and located around F3-8, Fc3-6, T7-8, Tp7-10, and
P7-10. Hereafter, we focus on the electrodes activated in these
ROIs.
Intraindividual analyses similar to those for relative
gamma activity were run on the average gamma power across these
ROIs and exhibited the same pattern as that found for relative gamma.
It is possible that these high-amplitude oscillations are partially
contaminated by muscle activity (18). Because we found increases
in gamma activity during the postmeditative resting baseline compared
with the initial resting baseline, it is unlikely that the changes
we reported could be solely caused by muscle activity, because there
was little evidence of any muscle activity during these baseline
periods. (Fig. 2e). Secondly, we showed that the meditative state
and nonmeditative state that mimicked and exaggerated the possible
muscle activity during meditation exhibit significantly different
spectral profiles (Fig. 4, which is published as supporting information
on the PNAS web site). Furthermore, for the two subjects showing
the highest gamma activity, we showed that amplitude of the gamma-band
activity before external stimulation predicts the amplitude of high
fast-frequency oscillations (20-45 Hz) evoked by auditory stimuli
(Fig. 5, which is published as supporting information on the PNAS
web site). Because the evoked activity is relatively independent
of muscle activity, the relationship between the pre-stimulation
fast-frequency oscillation and the evoked activity suggests that
these high-amplitude gamma rhythms are not muscle artifacts (Fig.
5 and Fig. 6, which is published as supporting information on the
PNAS web site). This claim is further supported by the localization
within the brain of the dipole sources of these fast-frequency-evoked
oscillations (Figs. 7-9, which are published as supporting information
on the PNAS web site).
Yet we still chose to cautiously interpret the raw
values of these gamma oscillations because of the concomitant increase
of spectral power >80 Hz during meditation. This increase could
also reflect a change in muscle activity rather than high-frequency,
gamma-band oscillations [70-105 Hz (19)], which are mostly low-pass
filtered by the skull at >80 Hz. Thus, we chose to conservatively
interpret the activity at >80 Hz as indicating muscle activity.
To remove the contribution of putative muscle activity,
we quantified the increase in the average amplitude of gamma oscillation
(25-42 Hz) adjusted for the effect of the very high-frequency variation
(80-120 Hz) (see Methods and ref. 20). The adjusted average variation
in gamma activity was >30-fold greater among practitioners compared
with controls (Fig. 3b). Group analysis was run on the average adjusted
gamma activity over these ROIs. Gamma activity increased for both
the long-term practitioners and controls from neutral to meditation
states [F(1, 16) = 5.2, P < 0.05; ANOVA], yet this increase was
higher for the long-time practitioners than for the controls [F(1,
16) = 4.6, P < 0.05; interaction between the state and group
factors ANOVA] (Fig. 3b). In summary, the generation of this meditative
state was associated with gamma oscillations that were significantly
higher in amplitude for the group of practitioners than for the
group of control subjects.
Long-Distance Gamma Synchrony. Finally, a long-distance
synchrony analysis was conducted between electrodes from the ROIs
found in Fig. 3a. Long-distance synchrony is thought to reflect
large-scale neural coordination (9) and can occur when two neural
populations recorded by two distant electrodes oscillate with a
precise phase relationship that remains constant during a certain
number of oscillation cycles. This approach is illustrated in Fig.
1c for selected electrodes (F3/4, Fc5/6, and Cp5/6). For subject
S4, the density of cross-hemisphere, long-distance synchrony increases
by ˜30% on average during meditation and follows a pattern
similar to the oscillatory gamma activity.
For all subjects, locally referenced, long-distance
synchronies were computed for each 2-s epoch during the neutral
and meditative states between all electrode pairs and across eight
frequencies ranging from 25 to 42 Hz. In each meditative or neutral
block, we counted the number of electrode pairs (294 electrode pairs
maximum) that had an average density of synchrony higher than those
derived from noise surrogates (see Methods). We ran a group analysis
on the size of the synchronous pattern and found that its size was
greater for long-time practitioners than for controls [F(1, 16)
= 10.3, P < 0.01; ANOVA] and increased from neutral to meditation
states [F(1, 16) = 8.2, P < 0.02; ANOVA]. Fig. 3c shows that
the group and state factors interacted on long-distance synchrony
[F(1, 16) = 6.5, P < 0.05; ANOVA]: The size of synchrony patterns
increased more for the long-time practitioners than for the controls
from neutral to meditation states. These data suggest that large-scale
brain coordination increases during mental practice.
Finally, we investigated whether there was a correlation
between the hours of formal sitting meditation (for subjects S1-S8,
9,855-52,925 h) and these electrophysiological measures for the
long-term practitioners, in either the initial or meditative states
(same values as in Figs. 2 and 3). The correlation coefficients
for the relative, absolute, and phase-synchrony gamma measures were
positive: r = 0.79, 0.63, and 0.64, respectively, in the initial
state, and r = 0.66, 0.62, and 0.43, respectively, in the meditative
state. A significant positive correlation was found only in the
initial baseline for the relative gamma (r = 0.79, P < 0.02)
(Fig. 3d). These data suggest that the degree of training can influence
the spectral distribution of the ongoing baseline EEG. The age of
the subject was not a confounding factor in this effect as suggested
by the low correlation between the practitioner age and the relative
gamma (r = 0.23).
We found robust gamma-band oscillation and long-distance
phase-synchrony during the generation of the nonreferential compassion
meditative state. It is likely based on descriptions of various
meditation practices and mental strategies that are reported by
practitioners that there will be differences in brain function associated
with different types of meditation. In light of our initial observations
concerning robust gamma oscillations during this compassion meditation
state, we focused our initial attention on this state. Future research
is required to characterize the nature of the differences among
types of meditation. Our resulting data differ from several studies
that found an increase in slow alpha or theta rhythms during meditation
(21). The comparison is limited by the fact that these studies typically
did not analyze fast rhythms. More importantly, these studies mainly
investigated different forms of voluntary concentrative meditation
on an object (such as a meditation on a mantra or the breath). These
concentration techniques can be seen as a particular form of top-down
control that may exhibit an important slow oscillatory component
(22). First-person descriptions of objectless meditations, however,
differ radically from those of concentration meditation. Objectless
meditation does not directly attend to a specific object but rather
cultivates a state of being. Objectless meditation does so in such
a way that, according to reports given after meditation, the intentional
or object-oriented aspect of experience appears to dissipate in
meditation. This dissipation of focus on a particular object is
achieved by letting the very essence of the meditation that is practiced
(on compassion in this case) become the sole content of the experience,
without focusing on particular objects. By using similar techniques
during the practice, the practitioner lets his feeling of loving-kindness
and compassion permeate his mind without directing his attention
toward a particular object. These phenomenological differences suggest
that these various meditative states (those that involve focus on
an object and those that are objectless) may be associated with
different EEG oscillatory signatures.
The high-amplitude gamma activity found in some of
these practitioners are, to our knowledge, the highest reported
in the literature in a nonpathological context (23). Assuming that
the amplitude of the gamma oscillation is related to the size of
the oscillating neural population and the degree of precision with
which cells oscillate, these data suggest that massive distributed
neural assemblies are synchronized with a high temporal precision
in the fast frequencies during this state. The gradual increase
of gamma activity during meditation is in agreement with the view
that neural synchronization, as a network phenomenon, requires time
to develop (24), proportional to the size of the synchronized neural
assembly (25). But this increase could also reflect an increase
in the temporal precision of the thalamo-cortical and corticocortical
interactions rather than a change in the size of the assemblies
(8). This gradual increase also corroborates the Buddhist subjects'
verbal report of the chronometry of their practice. Typically, the
transition from the neutral state to this meditative state is not
immediate and requires 5-15 s, depending on the subject. The endogenous
gamma-band synchrony found here could reflect a change in the quality
of moment-to-moment awareness, as claimed by the Buddhist practitioners
and as postulated by many models of consciousness (26, 27).
In addition to the meditation-induced effects, we
found a difference in the normative EEG spectral profile between
the two populations during the resting state before meditation.
It is not unexpected that such differences would be detected during
a resting baseline, because the goal of meditation practice is to
transform the baseline state and to diminish the distinction between
formal meditation practice and everyday life. Moreover, Gusnard
and Raichle (28) have highlighted the importance of characteristic
patterns of brain activity during the resting state and argue that
such patterns affect the nature of task-induced changes. The differences
in baseline activity reported here suggest that the resting state
of the brain may be altered by long-term meditative practice and
imply that such alterations may affect task-related changes. Our
practitioners and control subjects differed in many respects, including
age, culture of origin, and first language, and they likely differed
in many more respects, including diet and sleep. We examined whether
age was an important factor in producing the baseline differences
we observed by comparing the three youngest practitioners with the
controls and found that the mean age difference between groups is
unlikely the sole factor responsible for this baseline difference.
Moreover, hours of practice but not age significantly predicted
relative gamma activity during the initial baseline period. Whether
other demographic factors are important in producing these effects
will necessarily require further research, particularly longitudinal
research that follows individuals over time in response to mental
training.
Our study is consistent with the idea that attention
and affective processes, which gamma-band EEG synchronization may
reflect, are flexible skills that can be trained (29). It remains
for future studies to show that these EEG signatures are caused
by long-term training itself and not by individual differences before
the training, although the positive correlation that we found with
hours of training and other randomized controlled trials suggest
that these are training-related effects (2). The functional consequences
of sustained gamma-activity during mental practice are not currently
known but need to be studied in the future. The study of experts
in mental training may offer a promising research strategy to investigate
high-order cognitive and affective processes (30).
We thank J. Dunne for Tibetan translation;
A. Shah, A. Francis, and J. Hanson for assistance in data collection
and preanalysis; the long-time Buddhist practitioners who participated
in the study; J.-Ph. Lachaux, J. Martinerie, W. Singer, and G.
Tononi and his team for suggestions on the manuscript; F. Varela
for early inspirations; and His Holiness the Dalai Lama for his
encouragement and advice in the conducting of this research. We
also thank the Mind and Life Institute for providing the initial
contacts and support to make this research possible. This research
was supported by National Institute of Mental Health Mind-Body
Center Grant P50-MH61083, the Fyssen Foundation, and a gift from
Edwin Cook and Adrianne Ryder-Cook.
Original Link at:
http://www.pnas.org/content/101/46/16369.full
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