Conceived and designed the experiments: HO TL JD HB. Performed the experiments: JD AW LZ MJ. Analyzed the data: HO TL JD AW MB HB. Wrote the paper: HO TL JD AW MB HB.
Mind-body practices that elicit the relaxation response (RR) have been used worldwide for millennia to prevent and treat disease. The RR is characterized by decreased oxygen consumption, increased exhaled nitric oxide, and reduced psychological distress. It is believed to be the counterpart of the stress response that exhibits a distinct pattern of physiology and transcriptional profile. We hypothesized that RR elicitation results in characteristic gene expression changes that can be used to measure physiological responses elicited by the RR in an unbiased fashion.
We assessed whole blood transcriptional profiles in 19 healthy, long-term practitioners of daily RR practice (group M), 19 healthy controls (group N1), and 20 N1 individuals who completed 8 weeks of RR training (group N2). 2209 genes were differentially expressed in group M relative to group N1 (p<0.05) and 1561 genes in group N2 compared to group N1 (p<0.05). Importantly, 433 (p<10−10) of 2209 and 1561 differentially expressed genes were shared among long-term (M) and short-term practitioners (N2). Gene ontology and gene set enrichment analyses revealed significant alterations in cellular metabolism, oxidative phosphorylation, generation of reactive oxygen species and response to oxidative stress in long-term and short-term practitioners of daily RR practice that may counteract cellular damage related to chronic psychological stress. A significant number of genes and pathways were confirmed in an independent validation set containing 5 N1 controls, 5 N2 short-term and 6 M long-term practitioners.
This study provides the first compelling evidence that the RR elicits specific gene expression changes in short-term and long-term practitioners. Our results suggest consistent and constitutive changes in gene expression resulting from RR may relate to long term physiological effects. Our study may stimulate new investigations into applying transcriptional profiling for accurately measuring RR and stress related responses in multiple disease settings.
The relaxation response (RR) has been defined as a mind-body intervention that offsets the physiological effects caused by stress
Mind-body approaches that elicit the RR include: various forms of meditation, repetitive prayer, yoga, tai chi, breathing exercises, progressive muscle relaxation, biofeedback, guided imagery and Qi Gong
Despite these observations and the well-established clinical effects of RR-eliciting practices
This study includes both cross sectional and an 8-week prospective design. Healthy adults were enrolled, comprising 2 groups: individuals with a long-term RR practice (group M; n = 19) or those with no prior RR experience (novice; group N1; n = 19). Group N1 novices, furthermore, underwent 8-weeks of RR training (Group N2; n = 20) for the prospective analysis. In the cross sectional study, we compare gene expression profiles (GEP) in whole blood between groups M and N1, whereas in the prospective study GEP is compared for each individual novice subject before and after RR experience, matched individuals of groups N1 versus N2 respectively.
Transcriptional differences between the different groups and within individuals before and after the RR are assessed by microarray analysis using Affymetrix HG-U133 Plus 2.0 genechips (
Analysis of differentially expressed genes: a) Venn diagrams: * indicates significant overlaps (p<106); b) Heatmaps of the 595 differentially regulated genes in both M vs. N1 and M vs. N2 (left) and the 418 differentially regulated genes in both M vs. N1 and N2 vs. N1; c) Heatmap of 15 genes in the intersection of all three groups (gene symbols listed on the right). In heatmaps, rows represent genes and columns represent samples from N1, N2, and M groups. Genes are clustered using row-normalized signals and mapped to the [−1,1] interval (shown in scales beneath each heatmap). Red and green represent high and low expression values, respectively.
Heatmaps generated using these genes exhibit consistent GEP changes across the three groups with a few samples in each group resembling the GEP of another group. To determine if any demographic characteristics (e.g. age, ethnicity , etc.) influences this observation, we clustered each group separately using the same set of genes. For each cluster analysis, we calculated the significance of observing a characteristic among the samples in the subgroups formed. We found that number of times M subjects reported eliciting the RR per week was significantly associated with the subgroups formed when M samples were clustered using genes differentially expressed in long term RR practitioners only. Specifically, there were 316 up-regulated and 279 down-regulated genes differentially expressed in group M compared to both group N1 and N2; (
Finally, the intersection of all 3 areas (M vs. N1, N2 vs. N1 and M vs. N2) identifies genes with expression behavior that is monotonically changed between N1 to N2 to M (
We performed Expression Analysis Systematic Explorer (EASE) analysis
| SELECTED GENE ONTOLOGY CATEGORY | Original Data-set (n = 58) | Validation Data-set (n = 16) | ||
| M vs. N1 (2209) | N2 vs. N1 (1561) | M vs. N1 (1846) | N2 vs. N1 (2390) | |
| 20† | 7 | 7 | 20† | |
| 19* | 16* | 21** | 17 | |
| 22** | 15* | 18* | 21* | |
| 64‡ | 20* | 31‡ | 33† | |
| 667‡ | 477‡ | 574† | 694† | |
| 31* | 24* | 30* | 35* | |
| 38 | 37** | 48† | 42 | |
| 12 | 14** | 14* | 13 | |
| 16 | 13* | 17* | 18* | |
| 9* | 11‡ | 8* | 13‡ | |
Numbers in parentheses are the total number of genes per comparison for each data-set or the GO reference set. The number of differentially expressed genes with representative members in that GO category for each comparison and data-set are listed. Significance of EASE scores are indicated as follows: p<0.05*, p<0.01**, p<0.001†, p<0.0001‡.
Even though our analyses of differentially expressed genes and GO categories associated with RR practice meet widely accepted criteria for statistical significance, we were concerned about the relatively small fold changes that were observed (see Supplementary Methods). To address this issue we employed Gene Set Enrichment Analysis (GSEA). GSEA has proven to be useful for capturing subtle expression changes in complex gene signatures based on predefined gene sets or pathways
The analysis has been performed for >1200 predefined datasets using GSEA 2.0 software. Signal values for each gene are obtained by collapsing the probe values using max_probe algorithm. Representative datasets, significantly enriched (FDR<50%, or NPV< = 0.01) between any two groups and corresponding heatmaps (depicting relative gene expression changes of core enrichment) are shown in a) N2 vs. N1 and b) M vs. N1. Datasets that are enriched in both the original and validation analyses are marked with *. c) Heatmaps of ribosomal proteins and ubiquitin mediated proteolysis illustrate transitional trends in gene expression across the N1, N2 and M groups.
GSEA analysis of N2 vs. N1 showed highly significant enrichment in gene sets related to various cellular stressors/stress responses and metabolism. To a pronounced degree these observations complement the results of GO analysis presented in the Table, also depicting significant alterations in cellular response to stress, oxidative and primary metabolism. The transition effect of the RR from novice to short term (8 weeks) to long term RR practitioners has been denoted through a colorgram of ribosomal proteins and ubiquitin mediated proteolysis gene sets (
As a validation of our results, we repeated the experimental and analysis procedures defined in the “
Results from our study indicate that there are distinct differences in the GEPs between individuals with many years of RR practice (group M) and those without such experience (group N1). Furthermore we find significant GEP changes within the same individuals before (N1) and after 8 weeks of RR training (N2). Finally, the changes in GEP found in M vs. N1, and those of N2 vs. N1, are to a great degree similar when assessed by analysis of differentially expressed genes, GO analysis and GSEA.
It is becoming increasingly clear that psychosocial stress can manifest as system-wide perturbations of cellular processes, generally increasing oxidative stress and promoting a pro-inflammatory milieu
The RR is clinically effective for ameliorating symptoms in a variety of stress-related disorders including cardiovascular, autoimmune and other inflammatory conditions and pain
Our findings are relatively consistent with those found in a study of Qi Gong
Overall, similar genomic pattern changes occurred in practitioners of a specific mind body technique (Qi Gong) as well as in our long-term practitioners who utilized different RR practices including Vipassna, mantra, mindfulness or transcendental meditation, breath focus, Kripalu or Kundalini Yoga, and repetitive prayer. This indicates there is a common RR state regardless of the techniques used to elicit it.
Our study is the first to prospectively evaluate GEP changes in individuals before and after a short-term (8 week) RR training which consequently enables an appreciation of the parallel GEP changes that occur with short- and/or long-term RR practice. Replications in larger cohorts are warranted. Future investigations could better define the therapeutic value and required duration of RR training to counter stress-related disorders.
Nineteen healthy practitioners of various RR eliciting techniques (including several types of meditation, Yoga, and repetitive prayer) participated (M group; n = 19). Years of practice averaged 9.4 years (5.0 sd) and ranged from 4 to 20 years. Twenty individuals without any prior RR eliciting experience served as controls (N group; n = 20).. As shown in
| N group | M group | p-value | |
| 36.68±6.22-3 | 37.21±6.93 | 0.81 | |
| 0.15 | |||
| 1.0 | |||
| 66.32±3.73 | 68.79±4.22 | 0.06 | |
| 152.47±24.40 | 153.58±16.82 | 0.87 | |
| 0.73 | |||
The demographic characteristics for the N and M groups. The age, height, and weight p-values were calculated using t-test, whereas the race, gender, and marital status p-values were calculated using chi-square test. There were no significant differences across the groups
The study protocol was approved by the Committee on Clinical Investigations at the Beth Israel Deaconess Medical Center (BIDMC), Boston MA. All subjects provided written informed consent and the study was conducted in the General Clinical Research Center (GCRC) of the BIDMC. After providing written informed consent, participants were screened by a physician and had blood drawn to ensure good health. All participants completed a testing session in the GCRC. N1 (novice) subjects had 8-weeks of RR training, listened to a 20-minute RR-eliciting CD daily and returned to the GCRC for a repeat testing session (hereafter classified as the N2 group).
N subjects received 8 weeks of RR training. Training included information about reducing daily stress, and a 20-minute elicitation of the RR
During the RR elicitation in the weekly session, the subject was guided through a RR sequence including: diaphragmatic breathing, body scan, as well as mantra and mindfulness meditation, while subjects passively ignored intrusive thoughts. The specific CD guided the subject through the same sequence and has our clinical research studies and clinical practice for more than 15 years
To measure compliance, participants' daily home practice logs were reviewed each week and at the end of the 8 week training. These logs indicate that N subjects listened for an average of 17.5 minutes per day (3.7 sd) over 8-weeks.
Following previously described protocols, the transcriptional profile of samples were probed using Affymetrix HG-U 133 Plus 2.0 chips representing over 47,000 transcripts and variants using more than 54,000 probesets. Scanned image output files were visually examined for major chip defects and hybridization artifacts and then analyzed with Affymetrix GeneChip Microarray Analysis Suite 5.0 (MAS5) software (Affymetrix). The image from each chip was scaled such that the 2% trimmed mean intensity value for all arrays was adjusted to target intensity and reported as a non-negative quantity. Chips used for subsequent analysis consisted of 19 M, 19 N1 and 20 N2 samples (one chip from the N1 group had insufficient signal values). A hierarchical clustering technique was used to construct an Unweighted Pair Group Method with Arithmetic-mean (UPGMA) tree using Pearson's correlation as the metric of similarity
Differentially expressed genes between the 3 groups (N2 vs. N1, M vs. N1 and M vs. N2) were separately analyzed using EASE to identify biologically relevant categories that are over-represented in the input set
We gratefully acknowledge Mariola T. Milik and Jennifer M. Johnston for their contributions during the study.