Introduction
Mounting evidence supports the role of emotion-related factors in disease etiology and health promotion (Kubzansky et al., Reference Kubzansky, Huffman, Boehm, Hernandez, Kim, Koga and Labarthe2018; Levine et al., Reference Levine, Cohen, Commodore-Mensah, Fleury, Huffman, Khalid and Kubzansky2021). Both negative (e.g. depression, anxiety) and positive (e.g. happiness, pleasure) manifestations of emotion have been linked with maintaining physical health as well as the risk of developing disease, including cardiovascular disease (CVD) (Boehm & Kubzansky, Reference Boehm and Kubzansky2012; Levine et al., Reference Levine, Cohen, Commodore-Mensah, Fleury, Huffman, Khalid and Kubzansky2021), obesity (Mannan, Mamun, Doi, & Clavarino, Reference Mannan, Mamun, Doi and Clavarino2016), and overall mortality (Trudel-Fitzgerald et al., Reference Trudel-Fitzgerald, Millstein, von Hippel, Howe, Tomasso, Wagner and VanderWeele2019). Additional work suggests emotion regulation – that is, the strategies by which individuals shape the nature of emotions they experience as well as when and how they experience these emotions – may also impact health and help explain observed associations of distinct positive and negative emotions with a range of health outcomes (Trudel-Fitzgerald, Guimond, & Kubzansky, Reference Trudel-Fitzgerald, Guimond, Kubzansky, Gross and Fordin press).
The human body and particularly the gastrointestinal (GI) tract is inhabited by hundreds of trillions of microbes, collectively known as the human microbiome. Rather than simple passengers in or on our bodies, commensal microbes play key roles in physical health and diseases (Clemente, Ursell, Parfrey, & Knight, Reference Clemente, Ursell, Parfrey and Knight2012). A disrupted gut microbiome is associated with various health conditions including cardiometabolic diseases (Brial, Le Lay, Dumas, & Gauguier, Reference Brial, Le Lay, Dumas and Gauguier2018). Accumulating evidence suggests bidirectional communications between gut microbiota and the brain, i.e. the gut–brain axis, which plays a key role in mental and physical health (Morais, Schreiber, & Mazmanian, Reference Morais, Schreiber and Mazmanian2020). The gut–brain axis consists of bidirectional communication among the central nervous system (including brain regions involved in emotion processing and emotion regulation, notably the amygdala, the hippocampus, and the prefrontal cortex), the autonomic nervous system, and the enteric nervous system (Carbia et al., Reference Carbia, Lannoy, Maurage, Lopez-Caneda, O'Riordan, Dinan and Cryan2021; Morais et al., Reference Morais, Schreiber and Mazmanian2020). Thus, the gut–brain axis links emotional and cognitive areas in the central nervous system with the gut; this connection allows bidirectional effects whereby the brain can drive changes in the gut environment and alter the microbial composition; and the gut microbiota can in turn influence emotional processes. Prior work has found multiple psychiatric disorders characterized by frequent and intense negative emotions (e.g. depression, anxiety) are often accompanied by functional GI disorders (Muscatello, Bruno, Scimeca, Pandolfo, & Zoccali, Reference Muscatello, Bruno, Scimeca, Pandolfo and Zoccali2014) and perturbations of the gut microbiome (Nikolova et al., Reference Nikolova, Smith, Hall, Cleare, Stone and Young2021; Yang et al., Reference Yang, Li, Gui, Shi, Bao, Han and Li2020), suggesting associations between emotion-related factors and the gut microbiome are likely. A recent meta-analysis found that patients with a range of psychiatric disorders shared similar patterns of gut microbiome perturbations, including depletion of certain anti-inflammatory bacteria and enrichment of pro-inflammatory bacteria (Nikolova et al., Reference Nikolova, Smith, Hall, Cleare, Stone and Young2021). Taken together, these studies suggest certain gut microbial species or functions could be a key mechanistic pathway by which emotion-related factors contribute to physical health outcomes.
Existing research has mostly focused on populations of patients with discrete, identifiable psychiatric conditions. Yet, subclinical affective disturbances such as the tendency to experience negative emotions (e.g. sadness, fearfulness) are more common than psychiatric conditions, and are associated with worse physical health outcomes similar to full-blown psychiatric disorders (Cohen & Rodriguez, Reference Cohen and Rodriguez1995; Muscatello et al., Reference Muscatello, Bruno, Scimeca, Pandolfo and Zoccali2014; Nabi et al., Reference Nabi, Kivimaki, De Vogli, Marmot, Singh-Manoux and Whitehall2008). Further, scholars have posited that both subclinical and clinical affective disturbances influence physical health through common biological pathways (Cohen & Rodriguez, Reference Cohen and Rodriguez1995). Thus, gut microbiome perturbations might be linked with negative emotions even in non-clinical populations. Only one study to date has evaluated links between subclinical levels of negative affect and the gut microbiome. This small cross-sectional study evaluated associations of both negative and positive emotions with several microbial features within a Korean cohort (n = 83) using 16S rRNA gene sequencing. Results showed higher positive emotion but not negative emotion scores were related to Prevotella enterotype and higher alpha diversity (i.e. within-sample taxonomic diversity), while both higher positive emotion scores and lower negative emotion scores were linked with a genus from the family Lachnospiraceae (Lee et al., Reference Lee, Yoon, Jung, Kim, Min, Chun and Choi2020). However, 16S rRNA gene sequencing typically yields general taxonomic profiling (e.g. family or genus), potentially missing associations with specific microbial species and pathways. Moreover, this study did not account for important confounders of the emotion–microbiome association such as health status and diet.
While previous research has established associations between the gut microbiome and brain structures involved in emotion regulation (Carbia et al., Reference Carbia, Lannoy, Maurage, Lopez-Caneda, O'Riordan, Dinan and Cryan2021), links between the gut microbiome and specific emotion regulation strategies are currently unexplored. Emotion regulation is a higher-order, transdiagnostic process that involves both up- and down-regulation of positive and negative emotions, and scholars have posited this process may explain how and why both positive and negative emotions appear to predict physical health outcomes (Trudel-Fitzgerald et al., Reference Trudel-Fitzgerald, Millstein, von Hippel, Howe, Tomasso, Wagner and VanderWeele2019). Existing health research has mostly focused on two emotion regulation strategies: cognitive reappraisal (reinterpreting the meaning of an event to alter emotional responses before they occur) and suppression (inhibiting emotional behavior after emotions occur). Evidence generally suggests reappraisal is beneficial for physical health, while suppression is generally deemed more maladaptive for health (Trudel-Fitzgerald et al., Reference Trudel-Fitzgerald, Millstein, von Hippel, Howe, Tomasso, Wagner and VanderWeele2019). Past work suggests links between emotion regulation strategies and gut function. Notably, suppression has been associated with exacerbated symptoms of irritable bowel syndrome such as delayed gut transit, abdominal pain, and increased postprandial colonic motility (Bennett et al., Reference Bennett, Evans, Scott, Badcock, Shuter, Hoschl and Kellow2000; Evans, Bennett, Bak, Tennant, & Kellow, Reference Evans, Bennett, Bak, Tennant and Kellow1996). However, no work has yet examined if specific gut microbial features are associated with suppression and cognitive reappraisal. Identifying plausible mechanistic pathways linking emotion-related factors and health is necessary for establishing causality in emotion–health associations and understanding how interventions targeting emotional functioning can protect health.
In the current study, we examined associations of positive and negative emotions, as well as two emotion regulation strategies (i.e. cognitive reappraisal and suppression) with gut microbiota compositions and functional pathways. To do this, we used an agnostic approach to evaluate emotion-related factors with respect to gut microbiome features using data from an ongoing cohort of older women. Based on previous work suggesting positive emotions and cognitive reappraisal are generally health-protective, and negative emotions and suppression are associated with poorer health outcomes (Levine et al., Reference Levine, Cohen, Commodore-Mensah, Fleury, Huffman, Khalid and Kubzansky2021; Trudel-Fitzgerald et al., Reference Trudel-Fitzgerald, Millstein, von Hippel, Howe, Tomasso, Wagner and VanderWeele2019), we expected different associations between these two sets of processes with features of the gut microbiome. However, given the paucity of previous research, we did not have a priori hypotheses regarding the nature and magnitude of such associations.
Methods
Study population
Data are from a sub-study (MBS: Mind-Body Study, n = 233) within the Nurses' Health Study II (NHSII) cohort (Huang et al., Reference Huang, Trudel-Fitzgerald, Poole, Sawyer, Kubzansky, Hankinson and Tworoger2019), an ongoing prospective cohort study of 116, 429 US female registered nurses. At enrollment in 1989, participants completed a questionnaire reporting on their demographics, lifestyle factors, and medical history. Biennial follow-up questionnaires have been mailed to all participants to update exposure information and disease diagnoses. Return of the completed questionnaires implied consent to use the data in ongoing research. At the study baseline in 2013, MBS participants (age: 49–67 years) signed a written informed consent form and completed a comprehensive online psychosocial assessment including measures of emotion-related factors, i.e. positive and negative emotions as well as emotion regulation (Fig. 1). The same measures were completed again 1 year later but because fewer women were missing data on the emotion-related variables at the baseline assessment, we chose to use only baseline measures in our main analyses to preserve statistical power. However, to verify whether emotion-related factors scores remained stable across the two measurements available, we calculated the intraclass correlation coefficients (ICCs) for each factor and provided them in the Results section. Approximately 3 months after the initial psychosocial survey, participants were invited to provide up to four stool samples. Obtaining repeated samples over these relatively short intervals was designed to help reduce measurement error rather than to look at the change in microbiome composition over time. Women were eligible for inclusion in the current study if they completed at least one relevant emotion-related measure and provided at least one valid stool sample (N = 206). Among the 206 eligible participants, 179 (18, 8, and 1) participants provided 4 (3, 2, and 1) stool samples, respectively. This yielded 787 stool samples in total. The study protocol was approved by the institutional review boards of the Brigham and Women's Hospital and Harvard T.H. Chan School of Public Health.
Emotion-related factors
We were interested in assessing links between the gut microbiome and positive and negative emotions across the spectrum, rather than examining only psychopathology. To do so, we used items from the 10-item Center for Epidemiological Studies Depression (CES-D-10) Scale (Irwin, Artin, & Oxman, Reference Irwin, Artin and Oxman1999) and the Kessler Psychological Distress Scale, 6-item version (K-6) (Kessler et al., Reference Kessler, Andrews, Colpe, Hiripi, Mroczek, Normand and Zaslavsky2002) to derive separate measures of positive and negative emotions. Following prior use of these instruments (Yiengprugsawan, Kelly, & Tawatsupa, Reference Yiengprugsawan, Kelly and Tawatsupa2014), we combined sets of items to create a continuous measure across levels of either positive or negative emotions rather than using any kind of cut-point to create a measure of probable psychopathology.
Positive emotions
Self-reported positive emotions were derived from two positively worded items (During the past month… ‘I was happy’, ‘I felt hopeful about the future’) from the CES-D-10. Items were scored on a 4-point Likert scale. Items were averaged with higher scores indicating higher positive emotions levels. A positive emotions score was assigned if participants completed both items (n = 202). Internal consistency was acceptable (α = 0.75). Past work supports a two-factor structure for the CESD-10, with these two positively worded items loading on a positive affect factor (Bradley, Bagnell, & Brannen, Reference Bradley, Bagnell and Brannen2010; Irwin et al., Reference Irwin, Artin and Oxman1999). These items have been used in several studies examining the role of positive emotions in health outcomes (Boehm et al., Reference Boehm, Chen, Qureshi, Soo, Umukoro, Hernandez and Kubzansky2020; Wilson et al., Reference Wilson, Weedon, Cohen, Golub, Milam, Young and Fredrickson2017). The 30-day timeframe allowed our measure to be sensitive to both situational and trait factors (Mroczek & Kolarz, Reference Mroczek and Kolarz1998). We standardized the positive emotions score for analyses (mean = 0, s.d. = 1).
Negative emotions
We created an overall measure of negative emotions by pulling items from self-reported measures administered in MBS. Negative emotions were derived from combining data on seven items: four CESD-10 items (During the past month… ‘I was bothered by things that usually don't bother me’, ‘I felt depressed’, ‘I felt fearful’, ‘I was lonely’), and three non-redundant K-6 items (During the past month, about how often did you feel…‘nervous’, ‘hopeless’, ‘restless’, or ‘fidgety’). The CESD-10 items were scored on a 4-point Likert scale with response options ranging from ‘Rarely or none of the time’ to ‘All of the time’. The K-6 items were rated on a 5-point Likert with response options ranging from ‘None of the time’ to ‘All of the time’. To harmonize the K-6 items with the CESD-10 items, we combined two response options (i.e. ‘Some of time’ and ‘A little of the time’) to create a 4-point Likert scale resulting in a similar set of response options. Items were averaged with higher scores indicating higher levels of negative emotions. A negative emotion score was created if participants completed five items (n = 206). Internal consistency of the seven items was acceptable (α = 0.77). Negative emotions scores were standardized for analyses (M = 0, s.d. = 1).
Emotion regulation strategies
Participants completed the Emotion Regulation Questionnaire, a validated 10-item scale that measures cognitive reappraisal (six items) and emotional suppression (four items) (Gross & John, Reference Gross and John2003). Items are scored on a 7-point Likert scale ranging from 1 (‘strongly disagree’) to 7 (‘strongly agree’). A total score is obtained for each subscale by averaging the items of the subscale, with higher scores reflecting higher use of each emotion regulation strategy. A cognitive reappraisal score was created if participants completed at least five items (n = 204). For suppression, a score was created if participants completed at least three items (n = 204). Internal consistency in this sample was good for the cognitive reappraisal subscale (α = 0.87) and acceptable for the suppression subscale (α = 0.76). Cognitive reappraisal and suppression scores were standardized for analyses (mean = 0, s.d. = 1).
Sample collection, DNA extraction, and metagenome sequencing
From 2013 to 2014, each participant provided up to two pairs of stool samples (Fig. 1). Each pair of stool samples was collected from two bowel movements 24 to 72 h apart. The second set of two samples was collected ~6 months later. Collection kits were mailed to participants with detailed instructions and returned to our biorepository via overnight courier within 24 h of collection. See Huang et al. (Reference Huang, Trudel-Fitzgerald, Poole, Sawyer, Kubzansky, Hankinson and Tworoger2019) for further details on sample collection.
DNA purification from stool aliquots was performed according to standard protocols used in the Human Microbiome Project (Human Microbiome Project, 2012; Integrative, Reference Integrative2019). Following previous work in MBS, construction and sequencing of sample libraries were conducted at the Broad Institute (Wang et al., Reference Wang, Nguyen, Mehta, Song, Huttenhower and Chan2021b). Specifically, metagenome libraries were constructed using the Illumina TruSeq or Nextera method with ~180 nt inserts and sequenced on one of the Illumina HiSeq platforms (2500 or 4000) targeting a minimum of ~2 Gnt/sample with 100 nt paired-end reads.
Microbiome taxonomic and functional potential profiling
For the raw metagenomics sequencing data, low-quality reads were discarded, and reads belonging to the human genome were removed by mapping the data to the human reference genome with KneadData (Mehta et al., Reference Mehta, Abu-Ali, Drew, Lloyd-Price, Subramanian, Lochhead and Chan2018). Microbial taxonomic profiling was performed using MetaPhlAn3 (Beghini et al., Reference Beghini, McIver, Blanco-Miguez, Dubois, Asnicar, Maharjan and Segata2021). We then performed functional profiling for metagenomes by applying HUMAnN3 (Beghini et al., Reference Beghini, McIver, Blanco-Miguez, Dubois, Asnicar, Maharjan and Segata2021), which maps DNA reads to a customized database of functionally annotated pan-genomes.
Covariates
Covariates included factors that can be related to both emotion-related factors and the gut microbiome; all were self-reported on the MBS questionnaire unless otherwise stated. Sociodemographics included age (continuous; based on the date of birth queried at NHSII baseline in 1989), race/ethnicity (White, racially underrepresented individuals; queried in 2005 on the NHSII biennial questionnaire), marital status (married/cohabitating, never married/divorced/widow; queried in 2013 on the NHSII biennial questionnaire), husband's education (unmarried participant, husband: less than high school, high school graduate, college graduate, and graduate school; queried in 1999 on the NHSII biennial questionnaire), and census-tract income (continuous, geocoded in 2001). Health-related factors (yes, no) included the history of diabetes and hypertension (queried on every NHSII biennial questionnaire), hormone therapy use, and antidepressant use. Body mass index (BMI) in kg/m2 was derived from height (queried in 1989) and weight (Rimm et al., Reference Rimm, Stampfer, Colditz, Chute, Litin and Willett1990). Alcohol consumption in g/day was derived from dietary information collected in 2013 using a validated semi-quantitative food-frequency questionnaire (FFQ) (Willett et al., Reference Willett, Sampson, Stampfer, Rosner, Bain, Witschi and Speizer1985). Weekly physical activity was determined according to the number of min/week women reported spending in moderate to vigorous activity, e.g. running (<150 min/week, >150 min/week; queried on the 2013 NHSII biennial questionnaire) (Wolf et al., Reference Wolf, Hunter, Colditz, Manson, Stampfer, Corsano and Willett1994). Using dietary information obtained from the FFQ, we computed the Alternative Healthy Eating Index 2010 score (AHEI-2010, a score that measures adherence to a diet pattern based on foods and nutrients most predictive of chronic disease risk) (Chiuve et al., Reference Chiuve, Fung, Rimm, Hu, McCullough, Wang and Willett2012). See the online Supplementary material for additional information.
Statistical analysis
Descriptive analyses were conducted to assess the distribution of participants' characteristics as well as emotion-related factors mean levels, intercorrelations (using Spearman correlations), and ICCs. Microbial diversity measures were calculated at the species and metabolic pathway levels, using the ‘vegan’ R (v.2.5-7) package. We used the Richness, Evenness, Shannon, and Simpson diversity indices to determine the alpha diversity. We then calculated Spearman correlations between emotion-related factors and the alpha diversity. If participants provided multiple microbiome samples (n = 205), we computed the average alpha diversity across samples for each participant. For beta diversity for community composition and functional capacity over time, we used the Bray–Curtis (BC) dissimilarity and principal coordinates analysis (PCoA). Because the microbiome samples were collected at multiple time points, we assessed if the microbiome features changed meaningfully over time using a permutational multivariate analysis of variance (PERMANOVA) performed with the ‘adonis’ function in R's vegan package. See the online Supplementary material for additional information.
To evaluate associations of sociodemographic, health-related, and behavior-related covariates with the gut microbiome overall structure, we performed omnibus testing with PERMANOVA of BC dissimilarity (9999 permutations) to quantify the size and significance of the effect of each covariate in relation to the gut microbial composition and metabolic pathways. Only those covariates that were found to be significantly associated with the gut microbial composition and metabolic pathways at all four time points were kept in the multivariate linear mixed analyses described below.
In analyses testing our primary research questions, we used multivariate linear-mixed models in MaAsLin2 (microbiome multivariable associations with linear models) (Mallick et al., Reference Mallick, Rahnavard, McIver, Ma, Zhang, Nguyen and Huttenhower2021) to evaluate associations of gut microbial species and pathways with emotion-related factors while adjusting for the covariates that showed significant associations with the gut microbial composition and metabolic pathways. These models included each participant's identifier as a random effect to account for within-individual correlation in microbiome metrics that could occur due to the study's repeated sampling design, as well as occasional missing observation of microbiome samples at some time points. Nominal p values across all associations were then adjusted for multiple comparisons using the Benjamini–Hochberg method with a target rate of 0.25 for q values (Wang et al., Reference Wang, Nguyen, Li, Yan, Ma, Rinott and Huttenhower2021a). Statistical analyses were performed with R (v.3.6.3) and SAS (v.9.4, 2013).
Results
Characteristics of study population
Women were on average 60.7 years old in 2013 (s.d. = 3.8; range = 49.4–66.8). Most participants were White (96%) and married/cohabitating (78%). Mean BMI was 26.4 kg/m2, 33% of women reported a history of hypertension, and 25% reported using antidepressant medication; see Table 1. Higher positive emotion scores were inversely correlated with lower negative emotion and suppression scores (r = −0.49, p < 0.0001 and −0.30, p < 0.0001, respectively), and positively correlated with higher cognitive reappraisal scores (r = 0.24, p = 0.001). Higher negative emotion scores were also correlated with higher suppression scores (r = 0.28, p < 0.0001); see online Supplementary Table S1. ICCs ranged from 0.65 (suppression) to 0.87 (positive and negative emotions), suggesting the emotion-related factors scores were reasonably stable over time.
Note. Values are means (s.d.) for continuous variables; percentages for categorical variables. Values of polytomous variables may not sum to 100% due to rounding.
BMI, body mass index; AHEI, alternate healthy eating index-2010.
Emotion-related factors and microbiome diversity
We identified 467 microbial species and 479 metabolic pathways across all microbiome samples. Higher levels of suppression were significantly associated with lower Evenness and Simpson diversity at the species level (Fig. 2a). However, the alpha diversity was not significantly correlated with positive emotions, negative emotions, or cognitive reappraisal. We found no significant associations at the metabolic pathway level. When examining changes in microbiome features over time, we found no significant differences over time with respect to both species (Fig. 2c, p = 0.999) and metabolic pathways (Fig. 2d, p = 0.877). This is concordant with prior work with the same sampling strategy showing that the male adult gut microbiome remains relatively stable over time (Mehta et al., Reference Mehta, Abu-Ali, Drew, Lloyd-Price, Subramanian, Lochhead and Chan2018).
Associations between host factors, emotion-related factors, and overall gut microbiome structures
Three host factors (i.e. physical activity, BMI, and type 2 diabetes history) were significantly associated with overall microbiome structure in both taxonomic and functional profiles at each time point (Fig. 3). Among all host factors considered, physical activity accounted for the largest proportion of variation in the species-level taxonomic profiles (Fig. 3a–d). It also explained the greatest amount of variance of the functional profiles at metabolic pathway level from the second (Fig. 3f) and fourth time points (Fig. 3h). We also found that negative emotion scores were significantly associated with overall microbiome structure at the metabolic pathway level at three time points (Fig. 3e, f, h). Positive emotion, cognitive reappraisal, and suppression scores were not significantly associated with overall microbiome configurations.
Associations of emotion-related factors with species-level features and metabolic pathways of the gut microbiome
Top 10 species-level features from each emotion-related factor are summarized in Fig. 4a and online Supplementary Table S2. Positive emotions were significantly and inversely associated with Firmicutes bacterium CAG 94 and Ruminococcaceae bacterium D16, while negative emotions were significantly related to higher abundance of these same species (q ⩽ 0.25). Moreover, we found some species shared consistent relationships with emotions and emotion regulation strategies in the expected directions and with similar magnitude of association, although not all q values reached statistical significance. For example, Bacteroides xylanisolvens, F. bacterium CAG 95, and Parabacteroides distasonis were correlated with higher level of both positive emotions and cognitive reappraisal, as well as inversely correlated with both negative emotions and suppression. Further, positive emotions and cognitive reappraisal were associated with lower abundance of multiple species (i.e. Anaeromassilibacillus sp. An250, Bacteroides faecis, Blautia hydrogenotrophica, Clostridium bolteae CAG 59, Clostridium leptum, F. bacterium CAG 94, R. bacterium D16, Sellimonas intestinalis, and Streptococcus parasanguinis), while negative emotions and suppression were correlated with higher abundance of these species.
Top 10 metabolic pathways-level features from each emotion-related factor are summarized in Fig. 4b and online Supplementary Table S3. Positive emotions were significantly associated with higher abundance of three pathways (PWY0-1241: ADP-l-glycero-β-d-manno-heptose biosynthesis, PWY0-1298: superpathway of pyrimidine deoxyribonucleosides degradation, and FUCCAT-PWY: fucose degradation). Negative emotions were associated with a total of 63 metabolic pathways (Fig. 4b and online Supplementary Table S4, q ⩽ 0.25). For example, negative emotion scores were significantly inversely correlated with pathways related to coenzyme A (CoA) biosynthesis (e.g. CoA-PWY-1, PANTOSYN-PWY, CoA-PWY, and PWY-4242), adenosine biosynthesis (e.g. PWY-6609, PWY-7219, PWY-7229, and PWY-6126), and pyrimidine deoxyribonucleosides salvage (PWY-7199). Suppression scores were negatively associated with pyrimidine deoxyribonucleotides de novo biosynthesis II (PWY-7187) and a pathway related to the biosynthesis of propanoate (P108–PWY, Fig. 4b). We found no significant associations between cognitive reappraisal and any metabolic pathway.
Discussion
In this discovery-based study, we examined associations between four emotion-related factors and the gut microbiome, leveraging a richly characterized cohort of 206 women. This study is the largest to date to evaluate associations of the gut microbiome with both positive and negative emotions and to assess the gut microbiome in relation to emotion regulation strategies. We found specific emotion-related factors were linked to microbiome diversity, as well as with certain species and metabolic pathways. These findings collectively offer early evidence suggesting emotions and emotion regulation strategies are related to the gut microbiome.
A prior study identified the significant association of microbial diversity (i.e. Shannon diversity) with positive (but not negative) emotions among participants in the Prevotella-enterotype group. Moreover, both positive and negative emotions were associated with a novel genus (PAC001043_g) from the family Lachnospiraceae (Lee et al., Reference Lee, Yoon, Jung, Kim, Min, Chun and Choi2020). Among the emotion-related factors included in our study, only suppression was significantly associated with alpha diversity. Notably, higher levels of suppression were associated with lower values on the Simpson diversity index and less Evenness in the gut microbial community at the species level. The reason why only suppression was associated with diversity indexes is unclear. However, this finding is consistent with previous work showing that suppression and reappraisal influence health outcomes and biological processes differently, with suppression having stronger effects on the physiological outcomes examined thus far (e.g. increased sympathetic activation) than reappraisal (Gross, Reference Gross1998). However, further work is needed to replicate our findings and understand the mechanisms underlying the differential associations of emotion-related factors with alpha diversity.
We also considered microbiome associations at the species and metabolic pathway levels. These analyses consistently demonstrated specific microbial associations of positive emotions and cognitive reappraisal in one direction and opposite associations with negative emotions and suppression. For example, lower levels of positive emotions and higher levels of negative emotions were associated with increased F. bacterium CAG 94 and R. bacterium D16. Interestingly, a multi-study, integrative analysis on 4347 human stool metagenomes from 34 published studies including healthy and unhealthy individuals (e.g. having CVD, colorectal cancer, obesity) found R. bacterium D16 was less prevalent in healthy (vs. unhealthy) individuals (Gupta et al., Reference Gupta, Kim, Bakshi, Cunningham, Davis, Lazaridis and Sung2020). Similarly, we observed that higher levels of positive emotions and cognitive reappraisal were inversely correlated with multiple other species (e.g. Anaeromassilibacillus sp. An250, B. faecis, B. hydrogenotrophica, C. bolteae CAG 59, C. leptum, S. intestinalis, and S. parasanguinis), while higher levels of negative emotions and suppression were associated with increased abundance of these same species. Some of these species were previously reported as being associated with disease related to both mental health and inflammatory disorders, conditions that have also been linked with emotional distress and dysregulation (Guimond, Kubzansky, & Lee, Reference Guimond, Kubzansky, Lee, Schwartz, Hall and Osterberg2021). For example, C. bolteae has been found elevated in neuromyelitis optica spectrum disorders (Pandit et al., Reference Pandit, Cox, Malli, D'Cunha, Rooney, Lokhande and Chitnis2021), and S. intestinalis was found enriched in the gut microbiota of patients with schizophrenia (Thirion et al., Reference Thirion, Speyer, Hansen, Nielsen, Fan, Le Chatelier and Ehrlich2022). S. parasanguinis is a dominant isolate of dental plaque and an opportunistic pathogen associated with subacute endocarditis (Chen et al., Reference Chen, Tsai, Ye, Huang, Shieh, Wu and Chiu2020). Taken together, these findings suggest favorable emotional functioning, characterized by higher levels of positive emotions and lower levels of negative emotions, as well as better emotion regulation (i.e. greater use of reappraisal, and lower use of suppression), are associated with distinct compositional profiles of the gut microbiome at the species level. More research is needed to better understand the role of specific species in health, particularly for outcomes such as CVD that have been related to emotions and emotion regulation.
When examining metabolic pathways, higher levels of negative emotions were associated with lower abundance of metabolic pathways in the biosynthesis of pantothenate and CoA. Pantothenate (i.e. vitamin B5) is the key precursor for the biosynthesis of CoA, a universal and essential cofactor involved in many metabolic reactions, including phospholipid synthesis, biosynthesis and degradation of fatty acids, and the tricarboxylic acid cycle (Leonardi & Jackowski, Reference Leonardi and Jackowski2007). Our results are consistent with prior work that found moderate intake of pantothenic acid was related to lower odds of experiencing anxiety symptoms (Mahdavifar, Hosseinzadeh, Salehi-Abargouei, Mirzaei, & Vafa, Reference Mahdavifar, Hosseinzadeh, Salehi-Abargouei, Mirzaei and Vafa2021). In addition, we found multiple metabolic pathways related to adenosine biosynthesis were significantly and inversely correlated with negative emotions. This is concordant with the fact that adenosine, one of the most ubiquitous and conserved neuromodulators in the central nervous system (Sperlagh & Sylvester Vizi, Reference Sperlagh and Sylvester Vizi2011), may have beneficial impacts on depressive and anxious symptomatology (Gomes et al., Reference Gomes, Farinha-Ferreira, Rei, Gonçalves-Ribeiro, Ribeiro, Sebastião and Vaz2021). However, how disruption of those metabolic pathways may interact with emotion-related factors warrants further investigation.
Our study has several limitations. First, this study was conducted among 206 adult women who are health professionals and mostly White; moreover, a relatively large proportion of our analytic sample was using antidepressant medication. Therefore, the generalizability of our findings needs to be further validated by external studies based on larger and more diverse populations of women and men of different ages. Second, while bidirectionality in the association of emotion-related factors with the microbiome is likely, we cannot test for causality nor directionality in these relationships within this cross-sectional study. Our findings do identify rigorously assessed associations considering within-person correlation across microbiome variables due to the repeated sampling design as well as potential confounding factors, but future work using both human interventional studies and animal experiments is needed to ascertain directionality in these associations. Additionally, while our measures of positive and negative emotions are derived from commonly used validated items, they have not been previously validated; therefore, our findings need to be replicated using validated measures of emotions. These limitations are balanced by considerable strengths. Notably, our study includes the collection of multiple stool samples per participant, detailed phenotyping of the participants, and a validated measure of emotion regulation.
In summary, we found evidence that positive and negative emotions, as well as emotion regulation strategies, are related to specific aspects of the gut microbiome for both phylogenetically diverse organisms and specific metabolic pathways including pantothenate and CoA and adenosine. Together, these results connect emotional functioning and the human gut microbiome, highlighting the critical importance of incorporating the microbiome in our understanding of emotion-related factors and their association with physical health.
Supplementary material
The supplementary material for this article can be found at https://doi.org/10.1017/S0033291723000612
Data
The data that support the findings of our study are available from Brigham and Women's Hospital and Harvard T.H. Chan School of Public Health. Restrictions apply to the availability of these data, which were used under license for our study. Data are available (https://sites.google.com/channing.harvard.edu/cohortdocs/) with the permission of Brigham and Women's Hospital and Harvard T.H. Chan School of Public Health.
Acknowledgments
We thank Jacqueline Starr, Scott Weiss, Susan Korrick, Qi Sun, Xu-Wen Wang, Zheng Sun, Andrea Aparicio, and Tong Wang for valuable discussions. We thank the participants and the staff of the Nurses' Health Study II for their valuable contributions.
Author contributions
S. S. T. and L. D. K. designed and implemented the Mind Body Study within the Nurses' Health Study II. L. D. K. and Y.-Y. L. conceived and designed the project. S. K. and A. J. G. served as lead for conceptualization, performed the data analysis, and wrote the manuscript. L. D. K., Y.-Y. L., S. S. T., T. H., and A. T. C. edited the manuscript.
Financial support
The Nurses' Health Study II is funded by the National Institute of Health grant numbers U01 CA176726 and R01 CA67262. The Mind Body Study was supported by the National Institute of Health grant number (R01 CA163451, S. S. T.) as well as by the Department of Defense (W81XWH-13-1-0493, PI: Elizabeth Poole, mentor: S. S. T.). Collection and metagenomic sequencing of stool samples was supported by R01 CA202704 (A. T. C.). A. J. G. was supported by salary and training support from the Canadian Institute of Health Research (postdoctoral fellowship) and the Lee Kum Sheung Center for Health and Happiness. Y.-Y. L. acknowledges grants from the National Institutes of Health (R01AI141529, R01HD093761, RF1AG067744, UH3OD023268, U19AI095219, and U01HL089856). A. T. C. was supported by a Stuart and Suzanne Steele MGH Research Scholars Award. T. H. was supported by K01HL143034. The content is solely the responsibility of the authors and does not necessarily represent the official views of the funding agencies. The authors assume full responsibility for analyses and interpretation of these data.
Conflict of interest
The authors declare no competing interests.