Introduction
The prevalence of geriatric depression (GD) ranges from 10 to 15% in the population of over 60-years-old adults (Ismail et al., Reference Ismail, Fischer and McCall2013). GD has debilitating consequences, including lower remission rates, poor daily functioning and treatment prognosis, and comorbid cognitive impairment, which increases the risk of injuries and falls, and results in frequent hospitalization (Carpenter et al., Reference Carpenter2014; Tunvirachaisakul et al., Reference Tunvirachaisakul2018). Approximately 70% of patients respond to selective serotonin reuptake inhibitors (SSRIs) after 8–12 weeks of treatment (Chen et al., Reference Chen, Huang, Thompson and Zhao2011) and even fewer (30–40%) achieve remission (Nelson et al., Reference Nelson, Delucchi and Schneider2008) that puts individual at risk for higher mortality and morbidity and suicide (Alexopoulos, Reference Alexopoulos2019). GD is further associated with brain atrophy across large portions of the frontal, temporal and parietal lobes (Mackin et al., Reference Mackin2013). Such structural abnormalities are linked with cognitive dysfunction (Kim and Han, Reference Kim and Han2021). While some regions appear to decline, other regions show increased gray matter. For instance, thicker cortices in the right isthmus cingulate and the left precuneus were associated with higher depressive symptom severity (Szymkowicz et al., Reference Szymkowicz2016). Several meta-analyses reported reductions in GMV in GD, including in the hippocampus, amygdala, the right lentiform nucleus and parts of the parahippocampal region, medial frontal and orbitofrontal cortices, the right subcallosal gyrus, the putamen and the thalamus compared to healthy older adults (Du et al., Reference Du2014; Sexton et al., Reference Sexton, Mackay and Ebmeier2013).
Several studies have investigated antidepressant-induced structural brain changes in geriatric depression. Greater increases in frontal gray matter volume (GMV) were associated with greater improvements in depressive symptom severity after three months of treatment with venlafaxine (Droppa et al., Reference Droppa2017). The authors of this study suggested that antidepressant treatment may restore previous declines in cortical volume in regions related to depressive symptoms. In our laboratory, we found reductions in cortical thickness after three months of treatment with levomilnacipran, a serotonin-norepinephrine reuptake inhibitor (SNRI), compared to a placebo in geriatric depression (Krause-Sorio et al., Reference Krause-Sorio2019). Similarly, we observed increases in cortical thickness and GMV in the left inferior and middle temporal cortices and the right medial and lateral orbitofrontal cortex (OFC) after three months of combined treatment with escitalopram (SSRI) plus memantine, a cognitive booster compared to escitalopram combined with a placebo in geriatric depression (Krause-Sorio et al., 2020). In both cases, the structural brain changes occurred independent of differences in clinical outcomes, which may suggest that cortical changes are more sensitive to antidepressant treatment than behavioral/symptom changes.
In addition, we previously reported increased orbitofrontal GMV in geriatric depression with a history of antidepressant use compared to drug-naïve participants, which suggests that antidepressant treatment may have long-term protective effects on brain morphometry (Lavretsky et al., Reference Lavretsky, Roybal, Ballmaier, Toga and Kumar2005). In another 3-month trial of escitalopram in geriatric depression, researchers found that baseline components of the anterior cingulate cortex (ACC), which is strongly linked to symptom severity in major depressive disorder (MDD), were smaller in patients who eventually failed to achieve remission compared to those who did achieve remission (Gunning et al., Reference Gunning2009). The same group later found that greater cortical thickness in the insula was associated with larger improvements in apathy after 3 months of escitalopram treatment (Pimontel et al., Reference Pimontel2020). Another study found reduced cortical thickness in bilateral posterior cingulate and parahippocampal cortices, left insula, precuneus, cuneus and paracentral cortex and the right medial OFC and lateral occipital cortex in GD patients that did not respond to psychotherapy, compared to treatment responders (Mackin et al., Reference Mackin2013).
Together, these results suggest that structural magnetic resonance imaging (MRI) measures may be used as markers of antidepressant treatment response in depression.
Tai Chi is rooted in the ancient Chinese martial arts but is used now as a mind-body exercise for stress reduction. Tai Chi involves low-impact, aerobic physical exercise, as well as body and breath awareness and has the benefit of no side effects or drug interactions. Tai Chi is known to improve balance and fear of falling in older adults, who have an increased risk of falls, with high rates of injuries and subsequent hospitalization, loss of independence and mortality (Gazibara et al., Reference Gazibara2017; Hosseini et al., Reference Hosseini, Kargozar, Sharifi, Negarandeh, Memari and Navab2018; WHO, 2007). Tai Chi therefore can offer multiple benefits to older adults with depression that will to help reduce depression severity along with other health benefits (Yeung et al., Reference Yeung2017). Our laboratory previously discovered an increased likelihood of improvements in symptom severity and achieving remission in older depressed adults undergoing 16 weeks of combined escitalopram and Tai Chi treatment compared to those receiving escitalopram and health education control (Lavretsky et al., Reference Lavretsky2011). We subsequently demonstrated an improvement in general health in older adults with depression in a larger study (Lavretsky et al., Reference Lavretsky2022), along with an increase in functional connectivity in 167 pairwise region-to-region connections, including default mode network regions in Tai Chi compared to health education control (Kilpatrick et al., Reference Kilpatrick2022; Lavretsky et al., Reference Lavretsky2022). To our best knowledge, no study to date has examined the effect of Tai Chi on GMV in geriatric depression. We therefore tested here the effect of three months of Tai Chi, compared to a health education control, on GMV change. In addition, we tested whether baseline GMV predicts symptom improvement, measured by reductions in scores on standardized psychiatric scales for depression and anxiety, in a population of older adults with major depressive disorder undergoing a 3-month Tai Chi intervention compared to a health education control.
Methods
Participants
One hundred and seventy-eight older adults over age 60 with major depressive disorder who have been stable on antidepressant treatment for at least four months participated in the parent study (NCT02460666, (Lavretsky et al., Reference Lavretsky2022)). One hundred and twenty-five completed the 3-month clinical assessment. At baseline, 49 were eligible and willing to undergo an MRI scan, and were randomized to either Tai-Chi-Chih (TCC) (N = 26, 21 women, mean age = 67.6, SD = 6.7) or Health and Wellness Education (HEW) groups (N = 23, 17 women, mean age = 68.4, SD = 5.5). Of these 49 participants, 40 also completed a second scan after completion of the intervention at three months (TCC N = 21, HEW N = 19). The screening was performed by a trained staff member to assess physical and cognitive problems. Eligibility criteria were: 1) a score of (Ramachandran et al., Reference Ramachandran, Krause and Case2011)≥15 reflecting moderate to severe depression on the 24-item Hamilton Depression Rating Scale (HAMD-24, (Hamilton, Reference Hamilton1960; Hamilton, Reference Hamilton1967)); 2) a Mini-Mental State Examination Score greater than 24 (MMSE, (Folstein et al., Reference Folstein, Folstein and McHugh1975)); 3) sufficient English proficiency to follow the interventions, including at least an 8th-grade reading level assessed using the word reading subtest of the Wide Range Achievement Test-IV (Wilkinson & Robertson, Reference Wilkinson and Robertson2006); 4) the capacity to provide informed consent; 5) stable antidepressant treatment for at least 4 months prior to the beginning of participation. Exclusion criteria included 1) a history of other psychiatric conditions, such as psychosis, bipolar disorder, drug or alcohol dependence, or a neurological disorder; 2) disabilities, such as severe visual or hearing impairment that could prevent participation in the intervention; 4) insufficient English proficiency; 5) a diagnosis of dementia; 6) an MMSE score below 24; 7) effective antidepressant treatment or psychotropic medication; 7) psychotherapy with cognitive training components; 8) a HAMD score <15. Additionally, MRI exclusion criteria involved unsafe or unverifiable safe metallic implants, permanent makeup, tattoos in the head and neck region and claustrophobia. All participants provided written informed consent for participation in the trial as approved by the UCLA Institutional Review Board (IRB). This study was conducted in accordance with the Declaration of Helsinki of 1975.
Clinical measures
Depressive symptom severity, the main outcome variable of the parent trial, at baseline and 3-month follow-up was assessed using the Hamilton Depression Rating Scale (HAMD-24, (Hamilton, Reference Hamilton1960; Hamilton, Reference Hamilton1967)). We additionally administered the Montgomery-Asberg Depression Scale (MADRS) (Montgomery et al., Reference Montgomery, Reynolds and Warren1985). Furthermore, anxiety was assessed using the Hamilton Anxiety Scale (HAMA) (Hamilton, Reference Hamilton1959). Group differences in clinical characteristics were evaluated using the nonparametric Kruskal-Wallis test for continuous variables, and Fisher’s exact test for categorical variables. Group differences in post-intervention HAMD/MADRS/HAMA scores were evaluated using nonparametric ANCOVAs controlling for pre-intervention values.
Interventions
Participants underwent 12 weeks of weekly 60-minute classes in both TCC and HEW.
Each group consisted of 6–8 participants and trained experts conducted the classes. Both groups received homework assignments including a daily minimum of 20 minutes of effort in performing TCC training based on training materials on a CD or wellness-topic internet searchers for HEW. Participants were informed that the treatment groups involved “exercise and wellness education” in order to equalize expectations across treatments and they were blind to the differences in interventions. In addition, they were unaware of the main outcomes of interest, including symptomatic, functional, and cognitive improvements. In addition, after the 6-month follow-up, participants were offered to attend the intervention they had not participated in during the trial. The research staff performing neuropsychological testing and symptom assessments were blind to the condition of the participants.
The TCC classes were adaptations from a procedure described in “Tai-Chi-Chih! Joy Through Movement” (Stone, Reference Stone1996). Each Tai Chi class consisted of a warmup (10 minutes of stretching and breathing) and a cool-down (5 minutes). The HEW group provided a social setting similar to the TCC group. Classes were based on a manual and presentations including educational information, learning objectives and activities that helped the participants to consolidate and integrate the learned materials. Both groups were instructed to complete 20 minutes of homework daily in between weekly sessions. Adherence was assessed on a weekly basis with research staff and the principal investigator. Additional details regarding the non-imaging portion of the study design can be found in our previous publication (Lavretsky et al., Reference Lavretsky2022).
Procedure
Participants underwent initial phone screening and proceeded to in-person screening if they met the inclusion criteria. The baseline visit began with the participant signing their written informed consent and baseline measures included mood and cognitive assessments, as well as vital signs (pulse rate, systolic blood pressure, body weight and electrocardiogram, ECG). If the participant qualified for the study, a baseline MRI scan was performed.
MRI acquisition and analysis
Structural 3D T1-weighted multi-echo magnetization-prepared rapid gradient-echo sequence images were acquired at the Ahmanson & Lovelace Brain Mapping Center at UCLA using a Siemens 3T Prisma system (Siemens, Erlangen, Germany) with a 32-channel head coil (TEs = 1.74, 3.6, 5.46, and 7.32 ms; TR = 2,530 ms; TI = 1,260 ms; flip angle = 7°; voxel size = 1 mm3; double GRAPPA and matrix size =256 × 192; acquisition time = 5:18 min). Freesurfer 6.0 (http://surfer.nmr.mgh.harvard.edu/) was used to perform cortical reconstruction. Preprocessing involved magnetic field inhomogeneity corrections, non-brain tissue removal from the image, and parcellation and segmentation of cortical and subcortical gray matter from white matter and cerebrospinal fluid. Subsequently, the automated longitudinal reconstruction pipeline was used to create a subject-specific template and register individual baseline and follow-up scans to the template (Reuter et al., Reference Reuter, Schmansky, Rosas and Fischl2012). The resulting scans were visually inspected for tissue misclassifications and misalignment of baseline-to-follow-up scans. Manual corrections were undertaken wherever necessary. Resulting cortical maps were smoothed with a Gaussian kernel of 10 mm full-width half-maximum. First, whole-brain volume- and surface-based longitudinal voxel-wise two-stage GLMs were performed for each hemisphere using qdec (www.surfer.nmr.mgh.harvard.edu). In the longitudinal model, group served as the between-group factor and symmetrized percent change (spc) in GMV and cortical thickness as the dependent variable. SPC is the change rate with respect to the average volume or thickness, i.e. 100 * (annualized rate between time point 1 and time point 2)/average volume or thickness. The model accounts for the time between scans, i.e., corrects for individual differences in inter-scan intervals. Therefore, spc allows for both positive and negative numbers (i.e. GMV increase or decrease). An increase in GMV from baseline to follow-up will be reflected by positive numbers, while a decrease will be indicated by negative numbers (Reuter and Fischl, Reference Reuter and Fischl2011). Second, we performed whole-brain voxel-wise GLMs with group as the between-group factor, and baseline GMV and clinical change as continuous variables (12-week minus baseline score). This model tested group differences in the relationship between GMV and clinical improvement, using interaction terms. Age and sex served as covariates in all models and the respective baseline clinical score was additionally included in the prediction models. The voxel threshold and Monte-Carlo corrected cluster thresholds were set to p < 0.05. Finally, we compared the correlations of baseline GMV and clinical change in TCC and HEW by conducting a Fisher’s z-test of the z-transformed correlation coefficients.
Results
Forty-nine participants completed a baseline scan. Baseline demographics and clinical data, including post-intervention scores for the forty completers, are summarized in Table 1. There were no significant group differences in demographics or clinical scores at baseline and the groups did not differ in their changes in HAMD, MADRS and HAMA. Both groups showed significant improvements in all three scores. Additionally, there was no significant difference between groups in homework compliance (average number of days per week).
Means and standard deviations shown. BMI = Body Mass Index, MMSE = Mini-Mental State Examination, HAMD = Hamilton Depression Rating Scale, HAMA = Hamilton Anxiety Scale, MADRS = Montgomery-Asberg Depression Scale. Group differences evaluated using Kruskal-Wallis test for continuous variables, and Fisher’s exact test for categorical variables.
*Post-intervention scores are available for 40 participants (TCC = 21, HEW = 19). Group differences in post-intervention scores were evaluated controlling for pre-intervention values. Within-group changes evaluated using Wilcoxon signed rank tests were as follows: TCC: HAMD median change, −10.0, p < .0001; MADRS median change, −6.0, p < .0001; HAMA median change, −4.0, p < .003; HEW: HAMD median change, −6.0, p < .0001; MADRS median change, −3.0, p < .03; HAMA median change, −4.0, p < .001.
GMV
No clusters emerged from the time × group analysis on GMV change. However, interaction tests from the whole-brain analysis revealed several clusters that showed group differences in the relationship between baseline GMV and change in MADRS and HAMA scores (Figures 1 and 2). Lower baseline GMV in the right pericalcarine cortex, extending into the lingual cortex, was associated with greater improvement in MADRS in the TCC group (r = 0.52, p = .007) but not in the HEW group (r = −0.31, p = .2; Fisher’s z = 2.8, p = .005). Similarly, lower baseline GMV in four clusters was associated with greater improvements in HAMA in the TCC group (right pericalcarine/parahippocampal cortex: r = 0.55, p = .004; left middle temporal cortex: r = 0.39, p = .05; left lateral occipital cortex: r = 0.39, p = .05; left lingual/isthmus cortices: r = 0.47, p = .01). In contrast, the HEW group did not show any association between baseline GMV and change in anxiety (right pericalcarine/parahippocampal cortex: r = −0.18, p = .4; left middle temporal cortex: r = −0.19, p = .4; left lateral occipital cortex: r = −0.25, p = .3; left lingual/isthmus cortices: r = −0.14, p = .5), and further, all tests comparing the correlations in TCC and HEW were found to be significant (Fisher’s z ranging from 2.0 to 2.5, p = 0.05 – .01). The clusters for anxiety included the right pericalcarine cortex and the left lingual-to-isthmus, lateral occipital, and a long cluster from the posterior to the pole of the middle temporal cortex dipping superiorly into the insula. In the left lateral occipital cortex, one HEW participant appeared to be an outlier. However, removal of this data point did not change the findings.
Discussion
We did not find any group differences in changes in depression, anxiety or GMV in the TCC group compared to an active HEW control group over the course of 3 months in 49 older adults with MDD; however, group differences existed in the relationship between baseline GMV and symptom change. In the TCC group, lower baseline right hemisphere pericalcarine-to-lingual GMV was associated with greater depressive symptom improvements. Similarly, in the TCC group, greater improvements in anxiety were related to lower GMV in the right pericalcarine cortex extending into the parahippocampal region, the left middle temporal and lateral occipital, and the border of the lingual and isthmus cortices. These relationships were not found in the HEW group. These results suggest that TCC intervention effects may depend on the individual’s existing neuroanatomical characteristics. While the mechanism behind this effect is unclear, different levels of brain health and the ability to learn this rather complex technique might contribute to our observed findings. The regression models included the baseline test score as a covariate, therefore, the observed effects cannot be attributed to individual symptom severity.
Only a few studies reported correlations between GMV and depressive symptom severity in GD (Espinoza Oyarce et al., Reference Espinoza Oyarce, Shaw, Alateeq and Cherbuin2020). Additionally, different studies use different mood measures, leading to potentially inconsistent findings. GD has been characterized by reduced cortical thickness in right supramarginal, inferior temporal, caudal and rostral middle frontal and medial superior frontal cortices, as well as left pars triangularis, superior parietal cortices and parts of the central sulcus (Mackin et al., Reference Mackin2013). We previously found reduced bilateral orbitofrontal volume in GD compared to healthy controls, but no relationship between GMV and depressive symptom severity (Lavretsky et al., Reference Lavretsky, Ballmaier, Pham, Toga and Kumar2007). Another study found that greater depressive symptom severity was associated with greater cortical thickness in the right isthmus cingulate in an ROI-based analysis, while a voxel-wise whole-brain analysis revealed an association between depression severity and the left precuneus (Szymkowicz et al., Reference Szymkowicz2016). Reduced thickness and volume have been found in a large network including the prefrontal cortex including orbitofrontal and anterior and posterior cingulate, the insula, several temporal and parietal regions, as well as subcortical regions (Kim and Han, Reference Kim and Han2021).
Lower GMV in several clusters was associated with greater improvements in anxiety. The left middle temporal cortex is reduced in GD and associated with episodic memory but not depressive symptom severity (Takamiya et al., Reference Takamiya2021). Similarly, we previously found left middle temporal GMV increases after 3 months of combined antidepressant and memantine treatment in GD compared to antidepressant treatment combined with a placebo (Krause-Sorio et al., 2020). Lateral temporal and parahippocampal regions have also been found to be reduced in GD compared to healthy controls (Andreescu et al., Reference Andreescu2008). We recently found that greater anxiety was associated with lower GMV in left caudal middle frontal, postcentral and lingual cortices, as well as right superior frontal, pars opercularis and caudal middle frontal and right inferior to posterior parietal cortices in GD (Krause-Sorio et al., Reference Krause-Soriounder review). These regions do not overlap with our current findings. Since there was no group effect in anxiety improvement in the current study, the effect is likely due to differential indirect effects of the intervention on patients’ anxiety levels. In an ROI-based study, we previously found correlations between GMV and anxiety scores in GD in the insula and orbitofrontal cortices (OFC), while depressive symptom severity correlated with insula GMV only (Laird et al., Reference Laird2019). Another ROI-based study in older adults with a history of depression found that greater trait anxiety was associated with reduced cortical thickness in the amygdala, ACC, insula, OFC and temporal cortices (Potvin et al., Reference Potvin2015). A recent meta-analysis in depression including adults across the age span found increased amygdala volume in a subgroup with comorbid anxiety, while the anxiety-free group showed reduced volume in the hippocampus, the globus pallidus, putamen and the thalamus (Espinoza Oyarce et al., Reference Espinoza Oyarce, Shaw, Alateeq and Cherbuin2020). It is important to note, however, that studies demonstrating clusters from a group-based contrast often do not report or find correlations with related clinical scores.
In the parent clinical trial of this study involving 125 participants at the 3-month and 117 at the 6-month follow-up, we found that remission rates were similar between groups but the TCC group showed superior general health effects (Lavretsky et al., Reference Lavretsky2022). Similarly, we previously found increased symptom improvement, remission rates, physical and cognitive functions, as well as a reduction in the inflammatory C-reactive protein in GD after 10 weeks of combined escitalopram and TCC treatment compared to an escitalopram and health education control (Lavretsky et al., Reference Lavretsky2011). In a study comparing exercise with Tai Chi in older adults, both groups improved in dynamic balance, but Tai Chi showed superior performance in single-leg stance with eyes closed and fear of falling, as well as a within-group improvement in depressive symptom severity (Yıldırım et al., Reference Yıldırım, Ofluoglu, Aydogan and Akyuz2016). Similarly, Tai Chi has been shown to improve balance and fear of falling, important modifiable risk factors of falls in older age (Carpenter et al., Reference Carpenter2014; Gazibara et al., Reference Gazibara2017). Additionally, a variety of previous Tai Chi studies found improvements in depression in younger adults with MDD (Yeung et al., Reference Yeung2017).
Based on a recent model of the potential mechanisms of Tai Chi effects on MDD, Tai Chi is suggested to act as an anti-inflammatory treatment and modulates autonomic functioning and brain networks related to mood (Kong et al., Reference Kong, Wilson, Park, Pereira, Walpole and Yeung2019). For example, mental control was improved after 12 weeks of Tai Chi compared to a health education control, and resting state functional connectivity was significantly reduced between the dorsolateral prefrontal cortex and the left superior frontal gyrus and the anterior cingulate cortex (Tao et al., Reference Tao2017).
While we found changes in resting state connectivity patterns (Kilpatrick et al., Reference Kilpatrick2022), GMV might not be sensitive enough to reflect the relatively short-term effects of TCC over 12 weeks, which may explain our failure to observe the group differences. Therefore, longer interventions may better be able to capture participants’ natural gray matter decline over time, as well as potential increases in GMV. Even though TCC may have positive effects on mental wellbeing, the gentle movements may not lead to lasting training-related neural changes. We recently found that yoga prevented GMV decline in older adults at an increased risk of Alzheimer’s disease compared to the same type of health education control (Krause-Sorio et al., Reference Krause-Sorio2022). Similar to the current study, participants underwent three months of weekly in-person lessons and additionally completed daily homework exercises in both conditions. TCC might be less physically taxing than our previous yoga training and may affect different physical and mental mechanisms. Furthermore, the current sample showed a relatively low range of depressive symptom severity, whilst on antidepressant medication. This combination may have led to weakened effects. It is also possible that both groups had unintended similar effects on clinical symptoms and brain structure, based on their similarities in social and mental engagement. We, therefore, believe that with the right intervention protocol and sample size, beneficial clinical and neural effects can be achieved in aging psychiatric populations.
The current study has several limitations. First, the sample size was relatively small; while the parent clinical trial included a much larger sample, this current sub-sample consisted of only 49 participants across both treatment groups. The reason was that many older adults did not qualify for MRI scanning due to implant safety criteria and claustrophobia. Additionally, the sample comprises well-educated individuals with limited racial diversity, consequently restricting the applicability of the findings to a broader population. It is also important to note that while we found associations between baseline GMV and intervention-related changes in anxiety scores, the patients in the current sample only experienced sub-clinical baseline levels of anxiety, therefore, the reduction in anxiety is not clinically significant. Second, due to the nature of the intervention, it was not possible to blind the experimenters to the intervention condition of each participant. Furthermore, while, cluster correction is applied, we did not correct for the three clinical outcomes and the results should therefore be interpreted with caution. Larger studies with more demographically diverse samples are necessary to further investigate the role of Tai Chi training.
The current study suggests that while changes in brain morphology may not be detected in older adults with depression undergoing antidepressant treatment after 3 months of TCC intervention, certain neuroanatomical regions may predict treatment outcomes in this population. Future studies should investigate structural and functional brain changes and prediction models using longer and more intensive Tai Chi interventions.
Conflict of interest
The authors report no conflicts with any product mentioned or concept discussed in this article.
Source of funding
Funding for this study was provided by the NIH grants AT 008383 AT009198 to Helen Lavretsky, MD. Additional support: National Center for Advancing Translational Science UCLA CTSI Grant Number UL1TR001881.
Description of authors’ roles
HL is the PI of the study, KLN designed the neuroimaging component and advised on result interpretation, BKS and MMM acquired the data, LAK processed the imaging data, BKS analyzed the imaging data, PS analyzed the clinical data and PS and BKS wrote the manuscript. All authors provided critical input on the written manuscript and data interpretation.
Acknowledgments
We thank the University of California Brain Mapping Center and its technicians for their continued support.