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. 2021 Sep 14;11:18221. doi: 10.1038/s41598-021-97853-9

Associations between increased circulating endothelial progenitor cell levels and anxiety/depressive severity, cognitive deficit and function disability among patients with major depressive disorder

Ying-Jay Liou 1,2, Mu-Hong Chen 1,2,3, Ju-Wei Hsu 1,2, Kai-Lin Huang 1,2, Po-Hsun Huang 4,5,6,, Ya-Mei Bai 1,2,3,
PMCID: PMC8440504  PMID: 34521977

Abstract

The association of major depressive disorder (MDD) with cardiovascular diseases (CVDs) through endothelial dysfunction is bidirectional. Circulating endothelial progenitor cells (cEPCs), essential for endothelial repair and function, are associated with risks of various CVDs. Here, the relationship of cEPC counts with MDD and the related clinical presentations were investigated in 50 patients with MDD and 46 healthy controls. In patients with MDD, a battery of clinical domains was analysed: depressed mood with Hamilton Depression Rating Scale (HAMD) and Montgomery–Åsberg Depression Rating Scale (MADRS), anxiety with Hamilton Anxiety Rating Scale (HAMA), cognitive dysfunction and deficit with Digit Symbol Substitution Test (DSST) and Perceived Deficits Questionnaire-Depression (PDQ-D), somatic symptoms with Depressive and Somatic Symptom Scale (DSSS), quality of life with 12-Item Short Form Health Survey (SF-12) and functional disability with Sheehan Disability Scale (SDS). Immature and mature cEPC counts were measured through flow cytometry. Increased mature and immature cEPC counts were significantly associated with higher anxiety after controlling the confounding effect of systolic blood pressure, and potentially associated with more severe depressive symptoms, worse cognitive performance and increased cognitive deficit, higher social disability, and worse mental health outcomes. Thus, cEPCs might have pleiotropic effects on MDD-associated symptoms and psychosocial outcomes.

Subject terms: Biomarkers, Diseases, Medical research

Introduction

Major depressive disorder (MDD) is the third leading cause of years lived with disability in 2007 and 20171 and has been projected as the second-leading cause of disability-adjusted life years (DALYs) by 20302. Following MDD, ischaemic heart disease and cerebrovascular disease have been projected respectively as the third and sixth leading causes of DALYs by 20302. Considerable evidence indicates that depression increases cardiovascular disease (CVD) risk. For instance, among individuals who were free of medical illness at baseline, MDD was associated with a more than fourfold risk of myocardial infarction (MI) after control of both other psychiatric diagnoses and medical risk factors3. Patients with MDD also had an increased risk of coronary artery disease (CAD)3. In addition to categorical MDD diagnosis, the risk of CAD is proportional to the severity of depressed mood4. By contrast, patients with CVD are more likely to have depression than the general population. For instance, MDD prevalence is threefold higher in patients with CVD than in the general population5,6. More than half of patients with unstable angina, MI or CAD have clinically significant depressive symptoms6, and depression is an independent risk factor of a worse outcome after a cardiovascular event7. MDD may also increase the risks of atherosclerosis, hypertension, and stroke, even suggesting mutual causality among these conditions3,8. This evidence suggests bidirectional and reciprocal relationships between MDD and CVDs9.

Several pathophysiological mechanisms underlying the bidirectional association of MDD and CVDs have been proposed, such as unhealthy lifestyles or behaviours (diet, smoking, physical inactivity)1012, pleiotropic effects of shared genetic factors and epigenetic modulations and alterations in gene expression9, stress and hypothalamic–pituitary–adrenocortical axis dysfunction13,14, inflammation1517, increased platelet reactivity13, and endothelial dysfunction attributed to the count and functions of circulating endothelial progenitor cells (cEPCs)9,18.

cEPCs, first isolated from human peripheral blood by Asahara et al.19, express numerous haematopoietic stem cell-specific (e.g., CD34 and CD133), progenitor cell-specific (e.g., CD133) and endothelial cell-specific [e.g., kinase insert domain receptor (KDR)] surface markers. cEPCs may be divided into immature (or early) and mature (or late) cEPCs according to the presence of particular surface markers: immature cEPCs are positive for CD34, CD133, and KDR, whereas mature cEPCs are positive for CD34 and KDR20,21. In response to hypoxia after MI and in microvascular ischaemia, cEPCs are differentiated from bone marrow–derived haematopoietic stem cells22, migrate towards sites of vascular injury, incorporate into the endothelial monolayer, and subsequently promote vascular repair and angiogenesis via paracrine signalling to neighbouring cells and transdifferentiating to mature endothelial cells23,24. cEPC count is correlated with flow-mediated brachial artery reactivity and carotid intima media thickness, the clinical surrogates of endothelial dysfunction25,26, as well as associated with the combined Framingham risk factor score26.

A considerable amount of evidence indicating that cEPC count is associated with various CVDs, such as CAD, MI, and ischaemia27. Moreover, a decreased cEPC count can increase hazard ratios for cardiovascular events, cardiovascular death, or all-cause death18, and a decreased count and functional impairment (reduced mobilisation) of cEPCs are significantly correlated with hypertension—a relationship strengthened by the effects of antihypertensive drugs on the mechanisms of action of cEPCs28. In cerebrovascular diseases (another category of major CVDs), increased cEPC counts have been associated with reduced infarct growth and intracerebral haemorrhage volume as well as positive neurological and functional outcomes2931. These findings indicate the pivotal role and intervention potential of cEPCs on the development, course, and associated outcome of CVDs.

Because endothelial dysfunction might be a mechanism underlying the bidirectional MDD–CVD relationship and accumulated evidence suggests cEPCs’ involvement in endothelial dysfunction and CVDs, several studies have investigated the cEPC–depressed mood and cEPC–MDD relationship in patients with or without CVDs and with or without psychosocial stressors3241. These findings imply a potential role of cEPCs in moderating MDD risk and depressive symptoms and need to be replicated in other independent populations. Furthermore, because patients with MDD typically have comorbid cognitive dysfunction42, somatic symptoms43,44, and impaired quality of life45, studying the relationship of cEPCs with the aforementioned clinical parameters during the MDD course is essential. Therefore, the present study investigated whether the cEPC count are associated with MDD and correlated with other clinical presentations, including cognitive dysfunction, somatic symptoms, subjective disability in important functional domains, and quality of life.

Results

cEPC counts in MDD patients and HCs

The study enrolled 50 patients with MDD and 46 HCs. The MDD patients were treated with the following antidepressants: Sertraline (n = 10), Escitalopram (n = 7), Fluoxetine (n = 1), Paroxetine (n = 1), Duloxetine (n = 1), Venlafaxine (n = 2), Bupropion (n = 7), Mirtazapine (n = 3) and Bupropion (n = 7). There were two patents treated with two antidepressants simultaneously. Table 1 lists the demographic, clinical, and laboratory data and cEPC counts in the MDD and HC groups. Continuous variables were presented as the medians and interquartile ranges (IQR). The between-group differences in gender distribution or median age, height, body weight, or body mass index were all nonsignificant. The medians of biochemical parameters, such as ALT, CREAT, FBS, UA, FBS, CHOL, TG, or HDL-C levels, also did not differ significantly between the two groups. However, the medians of systolic and diastolic blood pressures (SBP and DBP) were higher in patients with MDD than in HCs, while the median of AST in MDD was significantly lower than that in HCs (Table 1, Mann–Whitney U test, all p < 0.05). Unfortunately, although the medians of mature and immature cEPC counts in patients with MDD were numerically higher than that in HCs, both cEPC counts were not statistically different in the two groups (Table 1, Mann–Whitney U test, all p > 0.05).

Table 1.

Comparison of demographic parameters, clinical measurements, and cEPC counts between patients with major depressive disorder (MDD) and healthy controls (HCs).

MDD (n = 50) NC (n = 46) p value
Gender (male/female) 17/33 17/29 0.092
Age 26 (20) 28 (12.25) 0.716
Illness duration (years) 2 (5.925)
Treatment duration (years) 0.2 (0.515)
Height (cm) 165.25 (15.25) 162 (14.25) 0.323
BW (kg) 63.45 (16.725) 60 (15) 0.348
BMI 22.8616 (5.8062) 22.4294 (3.504) 0.626
HipC (cm) 96 (9) 93 (12) 0.395
WC (cm) 79.5 (16.25) 77 (15) 0.920
SBP (mmHg) 114 (20.75) 111.5 (15) 0.029
DBP (mmHg) 70.5 (13.25) 65.5 (11.25) 0.002
Heart rate 76 (13) 72.5 (11.25) 0.162
ALT (U/L) 14 (10.25) 15 (9) 0.359
AST (U/L) 16 (5.75) 19 (6.5) 0.023
CREAT (mg/dL) 0.76 (0.13) 0.73 (0.15) 0.230
UA (mg/dL) 5.2 (1.75) 5.6 (1.55) 0.360
FBS (mg/dL) 81 (18) 87 (10) 0.098
CHOL (mg/dL) 182 (39) 192 (56) 0.473
TG (mg/dL) 84 (68.75) 71 (44.5) 0.384
HDL (mg/dL) 53.5 (14.25) 57 (16) 0.220
Mature cEPCs (CD34+KDR+) (counts) 16 (18.25) 13 (16) 0.166
Immature cEPCs (CD34+KDR+CD133+) (counts) 12.5 (16.5) 10.5 (14.25) 0.130

Bold italicised values represent the p-values less than 0.05.

BW body weight, BMI body mass index, HipC hip circumference, WC waist circumference, SBP systolic blood pressure, DBP diastolic blood pressure, ALT alanine aminotransferase, AST aspartate aminotransferase, CREAT creatinine, UA uric acid, FBS fasting blood sugar, CHOL cholesterol, TG triglyceride, HDL high density lipoprotein cholesterol, cEPC circulating endothelial progenitor cells. Continuous variables were presented as their medians and interquartile ranges (IQR).

The relationship between cEPC counts and depression associated clinical measurements

Table 2 shows the results of univariate and multiple linear regression for the association of cEPC counts with these clinical outcomes. In univariate analysis, SBP and DBP were significantly associated with immature (p = 0.001) and mature cEPC (p < 0.001) counts. In patients with MDD, the scores of HAMD, DSSS and DSSS-DS were significantly associated immature and mature cEPC levels (all p < 0.05), while the score of HAMA was significantly associated with the counts of immature cEPC (p = 0.015). The counts of immature and mature cEPC were also significantly associated with objective cognitive dysfunction measured by DSST (p = 0.002 for both immature and mature cEPC counts) and subjective cognitive dysfunction measured by PDQ-D (immature, p = 0.015; mature, p = 0.011). Regarding the participants’ generic health outcomes, both immature and mature cEPC counts were associated their perspective to mental health on SF12-MCS (all p = 0.006). Meanwhile, the counts of immature and mature cEPC were also significantly associated with the participants’ perspective to their social disability level as measured by SDS (p = 0.01 and 0.028 respectively). However, only the association of DSST with immature and mature cEPC counts remained statistically significant after correction for multiple comparisons. In multivariate stepwise linear regression, SBP was entered as a covariate. After controlling the confounding effect of SBP, only the HAMA scores were associated with immature (β = 1.35 (95% C.I. = 0.39–2.31), p = 0.007) and mature (β = 1.32 (95% C.I. = 0.12–2.57), p = 0.033) cEPC counts.

Table 2.

Linear regression for the association of cEPC counts with clinical assessments related to major depressive disorder.

Immature (CD34+KDR+CD133+) Mature (CD34+KDR+)
Univariate Multivariate Univariate Multivariate
β (95% C.I.) p-value β (95% C.I.) p-value β (95% C.I.) p-value β (95% C.I.) p-value
SBP 0.35 (0.14, 0.55) 0.001 0.55 (0.24, 0.86) 0.001 0.48 (0.24, 0.72) < 0.001 0.77 (0.37, 1.17) < 0.001
DBP 0.40 (0.12, 0.67) 0.006 0.55 (0.22, 0.87) 0.001
HAMD 1.09 (0.25, 1.93) 0.012 1.30 (0.28, 2.32) 0.014
MADRS 0.57 (− 0.05, 1.18) 0.072 0.70 (− 0.05, 1.45) 0.067
HAMA 1.18 (0.24, 2.12) 0.015 1.35 (0.39, 2.31) 0.007 1.14 (− 0.03, 2.31) 0.057 1.35 (0.12, 2.57) 0.033
DSST − 0.32 (− 0.53, − 0.12) 0.002 − 0.41 (− 0.66, − 0.15) 0.002
PDQ-D 0.74 (0.15, 1.32) 0.015 0.92 (0.22, 1.62) 0.011
DSSS (total) 0.27 (0.07, 0.48) 0.009 0.31 (0.07, 0.56) 0.012
DSSS-DS 0.50 (0.17, 0.84) 0.003 0.60 (0.20, 0.99) 0.004
DSSS-SS 0.44 (− 0.03, 0.90) 0.064 0.48 (− 0.07, 1.03) 0.089
DSSS-PS 0.43 (− 0.43, 1.30) 0.323 0.47 (− 0.57, 1.50) 0.373
SF12-PCS − 0.08 (− 0.55, 0.39) 0.737 0.01 (− 0.55, 0.57) 0.968
SF12-MCS − 0.31 (− 0.53, − 0.09) 0.006 − 0.37 (− 0.63, − 0.11) 0.006
SDS (work/school) 0.99 (− 0.03, 2.01) 0.057 1.00 (− 0.23, 2.22) 0.109
SDS (social) 1.33 (0.32, 2.35) 0.010 1.38 (0.16, 2.60) 0.028
SDS (family life) 1.04 (− 0.05, 2.12) 0.061 1.05 (− 0.25, 2.35) 0.113
SDS (total) 2.90 (0.54, 5.25) 0.016 3.30 (0.48, 6.11) 0.022
GAF − 0.50 (− 1.13, 0.13) 0.116 − 0.56 (− 1.33, 0.21) 0.153

Bold italicised values represent the p-values less than 0.05.

cEPCs circulating endothelial progenitor cells, SBP systolic blood pressure, DBP diastolic blood pressure, HAMD Hamilton Depression Rating Scale, MADRS Montgomery–Åsberg Depression Rating Scale, DSST Digit Symbol Substitution Test, HAMA Hamilton Anxiety Rating Scale, PDQ-D Perceived Deficits Questionnaire-Depression, DSSS Depression and Somatic Symptom Scale, DSSS-DS DSSS-Depression Subscale, DSSS-SS DSSS-Somatic Subscale, DSSS-PS DSSS-Pain Subscale, SF12-PCS Physical Component Summary of the 12-Item Short Form Health Survey, SF12-MCS Mental Component Summary of the 12-Item Short Form Health Survey, SDS Sheehan Disability Scale, GAF Global Assessment of Functioning Scale.

Discussion

In this study, we explored the role of cEPCs in MDD and MDD-related clinical presentations. Several studies have reported that MDD is associated with a decreased count or impaired function of cEPCs. For instance, the counts of cEPCs or their colony-forming units at diagnosis were significantly lower in patients with MDD than in controls37,41,46. The association of decreased cEPC count with MDD was also observed in patients with acute coronary syndrome comorbid with major depressive episode or mood and anxiety disorder35,38. However, in the present study, the counts of both types of cEPC in patients with MDD were not significantly different from that in HCs (Table 1). The discrepancy of our finding from others might stem from the effect of antidepressants on cEPC counts during depression treatment. In this study, we recruited patients with MDD who had an average illness duration of 4.4 ± 5.8 years and had been treated for an average of 0.8 ± 1.7 years. Antidepressants upregulate the protein expression of HIF1-alpha/VEGF cascades47,48, which then stimulates and promotes endothelial progenitor cell (EPC) mobilisation and proliferation and inhibits EPC apoptosis4951, thus rescuing psychological stress-induced neovascularisation impairment48. Although Dome et al. reported that 1-month treatment during recovery from MDD could not alter peripheral EPC counts36, Lopez-Vilchez et al. found that a longer antidepressant treatment duration tended to increase cEPC counts40. Taken together, the data indicate that cEPC counts in our study’s patients with MDD possibly increased because of ongoing antidepressant treatment.

The relationships between depressive and anxiety severity and cEPC counts were also investigated. We observed a significant association between increased immature and mature cEPC counts and high HAMA scores, and also found trends of associations for the numbers of both type of cEPC and higher HAMD and DSSS-DS scores. These results indicate that increased immature and mature cEPC counts were associated with more severe anxiety level, and potentially with higher subjective and objective depressive symptom severity (assessed with DSSS-DS and HAMD respectively). Findings from several studies have shown that cEPC counts are inversely related to severity of depressive symptoms or stress. For instance, lower mature cEPC counts were associated with higher Depression Anxiety Stress Scale scores in healthy participants33,34, and immature cEPC counts negatively correlated with depression or anxiety severity in patients with acute coronary syndrome38. cEPC counts were lower in mothers of children with autism spectrum disorder than in those of neurotypical children32. Our results were contrary to these previous findings. Nevertheless, Riddell et al. demonstrated that progenitor cells are mobilised by acute psychological stress during a speech task and induced significant increases in the cEPC count52. Al et al. found that young individuals with cardiovascular risk factors express higher counts of circulating stem cells (CSCs; the parent cells of EPCs) than age-matched healthy individuals, but a similar risk factor load in older individuals is associated with lower counts of CSCs53. Similarly, higher CSC counts have been found to be associated with worsening insulin resistance in overweight and obese individuals, but reduced CSC counts develop early individuals with a history of type 2 diabetes mellitus and decline considerably in those with long-standing complicated diabetes mellitus18,54,55. These findings indicate compensatory release of CSCs by bone marrow in response to pathological stimuli or in the early stage of diseases. However, the marrow might be exhausted and hence decline to release CSCs in the late stage of diseases, possibly resulting in CSC counts being initially elevated but progressively reduced throughout the illness18. Therefore, our observed positive correlation of cEPCs with depressive severity might be a presentation of either an adaptive process or a compensatory attempt in the cEPC sources (such as bone marrow) in response to stress during a depressive episode. However, additional studies on patients with different stages of MDD are required to validate our findings.

Cognitive complaints, core symptoms of MDD, can be identified at MDD onset, often persist in euthymic phases and have been suggested as critical mediators of adverse psychosocial outcomes in patients with MDD42. A determining factor contributing to cognitive deficit is chronic cerebral hypoperfusion, in which the supply of oxygen, glucose, and other essential nutrients might not be constant and adequate56,57. Studies have indicated cognitive deficit levels in MDD are associated with cerebral microvascular dysfunction58,59. Cerebral microvascular dysfunction (or small vessel diseases) is considered a manifestation of endothelial dysfunction that can be attenuated by cEPCs60 because the cell populations are involved in endothelial and neurovascular repair, blood–brain barrier establishment, and cerebral microvascular remodelling61. In addition, available evidence indicates cerebral blood flow is correlated with cEPC level62,63. Given the convergent evidence linking cognitive deficit, cerebral microvascular dysfunction and effect of cEPCs on cerebral perfusion, we further analysed the relationship between the cEPC count and cognitive deficit in MDD. We observed that the level of objective (DSST) and subjective (PDQ-D) cognitive deficit were potentially associated with increased counts of immature and mature cEPCs in the univariate analysis (Table 2), suggesting that individuals with higher cEPC counts exhibited worse cognitive performance and greater cognitive deficit. Studies have investigated the relationship of cEPC counts with cognitive function in healthy individuals or in individuals with dementia. In general, low cEPC counts were correlated with greater yearly cognitive decline, worse immediate verbal and visual memory, and worse delayed verbal memory in healthy individuals63,64 or in patients with Alzheimer’s disease65,66. The correlation direction of cEPC counts and cognitive performance indicated in these studies is contrary to our findings. The use of different populations across different studies makes interpretation of these results challenging. By contrast, the cEPC count has been found to increase in the early or acute phase of cerebrovascular injury, such as ischaemic stroke or intracerebral haemorrhage29,30, suggesting there is a cellular compensatory attempt or behaviour of cEPCs in response to cerebrovascular injury. Increased cEPC counts have also been associated with decreased infarct growth and intracerebral haemorrhage volume and positive neurological and functional outcomes2931. If cognitive dysfunction is considered a clinical surrogate of cerebral microvascular and endothelial dysfunction5860, the associations of increased cEPC counts with more severe cognitive deficit and subjective impairment in our study might also be a cellular adaptive process to subtle or silent cerebral microvascular dysfunction.

Compared with previous studies that only used simple depression questionnaires, our study contains more comprehensive measurements of MDD, including self-assessed life quality, functioning, and social disability. One of our key findings in the univariate analysis was the potential association of increased immature and mature cEPC counts with worse mental life quality (SF-MCS) and poor social disability in SDS (Table 2). The release from bone marrow stroma, mobilisation, and vasculogenesis functions of cEPCs depends on matrix metalloproteinase-9 (MMP-9) activation20,67,68. Yoshida et al. showed that quality of life in patients with MDD was negatively correlated with the concentration of MMP-969. Although no other studies have investigated the relationship of cEPCs with MDD-related psychosocial outcomes, the combined evidence from Yoshida et al. and our finding might indicate that regulation of cEPC functions is related to many aspects of MDD—not only mood, anxiety, and cognitive symptoms but also psychosocial outcome.

In the present study, we found patients with MDD had significantly higher SBP and DBP than the HCs (Table 1). In a meta-analysis summarizing longitudinal studies among initially somatic-disease free subjects, depression increases the risk of subsequent hypertension70. Although our study is cross-sectional, our finding supports the association of depression and elevated blood pressures. There have been several proposed mechanisms linking depression, elevated blood pressures and risk of cardiovascular diseases, such like unhealthy lifestyle, genetic pleiotropy, dysregulations in immono-inflammatory, autonomic and hypothalamic–pituitary–adrenal systems and antidepressant use71. These factors may interplay in vicious cycle through which depression and cardiovascular disease impact on each other71.

The present study has some limitations. First, our study is a cross-sectional study with a small sample size, precluding causal interpretations for the association of cEPC levels with mood severities, cognitive performance, life quality and functional outcomes. Additional longitudinal studies with larger samples are needed to explore the temporal relationship of cEPCs and antidepressant treatment throughout the course of MDD. In addition, cEPC counts can be affected by confounding factors such as physical activities, exercise, and other oxidative stress biomarkers. The proximate cause should be carefully identified. Third, only the association of anxiety levels and increased cEPC counts was robust after correcting the confounding effect of SBP in multivariate linear regression. The associations of cEPC counts with the level of depressed mood, cognitive deficit, subjective mental life quality and subjective social disability in univariate analysis were not significant after multiple comparison adjustments. However, we think our study might be an exploratory study in which the data were collected from clinical observation and assessments and tested for descriptive purpose but not for confirmatory purpose or decision making72. Imposing a strict cut-off on statistical significance with forced adjustment of multiple comparisons in exploratory studies might lose some novel information for further hypothesis generation. Therefore, some researchers have suggested that the adjustment for multiple comparisons in exploratory analyses might not be necessary7274. Despite these shortcomings, our study is to the best of our knowledge the most comprehensive one investigating the relationship between MDD and cEPC counts from different clinical perspectives because we assessed not only subjective and objective mood severity but also cognitive dysfunction and functional disability for association with cEPCs. Subsequent study should be conducted to confirm these observed associations.

Materials and methods

Participants

The study was conducted in the psychiatric outpatient department of Taipei Veterans General Hospital (Taipei, Taiwan) including patients aged 20–65 years who met the Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition (DSM-5) criteria for MDD with a Clinical Global Impression-Severity (CGI-S) scale score for depression of ≤ 3 were included. The Clinical Global Impression-Severity Scale is a 7-point observer-rated scale that requires the clinician to measure the illness severity for the patients with mental disorders, relative to the clinician’s past experience with patients with the same diagnosis75. The score equal or less than 3 means the patients in the study were normal to mildly ill at recruitment and able to complete other assessments75. Age and gender-matched participants without any psychiatric illness were enrolled as the healthy control (HC) group. The exclusion criteria included any DSM-5 diagnosis of the following: lifetime history of schizophrenia or any other psychosis, intellectual disability, organic mental disorder, autoimmune or immune diseases, substance abuse in the past 3 months or substance dependence in the past 6 months, pregnancy or breastfeeding, and unstable physical illnesses.

This study was approved by the Institutional Review Board of the Taipei Veterans General Hospital and conducted in accordance with the Declaration of Helsinki. Written informed consent was obtained from all patients prior to their study inclusion.

Clinical assessments

Clinical symptoms were assessed by a psychiatrist by using the 17-item Hamilton Depression Rating Scale, (HAMD), Montgomery–Åsberg Depression Rating Scale (MADRS), and Hamilton Anxiety Rating Scale (HAMA), respectively. HAMD and MADRS are two popular scales among a number of self-report and clinician ratings for depressive symptom severity. However, neither the HAMD nor the MADRS evaluate all of the core criterion symptoms of a major depressive episode. The HAMD lacks ratings of oversleeping, overeating and concentration, while the MADRS lacks ratings of interest, guilt and psychomotor changes76. In that regard, both ratings were used to fully assess depressive symptoms severity in the MDD patients.

The participants’ objective neurocognitive functions were also assessed with the Digit Symbol Substitution Test (DSST), which evaluates psychomotor speed of performance requiring visual perception, spatial decision-making, and motor skills; it is a valid and sensitive measure of various cognitive domains including executive function, attention, psychomotor speed, and working memory77. In addition, the participants self-assessed their subjective cognitive deficits with the Perceived Deficits Questionnaire-Depression (PDQ-D)78, which measures the impact of cognitive dysfunction on participants’ daily life on the basis of their own experience and perceptions when having depressive symptoms.

The participants also completed another two self-administered questionnaires: the Depressive and Somatic Symptom Scale (DSSS) and the 12-Item Short Form Health Survey (SF-12). The DSSS is composed of a depression subscale (DSSS-DS), somatic subscale (DSSS-SS), and pain subscale (DSSS-PS)79. The DSSS has the advantage of simultaneously assessing both somatic and depression symptoms, overcoming the deficiencies of other depression scales with few somatic items. The SF-12, a 12-item questionnaire used to assess generic health-related quality of life from the patient’s perspective, comprises a physical component summary (SF12-PCS) and mental component summary (SF12-MCS)80.

Finally, the individual’s functional impairment in school/work, social, or family life and overall functioning in daily life were evaluated with the Sheehan Disability Scale (SDS) and Global Assessment of Functioning Scale (GAF), respectively. SDS is a participant-rated tool evaluating functional disability in work, school, social, and family life with only three self-rated items81, whereas GAF is a clinical assessment of an individual’s overall functioning levels comprising social, occupational, and psychological functioning during a given period based on a psychiatrist’s judgement.

Measurements for biochemical parameters and cEPC counts

Blood samples were drawn after a 12-h overnight fasting. Plasma biochemical parameters, such as alanine aminotransferase (ALT), aspartate aminotransferase (AST), creatinine (CREAT), fasting glucose (FBS), triglyceride (TG), cholesterol (CHOL), high-density lipoprotein cholesterol (HDL-C) and uric acid (UA) levels, were determined using standard laboratory procedures.

The cEPC count was measured through flow cytometry conducted by researchers who were blinded to all clinical data. A 1.0-mL sample of peripheral blood was obtained from each participant. Blood samples were subsequently incubated with allophycocyanin (APC)-conjugated monoclonal antibodies against human KDR (R&D, Minneapolis, MN, USA), phycoerythrin (PE)-conjugated monoclonal antibodies against human CD133 (Miltenyi Biotec, Germany), and fluorescein isothiocyanate (FITC)-conjugated monoclonal antibodies against human CD34 (BD Biosciences Pharmingen, San Diego, CA, USA) in the dark for 30 min. Each analysis was based on 150,000 acquired events, which was as reliable as 500,000 events (intraclass correlation coefficient > 0.95). When viability markers were included, the viability of the cEPCs was up to 96.3%. The interindividual variability of two separate samples obtained from 10 patients was strongly correlated (r = 0.90, p < 0.001). The intraindividual variability of immature (CD34+KDR+CD133+) and mature (CD34+KDR+) cEPCs over time was evaluated in 21 patients through two measurements 1 year apart, and the resulting intraclass correlation coefficients were 0.69, 0.75, and 0.78 respectively. Cell counts are expressed as cEPCs per 105 mononuclear cells.

Statistical analyses

Statistical analysis was performed using SPSS (version 21; SPSS Inc., Chicago, IL, USA). The difference in the distributions of categorical variables between groups were compared using the chi-square test (and Fisher’s exact test if necessary). To compare continuous variables between groups, two-tailed independent t tests were used if the outcomes were approximately normally distributed, or Mann–Whitney U tests if the outcomes were deviated from normal distribution. The distributions of continuous variables were examined with Shapiro–Wilk tests. Meanwhile, linear regressions were performed to adjust for potential confounding effects on continuous outcomes since linear regression is an appropriate analysis when the dependent variable is not normally distributed82. In univariate linear analysis, the threshold of statistical significance was set at p < 0.0028 (0.05/18) to control the inflation of type I error. For multivariate stepwise linear analysis, the threshold of statistical significance was set at p < 0.05.

Acknowledgements

The study was supported by grants from Taipei Veterans General Hospital (V108C-201, V109C-086 and VGHUST109-V1-2-3) and Taiwan Ministry of Science and Technology (MOST 105-2314-B-075-025-MY3).

Author contributions

Y.-M.B. and P.-H.H. conceptualized and supervised the project. Y.-J.L. performed data analyses and drafted the manuscript. M.-H.C., J.-W.H., K.-L.H. and Y.-M.B. provided the samples and clinical data for the study. P.-H.H. designed, performed and supervised the laboratory experiments. All authors have made substantial contributions to the work, and reviewed and revised the manuscript.

Competing interests

The authors declare no competing interests.

Footnotes

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Contributor Information

Po-Hsun Huang, Email: huangbsvgh@gmail.com.

Ya-Mei Bai, Email: ymbi@mail2000.com.tw.

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