Hostname: page-component-76fb5796d-22dnz Total loading time: 0 Render date: 2024-04-28T16:03:06.136Z Has data issue: false hasContentIssue false

Does psychological treatment of major depression reduce cardiac risk biomarkers? An exploratory randomized controlled trial

Published online by Cambridge University Press:  02 March 2022

Frank Euteneuer*
Affiliation:
Clinical Psychology and Psychotherapy, Department of Psychology, Medical School Berlin, Berlin, Germany Division of Clinical Psychology and Psychotherapy, University of Marburg, Marburg, Germany
Marie Neuert
Affiliation:
Division of Clinical Psychology and Psychotherapy, University of Marburg, Marburg, Germany
Stefan Salzmann
Affiliation:
Division of Clinical Psychology and Psychotherapy, University of Marburg, Marburg, Germany
Susanne Fischer
Affiliation:
Clinical Psychology and Psychotherapy, Institute of Psychology, University of Zurich, Zurich, Switzerland
Ulrike Ehlert
Affiliation:
Clinical Psychology and Psychotherapy, Institute of Psychology, University of Zurich, Zurich, Switzerland
Winfried Rief
Affiliation:
Division of Clinical Psychology and Psychotherapy, University of Marburg, Marburg, Germany
*
Author for correspondence: Frank Euteneuer, E-mail: frank.euteneuer@medicalschool-berlin.de
Rights & Permissions [Opens in a new window]

Abstract

Background

Depression is associated with an increased risk for cardiovascular disease (CVD). Biological cardiac risk factors are already elevated in depressed patients without existing CVD. The purpose of this exploratory trial was to examine whether treating Major Depression (MD) with cognitive behavioral therapy (CBT) is associated with improvements in cardiac risk biomarkers and whether depressive symptom severity at baseline moderates treatment effects.

Methods

Eighty antidepressant-free patients with MD were randomly assigned to CBT or waiting list (WL). Biological outcomes included long-term recordings (24-h, daytime, nighttime) of heart rate, heart rate variability (HRV), and blood pressure, as well as inflammatory markers such as C-reactive protein (CRP), interleukin (IL)-6, and tumor necrosis factor (TNF)-α. A sample of 40 age- and sex-matched non-clinical controls was also involved to verify biological alterations in MD at study entry.

Results

Compared to WL, CBT was associated with a significant increase in overall HRV, as indexed by the 24-h and daytime HRV triangular index, as well as trend improvements in 24-h low-frequency HRV and daytime systolic blood pressure. Self-rated depressive symptom severity moderated (or tended to moderate) improvements in CBT for 24-h and daytime heart rate and several indices of HRV (especially daytime measures). Inflammatory treatment effects were not observed.

Conclusions

CBT increased overall HRV in patients with MD. Initially more depressed patients showed the most pronounced cardiovascular improvements through CBT. These exploratory findings may provide new insights into the biological effects of psychological treatment against depression and must be confirmed through future research.

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press

Introduction

Depression is associated with an increased risk for the development of cardiovascular disease (CVD) (Gan et al., Reference Gan, Gong, Tong, Sun, Cong, Dong and Lu2014; Harshfield et al., Reference Harshfield, Pennells, Schwartz, Willeit, Kaptoge and Bell2020; Li et al., Reference Li, Zheng, Li, Wu, Feng, Cao and Guo2019; Wu & Kling, Reference Wu and Kling2016) and future cardiovascular events in patients with existing CVD (Carney & Freedland, Reference Carney and Freedland2017; Goldston & Baillie, Reference Goldston and Baillie2008; Pelle, Gidron, Szabó, & Denollet, Reference Pelle, Gidron, Szabó and Denollet2008; Spaderna et al., Reference Spaderna, Zittermann, Reichenspurner, Ziegler, Smits and Weidner2017). Cardiac risk biomarkers are already prominent in patients with depression in the absence of CVD. These biological factors include autonomic dysregulation such as reduced heart rate variability (HRV) and increased heart rate (Kemp et al., Reference Kemp, Quintana, Gray, Felmingham, Brown and Gatt2010; Koch, Wilhelm, Salzmann, Rief, & Euteneuer, Reference Koch, Wilhelm, Salzmann, Rief and Euteneuer2019; Lake et al., Reference Lake, Pickar, Ziegler, Lipper, Slater and Murphy1982; Lehofer et al., Reference Lehofer, Moser, Hoehn-Saric, McLeod, Liebmann, Drnovsek and Zapotoczky1997), and possibly elevated blood pressure (Ginty, Carroll, Roseboom, Phillips, & de Rooij, Reference Ginty, Carroll, Roseboom, Phillips and de Rooij2013; Meng, Chen, Yang, Zheng, & Hui, Reference Meng, Chen, Yang, Zheng and Hui2012). In addition to autonomic dysregulation, depression is associated with elevated circulating levels of inflammatory immune markers such as interleukin (IL)-6, tumor necrosis factor (TNF)-α and C-reactive protein (CRP) (Dowlati et al., Reference Dowlati, Herrmann, Swardfager, Liu, Sham, Reim and Lanctot2010; Howren, Lamkin, & Suls, Reference Howren, Lamkin and Suls2009; Osimo et al., Reference Osimo, Pillinger, Rodriguez, Khandaker, Pariante and Howes2020). Based on these findings, it has been suggested that autonomic dysregulation and inflammation may partially mediate the link between depression and CVD (Musselman, Evans, & Nemeroff, Reference Musselman, Evans and Nemeroff1998; Nicholson, Kuper, & Hemingway, Reference Nicholson, Kuper and Hemingway2006; Shaffer & Ginsberg, Reference Shaffer and Ginsberg2017; Sgoifo, Carnevali, de los Angeles Pico Alfonso, & Amore, Reference Sgoifo, Carnevali, de los Angeles Pico Alfonso and Amore2015; Williams & Steptoe, Reference Williams and Steptoe2007).

Previous studies suggest bidirectional associations of depression with autonomic and immunological alterations (Copeland, Shanahan, Worthman, Angold, & Costello, Reference Copeland, Shanahan, Worthman, Angold and Costello2012; Deverts et al., Reference Deverts, Cohen, DiLillo, Lewis, Kiefe, Whooley and Matthews2010; Huang et al., Reference Huang, Shah, Su, Goldberg, Lampert, Levantsevych and Vaccarino2018; Reference Huang, Su, Goldberg, Miller, Levantsevych, Shallenberger and Vaccarino2019; Matthews et al., Reference Matthews, Schott, Bromberger, Cyranowski, Everson-Rose and Sowers2010; Valkanova, Ebmeier, & Allan, Reference Valkanova, Ebmeier and Allan2013). Cognitive behavioral therapy (CBT) is the most-studied form of psychotherapy for MD (Cuijpers et al., Reference Cuijpers, Berking, Andersson, Quigley, Kleiboer and Dobson2013; Cuijpers, Cristea, Karyotaki, Reijnders, & Huibers, Reference Cuijpers, Cristea, Karyotaki, Reijnders and Huibers2016; David, Cristea, & Hofmann, Reference David, Cristea and Hofmann2018). By changing dysfunctional thoughts and behaviors, CBT may have the potential to reduce cardiac risk biomarkers via multiple stress-related and behavioral mechanisms. These potential mechanisms include factors which (i) are targeted by CBT and (ii) may interact with autonomic dysregulation and inflammation, such as negative mood, perceived stress and emotional stress reactivity, poor cognitive and behavioral skills to cope with stressors, social withdrawal, as well as inactivity (Allen, Kennedy, Cryan, Dinan, & Clarke, Reference Allen, Kennedy, Cryan, Dinan and Clarke2014; Audet, McQuaid, Merali, & Anisman, Reference Audet, McQuaid, Merali and Anisman2014; Eller, Kristiansen, & Hansen, Reference Eller, Kristiansen and Hansen2011; Gerteis & Schwerdtfeger, Reference Gerteis and Schwerdtfeger2016; Kemp, Koenig, & Thayer, Reference Kemp, Koenig and Thayer2017; Kiecolt-Glaser, Derry, & Fagundes, Reference Kiecolt-Glaser, Derry and Fagundes2015; Lee & Way, Reference Lee and Way2019; Plaisance & Grandjean, Reference Plaisance and Grandjean2006; Sin, Sloan, McKinley, & Almeida, Reference Sin, Sloan, McKinley and Almeida2016; Uchino et al., Reference Uchino, Trettevik, de Grey, Cronan, Hogan, & Baucom and W2018; Yang, Schorpp, & Harris, Reference Yang, Schorpp and Harris2014).

Although considered the gold-standard for the psychological treatment of MD, one important and understudied question is, however, whether CBT reduces cardiac risk biomarkers in populations with MD without CVD. In terms of HRV, two randomized controlled trials (RCT) indicated that short CBT interventions (i.e. 4–6 weeks) combined with HVR biofeedback (Caldwell & Steffen, Reference Caldwell and Steffen2018) or breathing exercises (Chien, Chung, Yeh, & Lee, Reference Chien, Chung, Yeh and Lee2015) may improve specific measures of HRV. Both studies have important limitations, such as a small sample size of younger females (Caldwell & Steffen, Reference Caldwell and Steffen2018), a short treatment duration (Caldwell & Steffen, Reference Caldwell and Steffen2018; Chien et al., Reference Chien, Chung, Yeh and Lee2015), the inclusion of patients with antidepressant medication (Chien et al., Reference Chien, Chung, Yeh and Lee2015), as well as the use of short-term measures of HRV (Caldwell & Steffen, Reference Caldwell and Steffen2018; Chien et al., Reference Chien, Chung, Yeh and Lee2015) instead of long-term HRV recordings which are more stable, less affected by placebo effects and more predictive for cardiovascular events in populations without known CVD (Hillebrand et al., Reference Hillebrand, Gast, de Mutsert, Swenne, Jukema, Middeldorp and Dekkers2013; Task Force of The European Society of Cardiology and The North American & Society of Pacing and Electrophysiology, 1996). In terms of inflammation, one previous RCT suggests that CBT lowers IL-6 and TNF-α in a sample of young adults (Moreira et al., Reference Moreira, de Cardoso, Mondin, de Souza, Silva, Jansen and Wiener2015), while two trials did not observe an overall effect of CBT on inflammatory markers (Euteneuer et al., Reference Euteneuer, Dannehl, Del Rey, Engler, Schedlowski and Rief2017; Taylor et al., Reference Taylor, Conrad, Wilhelm, Strachowski, Khaylis, Neri and Spiegel2009).

The present RCT examined whether established CBT for depression is accompanied by reductions in cardiac risk biomarkers in patients with MD without CVD. We aimed to extend previous research in several regards. First, we exploratory studied biological effects of CBT for a wide range of measures with predictive value for CVD, such as heart rate (Greenland et al., Reference Greenland, Daviglus, Dyer, Liu, Huang, Goldberger and Stamler1999; Kannel, Kannel, Paffenbarger, & Cupples, Reference Kannel, Kannel, Paffenbarger and Cupples1987), indices of HRV (Hillebrand et al., Reference Hillebrand, Gast, de Mutsert, Swenne, Jukema, Middeldorp and Dekkers2013), blood pressure (Lewington, Clarke, Qizilbash, Peto, & Rory, Reference Lewington, Clarke, Qizilbash, Peto and Rory2002), as well as inflammatory markers such as CRP, IL-6 and TNF-α (Avan et al., Reference Avan, Tavakoly Sany, Ghayour-Mobarhan, Rahimi, Tajfard and Ferns2018; Pearson, Reference Pearson2003; Subirana et al., Reference Subirana, Fitó, Diaz, Vila, Francés, Delpon and Marrugat2018). Second, this RCT only included patients without antidepressant medication. This point is important because antidepressants, in particular tricyclic antidepressants, may reduce HRV (Kemp et al., Reference Kemp, Fráguas, Brunoni, Bittencourt, Nunes, Dantas and Lotufo2016, Reference Kemp, Quintana, Gray, Felmingham, Brown and Gatt2010; Kemp, Quintana, & Malhi, Reference Kemp, Quintana and Malhi2011; Yeh et al., Reference Yeh, Kao, Tzeng, Kuo, Huang, Chang and Chang2016). Third, we used 24-h long-term recordings for cardiac measures instead of short-term recordings. Long-term recordings are more predictive for CVD (Hillebrand et al., Reference Hillebrand, Gast, de Mutsert, Swenne, Jukema, Middeldorp and Dekkers2013) and provide the possibility to analyze geometric indices of HRV such as the triangular index, which has been suggested for prospective research because of the highest reliability among all HRV indices (Ziegler, Piolot, Strassburger, Lambeck, & Dannehl, Reference Ziegler, Piolot, Strassburger, Lambeck and Dannehl1999). In addition, long-term recordings enable the possibility to consider circadian aspects of cardiac measures (Bilan, Witczak, Palusiński, Myśliński, & Hanzlik, Reference Bilan, Witczak, Palusiński, Myśliński and Hanzlik2005; Bonnemeier et al., Reference Bonnemeier, Wiegand, Brandes, Kluge, Katus, Richardt and Potratz2003; Carney et al., Reference Carney, Freedland, Stein, Skala, Hoffman and Jaffe2000; Li et al., Reference Li, Shaffer, Rodriguez-Colon, He, Wolbrette, Alagona and Liao2011; Ohkubo et al., Reference Ohkubo, Hozawa, Yamaguchi, Kikuya, Ohmori, Michimata and Imai2002; Parati et al., Reference Parati, Stergiou, O'Brien, Asmar, Beilin and Bilo2014). Based on a pre-post study suggesting that CBT improved heart rate and daytime HRV in severely depressed patients but not in mildly depressed patients with coronary heart disease (Carney et al., Reference Carney, Freedland, Stein, Skala, Hoffman and Jaffe2000), we examined whether the intensity of depressive symptoms at study entry moderates potential effects on biological outcomes. This trial should be considered exploratory, because a wide range of biological markers were assessed, aiming to identify potential biological responsiveness for future research.

Materials and methods

This RCT was conducted from October 2015 to October 2019 in accordance with the World Medical Association Declaration of Helsinki and the ethical guidelines of the German Society for Psychology (see online Supplementary material for CONSORT 2010 checklist). The approval was given by the Institutional Review Board of the Department of Psychology at the University of Marburg (Approval number: 2014-26k). The study was funded by the German Research Foundation (DFG EU 154/2-1), and study registration took place (www.clinicaltrial.gov NCT 02787148).

Participants

Eighty antidepressant-free patients with MD according to DSM-IV were (1:1) urn randomized to 14 weeks of CBT or a waitlist control condition (see online Supplementary material for recruiting, setting and intervention). A sample of 40 (1:2) age- and sex-matched non-clinical controls from the same community was also involved to verify potential baseline alterations in biological markers in MD.

Depression assessment

Clinical diagnoses according to DSM-IV were verified using the SCID (Wittchen, Wunderlich, Gruschitz, & Zaudig, Reference Wittchen, Wunderlich, Gruschitz and Zaudig1997). To verify the efficacy of the CBT intervention, the primary outcome was self-rated depressive symptom severity assessed with the Beck Depression Inventory (BDI)-II (Beck, Brown, & Steer, Reference Beck, Brown and Steer1996; Hautzinger, Kühner, & Keller, Reference Hautzinger, Kühner and Keller2006). Clinician-rated depressive symptom severity was also assessed using the Montgomery-Asberg Depression Rating Scale (MADRS) (Montgomery & Asberg, Reference Montgomery and Asberg1979; Schmidtke, Fleckenstein, Moises, & Beckmann, Reference Schmidtke, Fleckenstein, Moises and Beckmann1988). Clinical psychologists conducted clinical interviews and baseline MADRS assessments. MADRS assessment at the end of treatment was conducted by trained, supervised, and blinded research assistants.

Inflammatory markers

Non-fasting blood samples were collected in EDTA-treated tubes (S-Monovette, Sarstedt, Nümbrecht, Germany) between 8:00 AM and 11:00 AM. Before each blood sampling, participants were queried about acute infections during the last 14 days, chronic infections, and illness. Plasma for CRP and cytokine measurements were separated by centrifugation at 2000 × g for 10 min at 4 °C, and plasma was stored at −80 °C until analysis. CRP and cytokines were analyzed using the V-PLEX Human CRP Kit and MSD cytokine assays (Meso Scale Discovery, Rockville, USA) according to the manufacturer's instructions. The sensitivity of the assays was 1.33 pg/ml for CRP, 0.04 pg/ml for TNF-α, and 0.06 pg/ml for IL-6.

Ambulatory cardiovascular monitoring

Twenty-four-hour oscillometric blood pressure and electrocardiogram (ECG) monitoring for heart rate and HRV analyses was conducted during weekdays using a hybrid blood pressure/ECG monitor (card(X)plore, Meditech Ltd., Hungary). Participants were instructed to follow their typical daily activities but refrain from intense physical activity. Monitoring started between 8 AM and 11 AM. Considering circadian variations in heart rate, blood pressure, and HRV (Bilan et al., Reference Bilan, Witczak, Palusiński, Myśliński and Hanzlik2005; Bonnemeier et al., Reference Bonnemeier, Wiegand, Brandes, Kluge, Katus, Richardt and Potratz2003; Li et al., Reference Li, Shaffer, Rodriguez-Colon, He, Wolbrette, Alagona and Liao2011), these measures were calculated for the total 24-h recording and additionally for day- and nighttime. Using a fixed-narrow time interval approach, measures for day- and nighttime were calculated from standardized periods (i.e. daytime: 9 AM to 9 PM; nighttime: 1 AM to 6 AM) in which the retiring and rising periods (which are subject to considerable variation) were eliminated to increase reliability and comparability (Fagard, Brguljan, Thijs, & Staessen, Reference Fagard, Brguljan, Thijs and Staessen1996; O'Brien et al., Reference O'Brien, Parati, Stergiou, Asmar, Beilin, Bilo and Zhang2013). CardioVisions 1.24 (Meditech Ltd., Hungary) was used to obtain parameters for heart rate, HRV, and blood pressure.

Heart rate was recorded continuously by a 3-channel Holter ECG at a sampling rate of 600 Hz using seven Ag/AgCl electrodes (Kendall H92SG, Cardinal Health Germany 507 GmbH, Germany) placed on the thoracic region. First, similar QRS complexes were automatically grouped and defined as normal or artifact beats. Next, QRS complexes were visually screened for incorrect beat detections and, in case of an incorrect reading, marked as artifact beat. All artifacts were excluded from the data. A minimum of 18 h of analyzable data and less than 5% artifacts of all analyzable beats were required for a recording to be accepted for further analyses (Crawford et al., Reference Crawford, Bernstein, Deedwania, DiMarco, Ferrick, Garson and Smith1999).

As recommended by common guidelines (Task Force of The European Society of Cardiology and The North American & Society of Pacing and Electrophysiology, 1996), the following time-domain HRV measures were assessed: the HRV triangular index and the standard deviation of all NN intervals (SDNN) for overall HRV, as well as the square root of the mean of the sum of the squares of differences between adjacent NN intervals (RMSSD) for estimating vagally mediated changes reflected in HRV. In terms of frequency-domain HRV, low-frequency (LF)-HRV (0.04–0.15 Hz) and high-frequency (HF)-HRV (0.15–0.4 Hz) were analyzed. HF-HRV reflects vagal modulation of HR. LF-HRV is more complex and may include both sympathetic and parasympathetic influences (Shaffer & Ginsberg, Reference Shaffer and Ginsberg2017; Task Force of The European Society of Cardiology and The North American & Society of Pacing and Electrophysiology, 1996). To determine LF and HF parameters, the software utilizes a Fast Fourier Transform (FFT) algorithm considering 4-min Hanning-windowed samples.

For ambulatory blood pressure monitoring (ABPM), the device was programmed to obtain blood pressure readings every 15 min during daytime (7 AM to 10 PM) and every 30 min during the night-time (10 PM to 7 AM). The inflatable cuff was placed on the participant's right arm. After the measurement, ABPM readings were manually screened for artifacts. As recommended, only strongly incorrect readings were deleted from recordings (O'Brien et al., Reference O'Brien, Asmar, Beilin, Imai, Mallion and Mancia2003). Systolic blood pressure (SBP) values lower than 60 or higher than 260, and diastolic blood pressure (DBP) values lower than 40 and higher than 150 were defined as artificial readings and excluded. Daytime, nighttime and 24-h calculations based on weighted average blood pressure. Nocturnal SBP and DBP dipping was determined by subtracting the nighttime average blood pressure from the daytime average blood pressure. Thus, lower values on these different measures reflect lower nocturnal blood pressure dipping. This procedure yields adequate reliability for dipping values (Dimsdale et al., Reference Dimsdale, von Känel, Profant, Nelesen, Ancoli-Israel and Ziegler2000).

Data analysis

Baseline measures are reported as means with SDs for continuous variables and as numbers with percentages for categorical variables. Data distributions were inspected, and screening for extreme outliers was conducted (i.e. values more than three interquartile ranges above quartile 3). Potential differences in study variables between patients with MD and non-clinical controls were examined using Welch's t tests and χ2 tests. Constrained longitudinal data analysis (cLDA) with linear mixed models (Coffman, Edelman, & Woolson, Reference Coffman, Edelman and Woolson2016; Fitzmaurice, Laird, & Ware, Reference Fitzmaurice, Laird and Ware2011; Liang & Zeger, Reference Liang and Zeger2000; Liu, Lu, Mogg, Mallick, & Mehrotra, Reference Liu, Lu, Mogg, Mallick and Mehrotra2009) was applied to examine differences in changes from baseline to the end of treatment between both treatment groups. Constrained linear mixed models incorporated baseline adjustment (i.e. baseline means are constrained to be equal between the randomized groups;) with time (baseline, end of treatment) and time × treatment interactions as fixed factors and with a random intercept at patient level. Longitudinal data were analyzed on an intention-to-treat base using maximum likelihood estimation to account for missing data and dropouts, respectively. To examine moderating effects of depressive symptom severity, time × treatment × baseline severity interactions, as well as corresponding lower-order terms, were added to constrained linear mixed models. Following common suggestions for exploratory research (Althouse, Reference Althouse2016; Bender & Lange, Reference Bender and Lange2001; Rothman, Reference Rothman1990; Rubin, Reference Rubin2017), we report and interpret results without adjusting for multiple testing. All p-values are two-tailed and analyses were carried out with SPSS version 20.0 for Windows (Chicago, SPSS, Inc.) and Mplus7 (Muthén & Muthén, 1998–2012).

Results

Baseline and trial characteristics

A total of 80 patients with MD and 40 non-clinical controls participated in this study. As illustrated in the study flow (shown in Fig. 1), dropout rates from baseline to the end of treatment were 20% for the CBT group and 27.5% for the WL group. Missing values occurred, and extreme outliers in biological variables were also considered missing values. Extreme outliers were observed for the following variables: CRP (non-clinical controls: 0%, CBT group: 5.6%, WL group: 5.8%), IL-6 (non-clinical controls: 0%, CBT group: 2.8%, WL group: 1.4%), nighttime heart rate (non-clinical controls: 0%, CBT group: 1.4%, WL group: 0%), daytime HF-HRV (non-clinical controls: 0%, CBT group: 1.4%, WL group: 1.4%), daytime LF-HRV (non-clinical controls: 0%, CBT group: 0%, WL group: 1.4%), nighttime HF-HRV (non-clinical controls: 2.5%, CBT group: 0%, WL group: 1.4%), and nighttime SBP (non-clinical controls: 0%, CBT group: 0%, WL group: 1.4%). Among those who completed the study, overall analyzable data were available as follows: BDI-II (non-clinical controls: 100%, CBT group: 100%, WL group: 96%), MADRS (non-clinical controls: 95%, CBT group: 94%, WL group: 94%), CRP (non-clinical controls: 95.0%, CBT group: 87.5%, WL group: 78.3%), IL-6 (non-clinical controls: 95.0%, CBT group: 90.3%, WL group: 82.6%), TNF-α (non-clinical controls: 95.0%, CBT group: 93.1%, WL group: 84.1%), heart rate and HRV measures (non-clinical controls: 92.5–95.0%, CBT group: 80.6–86.1%, WL group: 76.8–81.2%), and blood pressure measures (non-clinical controls: 95.0%, CBT group: 80.6–93.1%, WL group: 76.8–84.1%). Fisher's exact test did not indicate significant differences for any study variable when comparing proportions of outliers (all ps ⩾ 0.489) or total missing data (all ps ⩾ 0.114) between both treatment groups.

Fig. 1. Flow of participants through each stage of the trial. CBT, cognitive-behavioral therapy; ITT, intention-to-treat; WL, waitlist.

Descriptive statistics for all groups and comparisons between patients with MD and non-clinical controls are presented in Table 1 (see online Supplementary material Table S1 for correlations between biological variables at study entry and Table S2 for correlations between changes in biological variables for each treatment group). Compared to non-clinical controls, patients with MD exhibited significantly higher levels in all inflammatory markers (i.e. CRP, IL-6 and TNF-α). Patients with MD showed significantly higher levels of 24-h and daytime heart rate, relative to non-clinical controls. With respect to HRV, patients had significantly lower levels of 24-h HRV triangular index, daytime HRV triangular index, daytime HF-HRV, daytime LF-HRV and daytime RMSSD, and a trend of reduced daytime SDNN. For blood pressure, higher levels of 24-SBP and daytime DBP, and a trend of higher daytime SBP and 24-h SBP, were observed in patients with MD compared to controls. There were no significant differences between groups for any other biological measures.

Table 1. Baseline .characteristics of patients with Major Depression and comparison of study variables with a nonclinical age- and sex-matched non-clinical control sample

BDI-II, Beck Depression Inventory-II; CBT, Cognitive behavioral therapy; CRP, C-reactive protein; HF-HRV, high-frequency heart rate variability; IL-6, interleukin 6; LF-HRV, low-frequency heart rate variability; MADRS, Montgomery–Asberg Depression Rating Scale; RMSSD, square root of the mean of the sum of the squares of differences between adjacent NN intervals; SDNN, a standard deviation of all NN intervals; TNF-α, tumor necrosis factor α; WL, waitlist.

Values are mean (s.d.) unless noted with percentage. Group differences were calculated using χ2 tests for categorical variables and t tests for continuous variables.

1 Winkler index for measuring individual socioeconomic status by combining information on education, income (monthly household net income), and occupation (ranging from 3 to 21).

2 Untransformed values are shown for ease of interpretation, although statistical comparisons were conducted on the square root transformed data.

Main treatment effects

Table 2 reports test statistics for differences in changes from baseline to the end of treatment between both treatment groups. Compared to patients in the WL group, patients who received CBT had stronger reductions in self-rated depressive symptoms (d = 0.52) and in clinician-rated depressive symptoms (d = 0.61). Changes in inflammatory markers and measures of heart rate did not significantly differ between patients in the CBT group and patients in the WL group. In terms of HRV measures which were reduced in depressed patients at baseline, the CBT group showed a significant increase in 24-h HRV triangular index (d = 0.48) and in daytime HRV triangular index (d = 0.43) from baseline to the end of treatment, compared to the WL group (shown in Fig. 2). Although 24-h LF-HRV was not significantly reduced in depressed patients at baseline, there was a trend increase in 24-h LF-HRV (d = 0.35) in the CBT group, compared to the WL group (see online Supplementary material Fig. S1). With respect to blood pressure measures which were increased (or marginally increased) in depressed patients at baseline, the CBT group showed a trend decrease in daytime SBP (d = 0.36), compared to patients in the WL group (shown in Fig. 2). There was no evidence for the main treatment effect in other variables of HRV or blood pressure. Compared to intention-to-treat analyses, analyses per protocol (results not shown) did not provide any substantial changes in the estimates and showed the same pattern of significance for treatment effects with one exception: the treatment effect for 24-h LF-HRV became significant in the per-protocol analysis (Intention-to-treat: p = 0.051; per-protocol: p = 0.0499).

Fig. 2. Treatment group differences in changes for cardiac measures from baseline to the end of treatment.

Note. Values are estimated marginal means (standard errors) from constrained linear mixed models (see Table 2 for test statistics). HRV, heart rate variability. +p < 0.10 *p < 0.05.

Table 2. Associations between treatment groups and outcome measures over time. Results from constrained linear mixed models (Intention-to-treat analyses)

BDI-II, Beck Depression Inventory-II; CBT, Cognitive behavioral therapy; CRP, C-reactive protein; HF-HRV, high-frequency heart rate variability; IL-6, interleukin 6; LF-HRV, low-frequency heart rate variability; MADRS, Montgomery–Asberg Depression Rating Scale; RMSSD, square root of the mean of the sum of the squares of differences between adjacent NN intervals; SDNN, standard deviation of all NN intervals; SQRT, square root transformed; TNF-α, tumor necrosis factor α; WL, waitlist.

a Baseline-adjusted results; all patients are contained in one group at baseline.

b A finding is not observed after adjustment with a false discovery rate of 10% (see methods section for details on false discovery adjustment).

c Models include corresponding 24-h blood pressure as a time-varying covariate.

Moderated treatment effects

Table 3 shows results for moderation analyses with baseline self-rated (i.e. BDI-II) and clinician-rated (i.e. MADRS) depressive symptom severity as a predictor for changes in biological measures from baseline to the end of treatment. In cases where there were any significant or trend moderating effects (p < 0.10), differences between changes were plotted from lower (25th percentile) to higher (75th percentile) levels of the moderator to explore the nature of the moderation. Figure 3 plots moderating effects for biological measures which were altered in patients with MD at baseline (see online Supplementary material Fig. S2 for all other moderating effects).

Fig. 3. Baseline self-rated depressive symptom severity (i.e. BDI-II) as moderator of differences in changes in cardiac measures from baseline to the end of treatment.

Note. Estimated marginal means (standard errors) from constrained linear mixed models are plotted from lower (25th percentile) to higher (75th percentile) levels of the moderator (see Table 3 for test statistics). HRV, heart rate variability; HF-HRV, high-frequency heart rate variability; LF-HRV, low-frequency heart rate variability. +p < 0.10 *p < 0.05 **p < 0.01.

Table 3. Depressive symptom severity as moderator for associations between treatment groups and outcome measures over time. Results from constrained linear mixed models (Intention-to-treat analyses)

BDI-II, Beck Depression Inventory-II; CBT, Cognitive behavioral therapy; CRP, C-reactive protein; HF-HRV, high-frequency heart rate variability; IL-6, interleukin 6; LF-HRV, low-frequency heart rate variability; MADRS, Montgomery–Asberg Depression Rating Scale; RMSSD, square root of the mean of the sum of the squares of differences between adjacent NN intervals; SDNN, a standard deviation of all NN intervals; SQRT, square root transformed; TNF-α, tumor necrosis factor α; WL, waitlist.

a A finding is observed after adjustment with a false discovery rate of 10% (see methods section for details on false discovery adjustment).

b Models include corresponding 24-h blood pressure as a time-varying covariate.

Self-rated (but not clinician-rated) baseline depressive symptom severity significantly moderated differences between changes in 24-h heart rate. In patients with more severe depressive symptoms at study entry, there was a stronger decrease in 24-h heart rate from baseline to the end of treatment in the CBT group, compared to the WL group (see Fig. 3). A significant treatment effect on 24-h heart rate in favor of CBT over WL emerged with a baseline severity score of BDI-II = 30 (d = 0.39). At the 75th percentile (BDI = 35), the effect on 24-h heart rate was moderate (d = 0.57). Although not altered at study entry, there was also a trend for this moderating effect in terms of changes in nighttime heart rate (see online Supplementary material Fig. S2).

In terms of HRV measures which were impaired (or marginally impaired) in depressed patients at baseline, higher self-rated depressive symptom severity at baseline was associated with significant improvements in daytime HRV triangular index, daytime HF-HRV, and daytime LF-HRV from baseline to the end of treatment in the CBT compared to the WL group (see Fig. 3). A significant treatment effect in favor of CBT over WL emerged with a baseline severity score of BDI-II = 30 for daytime HRV triangular index (d = 0.48) and of BDI-II = 34 for daytime HF-HRV (d = 0.39) and daytime LF-HRV (d = 0.34). At the 75th percentile (BDI = 35), treatment effects were estimated to be moderate for daytime HRV triangular index (d = 0.62) and small for daytime HF-HRV (d = 0.41) and daytime LF-HRV (d = 0.37). There was also a trend for this moderating effect in 24-h HRV triangular index, daytime RMSSD and daytime SDNN (see online Supplementary material Fig. S2). Although not altered in depressed patients at baseline, similar moderating effects were observed for 24-h SDNN and nighttime SDNN. A significant treatment effect in favor of CBT over WL emerged with a baseline severity score of BDI-II = 34 for 24-h SDNN (d = 0.40) and nighttime SDNN (d = 0.43). At the 75th percentile (BDI = 35), treatment effects were estimated to be small for 24-h SDNN (d = 0.43) and nighttime SDNN (d = 0.46) (see online Supplementary material Fig. S2). Depressive symptom severity did not moderate the impact of treatment on inflammatory markers. Compared to intention-to-treat analyses, analyses per protocol (results not shown) did not provide any substantial changes in the estimates and showed the same pattern of significance for moderated treatment effects with one exception: the moderated treatment effect (i.e. self-rated depressive symptom severity) for 24-h HRV triangular index became significant in the per-protocol analysis (Intention-to-treat: p = 0.050; per-protocol: p = 0.049).

Correlations between changes in depressive symptom severity and biological outcomes

In cases where cLDA resulted in any significant or trend effects (p < 0.10), we performed post-hoc intention-to-treat correlational analyses with maximum likelihood estimation to examine whether a reduction in depressive symptom severity correlated with corresponding improvements in biological outcomes in the CBT group. A decline in self-rated depressive symptom severity from baseline to the end of CBT significantly correlated with a decrease in 24-h heart rate (r = 0.35; p = 0.010) and tended to correlate with a decrease in nighttime heart rate (r = 0.25; p = 0.076). In addition, decrease in self-rated depressive symptom severity significantly correlated with improvement in 24-h HF-HRV (r = −0.43; p < 0.001), daytime HF-HRV (r = −0.35; p = 0.004), 24-h RMSSD (r = −0.49; p < 0.001) and daytime RMSSD (r = −0.41; p = 0.001) but not with changes in measures of SDNN, LF-HRV and HRV triangular index, as well as daytime SBP (all ps ⩾ 0.1). Correlations between changes in clinician-rated depressive symptom severity and changes in cardiac measures were non-significant (all ps ⩾ 0.1).

A posterori multiplicity adjustments

As outlined in the methods section, all results are not adjusted for multiple testing and should be considered exploratory (Althouse, Reference Althouse2016; Bender & Lange, Reference Bender and Lange2001; Rothman, Reference Rothman1990; Rubin, Reference Rubin2017). However, because there may not always be consensus on the need for multiplicity adjustment in exploratory studies, we decided to provide separate post-hoc multiplicity adjustments with a false discovery rate (FDR) of 10% in cases where at least one significant treatment effect was observed within a reasonable family of potentially interrelated HR and HRV outcomes. More specifically, we separately adjusted within the domain of 24-h HR and HRV measures, within the domain of daytime HR and HRV measures, as well as within the domain of nighttime HR and HRV measures via the less-conservative two-stage step-up method of Benjamini, Krieger, and Yekutieli (Reference Benjamini, Krieger and Yekutieli2006) using Prism 9 (GraphPad) for Windows. As shown in Table 2, the main treatments effects on 24-h and daytime HRV triangular index could not be observed after FDR adjustments. As seen in Table 3, all originally significant moderated treatment effects would also be prominent after FDR correction. Importantly, multiplicity adjustments were conducted a posteriori and thus the sample size in this study may not account for these adjustments.

Discussion

This exploratory RCT examined whether CBT is accompanied by reductions in cardiac risk biomarkers in antidepressant-free patients with MD. Biological outcomes included a wide range of measures with potential predictive value for CVD such as heart rate (Kannel et al., Reference Kannel, Kannel, Paffenbarger and Cupples1987), indices of HRV (Hillebrand et al., Reference Hillebrand, Gast, de Mutsert, Swenne, Jukema, Middeldorp and Dekkers2013), blood pressure (Lewington et al., Reference Lewington, Clarke, Qizilbash, Peto and Rory2002), as well as inflammatory markers (i.e. CRP, IL-6, and TNF-α) (Avan et al., Reference Avan, Tavakoly Sany, Ghayour-Mobarhan, Rahimi, Tajfard and Ferns2018; Pearson, Reference Pearson2003; Subirana et al., Reference Subirana, Fitó, Diaz, Vila, Francés, Delpon and Marrugat2018). Compared to WL, CBT was associated with a significant increase in 24-h and daytime HRV triangular index and a borderline significant increase in 24-h LF-HRV, as well as a trend decrease in daytime SBP. Self-rated depressive symptom severity at study entry moderated (or tended to moderate) improvements through CBT for 24-h and daytime heart rate, and for several indices of HRV, particularly those daytime measures which were altered in depressed patients at study entry. With increasing symptom severity, CBT increased or tended to increase these indices of HRV and reduced heart rate, compared to the control condition. Inflammatory effects were not observed in this trial.

At study entry, the 24-h and daytime HRV triangular index, a robust geometric measure of overall HRV (Stapelberg, Neumann, Shum, McConnell, & Hamilton-Craig, Reference Stapelberg, Neumann, Shum, McConnell and Hamilton-Craig2018; Vila, Lado, & Cuesta-Morales, Reference Vila, Lado and Cuesta-Morales2019; Ziegler et al., Reference Ziegler, Piolot, Strassburger, Lambeck and Dannehl1999), was reduced in patients with MD. Compared to the control condition, CBT increased the 24-h and daytime HRV triangular index. Several studies suggest that overall HRV predict cardiovascular health outcomes in populations without known CVD at study entry, as well as in clinical populations (Fang, Wu, & Tsai, Reference Fang, Wu and Tsai2020a, Reference Fang, Wu and Tsai2020b; Hämmerle et al., Reference Hämmerle, Eick, Blum, Schlageter, Bauer and Rizas2020; Hillebrand et al., Reference Hillebrand, Gast, de Mutsert, Swenne, Jukema, Middeldorp and Dekkers2013). Although our finding needs confirmatory replication, an improvement of overall HRV during CBT may suggest that this common form of psychotherapy does not only improve depressive symptom severity but also cardiovascular health. Given the increased incidence of CVD in patients with MD, it is of clinical relevance whether common treatments affect cardiovascular health (Gan et al., Reference Gan, Gong, Tong, Sun, Cong, Dong and Lu2014; Harshfield et al., Reference Harshfield, Pennells, Schwartz, Willeit, Kaptoge and Bell2020; Li et al., Reference Li, Zheng, Li, Wu, Feng, Cao and Guo2019; Wu & Kling, Reference Wu and Kling2016). Our finding may thus inspire future research to include the HRV triangular index when evaluating biological effects of psychotherapy in MD, and also to examine whether potential improvements in overall HRV during treatment translate into reduced risk for CVD.

Although CBT numerically increased all other indices of HRV, differences in changes between CBT and WL were not significant. One explanation for this finding might be, that the triangular index is more reliable than non-geometric measures of HRV in terms of high intraindividual reproducibility and thus more appropriate for prospective research (Stapelberg et al., Reference Stapelberg, Neumann, Shum, McConnell and Hamilton-Craig2018; Vila et al., Reference Vila, Lado and Cuesta-Morales2019; Ziegler et al., Reference Ziegler, Piolot, Strassburger, Lambeck and Dannehl1999). The major disadvantage of the triangular index is that time-consuming long-term recordings should be used to ensure valid calculation (Heart Rate Variability: Standards of Measurement, Physiological Interpretation and Clinical Use. Task Force of the European Society of Cardiology and the North American Society of Pacing and Electrophysiology, 1996). However, because of its robustness and responsiveness in this trial, the triangular index might be a good measure to evaluate changes in overall HRV through psychological treatment.

The observation that self-rated depressive symptom severity, assessed by the BDI, moderated treatment effects on heart rate and daytime HRV is in line with findings from an earlier pre-post study in depressed patients with coronary heart disease (Carney et al., Reference Carney, Freedland, Stein, Skala, Hoffman and Jaffe2000). In this previous work, patients were classified according to their BDI score as mildly depressed or moderately to severely depressed. The main result was that heart rate and daytime RMSSD improved significantly in the moderately to severely depressed patients but remained unchanged in the mildly depressed patients (Carney et al., Reference Carney, Freedland, Stein, Skala, Hoffman and Jaffe2000). This earlier study together with our present RCT suggests that potential changes in heart rate and especially in daytime measures of HRV are primarily observable in patients with more severe depressive symptoms. Patients with more severe depressive symptoms thus seem to improve their cardiovascular risk profile the most. This finding is of particular interest since also the risk for CVD increases with increasing self-rated depressive symptom severity (Harshfield et al., Reference Harshfield, Pennells, Schwartz, Willeit, Kaptoge and Bell2020) and an improvement of HRV during treatment might thus be of stronger prognostic relevance in more severe depression. Higher depression scores have greater potential for change than lower scores. If the degree of change in depressive symptoms relates to changes in heart rate and HRV, one would expect that a reduction in depressive symptom severity relates to improvements in heart rate and HRV during treatment. Indeed, the present study found that a reduction in self-rated depressive symptom severity through CBT significantly correlated with improvements in HF-HRV, RMSSD and heart rate. Importantly, clinician-rated depressive symptoms, as assessed by the MADRS, did neither moderate biological treatment effects nor correlate with changes in a cardiac measure in CBT. One explanation for these diverging findings may be that the BDI, in contrast to the MADRS, has been conceptualized to reflect outcomes of psychotherapy (Demyttenaere & De Fruyt, Reference Demyttenaere and De Fruyt2003) and may thus stronger relate to the biological effects of CBT. Moreover, expert ratings are prone to over-estimate clinical improvements (Cuijpers, Li, Hofmann, & Andersson, Reference Cuijpers, Li, Hofmann and Andersson2010; Rief et al., Reference Rief, Nestoriuc, Weiss, Welzel, Barsky and Hofmann2009). For future psychotherapeutic trials, we suggest considering moderating effects of patients’ self-rated symptom severity when studying changes in heart rate and HRV.

In the present study, patients exhibited increased levels of inflammatory levels at study entry. There was no evidence for reductions in these markers through CBT. A previous RCT with partially medicated patients with depression and elevated cardiovascular risk did also not observe an effect of CBT on CRP (Taylor et al., Reference Taylor, Conrad, Wilhelm, Strachowski, Khaylis, Neri and Spiegel2009). Another RCT with partially medicated patients found that CBT reduced CRP (but not IL-6) only in patients with increased baseline CRP levels, and only in combination with physical exercise (Euteneuer et al., Reference Euteneuer, Dannehl, Del Rey, Engler, Schedlowski and Rief2017). On the other hand, reductions in IL-6 and TNF-α during CBT (but not during Narrative Cognitive Therapy) have been observed in a study with young patients with MD (18 to 29 years old), but this RCT did only analyze within-group changes and provided no intention-to-treat analyses for differences in changes between both treatment groups (Moreira et al., Reference Moreira, de Cardoso, Mondin, de Souza, Silva, Jansen and Wiener2015). Based on all these findings, there may be little or no evidence for inflammatory effects of standard CBT in the context of depression, although some findings in other populations suggest that CBT may improve inflammation, for example, in insomnia (Irwin et al., Reference Irwin, Olmstead, Breen, Witarama, Carrillo, Sadeghi and Cole2015) or fibromyalgia (Zabihiyeganeh et al., Reference Zabihiyeganeh, Vafaee Afshar, Amini Kadijani, Jafari, Bagherifard, Janbozorgi and Mirzaei2019). Even if inflammation may neither be necessary nor sufficient to induce or sustain depression in general (Kiecolt-Glaser et al., Reference Kiecolt-Glaser, Derry and Fagundes2015), a potential insufficiency of CBT to improve low-grade inflammation strengthens the importance of research efforts to develop more specific anti-inflammatory treatments for subgroups of patients (Jones et al., Reference Jones, Daskalakis, Carvalho, Strawbridge, Young, Mulsant and Husain2020).

Although findings for associations between depression and blood pressure alterations are mixed (Gould & Beaudreau, Reference Gould and Beaudreau2013; Hildrum et al., Reference Hildrum, Mykletun, Stordal, Bjelland, Dahl and Holmen2007; Rogeness, Cepeda, Macedo, Fisher, & Harris, Reference Rogeness, Cepeda, Macedo, Fisher and Harris1990), depression has been shown to predict the development of hypertension (Ginty et al., Reference Ginty, Carroll, Roseboom, Phillips and de Rooij2013; Meng et al., Reference Meng, Chen, Yang, Zheng and Hui2012). In addition, research using long-term assessment of blood pressure (i.e. 7 days) suggests increased SBP and DBP, as well as reduced nocturnal blood pressure dipping in depressed individuals (Shinagawa et al., Reference Shinagawa, Otsuka, Murakami, Kubo, Cornelissen, Matsubayashi and Halberg2002). Compared to non-clinical controls, patients in the present study showed significantly increased 24-h SBP and daytime DBP, as well as marginally higher daytime SBP and 24-h DBP. Although these alterations numerically improved in the CBT group compared to the WL group, there was only a trend effect for daytime SBP. To the best of our knowledge, there are no previous RCTs that evaluate CBT effects on ambulatory blood pressure in patients with MD. So, this finding is of potential interest but needs further investigation.

Notwithstanding the strengths of the present study, such as the inclusion of a non-clinical control group, the randomized controlled design, the comprehensive assessment of potential cardiac risk biomarkers, the inclusion of patients without antidepressant medication, and the use of 24-h long-term recordings for cardiac measures instead of short-term recordings, limitations need to be reflected. First, given the exploratory nature of this trial, further research is necessary to confirm the observed findings. In particular, treatment effects for the HRV triangular index may have occurred by chance. Second, our sample consists of outpatients with MD who were eligible for psychological treatment. Thus, findings may not generalize to other samples of depressed patients (e.g. MD patients with psychotic features). Third, we did not assess patients` experience with CBT, a factor which might of relevance for treatment responsiveness. Fourth, although studies on depression and dysregulation of the hypothalamic–pituitary–adrenal (HPA) stress axis are less consistent (Dedovic & Ngiam, Reference Dedovic and Ngiam2015; Psarraki et al., Reference Psarraki, Kokka, Bacopoulou, Chrousos, Artemiadis and Darviri2021; Stetler & Miller, Reference Stetler and Miller2011), there is meanwhile evidence for a prospective association between higher levels of morning plasma cortisol and incident CVD (Crawford et al., Reference Crawford, Soderberg, Kirschbaum, Murphy, Eliasson, Ebrahim and Walker2019). It might thus have been useful to include HPA-axis biomarkers in this study. Moreover, this RCT was not designed to examine specific mechanisms (as described in the introduction section) and the relative contribution of specific components of CBT to potential biological effects, which may be of interest for future dismantling studies. Finally, despite longitudinal evidence linking heart rate and HRV to cardiovascular risk, the clinical implications of the present study are not clear. The most important question is whether improving biological cardiac risk factors in patients with MD will translate into reduced risk for CVD. Given the lack of studies which focus on such long-term effects of psychological treatment, it is not possible to answer this question.

To conclude, this study found that CBT for MD is accompanied by an increase in overall HRV, as indexed by the triangular index. If this exploratory result is replicated in confirmatory studies, this could imply that the cardiovascular risk profile is reduced after successful CBT. Moreover, self-rated depressive symptom severity was identified as a potential moderator for improvements in several indices of heart rate and HRV. The findings provide new insights into biological effects of psychological treatment against depression.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S0033291722000447.

Acknowledgements

We woud like to thank Dr Firouzeh Farahmand for conducting the biochemical analyses for this study.

Financial support

This study was funded by the German Research Foundation DFG EU 154/2-1 with a grant for Dr Euteneuer.

Conflicts of interest

The authors declare no specific conflict of interest that could have influenced treatment results or the content of this paper.

References

Allen, A. P., Kennedy, P. J., Cryan, J. F., Dinan, T. G., & Clarke, G. (2014). Biological and psychological markers of stress in humans: Focus on the trier social stress test. Neuroscience and Biobehavioral Reviews, 38, 94124. doi: 10.1016/j.neubiorev.2013.11.005CrossRefGoogle ScholarPubMed
Althouse, A. D. (2016). Adjust for multiple comparisons? It's not that simple. The Annals of Thoracic Surgery, 101, 16441645. doi: 10.1016/j.athoracsur.2015.11.024CrossRefGoogle Scholar
Audet, M.-C., McQuaid, R. J., Merali, Z., & Anisman, H. (2014). Cytokine variations and mood disorders: Influence of social stressors and social support. Frontiers in Neuroscience, 8, 416. doi: 10.3389/fnins.2014.00416CrossRefGoogle ScholarPubMed
Avan, A., Tavakoly Sany, S. B., Ghayour-Mobarhan, M., Rahimi, H. R., Tajfard, M., & Ferns, G. (2018). Serum C-reactive protein in the prediction of cardiovascular diseases: Overview of the latest clinical studies and public health practice. Journal of Cellular Physiology, 233, 85088525. doi: 10.1002/jcp.26791CrossRefGoogle ScholarPubMed
Beck, A. T., Brown, G., & Steer, R. A. (1996). Beck depression inventory II manual. The Psychological Corporation: San Antonio, TX.Google Scholar
Bender, R., & Lange, S. (2001). Adjusting for multiple testing--when and how? Journal of Clinical Epidemiology, 54, 343349. doi: 10.1016/s0895-4356(00)00314-0CrossRefGoogle ScholarPubMed
Benjamini, Y., Krieger, A. M., & Yekutieli, D. (2006). Adaptive linear step-up procedures that control the false discovery rate. Biometrika, 93, 491507. doi: 10.1093/biomet/93.3.491CrossRefGoogle Scholar
Bilan, A., Witczak, A., Palusiński, R., Myśliński, W., & Hanzlik, J. (2005). Circadian rhythm of spectral indices of heart rate variability in healthy subjects. Journal of Electrocardiology, 38, 239243. doi: 10.1016/j.jelectrocard.2005.01.012CrossRefGoogle ScholarPubMed
Bonnemeier, H., Wiegand, U. K. H., Brandes, A., Kluge, N., Katus, H. A., Richardt, G., & Potratz, J. (2003). Circadian profile of cardiac autonomic nervous modulation in healthy subjects: Differing effects of aging and gender on heart rate variability. Journal of Cardiovascular Electrophysiology, 14, 791799. doi: 10.1046/j.1540-8167.2003.03078.xCrossRefGoogle ScholarPubMed
Caldwell, Y. T., & Steffen, P. R. (2018). Adding HRV biofeedback to psychotherapy increases heart rate variability and improves the treatment of major depressive disorder. International Journal of Psychophysiology, 131, 96101. doi: 10.1016/j.ijpsycho.2018.01.001CrossRefGoogle ScholarPubMed
Carney, R. M., & Freedland, K. E. (2017). Depression and coronary heart disease. Nature Reviews Cardiology, 14, 145155. doi: 10.1038/nrcardio.2016.181CrossRefGoogle ScholarPubMed
Carney, R. M., Freedland, K. E., Stein, P. K., Skala, J. A., Hoffman, P., & Jaffe, A. S. (2000). Change in heart rate and heart rate variability during treatment for depression in patients with coronary heart disease. Psychosomatic Medicine, 62, 639647. doi: 10.1097/00006842-200009000-00007CrossRefGoogle ScholarPubMed
Chien, H. C., Chung, Y. C., Yeh, M. L., & Lee, J. F. (2015). Breathing exercise combined with cognitive behavioural intervention improves sleep quality and heart rate variability in major depression. Journal of Clinical Nursing, 24, 32063214. doi: 10.1111/jocn.12972CrossRefGoogle ScholarPubMed
Coffman, C. J., Edelman, D., & Woolson, R. F. (2016). To condition or not condition? Analysing “change” in longitudinal randomised controlled trials. BMJ Open, 6, e013096. doi: 10.1136/bmjopen-2016-013096CrossRefGoogle ScholarPubMed
Copeland, W. E., Shanahan, L., Worthman, C., Angold, A., & Costello, E. J. (2012). Cumulative depression episodes predict later C-reactive protein levels: A prospective analysis. Biological Psychiatry, 71, 1521. doi: 10.1016/j.biopsych.2011.09.023CrossRefGoogle ScholarPubMed
Crawford, A. A., Soderberg, S., Kirschbaum, C., Murphy, L., Eliasson, M., Ebrahim, S., … Walker, B. R. (2019). Morning plasma cortisol as a cardiovascular risk factor: Findings from prospective cohort and Mendelian randomization studies. European Journal of Endocrinology, 181, 429438. doi: 10.1530/EJE-19-0161CrossRefGoogle ScholarPubMed
Crawford, M. H., Bernstein, S. J., Deedwania, P. C., DiMarco, J. P., Ferrick, K. J., Garson, A., … Smith, S. C. (1999). ACC/AHA guidelines for ambulatory electrocardiography: A report of the American college of cardiology/American heart association task force on practice guidelines (Committee to revise the guidelines for ambulatory electrocardiography). Journal of the American College of Cardiology, 34, 912948. doi: 10.1016/S0735-1097(99)00354-XCrossRefGoogle Scholar
Cuijpers, P., Berking, M., Andersson, G., Quigley, L., Kleiboer, A., & Dobson, K. S. (2013). A meta-analysis of cognitive-behavioural therapy for adult depression, alone and in comparison with other treatments. Canadian Journal of Psychiatry. Revue Canadienne de Psychiatrie, 58, 376385. doi: 10.1177/070674371305800702CrossRefGoogle ScholarPubMed
Cuijpers, P., Cristea, I. A., Karyotaki, E., Reijnders, M., & Huibers, M. J. H. (2016). How effective are cognitive behavior therapies for major depression and anxiety disorders? A meta-analytic update of the evidence. World Psychiatry, 15, 245258. doi: 10.1002/wps.20346CrossRefGoogle ScholarPubMed
Cuijpers, P., Li, J., Hofmann, S. G., & Andersson, G. (2010). Self-reported versus clinician-rated symptoms of depression as outcome measures in psychotherapy research on depression: A meta-analysis. Clinical Psychology Review, 30, 768778. doi: 10.1016/j.cpr.2010.06.001CrossRefGoogle ScholarPubMed
David, D., Cristea, I., & Hofmann, S. G. (2018). Why cognitive behavioral therapy Is the current gold standard of psychotherapy. Frontiers in Psychiatry, 9, 4. doi: 10.3389/fpsyt.2018.00004CrossRefGoogle ScholarPubMed
Dedovic, K., & Ngiam, J. (2015). The cortisol awakening response and major depression: Examining the evidence. Neuropsychiatric Disease and Treatment, 11, 11811189. doi: 10.2147/NDT.S62289CrossRefGoogle ScholarPubMed
Demyttenaere, K., & De Fruyt, J. (2003). Getting what you ask for: On the selectivity of depression rating scales. Psychotherapy and Psychosomatics, 72, 6170. doi: 10.1159/000068690CrossRefGoogle ScholarPubMed
Deverts, D. J., Cohen, S., DiLillo, V. G., Lewis, C. E., Kiefe, C., Whooley, M., & Matthews, K. A. (2010). Depressive symptoms, race, and circulating C-reactive protein: The coronary artery risk development in young adults (CARDIA) study. Psychosomatic Medicine, 72, 734741. doi: 10.1097/PSY.0b013e3181ec4b98CrossRefGoogle ScholarPubMed
Dimsdale, J. E., von Känel, R., Profant, J., Nelesen, R., Ancoli-Israel, S., & Ziegler, M. (2000). Reliability of nocturnal blood pressure dipping. Blood Pressure Monitoring, 5, 217221. doi: 10.1097/00126097-200008000-00004CrossRefGoogle ScholarPubMed
Dowlati, Y., Herrmann, N., Swardfager, W., Liu, H., Sham, L., Reim, E. K., & Lanctot, L. K. (2010). A meta-analysis of cytokines in major depression. Biological Psychiatry, 67, 446457. doi: 10.1016/j.biopsych.2009.09.033CrossRefGoogle ScholarPubMed
Eller, N. H., Kristiansen, J., & Hansen, ÅM (2011). Long-term effects of psychosocial factors of home and work on biomarkers of stress. International Journal of Psychophysiology, 79, 195202. doi: 10.1016/j.ijpsycho.2010.10.009CrossRefGoogle ScholarPubMed
Euteneuer, F., Dannehl, K., Del Rey, A., Engler, H., Schedlowski, M., & Rief, W. (2017). Immunological effects of behavioral activation with exercise in major depression: An exploratory randomized controlled trial. Translational Psychiatry, 7, e1132. doi: 10.1038/tp.2017.76CrossRefGoogle ScholarPubMed
Fagard, R., Brguljan, J., Thijs, L., & Staessen, J. (1996). Prediction of the actual awake and asleep blood pressures by various methods of 24 h pressure analysis. Journal of Hypertension, 14, 557563. doi: 10.1097/00004872-199605000-00003CrossRefGoogle ScholarPubMed
Fang, S.-C., Wu, Y.-L., & Tsai, P.-S. (2020a). Corrigendum to heart rate variability and risk of all-cause death and cardiovascular events in patients With cardiovascular disease: A meta-analysis of cohort studies. Biological Research for Nursing, 22, 423425. doi: 10.1177/1099800420909152Google Scholar
Fang, S.-C., Wu, Y.-L., & Tsai, P.-S. (2020b). Heart rate variability and risk of all-cause death and cardiovascular events in patients with cardiovascular disease: A meta-analysis of cohort studies. Biological Research for Nursing, 22, 4556. doi: 10.1177/1099800419877442CrossRefGoogle ScholarPubMed
Fitzmaurice, G. M., Laird, N. M., & Ware, J. H. (2011). Applied longitudinal analysis (2nd ed.). Hoboken, New Jersey, USA: John Wiley & Sons.CrossRefGoogle Scholar
Gan, Y., Gong, Y., Tong, X., Sun, H., Cong, Y., Dong, X., … Lu, Z. (2014). Depression and the risk of coronary heart disease: A meta-analysis of prospective cohort studies. BMC Psychiatry, 14, 111. doi: 10.1186/s12888-014-0371-zCrossRefGoogle ScholarPubMed
Gerteis, A., & Schwerdtfeger, A. (2016). When rumination counts: Perceived social support and heart rate variability in daily life. Psychophysiology, 53, 10341043. doi: 10.1111/PSYP.12652.CrossRefGoogle ScholarPubMed
Ginty, A. T., Carroll, D., Roseboom, T. J., Phillips, A. C., & de Rooij, S. R. (2013). Depression and anxiety are associated with a diagnosis of hypertension 5 years later in a cohort of late middle-aged men and women. Journal of Human Hypertension, 27, 187190. doi: 10.1038/jhh.2012.18CrossRefGoogle Scholar
Goldston, K., & Baillie, A. J. (2008). Depression and coronary heart disease: A review of the epidemiological evidence, explanatory mechanisms and management approaches. Clinical Psychology Review, 28, 288306. doi: 10.1016/j.cpr.2007.05.005CrossRefGoogle ScholarPubMed
Gould, C. E., & Beaudreau, S. A. (2013). Association between depression and anxiety on blood pressure dysregulation and pulse in the health and retirement study. International Journal of Geriatric Psychiatry, 28, 10451053. doi: 10.1002/gps.3926CrossRefGoogle ScholarPubMed
Greenland, P., Daviglus, M. L., Dyer, A. R., Liu, K., Huang, C. F., Goldberger, J. J., & Stamler, J. (1999). Resting heart rate is a risk factor for cardiovascular and noncardiovascular mortality: The Chicago heart association detection project in industry. American Journal of Epidemiology, 149, 853862. doi: 10.1093/oxfordjournals.aje.a009901CrossRefGoogle ScholarPubMed
Hämmerle, P., Eick, C., Blum, S., Schlageter, V., Bauer, A., & Rizas, K. D., … Swiss-AF Study Investigators. (2020). Heart rate variability triangular index as a predictor of cardiovascular mortality in patients with atrial fibrillation. Journal of the American Heart Association, 9, e016075. doi: 10.1161/JAHA.120.016075CrossRefGoogle ScholarPubMed
Harshfield, E. L., Pennells, L., Schwartz, J. E., Willeit, P., Kaptoge, S., & Bell, S., … Emerging Risk Factors Collaboration. (2020). Association between depressive symptoms and incident cardiovascular diseases. JAMA, 324, 23962405. doi: 10.1001/jama.2020.23068CrossRefGoogle ScholarPubMed
Hautzinger, M., Kühner, C., & Keller, F. (2006). Das beck depressionsinventar II. Deutsche bearbeitung und handbuch zum BDI II. Frankfurt: Harcourt Test Services.Google Scholar
Hildrum, B., Mykletun, A., Stordal, E., Bjelland, I., Dahl, A. A., & Holmen, J. (2007). Association of low blood pressure with anxiety and depression: The nord-trøndelag health study. Journal of Epidemiology and Community Health, 61, 5358. doi: 10.1136/jech.2005.044966CrossRefGoogle ScholarPubMed
Hillebrand, S., Gast, K. B., de Mutsert, R., Swenne, C. A., Jukema, J. W., Middeldorp, S., … Dekkers, O. M. (2013). Heart rate variability and first cardiovascular event in populations without known cardiovascular disease: Meta-analysis and dose–response meta-regression. EP Europace, 15, 742749. doi: 10.1093/europace/eus341CrossRefGoogle ScholarPubMed
Howren, M. B., Lamkin, D. M., & Suls, J. (2009). Associations of depression with C-reactive protein, IL-1, and IL-6: A meta-analysis. Psychosomatic Medicine, 71, 171186. doi: 10.1097/PSY.0b013e3181907c1bCrossRefGoogle ScholarPubMed
Huang, M., Shah, A., Su, S., Goldberg, J., Lampert, R. J., Levantsevych, O. M., … Vaccarino, V. (2018). Association of depressive symptoms and heart rate variability in Vietnam war-era twins: A longitudinal twin difference study. JAMA Psychiatry, 75, 705712. doi: 10.1001/jamapsychiatry.2018.0747CrossRefGoogle ScholarPubMed
Huang, M., Su, S., Goldberg, J., Miller, A. H., Levantsevych, O. M., Shallenberger, L., … Vaccarino, V. (2019). Longitudinal association of inflammation with depressive symptoms: A 7-year cross-lagged twin difference study. Brain, Behavior, and Immunity, 75, 200207. doi: 10.1016/j.bbi.2018.10.007CrossRefGoogle Scholar
Irwin, M. R., Olmstead, R., Breen, E. C., Witarama, T., Carrillo, C., Sadeghi, N., … Cole, S. (2015). Cognitive behavioral therapy and tai chi reverse cellular and genomic markers of inflammation in late-life insomnia: A randomized controlled trial. Biological Psychiatry, 78, 721729. doi: 10.1016/j.biopsych.2015.01.010CrossRefGoogle Scholar
Jones, B. D. M., Daskalakis, Z. J., Carvalho, A. F., Strawbridge, R., Young, A. H., Mulsant, B. H., … Husain, M. I. (2020). Inflammation as a treatment target in mood disorders: Review. BJPsych Open, 6, 110. doi: 10.1192/bjo.2020.43.CrossRefGoogle Scholar
Kannel, W. B., Kannel, C., Paffenbarger, R. S., & Cupples, L. A. (1987). Heart rate and cardiovascular mortality: The Framingham study. American Heart Journal, 113, 14891494. doi: 10.1016/0002-8703(87)90666-1CrossRefGoogle ScholarPubMed
Kemp, A. H., Fráguas, R., Brunoni, A. R., Bittencourt, M. S., Nunes, M. A., Dantas, E. M., … Lotufo, P. A. (2016). Differential associations of specific selective serotonin reuptake inhibitors with resting-state heart rate and heart rate variability. Psychosomatic Medicine, 78, 810818. doi: 10.1097/PSY.0000000000000336CrossRefGoogle ScholarPubMed
Kemp, A. H., Koenig, J., & Thayer, J. F. (2017). From psychological moments to mortality: A multidisciplinary synthesis on heart rate variability spanning the continuum of time. Neuroscience & Biobehavioral Reviews, 83, 547567. doi: 10.1016/j.neubiorev.2017.09.006CrossRefGoogle ScholarPubMed
Kemp, A. H., Quintana, D. S., Gray, M. A., Felmingham, K. L., Brown, K., & Gatt, J. M. (2010). Impact of depression and antidepressant treatment on heart rate variability: A review and meta-analysis. Biological Psychiatry, 67, 10671074. doi: 10.1016/j.biopsych.2009.12.012CrossRefGoogle ScholarPubMed
Kemp, A. H., Quintana, D. S., & Malhi, G. S. (2011). Effects of serotonin reuptake inhibitors on heart rate variability: Methodological issues, medical comorbidity, and clinical relevance. Biological Psychiatry, 69, e25e26. doi: 10.1016/j.biopsych.2010.10.035CrossRefGoogle ScholarPubMed
Kiecolt-Glaser, J. K., Derry, H. M., & Fagundes, C. P. (2015). Inflammation: Depression fans the flames and feasts on the heat. American Journal of Psychiatry, 172, 10751091. doi: 10.1176/appi.ajp.2015.15020152CrossRefGoogle ScholarPubMed
Koch, C., Wilhelm, M., Salzmann, S., Rief, W., & Euteneuer, F. (2019). A meta-analysis of heart rate variability in major depression. Psychological Medicine, 49, 19481957. doi: 10.1017/S0033291719001351.CrossRefGoogle ScholarPubMed
Lake, C. R., Pickar, D., Ziegler, M. G., Lipper, S., Slater, S., & Murphy, D. L. (1982). High plasma norepinephrine levels in patients with major affective disorder. The American Journal of Psychiatry, 139, 13151318. doi: 10.1176/ajp.139.10.1315Google ScholarPubMed
Lee, D. S., & Way, B. M. (2019). Perceived social support and chronic inflammation: The moderating role of self-esteem. Health Psychology, 38, 563566. doi: 10.1037/hea0000746CrossRefGoogle ScholarPubMed
Lehofer, M., Moser, M., Hoehn-Saric, R., McLeod, D., Liebmann, P., Drnovsek, B., … Zapotoczky, H. G. (1997). Major depression and cardiac autonomic control. Biological Psychiatry, 42, 914919. doi: 10.1016/S0006-3223(96)00494-5CrossRefGoogle ScholarPubMed
Lewington, S., Clarke, R., Qizilbash, N., Peto, R., & Rory, C. (2002). Age-specific relevance of usual blood pressure to vascular mortality. The Lancet, 360, 19031913. doi: 10.1016/s0140-6736(02)11911-8Google ScholarPubMed
Li, H., Zheng, D., Li, Z., Wu, Z., Feng, W., Cao, X., … Guo, X. (2019). Association of depressive symptoms with incident cardiovascular diseases in middle-aged and older Chinese adults. JAMA Network Open, 2, e1916591. doi: 10.1001/jamanetworkopen.2019.16591CrossRefGoogle ScholarPubMed
Li, X., Shaffer, M. L., Rodriguez-Colon, S., He, F., Wolbrette, D. L., Alagona, P., … Liao, D. (2011). The circadian pattern of cardiac autonomic modulation in a middle-aged population. Clinical Autonomic Research, 21, 143150. doi: 10.1007/s10286-010-0112-4CrossRefGoogle Scholar
Liang, K.-Y., & Zeger, S. L. (2000). Longitudinal data analysis of continuous and discrete responses for pre-post designs. Sankhy: The Indian Journal of Statistics, 62, 134148. doi: 10.2307/25053123Google Scholar
Liu, G. F., Lu, K., Mogg, R., Mallick, M., & Mehrotra, D. V. (2009). Should baseline be a covariate or dependent variable in analyses of change from baseline in clinical trials? Statistics in Medicine, 28, 25092530. doi: 10.1002/sim.3639CrossRefGoogle ScholarPubMed
Matthews, K. A., Schott, L. L., Bromberger, J. T., Cyranowski, J. M., Everson-Rose, S. A., & Sowers, M. (2010). Are there bi-directional associations between depressive symptoms and C-reactive protein in mid-life women? Brain, Behavior, and Immunity, 24, 96101. doi: 10.1016/j.bbi.2009.08.005CrossRefGoogle ScholarPubMed
Meng, L., Chen, D., Yang, Y., Zheng, Y., & Hui, R. (2012). Depression increases the risk of hypertension incidence: A meta-analysis of prospective cohort studies. Journal of Hypertension, 30, 842851. doi: 10.1097/HJH.0b013e32835080b7CrossRefGoogle ScholarPubMed
Montgomery, S. A., & Asberg, M. (1979). A new depression scale designed to be sensitive to change. The British Journal of Psychiatry: The Journal of Mental Science, 134, 382389. doi: 10.1192/bjp.134.4.382CrossRefGoogle ScholarPubMed
Moreira, F. P., de Cardoso, T. A., Mondin, T. C., de Souza, L. D. M., Silva, R., Jansen, K., … Wiener, C. D. (2015). The effect of proinflammatory cytokines in cognitive behavioral therapy. Journal of Neuroimmunology, 285, 143146. doi: 10.1016/j.jneuroim.2015.06.004CrossRefGoogle ScholarPubMed
Musselman, D. L., Evans, D. L., & Nemeroff, C. B. (1998). The relationship of depression to cardiovascular disease: Epidemiology, biology, and treatment. Archives of General Psychiatry, 55, 580592. doi: 10.1001/archpsyc.55.7.580CrossRefGoogle ScholarPubMed
Nicholson, A., Kuper, H., & Hemingway, H. (2006). Depression as an aetiologic and prognostic factor in coronary heart disease: A meta-analysis of 6362 events among 146 538 participants in 54 observational studies. European Heart Journal, 27, 27632774. doi: 10.1093/eurheartj/ehl338CrossRefGoogle ScholarPubMed
O'Brien, E., Asmar, R., Beilin, L., Imai, Y., Mallion, J.-M., & Mancia, G., … European Society of Hypertension Working Group on Blood Pressure Monitoring. (2003). European Society of hypertension recommendations for conventional, ambulatory and home blood pressure measurement. Journal of Hypertension, 21, 821848. doi: 10.1097/01.hjh.0000059016.82022.caCrossRefGoogle ScholarPubMed
O'Brien, E., Parati, G., Stergiou, G., Asmar, R., Beilin, L., Bilo, G., … Zhang, Y. (2013). European Society of hypertension position paper on ambulatory blood pressure monitoring. Journal of Hypertension, 31, 17311768. doi: 10.1097/HJH.0b013e328363e964CrossRefGoogle ScholarPubMed
Ohkubo, T., Hozawa, A., Yamaguchi, J., Kikuya, M., Ohmori, K., Michimata, M., … Imai, Y. (2002). Prognostic significance of the nocturnal decline in blood pressure in individuals with and without high 24-h blood pressure: The Ohasama study. Journal of Hypertension, 20, 21832189. doi: 10.1097/00004872-200211000-00017CrossRefGoogle ScholarPubMed
Osimo, E. F., Pillinger, T., Rodriguez, I. M., Khandaker, G. M., Pariante, C. M., & Howes, O. D. (2020). Inflammatory markers in depression: A meta-analysis of mean differences and variability in 5166 patients and 5083 controls. Brain, Behavior, and Immunity, 87, 901909. doi: 10.1016/j.bbi.2020.02.010CrossRefGoogle Scholar
Parati, G., Stergiou, G., O'Brien, E., Asmar, R., Beilin, L., & Bilo, G., … European Society of Hypertension Working Group on Blood Pressure Monitoring and Cardiovascular Variability. (2014). European Society of hypertension practice guidelines for ambulatory blood pressure monitoring. Journal of Hypertension, 32, 13591366. doi: 10.1097/HJH.0000000000000221CrossRefGoogle ScholarPubMed
Pearson, T. A. (2003). Markers of inflammation and cardiovascular disease: Application to clinical and public health practice: A statement for healthcare professionals from the centers for disease control and prevention and the American heart association. Circulation, 107, 499511. doi: 10.1161/01.CIR.0000052939.59093.45CrossRefGoogle Scholar
Pelle, A. J. M., Gidron, Y. Y., Szabó, B. M., & Denollet, J. (2008). Psychological predictors of prognosis in chronic heart failure. Journal of Cardiac Failure, 14, 341350. doi: 10.1016/j.cardfail.2008.01.004CrossRefGoogle ScholarPubMed
Plaisance, E. P., & Grandjean, P. W. (2006). Physical activity and high-sensitivity C-reactive protein. Sports Medicine, 36, 443458. doi: 10.2165/00007256-200636050-00006CrossRefGoogle ScholarPubMed
Psarraki, E. E., Kokka, I., Bacopoulou, F., Chrousos, G. P., Artemiadis, A., & Darviri, C. (2021). Is there a relation between major depression and hair cortisol? A systematic review and meta-analysis. Psychoneuroendocrinology, 124, 105098. doi: 10.1016/j.psyneuen.2020.105098CrossRefGoogle Scholar
Rief, W., Nestoriuc, Y., Weiss, S., Welzel, E., Barsky, A. J., & Hofmann, S. G. (2009). Meta-analysis of the placebo response in antidepressant trials. Journal of Affective Disorders, 118, 18. doi: 10.1016/j.jad.2009.01.029CrossRefGoogle ScholarPubMed
Rogeness, G. A., Cepeda, C., Macedo, C. A., Fisher, C., & Harris, W. R. (1990). Differences in heart rate and blood pressure in children with conduct disorder, major depression, and separation anxiety. Psychiatry Research, 33, 199206. doi: 10.1016/0165-1781(90)90074-FCrossRefGoogle ScholarPubMed
Rothman, K. J. (1990). No adjustments are needed for multiple comparisons. Epidemiology, 1, 4346. doi: 10.1097/00001648-199001000-00010CrossRefGoogle ScholarPubMed
Rubin, M. (2017). Do p values lose their meaning in exploratory analyses? It depends how you define the familywise error rate. Review of General Psychology, 21, 269275. doi: 10.1037/gpr0000123CrossRefGoogle Scholar
Schmidtke, A., Fleckenstein, P., Moises, W., & Beckmann, H. (1988). [Studies of the reliability and validity of the German version of the Montgomery-Asberg Depression Rating Scale (MADRS)]. Schweizer Archiv Für Neurologie Und Psychiatrie, 139, 5165.Google ScholarPubMed
Sgoifo, A., Carnevali, L., de los Angeles Pico Alfonso, M., & Amore, M. (2015). Autonomic dysfunction and heart rate variability in depression. Stress, 18, 343352. doi: 10.3109/10253890.2015.1045868CrossRefGoogle ScholarPubMed
Shaffer, F., & Ginsberg, J. P. (2017). An overview of heart rate variability metrics and norms. Frontiers in Public Health, 5, 258. doi: 10.3389/fpubh.2017.00258CrossRefGoogle ScholarPubMed
Shinagawa, M., Otsuka, K., Murakami, S., Kubo, Y., Cornelissen, G., Matsubayashi, K., … Halberg, F. (2002). Seven-day (24-h) ambulatory blood pressure monitoring, self-reported depression and quality of life scores. Blood Pressure Monitoring, 7, 6976. doi: 10.1097/00126097-200202000-00015CrossRefGoogle ScholarPubMed
Sin, N. L., Sloan, R. P., McKinley, P. S., & Almeida, D. M. (2016). Linking daily stress processes and laboratory-based heart rate variability in a national sample of midlife and older adults. Psychosomatic Medicine, 78, 573. doi: 10.1097/PSY.0000000000000306CrossRefGoogle Scholar
Spaderna, H., Zittermann, A., Reichenspurner, H., Ziegler, C., Smits, J., & Weidner, G. (2017). Role of depression and social isolation at time of waitlisting for survival 8 years after heart transplantation. Journal of the American Heart Association, 6, 12. doi: 10.1161/JAHA.117.007016CrossRefGoogle ScholarPubMed
Stapelberg, N. J. C., Neumann, D. L., Shum, D. H. K., McConnell, H., & Hamilton-Craig, I. (2018). The sensitivity of 38 heart rate variability measures to the addition of artifact in human and artificial 24-h cardiac recordings. Annals of Noninvasive Electrocardiology, 23, e12483. doi: 10.1111/anec.12483CrossRefGoogle Scholar
Stetler, C., & Miller, G. E. (2011). Depression and hypothalamic-pituitary-adrenal activation: A quantitative summary of four decades of research. Psychosomatic Medicine, 73, 114126. doi: 10.1097/PSY.0b013e31820ad12bCrossRefGoogle ScholarPubMed
Subirana, I., Fitó, M., Diaz, O., Vila, J., Francés, A., Delpon, E., … Marrugat, J. (2018). Prediction of coronary disease incidence by biomarkers of inflammation, oxidation, and metabolism. Scientific Reports, 8, 3191. doi: 10.1038/s41598-018-21482-yCrossRefGoogle Scholar
Task Force of the European Society of Cardiology and the North American Society of Pacing and Electrophysiology (1996). Heart rate variability: standards of measurement, physiological interpretation and clinical use. Circulation, 93, 10431065.CrossRefGoogle Scholar
Task Force of The European Society of Cardiology and The North American, & Society of Pacing and Electrophysiology (1996). Heart rate variability: Standards of measurement, physiological interpretation, and clinical use. European Heart Journal, 17, 354381.CrossRefGoogle Scholar
Taylor, C. B., Conrad, A., Wilhelm, F. H., Strachowski, D., Khaylis, A., Neri, E., … Spiegel, D. (2009). Does improving mood in depressed patients alter factors that may affect cardiovascular disease risk? Journal of Psychiatric Research, 43, 12461252. doi: 10.1016/j.jpsychires.2009.05.006CrossRefGoogle ScholarPubMed
Uchino, B. N., Trettevik, R., de Grey, K., Cronan, R. G., Hogan, S., & Baucom, J., & W, B. R. (2018). Social support, social integration, and inflammatory cytokines: A meta-analysis. Health Psychology, 37, 462471. doi: 10.1037/hea0000594CrossRefGoogle ScholarPubMed
Valkanova, V., Ebmeier, K. P., & Allan, C. L. (2013). CRP, IL-6 and depression: A systematic review and meta-analysis of longitudinal studies. Journal of Affective Disorders, 150, 736744. doi: 10.1016/j.jad.2013.06.004CrossRefGoogle ScholarPubMed
Vila, X. A., Lado, M. J., & Cuesta-Morales, P. (2019). Evidence based recommendations for designing heart rate variability studies. Journal of Medical Systems, 43, 311. doi: 10.1007/s10916-019-1437-8CrossRefGoogle ScholarPubMed
Williams, E. D., & Steptoe, A. (2007). The role of depression in the etiology of acute coronary syndrome. Current Psychiatry Reports, 9, 486492. doi: 10.1007/s11920-007-0066-yCrossRefGoogle ScholarPubMed
Wittchen, H.-U., Wunderlich, U., Gruschitz, S., & Zaudig, M. (1997). Strukturiertes Klinisches Interview für DSM-IV, Achse I (SKID-I). In Göttingen: Hogrefe.Google Scholar
Wu, Q., & Kling, J. M. (2016). Depression and the risk of myocardial infarction and coronary death. Medicine, 95, e2815. doi: 10.1097/MD.0000000000002815CrossRefGoogle ScholarPubMed
Yang, Y. C., Schorpp, K., & Harris, K. M. (2014). Social support, social strain and inflammation: Evidence from a national longitudinal study of U.S. Adults. Social Science & Medicine (1982), 107, 124135. doi: 10.1016/j.socscimed.2014.02.013CrossRefGoogle ScholarPubMed
Yeh, T.-C., Kao, L.-C., Tzeng, N.-S., Kuo, T. B. J., Huang, S.-Y., Chang, C.-C., & Chang, H.-A. (2016). Heart rate variability in major depressive disorder and after antidepressant treatment with agomelatine and paroxetine: Findings from the Taiwan study of depression and anxiety (TAISDA). Progress in Neuro-Psychopharmacology & Biological Psychiatry, 64, 6067. doi: 10.1016/j.pnpbp.2015.07.007CrossRefGoogle ScholarPubMed
Zabihiyeganeh, M., Vafaee Afshar, S., Amini Kadijani, A., Jafari, D., Bagherifard, A., Janbozorgi, M., … Mirzaei, A. (2019). The effect of cognitive behavioral therapy on the circulating proinflammatory cytokines of fibromyalgia patients: A pilot controlled clinical trial. General Hospital Psychiatry, 57, 2328. doi: 10.1016/j.genhosppsych.2019.01.003CrossRefGoogle ScholarPubMed
Ziegler, D., Piolot, R., Strassburger, K., Lambeck, H., & Dannehl, K. (1999). Normal ranges and reproducibility of statistical, geometric, frequency domain, and non-linear measures of 24-h heart rate variability. Hormone and Metabolic Research, 31, 672679. doi: 10.1055/s-2007-978819CrossRefGoogle Scholar
Figure 0

Fig. 1. Flow of participants through each stage of the trial. CBT, cognitive-behavioral therapy; ITT, intention-to-treat; WL, waitlist.

Figure 1

Table 1. Baseline .characteristics of patients with Major Depression and comparison of study variables with a nonclinical age- and sex-matched non-clinical control sample

Figure 2

Fig. 2. Treatment group differences in changes for cardiac measures from baseline to the end of treatment.Note. Values are estimated marginal means (standard errors) from constrained linear mixed models (see Table 2 for test statistics). HRV, heart rate variability. +p < 0.10 *p < 0.05.

Figure 3

Table 2. Associations between treatment groups and outcome measures over time. Results from constrained linear mixed models (Intention-to-treat analyses)

Figure 4

Fig. 3. Baseline self-rated depressive symptom severity (i.e. BDI-II) as moderator of differences in changes in cardiac measures from baseline to the end of treatment.Note. Estimated marginal means (standard errors) from constrained linear mixed models are plotted from lower (25th percentile) to higher (75th percentile) levels of the moderator (see Table 3 for test statistics). HRV, heart rate variability; HF-HRV, high-frequency heart rate variability; LF-HRV, low-frequency heart rate variability. +p < 0.10 *p < 0.05 **p < 0.01.

Figure 5

Table 3. Depressive symptom severity as moderator for associations between treatment groups and outcome measures over time. Results from constrained linear mixed models (Intention-to-treat analyses)

Supplementary material: File

Euteneuer et al. supplementary material

Euteneuer et al. supplementary material 1

Download Euteneuer et al. supplementary material(File)
File 385.3 KB
Supplementary material: File

Euteneuer et al. supplementary material

Euteneuer et al. supplementary material 2

Download Euteneuer et al. supplementary material(File)
File 29.8 KB
Supplementary material: File

Euteneuer et al. supplementary material

Euteneuer et al. supplementary material 3

Download Euteneuer et al. supplementary material(File)
File 27 KB