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Anxiety disorders and age-related changes in physiology

Published online by Cambridge University Press:  06 January 2022

Julian Mutz*
Affiliation:
Social, Genetic and Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, King's College London, UK
Thole H. Hoppen
Affiliation:
Institute of Psychology, University of Münster, Germany
Chiara Fabbri
Affiliation:
Social, Genetic and Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, King's College London, UK; and Department of Biomedical and Neuromotor Sciences, University of Bologna, Italy
Cathryn M. Lewis
Affiliation:
Social, Genetic and Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, King's College London, UK; Department of Medical and Molecular Genetics, Faculty of Life Sciences & Medicine, King's College London, UK
*
Correspondence: Julian Mutz. Email: [email protected]
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Abstract

Background

Anxiety disorders are leading contributors to the global disease burden, highly prevalent across the lifespan and associated with substantially increased morbidity and early mortality.

Aims

The aim of this study was to examine age-related changes across a wide range of physiological measures in middle-aged and older adults with a lifetime history of anxiety disorders compared with healthy controls.

Method

The UK Biobank study recruited >500 000 adults, aged 37–73, between 2006 and 2010. We used generalised additive models to estimate non-linear associations between age and hand-grip strength, cardiovascular function, body composition, lung function and heel bone mineral density in a case group and in a control group.

Results

The main data-set included 332 078 adults (mean age 56.37 years; 52.65% females). In both sexes, individuals with anxiety disorders had a lower hand-grip strength and lower blood pressure, whereas their pulse rate and body composition measures were higher than in the healthy control group. Case–control group differences were larger when considering individuals with chronic and/or severe anxiety disorders, and differences in body composition were modulated by depression comorbidity status. Differences in age-related physiological changes between females in the anxiety disorder case group and healthy controls were most evident for blood pressure, pulse rate and body composition, whereas this was the case in males for hand-grip strength, blood pressure and body composition. Most differences in physiological measures between the case and control groups decreased with increasing age.

Conclusions

Findings in individuals with a lifetime history of anxiety disorders differed from a healthy control group across multiple physiological measures, with some evidence of case–control group differences by age. The differences observed varied by chronicity/severity and depression comorbidity.

Type
Paper
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 (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press on behalf of the Royal College of Psychiatrists

Anxiety disorders are leading contributors to the global disease burden, highly prevalent across the lifespan and across nations, and associated with substantially increased morbidity and early mortality.Reference Vos, Lim, Abbafati, Abbas, Abbasi and Abbasifard1Reference Markkula, Härkänen, Perälä, Partti, Pena and Koskinen4 A population-based study from Denmark reported that individuals with anxiety disorders had a 39% higher risk of premature death than the general population.Reference Meier, Mattheisen, Mors, Mortensen, Laursen and Penninx5 This excess mortality does not result only from unnatural causes of death such as suicide, but also from increased rates of dementia, cardiovascular disease and other illnesses. Anxiety disorders are also associated with accelerated biological ageing, including earlier neurodegenerationReference Perna, Iannone, Alciati and Caldirola6,Reference Karim, Ly, Yu, Krafty, Tudorascu and Aizenstein7 and telomere attrition,Reference Malouff and Schutte8,Reference Verhoeven, Révész, van Oppen, Epel, Wolkowitz and Penninx9 and an increased risk of disability in old age, especially in individuals with comorbid depression.Reference Brenes, Guralnik, Williamson, Fried, Simpson and Simonsick10,Reference Brenes, Penninx, Judd, Rockwell, Sewell and Wetherell11 Less is known about physiological differences between individuals with anxiety disorders and healthy controls, and whether such differences vary by age.

A Dutch longitudinal study reported that individuals with anxiety disorders had poorer lung function than healthy controls, and that males with anxiety disorders showed a greater decline in lung function over time.Reference Lever-van Milligen, Lamers, Smit and Penninx12 Females with anxiety disorders also had a lower hand-grip strength. More severe anxiety disorders were associated with greater physiological abnormalities. Most studies of physiology in individuals with anxiety disorders have focused on one or two physiological measuresReference Lever-van Milligen, Lamers, Smit and Penninx12Reference Pan, Cai, Cheng, Dong, An and Yan14 and research examining a range of physiological measures is lacking.

To the best of our knowledge, this is the first study to examine age-related changes across a wide range of physiological measures in middle-aged and older adults with anxiety disorders. Most physiological measures can be assessed non-invasively, fast and at low cost, while providing reliable information on functional decline. Importantly, variation in physiological functioning predicts morbidity and mortality. A greater understanding of age-related physiological changes in individuals with anxiety disorders may inform strategies for prevention and intervention to foster healthy ageing.

Aims

The aim of this cross-sectional study was to examine associations between age and 15 physiological markers in individuals with a lifetime history of anxiety disorders compared with healthy controls. Since the epidemiology of anxiety disordersReference Baxter, Scott, Vos and Whiteford2 and human physiologyReference Austad and Bartke15 differ by sex, we conducted separate analyses in males and females. Given that a dose–response relationship between anxiety disorder severity and differences in physiology has been reported before,Reference Lever-van Milligen, Lamers, Smit and Penninx12 we also examined chronic and/or severe anxiety disorders. Finally, depression has been associated with age-related changes in physiologyReference Mutz and Lewis16 and is highly comorbid with anxiety disorders,Reference Baxter, Scott, Vos and Whiteford2Reference Markkula, Härkänen, Perälä, Partti, Pena and Koskinen4,Reference Lever-van Milligen, Lamers, Smit and Penninx12 hence we also examined individuals with anxiety disorders without comorbid depression.

Method

Study population

The UK Biobank is a prospective study of >500 000 adults aged 37–73 at baseline, recruited between 2006 and 2010. The study rationale and design have been described elsewhere.Reference Bycroft, Freeman, Petkova, Band, Elliott and Sharp17 Briefly, individuals registered with the UK National Health Service (NHS) and living within a ~40 km radius of 1 of 22 assessment centres were invited to participate. Participants provided information on their sociodemographic characteristics, lifestyle and medical history and underwent physical examination. Hospital in-patient records are available for most participants and primary care records are currently available for half of participants. A subset of 157 366 out of 339 092 invited participants (46%) completed an online follow-up mental health questionnaire (MHQ) between 2016 and 2017, covering 31% of all participants.

Exposures

Age at the baseline assessment was the primary explanatory variable. Details of the definition of participants in the case group and healthy control group are presented in Supplementary file 1 available at https://doi.org/10.1192/bjp.2021.189. Briefly, we used a transdiagnostic phenotype for lifetime anxiety disorders and identified individuals as ‘cases’ from multiple sources: the generalised anxiety disorder module of the Composite International Diagnostic Interview Short Form (CIDI-SF) (Supplementary file 2)Reference Davis, Coleman, Adams, Allen, Breen and Cullen18 and the Generalised Anxiety Disorder Assessment (GAD-7),Reference Plummer, Manea, Trepel and McMillan19 which were assessed through the MHQ; psychiatric diagnoses reported during the nurse-led interview at baseline or in the MHQ; hospital in-patient records (Supplementary file 3); primary care recordsReference Fabbri, Hagenaars, John, Williams, Shrine and Moles20 (Supplementary file 4). We excluded individuals with bipolar disorder or psychosis, as these disorders are strongly associated with the risk of physical multimorbidity.Reference Stubbs, Koyanagi, Veronese, Vancampfort, Solmi and Gaughran21,Reference Smith, Martin, McLean, Langan, Guthrie and Mercer22 Individuals in the healthy control group had no anxiety disorders, reported no current psychotropic medication use at baseline (Supplementary file 5)Reference Davis, Cullen, Adams, Brailean, Breen and Coleman23 and had no other mental disorders: no psychiatric diagnosis according to the nurse-led interview, MHQ, hospital in-patient or primary care records; no probable mood disorderReference Smith, Nicholl, Cullen, Martin, Ul-Haq and Evans24 (Supplementary file 6); no Patient Health Questionnaire-9 (PHQ-9) sum score of ≥5; no GAD-7 sum score of ≥5; did not report ever feeling worried, tense or anxious for most of a month or longer; no depression or bipolar disorder based on the CIDI-SF depression module and questions on (hypo)manic symptoms.Reference Mutz and Lewis16,Reference Mutz, Young and Lewis25

Physiological measures

We examined 15 physiological measures obtained at the baseline assessment, including maximal hand-grip strength, systolic and diastolic blood pressure, pulse rate, body mass index (BMI), waist–hip ratio, fat mass, fat-free mass, body fat percentage, peak expiratory flow, forced vital capacity (FVC), forced expiratory volume in 1 s (FEV1), FVC/FEV1 ratio, heel bone mineral density and arterial stiffness. Details of these measures have previously been reported in our study on age-related physiological changes in depressionReference Mutz and Lewis16 and are presented in Supplementary file 7.

Exclusion criteria

Participants whose genetic and self-reported sex did not match and participants with missing data, including ‘do not know’ or ‘prefer not to answer’, for any covariates were excluded.

Covariates

Covariates were identified from previous studies and included ethnicity, highest educational/professional qualification,Reference Guggenheim and Williams26 physical activity (walking, moderate and vigorous-intensity activity), smoking status, alcohol intake frequency, sleep duration and, for cardiovascular measures, antihypertensive medication use (UK Biobank data fields 6153 and 6177). Details of the sociodemographic and lifestyle factors are available in our previous publication.Reference Mutz, Roscoe and Lewis27

Statistical analyses

Analyses were prespecified prior to inspection of the data (preregistration: osf.io/hqu2f) and algorithms were tested on simulated data. Statistical analyses were conducted using R (version 3.6.0).

Sample characteristics were summarised using means and standard deviations or counts and percentages. Case–control group differences were estimated using standardised mean differences (SMD, with 95% confidence intervals).

We examined the relationship between each physiological measure and age using generalised additive models (GAMs) with the ‘mgcv’ package in R.Reference Wood28 GAMs are flexible modelling approaches that allow for the relationship between an outcome variable and a continuous exposure to be represented by a non-linear smooth curve while adjusting for covariates. This approach is useful if a linear model does not capture key aspects of the relationship between variables and attempts to achieve maximum goodness-of-fit while maintaining parsimony of the fitted curve to minimise overfitting. Smoothing parameters were selected using the restricted maximum likelihood method and we used the default option of ten basis functions to represent smooth terms. Each measure was modelled against a penalised regression spline function of age with separate smooths for the anxiety disorder case group and healthy control group.

Two models were fitted for each physiological measure in males and females separately:

  1. (a) unadjusted model: physiological measure ~ anxiety disorder + s(age, by anxiety disorder).

  2. (b) adjusted model: physiological measure ~ anxiety disorder + s(age, by anxiety disorder) + covariates (see previous section).

where s(age, by anxiety disorder) represents the smooth function for age, stratified by anxiety disorder status.

To formally test whether the relationships between physiological measures and age differed between the anxiety disorder case group and control group, we also fitted models that included reference smooths for healthy controls and difference smooths for individuals with anxiety disorders compared with healthy controls. For these analyses, anxiety disorder status was coded as an ordered factor in R. If the difference smooth differs from zero, the physiological measure follows a different trend with age in individuals with anxiety disorders and healthy controls.

Adjusted P-values were calculated using the p. adjust function in R to account for multiple testing across each set of analyses of the 15 physiological measures. Two methods were used: (a) Bonferroni and (b) Benjamini & Hochberg,Reference Benjamini and Hochberg29 two-tailed with α = 0.05 and false discovery rate of 5%, respectively. We have opted for this approach because the standard Bonferroni correction is usually too conservative, potentially leading to a high number of false negatives.

In a secondary analysis, we examined individuals with chronic and/or severe anxiety disorders, defined as individuals with:

  1. (a) a hospital in-patient record of anxiety disorders as the primary diagnosis;

  2. (b) recurrent or chronic anxiety (E2004 or E2005) in their primary care record; or

  3. (c) generalised anxiety disorder according to the CIDI-SF with maximum level of impairment (‘Impact on normal roles during worst period of anxiety’ (data field 20418) = A lot) and duration (‘Longest period spent worried or anxious’ (data field 20420) = All my life/as long as I can remember or at least 24 months).

In a sensitivity analysis, we excluded individuals with depression comorbidity from the anxiety disorder case group.Reference Mutz and Lewis16

We conducted two additional sensitivity analyses that were not pre-registered: (a) we additionally adjusted analyses of cardiovascular measures for BMI and (b) we excluded individuals with anxiety disorders who reported current use of antidepressants at baseline from the analyses of blood pressure.

Ethics

We assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation. All procedures were approved for the UK Biobank study by the National Information Governance Board for Health and Social Care and the NHS North West Multicentre Research Ethics Committee (11/NW/0382). No project-specific ethical approval is needed. Data access permission has been granted under UK Biobank application 45514. Written informed consent was obtained from all participants.

Results

Study population

A subset of 444 690 (88.49%) participants had complete data on all covariates. After excluding participants with missing physiological data, unclear anxiety disorder status (n = 93) or not meeting our inclusion criteria, we retained 332 078 participants in the main data-set. Subsets of 123 597, 228 321 and 107 958 participants were included in the analyses of lung function, heel bone mineral density and arterial stiffness, respectively (Supplementary Figure 1).

Participant characteristics

The average participant age in our main data-set was 56.37 years (s.d. = 8.11) and 52.65% of participants were female. Overall, 44 722 (13.47%) participants in this study had a lifetime history of anxiety disorders, 65.92% (n = 29 482) of whom were female. Descriptive statistics for the full UK Biobank and for the analytical samples stratified by sex and anxiety disorder status are presented in Table 1 (physiological measures) and Supplementary Table 4 (covariates).

Table 1 Physiological measures

FEV1, forced expiratory volume in 1 s; FVC, forced vital capacity.

a. Females: control group n = 50 729, case group n = 10 128; males: control group n = 56 695, case group n = 6045.

b. Females: control group n = 101 279, case group n = 19 217; males: control group n = 97 749, case group n = 10 076.

c. Females: control group n = 45 320, case group n = 10 630; males: control group n = 46 549, case group n = 5459.

Case–control group differences

Case–control group differences by sex are presented in Table 2. Females with anxiety disorders had a lower hand-grip strength and blood pressure than the healthy control group. Their pulse rate was elevated, and they had higher values for all body composition measures and most lung function measures compared with the control group. We did not find evidence of differences in the FEV1/FVC ratio, heel bone mineral density or arterial stiffness.

Table 2 Differences in physiological measures between individuals with anxiety disorders and healthy controlsa

SMD, standardised mean difference; Bonf., Bonferroni; BH, Benjamini & Hochberg; FEV1, forced expiratory volume in 1 s; FVC, forced vital capacity.

a. P-values for Welch's t-test. Negative values correspond to lower values in the anxiety disorder case participants.

Males with anxiety disorders had a lower hand-grip strength, blood pressure and heel bone mineral density than males in the healthy control group. Their pulse rate and all body composition measures were higher than in the control group, although the difference in fat-free mass did not survive multiple testing correction. We did not find evidence of differences in lung function or arterial stiffness in males.

The largest case–control group difference was observed for systolic blood pressure (SMD = −0.129, 95% CI −0.142 to −0.117, P Bonf. < 0.001 in females and SMD = −0.095, 95% CI −0.111 to −0.078, PBonf. < 0.001 in males).

Chronic and/or severe anxiety

Between 8.37% and 9.46% of females and between 9.47% and 9.99% of males in the case group had chronic and/or severe anxiety disorders (Supplementary Table 5). In females, we observed the same overall pattern of results as in the main analysis, although all observed differences were larger in magnitude. For example, the case–control group difference in body fat percentage was SMD = 0.113 (95% CI 0.074–0.151, P Bonf. < 0.001) (Supplementary Table 6), compared with SMD = 0.050 (95% CI 0.038–0.063, P Bonf. < 0.001) in the main analysis.

In males in the chronic and/or severe case group, we did not find evidence of a difference in diastolic blood pressure compared with healthy controls (SMD = −0.013, 95% CI −0.064 to 0.038, P BH = 0.713) and the difference in body fat percentage was not statistically significant after multiple testing correction. For most other physiological measures, we observed larger case–control group differences than in the main analysis (Supplementary Table 6). For example, the case–control group difference in systolic blood pressure was SMD = −0.095 (95% CI −0.111 to −0.078, P Bonf. < 0.001) in the main analysis and SMD = −0.153 (95% CI −0.204 to −0.102, P Bonf. < 0.001) in this analysis.

Anxiety without depression comorbidity

After excluding participants in the anxiety disorder case group with depression comorbidity, we retained between 25.91% and 37.67% of females and between 31.45% and 44.69% of males with anxiety disorders (Supplementary Table 5). In females, differences in hand-grip strength, blood pressure, pulse rate and arterial stiffness remained statistically significant but were smaller in magnitude than in the main analysis (Supplementary Table 7). BMI, fat mass and fat-free mass, which were higher in individuals with anxiety disorders than in healthy controls in the main analysis, were lower in the individuals with anxiety disorders without depression comorbidity (SMDs between −0.026 and −0.049). We did not find evidence of case–control group differences in body fat percentage or waist–hip ratio in this analysis. There was also no longer evidence of differences in lung function, except that the FEV1/FVC ratio was lower in individuals with anxiety disorders than in the control participants (SMD = −0.048, 95% CI −0.082 to −0.013, P BH = 0.019). Finally, heel bone mineral density was lower in females with anxiety disorders (SMD = −0.036, 95% CI −0.060 to −0.012, P Bonf. = 0.043).

In males, differences in hand-grip strength, blood pressure, pulse rate, waist–hip ratio, lung function, heel bone mineral density and arterial stiffness were similar to the main analysis. BMI and fat-free mass were lower in individuals with anxiety disorders than in the control participants (SMD = −0.058, 95% CI −0.084 to −0.033, P Bonf. < 0.001 and SMD = −0.066, 95% CI −0.092 to −0.041, P Bonf. < 0.001, respectively) and we did not find evidence of case–control group differences in body fat percentage or fat mass, which were elevated in the case group in the main analysis.

Case–control group differences by age

We found some evidence that age-related changes in blood pressure, pulse rate, body composition and heel bone mineral density differed between females in the case and control groups (Fig. 1). Systolic blood pressure was −0.9 mmHg lower in individuals with anxiety disorders at age 45 and this difference widened to −2.2 mmHg at age 65. For diastolic blood pressure, we did not find evidence of case–control group differences below age 52, and slightly lower diastolic blood pressure in the case group than in the control group above age 52 years. Case–control group differences in pulse rate and body composition narrowed with age (Supplementary Fig. 2). Heel bone mineral density was slightly lower in the case group than in the control group below age 55, and there was no evidence of differences between older people in the case and control groups.

Fig. 1 Generalised additive models of age-related changes in physiological measures in females with anxiety disorders and healthy controls.

The solid lines represent physiological measures against smoothing functions of age. The shaded areas correspond to approximate 95% confidence intervals (plus or minus 2 × standard error). FEV1, forced expiratory volume in 1 s; FVC, forced vital capacity.

In males, case–control group differences in hand-grip strength, pulse rate, waist–hip ratio and heel bone mineral density narrowed with age (Fig. 2 and Supplementary Fig. 3). There was some evidence that diastolic blood pressure was lower in the case group than in the control group above age 50 years, although the formal statistical test did not survive multiple testing correction. We found little evidence of case–control group differences by age for the other physiological measures.

Fig. 2 Generalised additive models of age-related changes in physiological measures in males with anxiety disorders and healthy controls.

The solid lines represent physiological measures against smoothing functions of age. The shaded areas correspond to approximate 95% confidence intervals (plus or minus 2 × standard error). FEV1, forced expiratory volume in 1 s; FVC, forced vital capacity.

In females, we observed similar results across all physiological measures after adjustment for covariates (Supplementary Figs 4 and 5). The formal statistical tests provided no evidence of case–control group differences in age-related changes in heel bone mineral density, however, the overall pattern of results was comparable with the unadjusted model. In males, we also observed similar results in the adjusted model (Supplementary Figs 6 and 7). Although the trajectories were similar to the unadjusted analysis, the formal statistical tests provided no evidence of case–control group differences in age-related changes in waist–hip ratio. The same was true for diastolic blood pressure and heel bone mineral density after multiple testing correction.

Chronic and/or severe anxiety

In females with chronic and/or severe anxiety, we observed similar results for age-related changes in blood pressure and body composition, except that there was no evidence of case–control group differences in fat-free mass below age 45 (Supplementary Figs 8 and 9). As in the main analysis, we observed no evidence of case–control group differences in age-related changes in lung function or arterial stiffness. Differences in results were most evident for hand-grip strength and pulse rate, and to a lesser extent for heel bone mineral density. The formal statistical tests provided some evidence of case–control group differences in age-related changes in blood pressure, BMI, fat mass and fat-free mass, although none survived multiple testing correction.

For males with chronic and/or severe anxiety, we found some evidence that case–control group differences in hand-grip strength and pulse rate narrowed with age, similar to the results from the main analysis, although none of the formal statistical tests survived multiple testing correction. There was less evidence of case–control group differences in age-related changes in systolic blood pressure and no evidence of case–control group differences in age-related changes in diastolic blood pressure. For all other physiology measures, none of the formal statistical tests were statistically significant (Supplementary Figs 10 and 11).

Anxiety without depression comorbidity

In females in the case group without depression comorbidity, none of the formal statistical tests provided evidence of case–control group differences in age-related changes in physiology. We also observed less evidence of differences by age in blood pressure or pulse rate. There was some evidence that several body composition and lung function measures were lower in individuals with anxiety disorders than in healthy controls between the ages 45 to 65 (Supplementary Figs 12 and 13). In males, the formal statistical test provided some evidence of case–control group differences in age-related changes in pulse rate, although it did not survive multiple testing correction. None of the other formal statistical tests were statistically significant and there was less evidence of case–control group differences in age-related physiological changes (Supplementary Figs 14 and 15).

Additional sensitivity analyses

Case–control group differences in cardiovascular function by age were similar to the results of our main analysis after additional adjustment for BMI (Supplementary Figs 16 and 17). Excluding individuals with anxiety disorders who reported current use of antidepressants (n = 6517 females and n = 2700 males) had a negligible effect on case–control group differences in blood pressure (Supplementary Table 7).

Discussion

Principal findings

We observed case–control group differences in hand-grip strength, blood pressure, pulse rate and body composition in both sexes, whereas case–control group differences in lung function and heel bone mineral density were specific to females and males, respectively. We found no evidence of case–control group differences in arterial stiffness.

Most of the observed differences were larger when we examined participants with chronic and/or severe anxiety disorders. However, in males the difference in diastolic blood pressure was smaller and not statistically significant, and differences in body fat percentage and heel bone mineral density, although similar in magnitude, were no longer statistically significant.

After excluding individuals with anxiety disorders with comorbid depression, most differences remained statistically significant but were smaller in magnitude. However, body composition measures in both sexes were either lower in the case group, or we did not find evidence of case–control group differences. We found some evidence that heel bone mineral density was lower in females with anxiety disorders without comorbid depression. Most case–control group differences in lung function, however, were no longer statistically significant. We also did not find evidence of case–control group differences in diastolic blood pressure in males without comorbid depression.

Differences in age-related physiological changes between females with anxiety disorders and healthy control group were most evident for blood pressure, pulse rate and body composition, with some evidence of differences in heel bone mineral density. Most case–control group differences narrowed with age, except that we found a larger difference in blood pressure in older participants. In males, case–control group differences in hand-grip strength, pulse rate and to a lesser extent in waist–hip ratio and heel bone mineral density narrowed with age. Diastolic blood pressure was lower in older individuals with anxiety disorders than in controls.

The overall pattern of results was comparable in females with chronic and/or severe anxiety, but there was generally less evidence of differences between trajectories in males. Except for body composition, there was limited evidence of case–control group differences in age-related physiological changes after excluding individuals with comorbid depression.

Findings in context

Consistent with findings from the Netherland Study of Depression and Anxiety (NESDA),Reference Lever-van Milligen, Lamers, Smit and Penninx12 females with anxiety disorders had a lower hand-grip strength. Hand-grip strength was also lower in males with anxiety disorders, which had not been observed in the NESDA.

Previous findings regarding anxiety disorders and blood pressure have been mixed and studies have often examined hypertension instead of blood pressure.Reference Byrd and Brook30Reference Cohen, Edmondson and Kronish33 Although a recent meta-analysis reported increased rates of hypertension in participants with anxiety disorders,Reference Pan, Cai, Cheng, Dong, An and Yan14 several studies found no statistically significant associations with hypertension or blood pressure.Reference Jackson, Pathirana and Gardiner34Reference Yan, Liu, Matthews, Daviglus, Ferguson and Kiefe38 Some studies observed lower blood pressure in participants with anxiety disorders.Reference Huang, Su, Jiang and Zhu39Reference Bhat, Beilin, Robinson, Burrows and Mori41 Antidepressant medication and benzodiazepine use may affect blood pressure,Reference Licht, De Geus, Seldenrijk, Van Hout, Zitman and Van Dyck42Reference Mendelson, Gontmacher, Vodonos, Novack, Abu-AjAj and Wolak44 and some population-based studies have observed lower blood pressure in participants with depression.Reference Mutz and Lewis16,Reference Licht, De Geus, Seldenrijk, Van Hout, Zitman and Van Dyck42 The high degree of comorbidity between anxiety disorders and depression and differences in medication use might partially explain these mixed results. We observed lower blood pressure in people with anxiety disorders, except for diastolic blood pressure in males, irrespective of depressive comorbidity. Excluding individuals who reported antidepressant use at baseline resulted in a negligible decrease in the case–control group difference in systolic blood pressure and a negligible increase in the difference in diastolic blood pressure. Case–control group differences in blood pressure were larger in participants with chronic and/or severe anxiety disorders.

Consistent with previous research,Reference Latvala, Kuja-Halkola, Rück, D'Onofrio, Jernberg and Almqvist45,Reference Thayer, Friedman and Borkovec46 we observed a higher pulse rate in individuals with anxiety disorders. Noteworthy, reductions in anxiety disorder severity following cognitive–behavioural therapy have been associated with a decrease in resting pulse rate.Reference Gonçalves, Rodrigues, Novaes, Arbol, Volchan and Coutinho47

Previous research has found higher rates of obesityReference Gariepy, Nitka and Schmitz48,Reference Barry, Pietrzak and Petry49 and poor dietReference Gibson-Smith, Bot, Brouwer, Visser and Penninx50 in people with anxiety disorders, consistent with our observation that individuals with anxiety disorders had elevated measures of body composition. However, our analyses suggested that these differences may be modified by depression comorbidity. Depression has been associated with increased metabolic risk factorsReference McCaffery, Niaura, Todaro, Swan and Carmelli51 and elevated body composition measures.Reference Mutz and Lewis16 One study found that depression, but not anxiety disorders, was associated with an increased risk of metabolic syndrome,Reference Skilton, Moulin, Terra and Bonnet52 although a large Finnish birth cohort study found no evidence that either depression or anxiety disorders were associated with metabolic syndrome.Reference Herva, Räsänen, Miettunen, Timonen, Läksy and Veijola53

Our lung function results contradict previous research. A cross-sectional analysis of the NESDA data found poorer lung function in females with anxiety disorders and/or depression compared with healthy controls and better lung function in males in the case group than in the control group.Reference van Milligen, Lamers, Guus, Smit and Penninx54 A 6-year longitudinal assessment of these participants suggested a greater decline in lung function in men in the case group compared with the control group.Reference Lever-van Milligen, Lamers, Smit and Penninx12 We observed better lung function in females with anxiety disorders and found no statistically significant case–control group differences in males. However, we observed no evidence of differences after excluding individuals with comorbid depression. Noteworthy, the results from the NESDA were not reported separately for anxiety disorders and depression.

Our results confirm previous researchReference Williams, Pasco, Jacka, Hodge, Kotowicz and Berk55 that found a lower bone mineral density in males with anxiety disorders and limited evidence of case–control group difference in females.

We did not observe any differences in arterial stiffness between the case and control groups. This finding is surprising given that previous studies have reported increased arterial stiffness in participants with anxiety disorders.Reference Seldenrijk, van Hout, van Marwijk, de Groot, Gort and Rustemeijer56,Reference Yeragani, Kumar, Bar, Chokka and Tancer57

Inconsistencies in findings between studies could result from differences in sample characteristics such as age, sex, severity of symptoms or the prevalence of effect modifiers. Systematic reviews of studies examining each measure of physiological function in relation to anxiety disorders could address these important questions. The definition of anxiety disorders, including which specific diagnoses were included, might also contribute to differences in results.

To our knowledge, we report the first study of age-related changes in physiology in people with anxiety disorders with age as a continuous rather than a categorical variable. Previous studies dichotomised age, for example testing differences between middle-aged participants and others,Reference Pan, Cai, Cheng, Dong, An and Yan14 making comparisons with our study difficult.

Mechanisms

Several mechanisms could explain the physiological differences between the anxiety disorders group and the healthy control group. Anxiety disorders are sometimes associated with less healthy lifestyle behavioursReference Bonnet, Irving, Terra, Nony, Berthezène and Moulin58 that could affect a range of physiological makers. Physiological differences could also reflect the cumulative effects of anxiety-related overactivation of the hypothalamic–pituitary–adrenal axis and sympathetic nervous systemReference Cohen, Edmondson and Kronish33 as well as increased inflammation and oxidative stress.Reference Vogelzangs, Beekman, De Jonge and Penninx59Reference Black, Bot, Scheffer and Penninx61 It is also possible that the reciprocal relationship between late-life anxiety and associated cognitive impairment may be a driver of poor physiological function.Reference Beaudreau and O'Hara62 The greater case–control group differences observed in people with chronic and/or severe anxiety disorders could be explained by a dose–response relationship between severity of symptoms and physiology mediated by a greater impact of anxiety on lifestyle, overactivation of the sympathetic nervous system and other potential pathways. A potential explanation for the observation that case–control group differences decreased with increasing age is that the prevalence of comorbidities increases with age, which may dilute the effects that anxiety disorders may have.

Limitations

The cross-sectional study design presents uncertainty about whether case–control group differences by age represent changes because of ageing or potential cohort effects. Future work should examine physiological function in anxiety disorders longitudinally. Although we found that all physiological measures varied by age, selection bias resulting in healthier older adults participating at higher rates relative to their age group could result in the underestimation of age-related changes. To achieve maximum cohort coverage, we identified individuals with anxiety disorders from multiple data sources, with strengths and limitations that have been discussed elsewhere.Reference Davis, Cullen, Adams, Brailean, Breen and Coleman23,Reference Davis and Hotopf63,Reference Glanville, Coleman, Howard, Pain, Hanscombe and Jermy64 For the primary care data, individuals were included in the case group only if they had at least two mentions of anxiety in their records. Anxiety disorder case participants in this study also included individuals with a single episode of anxiety, which likely resulted in an underestimation of case–control group differences. A small number of individuals with subthreshold disorders could be present among the healthy controls, which could have attenuated observed differences. We examined a transdiagnostic definition of anxiety disorders, and differences in physiological function between specific diagnoses could be explored in future studies. Although we found that the differences between individuals with chronic and/or severe anxiety disorders and controls were larger, these differences could at least partly reflect higher levels of comorbidities in addition to the effects of chronicity and/or severity.

Some caution is warranted in interpreting the findings of the sensitivity analyses because of the smaller sample size and lower statistical power. Finally, limitations in the assessment of physiological function may have masked some differences between the case and control groups. For example, dynamic measures such as pulse rate were not measured longitudinally, and our study does therefore not provide insights into potential case–control group differences that could be identified from time-series data. Similarly, lung function was estimated through volumetric measures using breath spirometry and we could therefore not examine irregularity of respiratory patterns. Physiological measures with higher temporal resolution could be examined in future studies.

Generalisability

UK Biobank participants are not fully representative of the UK population. MHQ respondents were also more educated, of higher socioeconomic status and had fewer long-standing illnesses than participants who did not complete the MHQ. Similar patterns of disease prevalence were present in the MHQ and hospital in-patient records, although anxiety was reported more frequently in the MHQ.Reference Davis, Coleman, Adams, Allen, Breen and Cullen18 Nevertheless, the overall number of individuals with a lifetime history of anxiety disorders identified in our study was comparable with previous epidemiological studies.Reference Bandelow and Michaelis65 Wider issues of generalisability of findings from the UK Biobank have been discussed elsewhere.Reference Fry, Littlejohns, Sudlow, Doherty, Adamska and Sprosen66 Our findings do not generalise to populations below age 40 or older than age 70, and there was greater uncertainty near the lower and upper extremes of the age range in this study. Additional studies in younger participants and in elderly people are needed.

Implications

Individuals with a lifetime history of anxiety disorders differed from healthy controls across multiple physiological measures, with some evidence of case–control group differences by age. The differences observed varied by chronicity/severity of anxiety and depression comorbidity. Monitoring of physiological function in individuals with anxiety disorders should be adapted depending on depression comorbidity status.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1192/bjp.2021.189.

Data availability

The data used are available to all bona fide researchers for health-related research that is in the public interest, subject to an application process and approval criteria. Study materials are publicly available online at http://www.ukbiobank.ac.uk.

Acknowledgments

This research has been conducted using data from UK Biobank, a major biomedical database. This project made use of time on Rosalind HPC, funded by Guy's & St Thomas’ Hospital NHS Trust Biomedical Research Centre (GSTT-BRC), South London & Maudsley NHS Trust Biomedical Research Centre (SLAM-BRC), and Faculty of Natural Mathematics & Science (NMS) at King's College London.

Author contributions

J.M. conceived the idea of the study, acquired the data, carried out the statistical analysis, interpreted the findings, wrote the manuscript and revised the manuscript for final submission. T.H.H. contributed to the study design, interpreted the findings and contributed to the writing of the manuscript. C.F. interpreted the findings and critically reviewed the manuscript. C.M.L. acquired the studentship funding, interpreted the findings and critically reviewed the manuscript. All authors read and approved the final manuscript. J.M. had full access to all data used in this study and takes responsibility for the integrity of the data and the accuracy of the data analysis.

Funding

J.M. receives studentship funding from the Biotechnology and Biological Sciences Research Council (BBSRC) (ref: 2050702) and Eli Lilly and Company Limited. C.F. was supported by Fondazione Umberto Veronesi (https://www.fondazioneveronesi.it). C.M.L. is part-funded by the National Institute for Health Research (NIHR) Maudsley Biomedical Research Centre at South London and Maudsley NHS Foundation Trust and King's College London. The views expressed are those of the authors and not necessarily those of the NHS, the NIHR or the Department of Health and Social Care.

Declaration of interest

J.M. receives studentship funding from the Biotechnology and Biological Sciences Research Council (BBSRC) and Eli Lilly and Company Limited. C.F. has been a speaker for Janssen. C.M.L. is a member of the Scientific Advisory Board of Myriad Neuroscience. T.H.H. declares no relevant conflict of interest.

Footnotes

This article has been updated since original publication and the error rectified in online PDF and HTML versions. A notice detailing the changes has also been published at https://doi.org/10.1192/bjp.2022.30.

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Figure 0

Table 1 Physiological measures

Figure 1

Table 2 Differences in physiological measures between individuals with anxiety disorders and healthy controlsa

Figure 2

Fig. 1 Generalised additive models of age-related changes in physiological measures in females with anxiety disorders and healthy controls.The solid lines represent physiological measures against smoothing functions of age. The shaded areas correspond to approximate 95% confidence intervals (plus or minus 2 × standard error). FEV1, forced expiratory volume in 1 s; FVC, forced vital capacity.

Figure 3

Fig. 2 Generalised additive models of age-related changes in physiological measures in males with anxiety disorders and healthy controls.The solid lines represent physiological measures against smoothing functions of age. The shaded areas correspond to approximate 95% confidence intervals (plus or minus 2 × standard error). FEV1, forced expiratory volume in 1 s; FVC, forced vital capacity.

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