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Figure 1.  Sex-Specific Trajectories of Blood Pressure (BP)
Sex-Specific Trajectories of Blood Pressure (BP)

Life course trajectories of BP elevation are displayed on the same vertical axis in panel A, suggesting that BP levels in women catch up to men after midlife. Under the premise of sex-specific physiology, elevation in BP levels from baseline for both sexes is shown in panel B, indicating that BP elevation in women begins earlier and progresses more rapidly in women than in men over the life course. For BP trajectory plots, restricted cubic splines were fitted from mixed-effects linear regression models. P values for sex differences in BP trajectories were derived from the likelihood ratio test for models with and without parameters representing the interaction between sex and the cubic spline variables representing age. Shaded regions denote 95% CI. DBP indicates diastolic blood pressure; MAP, mean arterial pressure; PP, pulse pressure; SBP, systolic blood pressure.

Figure 2.  Differences Between Women and Men in Incremental Blood Pressure (BP) Elevation From Baseline Levels
Differences Between Women and Men in Incremental Blood Pressure (BP) Elevation From Baseline Levels

Under the premise of sex-specific physiology, we calculated between-sex differences (women minus men) in the change of BP values from baseline, and these data demonstrate faster rates of increase in women than men for all BP measures, particularly for systolic BP and pulse pressure (PP). Fitted lines denote mean sex differences in incremental BP (women vs men) from baseline, calculated from restricted cubic spline of mixed-effects linear regression models (Figure 1B). Shaded regions denote 95% CI. DBP indicates diastolic blood pressure; MAP, mean arterial pressure; SBP, systolic blood pressure.

Figure 3.  Multivariable-Adjusted Sex-Specific Trajectories of Blood Pressure (BP) With Aging
Multivariable-Adjusted Sex-Specific Trajectories of Blood Pressure (BP) With Aging

The BP trajectories adjusted for multiple risk factors (body mass index, total cholesterol, diabetes, and smoking status) are displayed as bolder curves (with shading for error limits). Although BP trajectories in both sexes were attenuated with multivariable adjustment, consistent with the known contributions of risk factors to age-related BP elevation, between-sex differences in all BP trajectories persisted. P values are for sex differences in the BP trajectories. DBP indicates diastolic blood pressure; MAP, mean arterial pressure; PP, pulse pressure; SBP, systolic blood pressure.

Figure 4.  Sex Differences in Cardiovascular Disease (CVD) Incidence
Sex Differences in Cardiovascular Disease (CVD) Incidence

Cumulative incidence of hard CVD events is higher in men than in women over the life course; log-rank P value is shown.

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Original Investigation
January 15, 2020

Sex Differences in Blood Pressure Trajectories Over the Life Course

Author Affiliations
  • 1Cardiovascular Division, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts
  • 2Framingham Heart Study, Framingham, Massachusetts
  • 3Department of Cardiology, Shanghai Tenth People’s Hospital, Tongji University, Shanghai, China
  • 4Barbra Streisand Women’s Heart Center, Smidt Heart Institute, Cedars-Sinai Medical Center, Los Angeles, California
  • 5Hypertension Center of Excellence, Smidt Heart Institute, Cedars-Sinai Medical Center, Los Angeles, California
  • 6National Institute for Health and Welfare, Helsinki, Finland
  • 7Turku University Hospital, Department of Medicine, University of Turku, Turku, Finland
JAMA Cardiol. 2020;5(3):255-262. doi:10.1001/jamacardio.2019.5306
Key Points

Question  How do patterns of blood pressure (BP) change over the life course and differ between sexes?

Findings  In this analysis of 4 community cohort studies, trajectories of BP elevation in 32 833 individuals (54% women) were examined serially over 4 decades (age span, 5 to 98 years). Women compared with men exhibited a steeper increase in BP measures that began as early as in the third decade and continued throughout the life course.

Meaning  Sex differences in BP trajectories, which begin early and persist with aging, may set the stage for later-life cardiovascular diseases that frequently present differently in women vs men.

Abstract

Importance  If we assume that women and men exhibit variations of the same fundamental vascular physiology, then conventional analyses of subclinical measures would suggest that women catch up to men by midlife in the extent of potentially important vascular disease. Alternatively, under the assumption that vascular physiology may fundamentally differ between women and men, a sex-specific analysis of existing data could offer new insights and augment our understanding of sex differences in cardiovascular diseases.

Objective  To evaluate whether longitudinal patterns of blood pressure (BP) elevation differ between women and men during the life course when considering baseline BP levels as the reference.

Design, Setting, and Participants  We conducted sex-specific analyses of longitudinal BP measures (144 599 observations) collected for a period of 43 years (1971 to 2014) in 4 community-based US cohort studies. The combined total included 32 833 participants (54% female) spanning ages 5 to 98 years. Data were analyzed between May 4, 2019, and August 5, 2019.

Exposures  Age and serially assessed longitudinal BP measures: systolic BP, diastolic BP, mean arterial pressure (MAP), and pulse pressure (PP).

Main Outcomes and Measures  Sex-specific change in each primary BP measure compared with baseline BP levels, derived from multilevel longitudinal models fitted over the age span, and new-onset cardiovascular disease events.

Results  Of the 32 833 participants, 17 733 were women (54%). Women compared with men exhibited a steeper increase in BP that began as early as in the third decade and continued through the life course (likelihood ratio test χ2 = 531 for systolic BP; χ2 = 123 for diastolic BP; χ2 = 325 for MAP; and χ2 = 572 for PP; P for all <.001). After adjustment for multiple cardiovascular disease risk factors, these between-sex differences in all BP trajectories persisted (likelihood ratio test χ2 = 314 for systolic BP; χ2 = 31 for diastolic BP; χ2 = 129 for MAP; and χ2 = 485 for PP; P for all <.001).

Conclusions and Relevance  In contrast with the notion that important vascular disease processes in women lag behind men by 10 to 20 years, sex-specific analyses indicate that BP measures actually progress more rapidly in women than in men, beginning early in life. This early-onset sexual dimorphism may set the stage for later-life cardiovascular diseases that tend to present differently, not simply later, in women compared with men.

Introduction

Over the last 2 decades, mounting evidence has highlighted differences between women and men in the manifestation of common cardiovascular diseases (CVDs). A prevailing perception is that women are affected by the same types of CVD that affect men, albeit with delayed onset and often atypical symptoms. However, with respect to ischemic heart disease (IHD) and heart failure (HF), it is now increasingly recognized that women are more likely than men to develop coronary microvascular dysfunction (CMD) and HF with preserved ejection fraction (HFpEF), especially in the setting of vascular risk factors such as hypertension.1-3 In effect, the broadening clinical experience of managing CVD conditions that manifest differently between women and men, combined with the accumulating data on sex-specific CVD presentations, suggest that cardiovascular pathophysiology is likely to be fundamentally different between the sexes. If true, then intrinsic sexual dimorphism in cardiovascular pathophysiology must plausibly extend from sexual dimorphism in cardiovascular physiology. To better understand how sex differences in earlier-life cardiovascular physiology may precede sex differences in later-life cardiovascular pathophysiology, we used population-based multicohort data to conduct a comprehensive sex-specific analysis of blood pressure (BP) trajectories over the life course, given that measures of BP elevation in the community represent the single most accessible metric of vascular aging as well as the largest contributor to IHD and HF risk in both women and men.4-7

Methods

Using approved access data from the National Heart, Lung, and Blood Institute BioLINCC repository, we aggregated serially examined BP measurements collected longitudinally from participants of 4 community cohorts whose study designs have been described previously: the Framingham Heart Study (FHS) offspring cohort,4 the Atherosclerosis Risk in Communities (ARIC) Study,8 the Coronary Artery Risk Development in Young Adults (CARDIA) Study,9 and the Multi-Ethnic Study of Atherosclerosis (MESA).10 Each participant provided written informed consent, and institutional review boards approved the study protocol at each site. A total of 32 845 unique participants from FHS (examinations 1-9), ARIC (visits 1-4), CARDIA (examinations 1-8), and MESA (examinations 1-4) were eligible for inclusion. We excluded individual-level observations from analyses if concurrent data were missing for BP measures or antihypertensive medication (eFigure 1 in the Supplement).

Systolic BP (SBP) and diastolic BP (DBP) were assessed for seated participants who had been resting for at least 5 minutes using a mercury column sphygmomanometer in FHS, Hawksley random zero sphygmomanometer in ARIC and CARDIA (examinations 1-6), Omron model HEM907XL oscillometric BP monitor in CARDIA (examinations 7-8), and automated oscillometric device (Dinamap Monitor Pro 100) in MESA. To adjust for between-method heterogeneity, we used the mercury column sphygmomanometer (FHS) as reference and adjusted BP measures in ARIC by SBP plus 2.6 mm Hg and DBP plus 6.2 mm Hg and adjusted BP measures in MESA by SBP plus 0.5 mm Hg and DBP plus 2.9 mm Hg based on a previously described correction method.11,12 For CARDIA, we first calibrated oscillometric values to Hawksley random zero sphygmomanometer measures (step 1)13 and then adjusted BP measures to mercury column sphygmomanometer by SBP plus 2.6 mm Hg and DBP plus 6.2 mm Hg (step 2).11 To account for the treatment effects of antihypertensive therapy on blood pressure,14 we imputed untreated values by adding 10 mm Hg to SBP and 5 mm Hg to DBP values observed in the setting of antihypertensive therapy,15,16 and mean arterial pressure (MAP) and pulse pressure (PP) were calculated based on these imputed values: PP = SBP − DBP and MAP = DBP + (1/3) PP. In addition, we conducted a sensitivity analysis using alternate approaches to imputation, including (1) adding 15 mm Hg to SBP and 10 mm Hg to DBP and (2) adding 15 mm Hg to SBP and 5 mm Hg to DBP.

Mixed-effects regression models were used to display BP trajectories in women and men separately, with age used as the common timescale for all analyses. We used repeated BP measures to fit mixed-effects linear regression models with each BP measure as the outcome, participant indentifications as random intercepts, and age as a fixed effect expressed using restricted cubic splines with 4 knots to allow for nonlinear relationships. Mean values were estimated for each BP measure over an age range of 18 (0.5th percentile) to 85 (99.5th percentile) years for women and men separately. Within the premise of sex-specific physiology, we then calculated BP change from the baseline BP level as well as the differences in BP increment between women and men. Differences between sexes in the associations between BP measures and age were tested via likelihood ratio test between models with and without parameters representing the interaction between sex and the cubic spline variables representing age. Mixed-effects regression models were further adjusted for covariates including body mass index (calculated as weight in kilograms divided by height in meters squared), total cholesterol, diabetes mellitus, and current smoking status. In secondary analyses, we repeated all models stratified by race/ethnicity (white individuals vs black individuals) as well as by cohort and antihypertensive medication use (with vs without antihypertensive therapy).

To understand sex-specific BP trajectories in context, we examined sex-specific CVD incidence in our multicohort sample. We defined incident hard CVD as new-onset fatal or nonfatal myocardial infarction, HF, or stroke, adjudicated using established criteria that are known to be largely similar across all cohorts.9,17,18 We estimated the Kaplan-Meier cumulative incidence of hard CVD by sex. All analyses were performed using R, version 3.5.1 (R Foundation for Statistical Computing) and Stata, version 15 (StataCorp). All P values were 2-sided, with a significance level of 0.05.

Results

A total of 32 833 unique participants, each contributing at least 1 observation with both BP and antihypertensive medication data available (eFigure 1 in the Supplement), were included for analyses: 5120 participants from FHS (after 4 were excluded), 15 786 from ARIC (6 excluded), 5113 from CARDIA (2 excluded), and 6814 from MESA (0 excluded). These participants (32 833 total; 17 733 women [54%]) contributed 144 599 observations during a 43-year period (1971-2014), with ages spanning 5 to 98 years. During 4 decades of follow-up, 8130 participants (24.8%) had developed new-onset hard CVD events (eTable in the Supplement).

Figure 1A displays BP values for both sexes on the same vertical axis, with trends suggesting that BP levels in women appear to catch up to BP levels in men by midlife. When the data are displayed with sex-specific values set to represent change from baseline BP level (ie, elevation from baseline), allowing comparison of older individuals with their younger selves over time, another pattern emerges (Figure 1B). In effect, as early as the third decade of life, women compared with men exhibited faster rates of progressive BP elevation with aging (likelihood ratio test χ2 = 531 for systolic BP; χ2 = 123 for diastolic BP; χ2 = 325 for MAP; and χ2 = 572 for PP; P for all <.001). When considering women-to-men difference in BP change, as displayed in Figure 2, all BP components, including systolic BP, diastolic BP, PP, and MAP, increased more predominantly in women compared with men over the life course.

In analyses adjusting for clinical covariates (including BMI, total cholesterol, diabetes mellitus, and current smoking), the rates of increase for all BP measures were expectedly attenuated for both sexes when compared with unadjusted BP trajectories; notably, multivariable-adjusted BP trajectories remained higher in women than in men over the life course (Figure 3; likelihood ratio test χ2 = 314 for systolic BP; χ2 = 31 for diastolic BP; χ2 = 129 for MAP; and χ2 = 485 for PP; P for all <.001).

In secondary analyses stratified by race/ethnicity, cohort, and antihypertensive medication use, we observed similar trends (eFigures 2-6 in the Supplement). Our main results were also unchanged when using alternative methods to impute the potential effects of antihypertensive therapy (eFigure 7 in the Supplement).

To further understand sex-specific BP trajectories in context, we examined incidence of new-onset hard CVD events in our study sample and observed the cumulative incidence to be higher in men than in women over the adult life course, as expected (Figure 4; 4486 of 15 100 men [29.7%] vs 3644 of 17 733 women [20.5%] developed incident CVD; HR, 1.61; 95% CI, 1.54-1.69; P < .001; log-rank P < .001).

Discussion

If we assume that women and men exhibit variations of the same fundamental physiology, then conventional analyses of longitudinal BP data would suggest that women catch up to men by midlife in the extent of vascular disease manifesting as age-related elevations in BP.4 However, if we suspend this hypothesis, and consider the possibility that physiology, including vascular physiology, is fundamentally different between women and men, then sex-specific analyses of the data can reveal new insights. In particular, when we permit sex-stratified analyses of longitudinal data with serial BP measures compared with baseline levels, women compared with men clearly exhibit a steeper increase in BP that begins as early as the third decade and continues throughout the life course.

Despite multiple previous reports of age-related BP trends observed in women and men,4,19 relatively little work has been done to examine life course BP trajectories in relation to sex-specific baseline values. In a study of more than 30 000 predominantly white adults enrolled in 8 UK cohorts, Wills et al20 observed a steeper rise of SBP with aging in women compared with men. Our analysis expands from this prior work by comprehensively examining all BP measures, including PP and MAP, in a multiracial sample derived from several large US cohorts. Although our study did not include children or young adults, Shen et al21 examined serial BP data from the Bogalusa Heart Study and observed no sex differences from ages 5 to 14 years, but then higher slopes of SBP and DBP rise in male individuals than female individuals beginning at age 15 years (coinciding with peripubertal growth) followed by steeper slopes of SBP and DBP rise in women than men starting in the 20s to 30s. These findings are also consistent with our results, indicating that the sex differences in BP trajectories seen over adulthood begin early in life. Interestingly, when we adjusted our analyses for cardiometabolic risk factors, we found that the rates of increase for all BP measures were similarly attenuated in both sexes, as expected and consistent with the notion that risk factor exposures contribute substantially to progressive age-related rise in BP. Notably, BP trajectories of increase remained more pronounced in women than men in these adjusted analyses.

Sexual dimorphism in age-related BP elevation may be due to many causes, including differences in hormonal factors, chromosomal factors, and sex-biased nonchromosomal gene expression.22 Importantly, complex social, economic, and structural environmental factors lead to differences in the lived experience between women and men that can also affect physiology as well as vascular biology.23 Nonetheless, still the most commonly considered contributors to biological sex differences remain those associated with sex hormones (ie, type and timing of menarche, pregnancy, and menopause).24 However, the evidence to date would suggest that episodes of hormonal variation or perturbation are not sufficient to account for the sex differences in cardiovascular phenotypes that are consistently seen during the entire life course.25 Women compared with men have not only smaller total body size on average but also smaller organs, including the heart, and smaller vessel caliber, including the coronary arteries, even after adjusting for body surface area.26,27 These morphologic differences are likely coupled with intrinsic physiologic differences that become more evident as well as more persistent with aging and the age-related accumulation of common risk exposures. This construct is consistent with our finding that MAP (a measure that grossly reflects small artery compliance) increases at a higher rate in women than men over the life span. In turn, the higher rate of MAP increase in women, potentially indicative of small artery remodeling (media-to-lumen ratio), may contribute to the greater prevalence of CMD in women than men.28 The higher rate of PP increase in women, reflecting accelerated arterial stiffening and coinciding with greater concentric left ventricular remodeling, may contribute to the excess risk of HFpEF in women.29 Alternatively, or in addition, sex differences in associations of BP with systemic microvascular inflammation and oxidative stress30 may also contribute to coronary microvascular endothelial dysfunction and adverse myocardial remodeling, the putative subclinical precursors to CMD and HFpEF.31

Limitations

Notwithstanding strengths of this analysis, including the combined multicohort and multiethnic design, broad age range, and serially standardized BP measurements collected for up to 4 decades, certain limitations merit consideration. The fitted splines are unable to completely explain variation over the entire life course, especially at the individual level. While imputing for differences in methods for assessing BP, we could not account for all the heterogeneity existing between or within cohort study settings. Although we studied individuals across the age range from multiple racial/ethnic groups, generalizability to populations not represented herein remains unknown. Our findings could have been influenced by relative undertreatment of hypertension in women, which could not be fully captured by our analyses despite imputing for presence vs absence of antihypertensive medication use. It is known that less healthy men tend to be survived by healthier men, and this survival bias could have contributed to lower or more stable BP levels in older men compared with older women.

Conclusions

In summary, we analyzed BP trajectories over the life course in a sex-stratified fashion and observed that progressive BP elevation increased more rapidly in women than in men, beginning as early as in the third decade of life. In contrast with the notion that important vascular diseases in women lag behind men by 10 to 20 years, our findings indicate that certain vascular changes not only develop earlier but also progress faster in women than in men. In effect, sex differences in physiology, starting in early life, may well set the stage for later-life cardiac as well as vascular diseases that often present differently in women compared with men. Additional work is needed to further understand sexual dimorphism in cardiovascular risk to optimize prevention and management efforts in both women and men.

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Article Information

Corresponding Author: Susan Cheng, MD, MPH, MMSc, Smidt Heart Institute, Cedars-Sinai Medical Center, 8700 Beverly Blvd, Los Angeles, CA 90048 (susan.cheng@cshs.org).

Accepted for Publication: October 24, 2019.

Correction: This article was corrected on March 18, 2020, to correct an error in the author affiliations.

Published Online: January 15, 2020. doi:10.1001/jamacardio.2019.5306

Author Contributions: Drs Cheng and Ji had full access to all of the data in the study and take responsibility for the integrity of the data and the accuracy of the data analysis.

Concept and design: Kim, Niiranen, Bairey Merz, Cheng.

Acquisition, analysis, or interpretation of data: Ji, Kim, Ebinger, Niiranen, Claggett.

Drafting of the manuscript: Ji, Kim, Cheng.

Critical revision of the manuscript for important intellectual content: Kim, Ebinger, Niiranen, Claggett, Bairey Merz, Cheng.

Statistical analysis: Kim.

Obtained funding: Bairey Merz, Cheng.

Administrative, technical, or material support: Ebinger, Bairey Merz, Cheng.

Supervision: Claggett, Bairey Merz, Cheng.

Conflict of Interest Disclosures: Dr Niiranen reported grants from Academy of Finland, the Finnish Medical Foundation, the Emil Aaltonen Foundation, and the Paavo Nurmi Foundation outside the submitted work. Dr Bairey Merz reported personal fees from iRhythm, Abbott Diagnostics, and from Sanofi during the conduct of the study. Dr Cheng reported grants from the National Institutes of Health during the conduct of the study and personal fees from Zogenix outside the submitted work. No other disclosures were reported.

Funding/Support: This study was funded in part by an unrestricted research grant from Gilead Sciences, contracts from the National Heart, Lung and Blood Institutes (N01-HV-68161, N01-HV-68162, N01-HV-68163, and N01-HV-68164); grants from the National Institutes of Health (U01-64829, U01-HL649141, U01-HL649241, R01-HL090957, R01-HL134168, R01-HL131532, R01-HL143227, and R03AG032631); GCRC grant MO1-RR00425 from the National Center for Research Resources; the National Center for Advancing Translational Sciences grant UL1TR000124; the Edythe L. Broad and the Constance Austin Women’s Heart Research Fellowships; Cedars-Sinai Medical Center, Los Angeles, California; the Barbra Streisand Women’s Cardiovascular Research and Education Program, Cedars-Sinai Medical Center, Los Angeles, California; the Society for Women’s Health Research, Washington, DC; the Linda Joy Pollin Women’s Heart Health Program; the Erika Glazer Women’s Heart Health Project; and the Adelson Family Foundation, Cedars-Sinai Medical Center, Los Angeles, California.

Role of the Funder/Sponsor: The funding sources had no role in the design and conduct of the study; collection, management, analysis, and interpretation of the data; preparation, review, or approval of the manuscript; and decision to submit the manuscript for publication.

Disclaimer: The opinions, results, and conclusions are those of the authors and are independent from the funding sources.

Additional Contributions: We thank Nakela Cook, MD, MPH, National Heart, Lung, and Blood Institute (NHLBI), for offering important feedback and insightful comments on the manuscript. This study was conducted using the Framingham Heart Study, Atherosclerosis Risk in Communities Study, the Coronary Artery Risk Development in Young Adults Study, and the Multi-Ethnic Study of Atherosclerosis Research Materials obtained from the NHLBI Biologic Specimen and Data Repository Information Coordinating Center and does not necessarily reflect the opinions or views of each cohort studies or the NHLBI. We thank all the participants of the NHLBI cohort studies for their invaluable contributions to this work. No compensation was received from a funding sponsor for these contributions.

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