Background Cardiovascular disease (CVD) is a leading cause of death in the US population. Lead exposure is an important risk factor of CVDs, as is associated with elevated homocysteine level and oxidative stress. We aim to examine whether vitamin B6, which has been shown to reduce homocysteine level, can modify the relationship between blood lead and the risk of CVDs.
Methods Cross-sectional data on ever-report CVDs (congestive heart failure, coronary heart disease, angina pectoris, heart attack and stroke), blood lead level (BLL) and vitamin B6 in the form of plasma pyridoxal 5'-phosphate were obtained from US National Health and Nutrition Examination Survey 2005–2006 for adults≥20 years old. The association between CVDs and quartiles of BLL was estimated using multivariate logistic regression models adjusted for demographics factors, lifestyle variables, stress variables, comorbidities and CVD biomarkers (C reactive protein, homocysteine, cholesterol) and was stratified by vitamin B6 deficiency level (<20 nmol/L) and median value of vitamin B6 (42.5 nmol/L).
Results Positive associations between BLL and CVDs only appeared in the vitamin B6 deficiency group, with quartile 2 to quartile 4 of BLL showing higher risk of CVDs (OR=3.1, 95% CI 0.9 to 10.6; OR=6.5, 95% CI 1.4 to 30.8; OR=5.5, 95% CI 1.4 to 21.7) compared with quartile 1. When stratified by median value of vitamin B6, a significant association between higher CVD risk with higher BLL was only observed in subjects with low vitamin B6 (p trend=0.004).
Conclusions Vitamin B6 could modify the association between BLL and CVDs, which suggests a potential value of vitamin B6 in influencing the effects of lead exposure on the cardiovascular system.
- nutrient deficiencies
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What this paper adds
This study suggests that vitamin B6 level can modify the association between blood leadlevel and the risk of CVDs in US adults.
The association between higher blood lead level and higher risk of CVDs was stronger among people with lower vitamin B6 level.
Vitamin B6 may influence the susceptibility to the harmful effect of lead exposure on the human cardiovascular system.
Cardiovascular diseases (CVDs) are the leading causes of death in the US population.1 The risk factors of CVDs include hypertension, obesity, diabetes and environmental toxicants such as lead (Pb).2 Lead is a common heavy metal and exposure to lead has been linked to many acute or chronic diseases. Accumulating epidemiological studies have confirmed a hypertensive effect of lead that lead exposure is associated with elevated blood pressure, which is one of the mechanisms mediating the effect of lead on CVDs.3 Other studies also reported positive association between lead exposure and cardiovascular outcomes. For example, blood lead was found to be associated with left ventricular hypertrophy and peripheral arterial disease.4 5 Lead exposure can cause elevated homocysteine level, oxidative stress, endothelial injury and inflammation, which can promote hypertension and CVDs.6
Notably, micronutrients such as vitamin B6 are found to be involved in homocysteine metabolisms.7 Vitamin B6 is an essential coenzyme participating in a wide range of biochemical reactions and can only be obtained from the diet, such as fish, poultry, nuts, legumes and bananas.8 Pyridoxal 5'-phosphate (PLP) is the major derivates of vitamin B6 and is considered as the indicator for vitamin 6 status.9 It functions when homocysteine is transforming to cystathionine and further to cysteine.8 Studies also found that vitamin B6 might be associated with CVDs.9–12 It is still unknown whether vitamin B6 has a potential influence on the association between lead exposure and CVDs.
Therefore, we aim to evaluate the association between lead exposure and CVD risk in a US population and the degree to which this association is modified by vitamin B6. We used data from the National Health and Nutrition Examination Surveys (NHANES), a nationally representative survey in the USA.
NHANES is a series of national, population-based, cross-sectional surveys, conducted by the National Center for Health Statistics. The survey includes interviews, physical examinations and laboratory tests. NHANES examines a sample of about 10 000 persons each 2 year wave, which is selected to represent the non-institutionalised US population of all ages and races.13 All participants in the NHANES provided written informed consent.
In this analysis, data from the 2005–2006 wave was used because of data availability. We included adults aged 20 years and older. Among the 4979 participants, 4482 subjects with valid measures of cardiovascular outcomes, blood lead level (BLL) and vitamin B6 concentrations were included in the study.
In NHANES, whole blood lead (Pb) was measured by inductively coupled plasma mass spectrometry based on quadrupole ICP-MS technology. Vitamin B6 was measured in the form of plasma PLP by high-performance liquid chromatographic method. The methods for blood collection, sample transportation and storage and sample analysis were described in the laboratory procedure manual.14 15 The NHANES quality assurance and quality control protocols meet the 1988 Clinical Laboratory Improvement Act mandates.
Cross-sectional data on self-reported CVDs was acquired through the question ‘Has a doctor or other health professional ever told [you/SP] that [you/s/he] … had a XX?’. CVDs included congestive heart failure, coronary heart disease, angina pectoris, heart attack and stroke. All participants aged 20 years and older were eligible for the questions.
In our analysis, we include a series of demographic, lifestyle, stress, comorbidities and CVD biomarker variables as covariates. Demographic variables included age, gender, ethnicity, education and family income. Age was categorised as 20–40, 40–60, 60–80 and over 80 years old. To avoid identifiability issue, NHANES indicates age as 85 years for all individuals>85 years of age. Race/ethnicity included Mexican American, other Hispanic, non-Hispanic white, non-Hispanic black and other. Education was categorised into <9th grade, 9th–11th grade, high school graduate, some college or associate degree, college graduate and above. Family income was defined by family poverty-income ratio, which was divided using the eligibility cut-off points for the United States Department of Agriculture food assistance programmes into low-income (0.000–1.850), middle-income (1.851–3.500) and high-income (3.501+).16
Lifestyle variables included smoking, alcohol use, body mass index (BMI), physical activity and dietary supplement use. Participants who smoked less than 100 cigarettes in life were defined as never smokers. If they smoked more than 100 cigarettes and reported current smoking behaviours, they were classified as current smokers. If they smoked more than 100 cigarettes but with no current smoking behaviours, they were classified as past smokers. Participants who had less than 12 alcoholic drinks in life were defined as never drinker and those who did not drink any alcohol over the past 12 months were past drinkers. If they consumed alcohol over the past 12 months, they were further classified into heavy drinker and light drinker based on whether they had more than one drink per day on average or not. BMI was classified into four groups: underweight (BMI<18.5), normal weight (18.5≤BMI<25), overweight (25≤BMI<30) and obesity (BMI≥30). Normal weight was used as the reference group. Physical activity level was calculated by adding the total time of household activity, transportation activity and leisure time activity per week. Participants who did not have any activities were classified as sedentary. The rest were divided into low, moderate and high activity levels by cutoffs at 140 min and 420 min per week. Dietary supplements were determined by the survey question ‘whether had supplements taken in the past month’.
Stress variables included sleep duration and depression. Sleep duration was divided into less than 7 hours, 7–8 hours and more than 8 hours. Seven to 8 hours was used as the reference group. Depression was ascertained through the Patient Health Questionnaire, a validated self-reported assessment based on the nine DSM-IV symptoms for depression. The nine symptoms questions were scored as ‘0’ (not at all), ‘1’ (several days), ‘2’ (more than half the days) and ‘3’ (nearly every day). Participants’ total score was then calculated by adding all scores up and was used to determine the severity of depression. Symptoms were classified as none (score 0–4), mild (score 5–9) and moderate-to-severe (score 10+) in our analysis.
History of hypertension and diabetes were considered as covariates since they are common comorbidities for CVD. In addition, CVD biomarkers including C reactive protein (CRP), homocysteine and cholesterol were also incorporated into our study.
BLLs were categorised into quartiles (Q1–Q4) by cut-off points at the 25th, 50th and 75th percentile values. Vitamin B6 was dichotomised into groups of deficiency (<20 nmol/L) and non-deficiency (>=20 nmol/L).17
To estimate the ORs of CVDs according to BLL, multivariate logistic regression analyses were performed using PROC SURVEYLOGISTIC statement in SAS with CVDs as the dependent variables. The ORs and 95% CIs for CVDs versus no CVDs were generated using unadjusted and adjusted regression models separately. Three different adjusted models were built: Model 1 adjusted for all the sociodemographic variables (age, gender, race, education and family income); Model 2 adjusted for sociodemographic variables and lifestyle variables (smoking, alcohol use, BMI, physical activity and dietary supplement use); Model 3 further adjusted for stress variables, comorbidities and biomarkers (sleep, depression, hypertension, diabetes, CRP, homocysteine and cholesterol). All three biomarkers were log-transformed due to their skewed distribution. We then stratified the analysis by vitamin B6 deficiency and the median level of vitamin B6 to determine whether the associations differed depending on vitamin B6 levels. P value for trend between quartiles of BLL and vitamin B6 in each model were also calculated to demonstrate a dose-response association, and p value for interaction was reported for the effect modification of vitamin B6. Due to missingness in some of the covariates (ranging from 0.1% to 7.7%), samples with missing variables were deleted in the adjusted models, making the total sample size of each model to 4280 (Model 1), 3940 (Model 2) and 3884 (Model 3). Statistical analysis was carried out with SAS V.9.4 (SAS Institute, Cary, North Carolina, USA). NHANES assigned each individual a sample weight for the representation of the US Census civilian non-institutionalised population. It is a measure of the number of people in the population represented by the sample person. NHANES cluster design variables (SDMVSTRA, SDMVPSU) and a full sample 2-year medical examination weight WTMEC2YR were used in the analysis. In all analyses, the statistical significance level was set at p<0.05.
The overall weighted prevalence of CVDs in our study sample of US adults was 12.9% (n=497). The mean concentration (SE) of BLL was 1.75 (0.04) ug/dL. The mean concentration (SE) of vitamin B6 was 76.2 (2.6) nmol/L. The weighted prevalence of vitamin B6 deficiency was 12.9% (n=691).
As shown in table 1, the percentages of adults who reported having CVDs differed significantly by covariates. As expected, the risk of CVDs increased significantly with age. CVDs showed a strong association with socioeconomic status. Higher educational level and family income were both strong protective factors of CVDs. Past smoking and drinking behaviours were both associated with a higher prevalence of CVDs (OR=2.39, 95% CI 1.85 to 3.09; OR=1.94, 95% CI 1.29 to 2.91). Less than 7-hour sleep and more than 8-hour sleep yielded higher odds of having CVDs than having 7 –8-hour sleep (OR=1.76, 95% CI 1.39 to 2.24; OR=2.44, 95% CI 1.97 to 3.02). CVDs appeared more often among those with depression, hypertension and diabetes. Finally, the risk of CVDs increased significantly in higher levels of CRP (tertile 2/tertile 3 versus tertile 1: OR=1.76, 95% CI 1.39 to 2.24/OR=2.44, 95% CI 1.97 to 3.02), and in higher levels of homocysteine (tertile 2/tertile 3 versus tertile 1: OR=2.02, 95% CI 1.14 to 3.57/OR=6.40, 95% CI 4.32 to 9.50).
BLL and vitamin B6 concentrations also showed variations by covariates. BLL was higher in older adults, males, Mexican Americans and Blacks, smokers, people with lower socioeconomic status, less than 7-hour sleep, hypertension, diabetes and higher homocysteine. Vitamin B6 concentration was higher in older adults, males, non-Hispanic whites, non-smokers, no depression, people with higher socioeconomic status, higher physical activity level, lower CRP and lower homocysteine (online supplementary table). The higher BLL was also associated with lower vitamin B6, with a coefficient=−2.32 (p=0.03).
In the overall analysis, CVDs were significantly associated with BLL in the crude model (table 2). Compared with Q1 (0.18–0.92 ug/dL), participants in Q2–Q4 (0.93–1.49; 1.50–2.37; 2.38–26.4 ug/dL) yielded significantly higher risk of having CVDs (OR=2.4, 95% CI 1.3 to 4.7/OR=4.7, 95% CI 2.5 to 8.7/OR=6.8, 95% CI 4.0 to 11.1). When adjusted for confounding variables in model 1 to model 3, the association was less significant, although higher quartiles of BLL still led to higher ORs of CVDs. The p value for trend was 0.02 in Model 1, 0.01 in Model 2 and 0.006 in Model 3, indicating a significant dose-response association between BLL and CVDs.
When we stratified the whole sample by vitamin B6 deficiency level (<20 nmol/L), a positive association between quartiles of BLL and CVDs appeared in the deficiency group, but not in the normal group (table 2). In the normal group, a significant association between BLL and CVDs only appeared in the crude model (Q3 vs Q1: OR=3.9, 95% CI 1.9 to 7.7/Q4 vs Q1: OR=5.7, 95% CI 3.3 to 10.0), but not in the adjusted models, although the p value for trend indicated a higher risk of CVDs associated with higher BLL. In the deficiency group, significant associations remained in all models. In the fully adjusted model 3, compared with Q1, participants in Q3–Q4 had significantly higher risks of CVDs (OR=6.5, 95% CI 1.4 to 30.8/OR=5.5, 95% CI 1.4 to 21.7). The p value for trend was not significant in the adjusted models, probably because participants in Q4 did not yield a higher risk than participants in Q3.
When we stratified the whole sample according to the median vitamin B6 level (42.5 nmol/L), similar results appeared. In the below-median group, participants in Q4 had significantly higher odds of CVDs in the adjusted model 3 (OR=2.7, 95% CI 1.1 to 7.2), but this association was not observed in the above-median group. What is more, a statistically significant does-response association was observed in both groups in the crude model (p trend<0.0001), but was only among subjects with below-median vitamin B6 levels in the adjusted model (p trend=0.004 in model 3) (table 2). The p value for interaction was significant in all models (Crude: p=0.009; Model 1: p=0.01; Model 2: p=0.005; Model 3: p=0.003), indicating an effect modification of vitamin B6 in the dose response association between BLL and CVDs (table 2).
Our study aims to explore the modifying effect of vitamin B6 on the association between BLL and CVDs, which has not been conducted before. We found that the association between lead and CVDs differed depending on vitamin B6 levels, and the association was stronger among participants with low vitamin B6 concentrations.
Many believe that lead exposure has a profound effect on human cardiovascular systems by acting on various markers. Studies found that some clinical markers in cardiovascular systems were associated with BLL, including blood pressure, high-density lipoprotein cholesterol, CRP, low-density lipoprotein cholesterol and homocysteine.18–20 For example, a cross-sectional study in Baltimore revealed that homocysteine level increased 0.35 μmol/L with 1.0 µg/dL increase in blood lead.21 Similarly, an Asian cross-sectional study found an increase of 1 µg/dL in blood lead was associated with an increase of 0.05 μmol/L in homocysteine.22 A prospective cohort study in Korea also found that BLLs were positively associated with plasma homocysteine levels and was modified by genetic polymorphism.23 Elevated homocysteine is an independent risk factor for CVDs,24 suggesting that homocysteine could be a mechanism that underlies the effects of lead on the cardiovascular systems.
The modifying effect of vitamin B6 on the association between lead exposure and CVDs found in our study suggests that higher serum vitamin B6 concentration may influence the harmful effect of lead exposure on the cardiovascular system. Similarly, a few studies examined the modifying effect of micronutrients on the association of BLL with homocysteine levels. A longitudinal study using data from the VA Normative Aging Study revealed a positive association between lead exposure and homocysteine concentrations and further recovered that this association was stronger among participants with below-median intakes of vitamin B6 and folate.25 Another cohort of premenopausal women also reported that higher BLL was associated with increased homocysteine but this association was only significant in the lower three quartiles of vitamin B6, vitamin B12 and folate consumption.26 A NHANES study found a positive association between BLL and homocysteine only among participants with low levels of folate or vitamin B6 (below-median).7 These studies suggest that among people who have been exposed to lead, higher consumptions of B-vitamins may mitigate the effect of lead on homocysteine.25 Also, lead may biologically interact with folate, vitamin B6 and vitamin B12.7 Considering lead exposure is a risk factor of elevated homocysteine by disturbing essential enzymes in homocysteine metabolism, and B-vitamins are also involved in the pathways of homocysteine metabolisms, a potential role of homocysteine can be established in the interaction between lead exposure, vitamin B6 and CVDs.
Previous literature has found that suboptimal level or mild deficiency of vitamin B6 could be associated with a higher risk of many chronic diseases, including CVDs.27 For example, in a multicentre case-control study in Europe, vitamin B6 concentrations were significantly lower in patients with vascular disease than in healthy controls.28 Another case-control study in the USA found a strong independent association between low PLP and stroke.29 Underlying mechanisms may involve homocysteine metabolisms, in which the synthesis of cystathionine requires vitamin B6 in the form of PLP.30 Vitamin B6 was also inversely related to inflammatory markers such as CRP and fibrinogen,9 which may induce a higher risk of CVDs.
However, there has not been a consensus on the effect of vitamin B6 supplementation on the prevention or treatment of CVDs. A Japan study showed that vitamin B6 supplement has the potential to reduce the risk of coronary heart disease and myocardial infarction.31 However, some large-scale clinical trials reported negative results on the effect of Vitamin B6 in reducing cardiovascular risk in humans.32 For example, the Heart Outcomes Prevention Evaluation 2 Study found no effect of vitamin B6 supplementation in reducing the risk of major cardiovascular events in patients with vascular disease.33 The Norwegian Vitamin trial reported no association between vitamin B6 supplement and benefit for myocardial infarction and stroke.34 These negative results may suggest that vitamin B6 does not work well in patients with CVDs but cannot preclude a protective effect in primary prevention.11 It was also pointed out that some neglected confounding factors and inappropriate designs may implicate the negative evidence in previous studies.35 Therefore, further studies are needed to find the role of vitamin B6 in CVD prevention and the optimal dose and combination.
We found a dose-response association between CVDs and BLL among the whole sample before and after adjustments. This is in consistent with current literature, which has widely recognised a positive association of lead exposure with CVDs.3 For example, in a prospective cohort study, men with increased BLLs had a higher risk of future ischaemic heart disease (IHD).36 A Korean cohort study found that IHD, cerebrovascular disease, angina pectoris and cerebral infarction all showed a positive relationship with BLLs.36 Another NHANES study found a decline in lead exposure was associated with reductions in cardiovascular mortality in US adults.37
Our study is a large-scale population-based study using a nationally representative database in the USA. We built several models adjusting for a wide range of covariates. We target the interaction between BLL, vitamin B6 and CVDs, which has not been done before. However, our study has several limitations. First, because of the cross-sectional design of this study, we cannot determine the direction of causality. Second, the CVD outcome data were obtained by self-report questionnaires rather than clinical diagnosis. Thus, it was subject to recall bias and inaccurate self-perception. Third, considering population-based studies are unable to infer the potential mechanisms behind, future studies can focus on more cardiovascular biomarkers and genetic polymorphisms.
We found a modifying effect of vitamin B6 on the association between blood lead concentrations and the risk of CVDs in US adults. The association is only significant among people with lower vitamin B6 levels, suggesting that higher vitamin B6 concentration may influence susceptibility to the harmful effect of lead exposure on the human cardiovascular system. This study implicates a potential public health value of diet and micronutrients on reducing the influence of heavy metal exposure.
Contributors JW and JSJ designed the study. JW had access to raw data and conducted statistical analysis. JW and JSJ interpreted the results. All authors contributed to manuscript and approved of the final version.
Funding The authors have not declared a specific grant for this research from any funding agency in the public, commercial or not-for-profit sectors.
Competing interests None declared.
Patient consent for publication Not required.
Provenance and peer review Not commissioned; externally peer reviewed.
Data availability statement Data are available in a public, open access repository. The data that support the findings of this study are openly available in National Health and Nutrition Examination Survey at https://wwwn.cdc.gov/nchs/nhanes/Default.aspx.
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