4.1. Sex Differences in Blood Pressure
In the present study, we observed that most personal (including BMI) variables were similar between the sexes, which makes both groups comparable in BP parameters. We showed that both SBP and DBP were significantly higher in men and were correlated by different factors in both sexes. The higher values of SBP and DBP in men coincide with previous reports showing higher levels of pre-hypertension (for SBP) in men when compared with women in the adult population of China (71.1% vs. 44.6%) [
27] and the university population of Spain (56.5% vs. 13.0%) [
1]. These results coincide with ours, where higher levels of hypertension (11.2% vs. 2.2%) and mainly pre-hypertension of SBP (47.5% vs. 4.4%) were found in men when compared with women. These results are more similar to that found by Ortiz-Galeano et al. in Spain [
1]. This is explained by the higher similitude between our study and their study, being both populations mainly comprised of young people, where sex differences are more pronounced. The differences in BP observed between the sexes have been explained by the biological effects of sex chromosomes, including sex hormones and reproductive events [
4]. However, there is evidence that cardiovascular complications start at lower BP levels in females than in males [
4], questioning the current practice of using the same BP threshold for the identification of hypertension in both sexes [
28,
29]. In addition, in the elderly, hypertensive women double the number of men [
30]; this can be partly explained by hormonal and hemodynamic changes that occur after menopause, including a higher sympathetic activity and vasoconstrictor responsiveness [
31].
4.2. Personal and Biochemical Factors in SBP
In the bivariate correlations performed in the whole sample, we observed that male sex was the variable most associated with SBP (
Table 4), which coincides with the sex differences of SBP previously mentioned. In addition, we observed that many biochemical and some psychological variables were positively and negatively correlated with SBP and DBP.
In the case of SBP, in the multivariate regression analysis for the global sample, we observed that male sex, BMI and age were the most positively correlated variables with SBP, followed by schooling, which was negatively correlated with SBP. BMI and age are well-known variables related to high SBP, which, in the case of BMI, is explained by the role that adiposity plays in the physiopathology of hypertension [
5]. This variable, along with age, was positively correlated with SBP in the whole sample, as well as in the women’s sample (
Table 5 and
Table 6), which suggests that their association, although present in both sexes, is higher in women than in men. In the case of the negative correlation of schooling with SBP, a possible explanation is that people with higher schooling remain sited or physically inactive more often, which negatively impacts SBP (when adjusted for BMI and the rest of the searched variables). This variable was also seen in men’s and women’s subsamples (
Table 6 and
Table 7) and coincides with the positive correlation of the variable daily physical activity hours with SBP in the men’s sample. These findings coincide with a previous report performed in normotensive men, where significant correlations between SBP, physical activity and left ventricle mass were found [
32]. Different to that found in hypertensive men in whom physical activity is associated with reduced BP [
33], the coincidence between these findings and our results is explained by the fact that most men included in this study were normotensive or pre-hypertensive, and only 8.8% were hypertensive. These findings indicate the importance of personal and behavioral variables in BP variations of a relatively healthy population. We also observed that the personal variable “sleep satisfaction” was marginally and positively correlated with SBP in the whole sample (
Table 5), which suggests that restful sleep is needed in order to maintain a healthy BP and avoid hypotension. In addition, it has been shown that poor sleep patterns are related to a higher probability of presenting hypertension [
34]. Therefore, it seems that sleep quality has an important role in BP regulation.
We also observed that the biochemical variables albumin and total proteins were positively correlated with SBP in the multiple regression analyses of global and men’s samples (
Table 5 and
Table 7), which is probably due to the oncotic pressure that albumin exerts [
35]. Additionally, these results coincide with the bivariate correlations between total proteins and albumin with SBP in the whole sample (
Table 4). On the other hand, the serum electrolytes were also correlated with SBP in the multivariate regression analyses, where phosphorus and potassium were negatively correlated with it in the global and men’s samples (
Table 5 and
Table 7). These findings coincide with previous reports, showing that phosphorus and potassium supplementation are related to lower levels of SPB [
3,
6]. In the men’s sample, we also observed that iron was negatively correlated with SBP, while calcium was marginally positively correlated with SBP (
Table 7). The negative correlation between iron and SBP in men coincides with a report showing that intake of non-heme iron is inversely related to BP [
36]. It is interesting that this correlation was observed only in men and opposed the bivariate correlation between SBP and iron in the global sample, which suggests that men are mainly affected by the influence of iron in SBP, although additional studies should corroborate it. In addition, the marginal positive correlation between calcium and SBP in men, which, although coincides with the bivariate correlations in the global sample, contrasts with this last study that found that calcium intake was also inversely correlated with BP [
36] and with a report showing a low negative correlation between calcium in serum with SBP and DBP in patients with type 2 diabetes [
37]. However, a previous report performed in Pakistan showed that people with essential hypertension had higher concentrations of many electrolytes, including calcium when compared with normotensives [
38]. Therefore, more studies searching the relationship between calcium concentration and BP are needed.
We also observed that the global and women’s samples showed that monocytes were positively correlated with SBP, while eosinophils were negatively correlated with it (
Table 5 and
Table 6). These findings coincide with a previous report showing a positive association of monocytes and neutrophils with higher levels of SBP and eosinophils with lower levels of SBP [
39]. This is an interesting finding that needs to be further explored and which suggests a role of inflammatory mechanisms in SBP levels. Finally, a positive correlation between creatinine and SBP in the whole sample was observed (
Table 5), which coincides with the positive significant bivariate correlations between creatinine and SBP and DBP in the global sample (
Table 4) and suggests that renal function plays an important role on SBP.
4.3. Psychological Factors in SBP
With respect to the psychological variables studied, we found that there were no psychological factors associated with SBP in the global sample; however, in the sex-specific analysis, the psychological variable “emotion perception” was negatively associated with SBP in both sexes in the multivariate analyses (
Table 6 and
Table 7); in addition, in the men’s sample, there was a positive correlation between the psychological variable “autonomy” with SBP in the multivariate analysis (
Table 7). The negative correlation with “emotion perception” coincides with a previous report showing a higher ability of emotion recognition in normotensive subjects when compared with pre-hypertensive and hypertensive subjects [
9] and with a study that showed that anxiety disorders and depression were associated with resistant hypertension [
10], considering that emotion perception was inversely related to symptoms of anxiety and depression, with moderate negative correlations. However, it is of interest that we did not find a significant correlation between anxiety and depression variables with SBP or DBP in the multivariate analyses. This suggests that these negative psychological variables can affect SBP only when they are present as clinical disorders and not when they are measured with symptomatic scales, as in this case. In addition, these variables have been associated with the presence of hypertension and not with BP variations in a relatively healthy population.
The positive correlation between the psychological variable “autonomy” with SBP in the men’s sample could be related to the fact that this variable is related to being less influenced by other’s opinions in one own’s life, as well as with a higher ability to defend one own’s rights. Therefore, men with higher levels of this ability can be prone to having higher levels of SBP because they have a “stronger” character and willpower; however, further studies evaluating the influence of this variable on SBP in each sex are needed.
4.4. Personal and Biochemical Factors in DBP
The results of DBP showed that some similar and many different personal and biochemical variables were significantly associated with it. As observed in SBP, BMI and age were positively correlated with DBP in the global and women’s samples (
Table 8 and
Table 9), suggesting that these two variables (age and BMI) influence women more than men.
The positive correlations of hemoglobin, sodium and magnesium and the negative correlations of chloride with DBP are of interest. In the case of hemoglobin, the results coincide with a report showing that higher hemoglobin levels are related to an increase in SBP and DBP in both sexes [
40]. Data coincide with the bivariate analyses in this study, where moderate significant correlations were found between hemoglobin and SBP and DBP in the global sample (
Table 4), and also coincide with positive correlations between SBP and DBP with erythrocytes and hematocrit. This correlation has been explained by the effects of hemoglobin in the increase in blood viscosity, which, in turn, is related to increased peripheral resistance and BP; in addition, higher hemoglobin levels have been related to less secretion of B-type natriuretic peptide, which is related to natriuresis and aldosterone inhibition, leading to reduced BP. Therefore, by an opposite mechanism, an increase in hemoglobin levels would increase BP [
40]. It is interesting that hemoglobin appeared in the multivariate analyses of DBP but not of SBP, for which the bivariate correlation with hemoglobin is higher (
Table 4). It is possible that with larger sample sizes, hemoglobin could also be correlated with SBP, as in the previous report [
40]. With respect to the negative correlation between chloride and DBP in the global sample, we observed that these results coincide with a previous report showing that serum chloride levels were inversely correlated with SBP and DBP [
41]. The positive correlation with sodium coincides with a report showing that high sodium intake is related to an increase in BP [
13] and with a report that demonstrated higher levels of sodium in hypertensive people [
12]; in addition, the marginally positive correlation between magnesium and DBP coincides with the low but significant positive correlation between magnesium levels and DBP in the global sample of the bivariate analysis (
Table 4), although differing from a study showing that magnesium intake was inversely related with BP [
36], and with another study showing that magnesium supplementation is related to BP reduction in patients with mild hypertension [
42]; however, a study performed in persons with essential hypertension showed higher levels of magnesium in this population when compared with normotensive persons [
38]. These discrepancies can be explained by the type of population studied in each report, suggesting that serum magnesium could be positively correlated with DBP in a relatively healthy population. However, only larger studies will clarify this relationship. Finally, in the multivariate analysis for DBP in the whole sample, we found that BUN was negatively correlated with it in a significant way. The study of this relationship was not found in previous reports; therefore, future research will clarify the role of BUN in DBP.
When we observed the variables associated with DBP in each sex, uric acid was the most associated variable with DBP in women (
Table 9), which coincides with a previous report showing that serum uric acid levels were only associated with BP in women [
43]. In addition, as previously reported [
12,
43], we observed a positive correlation between fasting glucose with SBP and DBP in the global samples (
Table 5 and
Table 8) and with SBP in the women’s sample (
Table 6), indicating that the association between glucose and BP is higher in women than in men, as previously suggested [
43].
The positive correlation between LDH and DPB in the multivariate analysis of women, as well as the positive correlation between AST and DBP in the men’s sample, suggest that liver function and its specific enzymes play a role in DBP; however, more studies are needed in order to determine their influence, considering that no related reports were found. Similarly, the negative correlation between triglycerides and DBP and the marginal negative correlation between WHR with DBP in the women’s sample require further research that discards or corroborates these findings.
4.5. Behavioral and Psychological Factors in DBP
Interestingly, the frequency of smoking consumption was negatively correlated with DBP after adjusting for confounders, and this coincides with a cross-sectional study performed in men that showed that current smokers have lower DBP when compared with nonsmokers [
44]. With respect to other sociodemographic and behavioral variables, we observed that different variables were associated with each sex; for example, in women, the variables of having a romantic partner, having children and daily physical activity hours were negatively correlated with DBP, while daily free hours was positively correlated with it (
Table 9). The variable having children was positively correlated with DBP in men, in whom the quality of food intake was negatively correlated with DPB (
Table 10). These results suggest that personal variables influence DBP more than SBP and should be considered in studies researching variables associated with DBP.
Although no psychological variables were associated with DBP in the multivariate analysis of the global sample, the subscale “personal growth” of the scale “psychological well-being” was negatively correlated with DBP in women, and the subscale “self-motivation” of the TEIQUE scale of emotional intelligence was marginally and positively correlated with DBP in men. The variable personal growth is related to questions like “I have the feeling that over time, I have developed a lot as a person”, and its relationship with lower DPB in women can be related to a more calmed mood and higher mental health. In addition, the variable self-motivation is related to questions like: “On the whole, I’m a highly motivated person”, which could contribute positively to levels of BP and, in this case, DBP. Nevertheless, further studies will clarify this relationship.
The main limitation of the study is the sample size, which, if larger, would have permitted us to perform analyses separated by normotensives, pre-hypertensives and hypertensives in each sex and would have diminished the possible bias by including many independent variables in the multivariate analyses; in addition, the non-random sampling method did not permit us to perform a generalization to all in the Mexican population, and neither to the population of all ages, considering that most participants were young people. The usage of electronic questionnaires can also diminish the accurate understanding of the questions, which could have affected the answers of the participants. Another limitation is the cross-sectional nature of the study, which cannot permit us to determine causal relations between the variables studied and BP. However, the main strength is the inclusion of many independent variables, including personal, biochemical, anthropometric, behavioral and psychological variables, which led us to detect the influence of each one of these factors in a more accurate way.
In conclusion, we observed that men showed higher levels of SBP and DBP than women, with more differences for SBP. In addition, we reported that many personal and psychological variables were associated with these variables, with some differences between the sexes. Among the personal variables, BMI and age were significantly and positively correlated with SBP and DBP, with more correlation in the women’s sample. Among the biochemical factors and SBP, we found that albumin and monocytes were positively correlated with it, while potassium, phosphorus and eosinophils were negatively correlated with it. Additionally, schooling was a constant variable negatively correlated with SBP in all samples (global, men and women). Among the psychological variables, we observed that emotional perception was negatively correlated with SBP in men’s and women’s samples, while autonomy was positively correlated with SBP in the men’s sample; however, the association was less when compared with personal and biochemical variables. With regard to DBP, we observed that the biochemical variables, hemoglobin, sodium, uric acid and glucose, were positively correlated with DBP in the global sample, while chloride and BUN were negatively correlated with it. In addition, many personal and behavioral variables, including BMI, age and smoking consumption frequency, also correlated with DBP in the global sample. In addition, many other personal variables were differently correlated with DBP in each sex. All these results indicate that BP is a variable that presents multiple correlations with different factors, including the sex, and these correlations in each sex are different; therefore, studies aimed at identifying or studying BP should consider the effect of sex. Further longitudinal studies with larger sample sizes will corroborate or discard these results.