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ORIGINAL RESEARCH article

Front. Endocrinol., 08 March 2024
Sec. Cardiovascular Endocrinology
This article is part of the Research Topic Glycolipid Metabolic Disorder and Vascular Injury View all 8 articles

Association of the metabolic score for insulin resistance with cardiovascular diseases, cardiovascular and all-cause mortality in Chinese hypertensive population

Liting Zhang,,,Liting Zhang1,2,3,4Chao Yu,,,Chao Yu1,2,3,4Tao Wang,,,Tao Wang1,2,3,4Wei Zhou,,,Wei Zhou1,2,3,4Huihui Bao,,,*Huihui Bao1,2,3,4*Xiaoshu Cheng,,,Xiaoshu Cheng1,2,3,4
  • 1Department of Cardiovascular Medicine, the Second Affiliated Hospital of Nanchang University, Nanchang of Jiangxi, China
  • 2Center for Prevention and Treatment of Cardiovascular Diseases, the Second Affiliated Hospital of Nanchang University, Nanchang of Jiangxi, China
  • 3Jiangxi Provincial Cardiovascular Disease Clinical Medical Research Center, Nanchang of Jiangxi, China
  • 4Jiangxi Sub-center of National Clinical Research Center for Cardiovascular Diseases, Nanchang of Jiangxi, China

Importance: Little is known about the relationship between the metabolic score for insulin resistance (METS-IR) and the prognosis of hypertensive patients in China.

Objective: To investigate the association between the novel non–insulin‐based METS-IR index and the cardiovascular composite endpoints and all-cause mortality in Chinese hypertensive participants.

Design, setting, and participants: This cohort study used data from the China H-Type Hypertension Project, a long-term prospective cohort consisting of 14234 hypertensive patients in southern China, with a baseline from March to August 2018. The median follow-up period for participants was 3.94 years, as of 2022. The data analysis period is from July 2023 to September 2023.

Exposures: METS-IR index of participants in the Chinese H-type hypertension project. The calculation formula for METS-IR is (Ln (2 × FPG) +TG) × BMI/Ln (HDL-C).

Main outcomes and measures: Cardiovascular events and cardiovascular, all-cause mortality were identified by linking the cohort database with the health care system through October, 2023.

Results: A total of 14220 participants were included in this study. The prevalence rates of cardiovascular disease (CVD), cardiovascular death, and all-cause death were 2.59% (369/14220), 2.79% (397/14220), and 5.66% (805/14220), respectively. After adjusting for confounding factors in the multivariate logistic regression analysis models, the METS-IR index was significantly positively correlated with CVD, and cardiovascular, all-cause mortality, whether as a categorical or continuous variable. Layered analysis showed that the METS-IR index of hypertensive participants in different subgroups was positively correlated with the endpoint event.

Conclusions and relevance: This large, prospective cohort study demonstrated that the METS-IR index, a new IR evaluation index, were independently associated with a higher risk of the cardiovascular composite endpoint and all-cause mortality among Chinese hypertensive population. Importantly, our finding provides an independent indicator for evaluating the prognosis of hypertensive patients.

Introduction

Hypertension (HTN) is now widely recognized as a threat to global development and one of the causes of death and disability in the global population. According to China Cardiovascular Health and Disease Report 2019, the number of hypertensive patients in China has reached 245 million until 2019 (1). According to some data, the incidence of insulin resistance in HTN patients is 58% (2). From these, it can be seen that abnormal glucose and lipid metabolism in patients with HTN is very common and significantly increases the risk of cardiovascular diseases (CVD), including severe complications of hypertension such as stroke, coronary heart disease, and heart failure and so on. The poor prognosis of hypertensive patients can cause a heavy burden on their families and society. Therefore, seeking better predictive indicators for glucose and lipid metabolism abnormalities in HTN patients may help alleviate the huge burden of global healthcare expenditure (3).

Insulin resistance (IR), a state of systemic insulin sensitivity decline in the body, is a key mechanism of glucose and lipid metabolism disorders. According to current epidemiological and pathophysiological studies, IR may be a potential major cause of CVD (46). The gold standard for evaluating IR is the hyperinsulinemic normal blood glucose clamp (HEC), which is not suitable for large-scale epidemiological investigations due to its complicated and expensive procedures. The METS-IR index is a newly developed index that includes laboratory indicators such as fasting blood glucose (FBG), triglycerides (TG), high-density lipoprotein (HDL-C), and body mass index. It aims to become a practical and effective alternative biomarker for IR (7). Compared with other non–insulin‐based IR indices such as TG/HDL and TyG index (triglyceride glucose index), the METS-IR index has a stronger correlation with HEC (7).

Previous studies have reported on the relationship between TyG index and cardiovascular events and mortality, as well as the relationship between TG/HDL index and CVDs and mortality (816). In these literatures, there are not only cross-sectional studies but also prospective studies, with both positive and negative relationships. It is worth noting that, to our knowledge, studies describing the relationship between METS-IR index and CVD are mainly cross-sectional studies (3, 1720). There are few longitudinal studies on this topic, and they are limited in the general population, reporting the association between METS-IR and CVD risk (17, 19). Few studies have further investigated the relationship between METS-IR and CVD, cardiovascular and all-cause mortality, especially in patients with hypertension. Therefore, the purpose of this article is to investigate the relationship between the METS-IR index and cardiovascular composite endpoints and all-cause mortality in Chinese hypertensive patients.

Methods

This study was conducted in accordance with Helsinki Declaration and approved by the Ethics Committee of the Biomedical Research Institute of Anhui Medical University. All participants sign a written informed consent form. This study follows the reporting guidelines of the Strengthening Epidemiological Observation Research Report (STROBE).

Study population

The registration study of H-type hypertension in China is a continuous dynamic cohort study (registration number: ChiCTR1800017274). If the systolic blood pressure ≥ 140mmHg and/or the diastolic blood pressure ≥ 90mmHg, and homocysteine (Hcy) level ≥ 10mmol/L, it is defined as H-type hypertension. The main purpose of this study is to establish a registry of Chinese patients with H-type hypertension, investigate the prevalence and treatment rates of hypertension in China, and evaluate relevant factors affecting hypertension and its prognosis (21). From March 2018 to August 2018, our research team recruited a total of 14234 hypertensive participants in Wuyuan County, Jiangxi Province, China, and conducted a baseline survey, including face-to-face interviews, physical examinations, and blood biochemical indicators testing and so on. In June 2022, we returned to Wuyuan County, Jiangxi Province and followed up 14232 (99.9%) hypertensive patients for the first time. In 2019, due to the impact of the novel coronavirus pandemic, which led to the reduction of population mobility and the special concern of personal information by the Chinese government, the follow-up rate of this study was so high. In short, this study was a multicenter observational study conducted in Wuyuan City, Jiangxi Province, China in March 2018, with a median follow-up of 3.94 years.

The inclusion criteria for this study are adults aged 18 years and above with HTN, defined as 1) blood pressure measured after 5 minutes of sitting, with resting systolic blood pressure (SBP) ≥ 140 mmHg and/or diastolic blood pressure (DBP) ≥ 90 mmHg; 2) Take antihypertensive drugs during the screening period; 3) participants who have been previously diagnosed with hypertension. The exclusion criteria are 1) the patient has a history of mental illness or cannot cooperate with the staff in this study; 2) Patients are unable to follow up or plan short-term relocation according to the research protocol; 3) Patients assessed by the research physicians as unsuitable for inclusion or long-term follow-up.

Therefore, a total of 14234 participants completed this study, excluding patients with missing death information (n=2), patients with missing blood biochemical tests (n=7), and patients with missing BMI values (n=5). Finally, a total of 14220 patients were included in the final study. The patient screening process diagram is shown in Supplementary Figure 1.

Baseline characteristics

The demographic characteristics (such as age and gender), lifestyle (such as smoking and drinking), medical history (such as diabetes, family history of coronary heart disease, family history of hypertension) and drug use (such as antihypertensive drugs, hypoglycemic drugs and lipid-lowering drugs) of participants were collected by trained researchers through questionnaires. They also collected anthropometric indicators of participants, including weight, height, blood pressure, and so on.

After participants fasted overnight for at least 12 hours, experienced researchers collected blood samples from them. At the core laboratory of the National Kidney Disease Clinical Research Center in Guangzhou, China, an automated clinical analyzer (Beckman Colter) was used to measure laboratory values of FBG, low-density lipoprotein (LDL-C), HDL-C, and TG. To be precise, METS-IR uses the formula (Ln (2 × FPG (mg/dL)) + TG (mg/dL)) × BMI (kg/m2)/Ln (HDL-C(mg/dL)) calculation. All laboratory measurements comply with standardization and certification procedures.

Ascertainment of mortality

The life statuses of participants in this study are preliminarily confirmed through the Chinese cause of death registration system. Subsequently, well-trained staffs will conduct telephone follow-up to supplement and further review through the Chinese medical system. The endpoint event committee, composed of experts, will ultimately determine the endpoint events. The outcome variables of this study include cardiovascular composite endpoints and all-cause mortality. The cardiovascular composite endpoint includes CVDs and cardiovascular mortality. CVDs are defined as first myocardial infarction, stroke, hospitalization for unstable angina, arterial revascularization surgery, or cerebrovascular disease or cardiovascular death. Among them, the classification of cardiovascular mortality is mainly based on the International Classification of Diseases 10th Revision (ICD-10) code, and the causes of death include heart disease (I00-109, I11, I13, I20-151) or cerebrovascular disease.

Statistical analysis

The data is represented by the mean ± standard deviation (SD) of continuous variables and the frequency (%) of categorical variables. Patients were divided into four groups based on the quartiles of the METS-IR index or survival status, and baseline characteristics were compared between different groups using analysis of variance or chi square tests (when the variables satisfy a normal distribution), Kruskal Wallis analysis (when the variables do not satisfy a normal distribution). Continuous variables use the median to estimate the missing values of covariates (<4.4%), while categorical variables use missing indicators to estimate the missing values of covariates.

The Cox proportional risk regression model (risk ratio [HR] and 95% CI) was used to examine the association between the METS-IR index and cardiovascular composite endpoints and all-cause mortality in hypertensive patients. In Model 1, we adjusted for age (continuous) and gender (male and female), BMI (continuous). In Model 2, we further adjusted systolic blood pressure (continuous), diastolic blood pressure (continuous), AST (continuous), ALT (continuous), antihypertensive drugs (yes or no), lipid-lowering drugs (yes or no), hypoglycemic drugs (yes or no), and current smoking status (yes or no). Moreover, smoothing curves (restricted cubic spline method) were graphed to visually evaluate the effects of METS-IR index levels on outcome events.

What’s more, to observe whether METS-IR has any additional predictive value compared to established clinical risk variables, we attempted to fit it into a logistic regression model and compare using the C-statistic, continuous net reclassification improvement (NRI), and comprehensive discriminant improvement (IDI).

In addition, further stratified analysis was conducted based on different cardiovascular risk factors, age (<60 or ≥ 60 years old), gender (female or male), BMI (<18.5 kg/cm2, 18.5-24 kg/cm2 or ≥ 24 kg/cm2), and current smoking (yes or no) and alcohol consumption (yes or no), to determine the consistency of the impact of the METS-IR index on the endpoints. The robustness of the relationship between the METS-IR index and the endpoint was further tested. We also conducted several sensitivity analyses. Firstly, all participants were analyzed and the METS-IR index was included as a categorical variable and a continuous variable in the model analysis. Secondly, participants were included in models based on gender differences. Thirdly, incorporate the METS-IR index using different grouping methods into the model. Fourthly, we conducted a competing risk approach (i.e. Fine-Gray models) analysis between METS-IR and cardiovascular mortality, with non-cardiovascular death handled as a competing outcome. Finally, we excluded participants who used hypoglycemic and lipid-lowering drugs before baseline to minimize potential reverse causal bias.

All statistical analyses were conducted using Empower (R; www.empowerstats.com; X&Y Solutions, Inc, Boston, MA, USA) and statistical software package (R) (http://www.R-project.org R Foundation). All P-values are double tailed, and P<0.05 is considered statistically significant.

Results

Characteristics of participants

According to the quartiles grouping of METS-IR index, the baseline characteristics of participants in this study are shown in Table 1 (mean [SD] age, 63.8 [9.3] years old; 6714 [47.2%] males and 7506 [52.8%] females). Compared with participants in the Q1 group of the METS-IR index, participants in the Q4 group had higher height (156.9 [8.3] cm), heavier weight (68.1 [9.5] kg), lower average systolic blood pressure (147.7 [17.3] mmHg vs 149.3 [19.1] mmHg), and higher average diastolic blood pressure (91.4 [10.6] mmHg vs 86.4 [11.2] mmHg). In addition, patients with higher METS-IR index have higher levels of triglycerides, LDL, FBG, AST, and ALT, while HDL levels are lower.

Table 1
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Table 1 Baseline characteristics of the study population according to METS-IR index quartiles.

Association of METS-IR with cardiovascular endpoints and mortality

Table 2 shows the relationship between METS-IR index and cardiovascular composite endpoints, as well as the risk of all-cause mortality. When Mets-IR index was checked as a continuous variable, in a fully adjusted model (model 2), it was found that for every additional SD in Mets-IR index, the risk of developing CVD increased by 66% (HR=1.66; 95% CI, 1.30-2.12); the risk of cardiovascular death increases by 57% (HR=1.57; 95% CI, 1.22-2.02); the risk of all-cause death increases by 33% (HR=1.33; 95% CI, 1.11-1.60). When METS-IR index is checked as a categorical variable, in Model 1, the risks of developing CVD are 61% (95% CI 1.16-2.22), 112% (95% CI 1.41-3.20), and 234% (95%CI 1.98-5.65) for the Q2, Q3, and Q4 groups, respectively, compared to the Q1 group of Mets-IR index. In model 2, similar results can be observed. The differences are that in Model 1, compared to Q1 of Mets-IR index, the Q3 and Q4 quartiles are associated with a higher risk of all-cause mortality (HR=1.33, 95%CI=1.01-1.76, HR=1.64, 95%CI=1.13-2.37); However, no such increase risk was observed in Q2 group (HR=1.12, 95%CI=0.90-1.38). In Model 2, only the Q4 group could observe an increase risk (HR=1.53, 95%CI=1.05-2.23). The results of cardiovascular mortality are similar to the above. When the METS-IR index categorical variable is treated as a continuous variable, the statistical significance (p for trend<0.05) of METS-IR index trends in different models is consistent.

Table 2
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Table 2 Multivariable-adjust HRs and 95%CI of the METS-IR index quartiles associated with CVD, Cardiovascular Death, All-cause Death.

Figure 1 illustrates the dose-response relationship between Mets-IR index and the risk of CVD in Figure 1A (yellow), cardiovascular death in Figure 1B (blue), and all-cause death in Figure 1C (red). These results indicate that there is a linear dose-response relationship between Mets-IR index and the risk of CVD, cardiovascular death, and all-cause death (P overall<0.05, P non- linear>0.05).

Figure 1
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Figure 1 Restricted cubic spline regression analysis of METS-IR index with CVD (A), cardiovascular death (B), all-cause death (C).

Additive predictive value of METS- IR

It could be seen that the effect of continuous NRI and IDI on predicting cardiovascular mortality was significantly improved after adding Mets-IR to the basic model, with a respective increase of 0.091 (P=0.047) and 0.002 (P=0.027). Furthermore, the additional ability of METS-IR to predict CVD and all-cause mortality had also been confirmed, with an increase of 0.128(P=0.027) and 0.001(P=0.004), respectively (Supplementary Table 5).

Subgroup analysis

The correlation between METS-IR index (per SD increment) and the risk of CVD, cardiovascular death, and all-cause death was evaluated through stratified analysis based on age, gender, BMI, current smoking status, and current alcohol consumption (Figure 2). No interaction was observed between the selected covariate and cardiovascular disease, cardiovascular death, and all-cause death. The METS-IR index is positively associated with cardiovascular mortality in the Fine & Gray model analysis (Supplementary Table 1). Regardless of gender or different groups of METS-IR index, the METS-IR index is positively correlated with the endpoint events (Supplementary Table 3, Supplementary Figure 3). When excluding participants who took hypoglycemic and lipid-lowering drugs before baseline, the results remained basically unchanged (Supplementary Table 4).

Figure 2
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Figure 2 Subgroup and interaction analysis between METS-IR (Per SD) and (A) CVD, (B) cardiovascular mortality, (C) all-cause mortality across various subgroups.

Discussion

In this prospective study, we explored for the first time the relationship between the METS-IR index and cardiovascular composite endpoints and all-cause mortality in Chinese patients with HTN. The main findings are that METS-IR index, both as a continuous variable and a categorical variable, is positively correlated with cardiovascular composite endpoints and all-cause mortality in Chinese patients with HTN. This correlation is not affected by age, gender, BMI, and current smoking and drinking. Moreover, combining METS-IR parameters with the basic model improved the effectiveness of the basic model in predicting the occurrence of CVD/death.

Comparison with other studies

There are many alternative methods for estimating IR, including the METS-IR index in this article, as well as quantitative insulin sensitivity test index (QUICKI) and steady-state model evaluation of IR (HOMA-IR) (22, 23). However, the popularization of QUICKI and HOMA-IR in large-scale epidemiology remains challenging due to complex mathematical calculations or the high demands of complex insulin concentration tests. Therefore, in order to better study IR in large-scale epidemiological investigations, researchers have developed some non-insulin-based evaluation indicators that have become predictive factors and biomarkers of insulin resistance. The TyG index, as a simple method to estimate IR, has been shown to have good prognostic value for cardiovascular high-risk population (14, 24). METS-IR, developed by Bello et al, is a new alternative to IR and has a stronger correlation with HEC,compared to other similar indicators (7). However, there is a few researches on the relationship between the METS-IR index and long-term prognosis of hypertension. This is the purpose of this study, which for the first time explores the association between the METS-IR index and cardiovascular composite endpoints and all-cause mortality in Chinese HTN patients.

Hitherto, METS - IR is closely related to a variety of CVD risk factors, such as diabetes, obesity, hypertension, arterial stiffness, hyperuricemia, coronary artery calcification and so on (7, 16, 17, 25). In the CHARLS study, there was a linear positive dose-response relationship between METS-IR and the risk of new-onset cardiovascular disease, stroke, and heart disease among middle-aged and elderly Chinese citizens aged 45 and above, which is consistent with this study (26). In addition, it was found that two studies combined METS-IR parameters with the basic model, significantly improving the effectiveness of the basic model in predicting the occurrence of CVD/death (although the content of the basic model are different). However, no mediating effect of LDL-C was found in our study, possibly due to the fact that the CHARLS study mainly focused on urban populations while our study focused on rural populations. The many differences in lifestyle habits, dietary habits, and other aspects between them may have led to the above situation. The CHARLS study and our study are both prospective cohort studies of the Chinese population, but the sample size included in this study is three times that of the CHARLS study (14220 vs 4540), which may improve the reliability of our results.

In addition, some studies have explored the relationship between IR and all-cause mortality and specific-cause mortality. A prospective cohort study of 6755 Korean adults found that regardless of the presence of IR (HOMA-IR ≥ 2.5), an increasing HOMA-IR over time was associated with a 59%, 87%, 233%, and 367% increased risk of CVD, all-cause mortality, CVD mortality, and MACE mortality (27). Several other studies have shown that higher levels of different IR indicators are independently associated with higher CVD, all-cause and cancer-related mortality rates (2832). However, other studies have found that the correlation between IR and all-cause and specific mortality rates is not linear (15, 33). For example, Kim et al. found that among 5241 participants aged ≥ 40 years and with normal FBG, high HOMA-IR was associated with higher overall mortality or cardiovascular mortality in lean populations, while in obese populations, high HOMA-IR was associated with lower overall mortality or cardiovascular mortality (34). There are many reasons for the differences, first of all, this may be because we used the METS-IR index instead of the HOMA-IR index to evaluate IR. And we are studying Chinese hypertensive patients rather than Americans. Secondly, from the characteristics of the population, it can be seen that Kim’s study population is overweight, with an average BMI of 26.6, which belongs to the overweight range, while our study population is lean, with an average BMI of 23.6, which belongs to the normal range. Interestingly, it can be seen that the BMI of the dead population in our study is smaller than that of the surviving population, and this difference is significant (Supplementary Table 2). A systematic review that the correlation between overweight and obese participants and all-cause mortality compared to normal weight participants in the general population stated that the HRs for all-cause mortality in overweight participants was 0.94 (95% CI 0.91-0.96), while in obese participants it was 1.18 (95% CI 1.12-1.25). Such results not only appear in one study (35). The reasons for such results may be that patients with heavier weight probably experience earlier occurrence of physical discomfort symptoms, and are more likely to receive optimal medication treatment, and the metabolic protective effect of increased body fat and benefits of higher metabolic reserves. Another possibility is that weight loss in high-risk cardiovascular populations may be due to the effects of certain serious diseases, such as tumors, infections, etc.

Pathogenic mechanism of IR

Although the exact mechanism by which hypertension causes IR is not yet clear, previous studies have shown that IR is an independent predictor of CVD. In clinical practice, hypertension, obesity, and CVD often coexist and promote each other, with IR as the core, accompanied by numerous cardiovascular function and structural abnormalities such as endothelial cell dysfunction (36, 37). The IR we usually refer to is a metabolic disorder caused by damage to the insulin signaling pathway in traditional metabolic tissues (liver, skeletal muscle, and adipose tissue) (38). In fact, the IR not only occurs in some traditional insulin metabolism tissues, but also in cardiovascular, immune cells, and various other tissues. We often refer to the state of impaired insulin signaling pathway and diastolic function of blood vessels as vascular insulin resistance (39, 40). The effect of insulin on the cardiovascular system is closely related to the concentration of insulin in the blood circulation and pathological and physiological conditions. In physiological conditions, insulin exerts a protective effect on the cardiovascular system by stimulating nitric oxide(NO) production; In pathological conditions, hyperinsulinemia may cause vascular damage (40). When vascular insulin resistance occurs, PI3K/NO pathway activated by the insulin is selectively impaired, and compensatory hyperinsulinemia activates MAPK pathway, which leads to vascular smooth muscle cell proliferation, vascular hypertrophy, and promotes the occurrence of hypertension and cardiovascular diseases (39, 40). Some studies speculate that due to the important impact of the insulin PI3K/NO pathway on regulating metabolism and vascular function in vascular endothelial cells, vascular insulin resistance may be an important mechanism by which hypertension increases cardiovascular complications and metabolic diseases (41). Many studies have also confirmed that the degree of insulin resistance is also positively related to atherosclerosis, which is the main risk factor of atherosclerosis (42). The pathogenesis may be that IR induces endothelial dysfunction and glucose metabolism imbalance, and the damaged degradation of apolipoprotein B, leading to abnormal blood lipids and lipid triad (high triglyceride, low high-density lipoprotein cholesterol and high low-density lipoprotein cholesterol), thus promoting the formation of atherosclerotic plaque. The animal model of IR and heart failure also shows that the activation and conduction changes of insulin signaling pathways in myocardial cells occur during heart failure. These changes lead to extracellular matrix protein aggregation, myocardial fibrosis, myocardial hypertrophy, cell apoptosis, decreased calcium processing ability of myocardial cells, abnormal myocardial function, and promote myocardial remodeling, leading to left ventricular remodeling and mitochondrial dysfunction. These pathways are associated with heart failure or diseases related to systemic IR, leading to increased stress exhaustion (43).

In conclusion, pertinent studies have demonstrated that the influence of IR on CVD, including hypertension, coronary heart disease, and heart failure, is facilitated by diverse physiological and biochemical mechanisms. This exacerbates and expedites the advancement of CVD, thereby contributing significantly to the unfavorable prognosis observed in hypertensive patients. This also reminds us of the need for randomized controlled trials to test the impact of interventions targeting insulin resistance on cardiovascular outcomes and mortality in hypertensive patients in future. Similarly, it also means that in clinical practice, clinical doctors should do a good job in managing blood lipids and blood sugar in hypertensive patients to avoid adverse factors such as IR. While previous investigations primarily concentrated on foreign population, the present study addresses the gap by the Chinese population with hypertension. Moreover, this study involves a new indicator of insulin resistance, which has the advantages of convenient use and low cost, and can be extended to large-scale clinical studies or epidemiological investigations for more research on IR. Therefore, more studies are necessary to further explore the underlying mechanisms of association between METS-IR and mortality.

Advantages and limitations

The advantages of this study include its cohort study design, large sample size, complete follow-up data, adjustment for multiple CVD risk factors, reliable measurement of clinical parameters and anthropometric data, and accurate diagnosis of death information. All of these have added credibility and authenticity to our research results. We also obtained consistent results in subgroup analysis, which enhanced the robustness of our main findings. The consistency results of multiple sensitivity analyses also demonstrate the robustness of the results of this study.

Even so, there are still some limitations to this study. Firstly, this was a substudy of the H-type hypertension. The METS-IR and CVD function of the study participants was only assessed at baseline and the exit visit. More frequent METS-IR and CVD function assays would allow for a more accurate assessment of change in IR and CVD over time. Secondly, although there is some evidences to suggest that METS-IR can serve as an alternative biomarker for evaluating IR, we did not compare the effects of other IR biomarkers on mortality in the same population. However, previous studies have shown a stronger correlation between METS-IR index and HEC compared to other non-insulin IR indices. Thirdly, even if we adjust for the most important known risk factors for CVD, there may still be residual confounding factors such as lifestyle factors, genetic factors, environmental factors, etc. Finally, the participants included in this study were Chinese hypertensive adults; thus, the applicability of our findings to people from other countries remains to be verified.

Conclusion

In summary, this large, prospective cohort study demonstrated that the METS-IR index, a new IR evaluation index, were independently associated with a higher risk of the cardiovascular composite endpoint and all-cause mortality among Chinese hypertensive population. Importantly, our finding provides an independent indicator for evaluating the prognosis of hypertensive patients.

Data availability statement

The data analyzed in this study is subject to the following licenses/restrictions: If you need relevant information about the original data, please send an email to the corresponding author of this article for approval. Requests to access these datasets should be directed to HB, huihui_bao77@126.com.

Ethics statement

The studies involving humans were approved by the Ethics Committee of the Biomedical Research Institute of Anhui Medical University. The studies were conducted in accordance with the local legislation and institutional requirements. The participants provided their written informed consent to participate in this study. Written informed consent was obtained from the individual(s) for the publication of any potentially identifiable images or data included in this article.

Author contributions

LZ: Writing – original draft. CY: Methodology, Writing – review & editing. TW: Data curation, Methodology, Software, Writing – review & editing. WZ: Data curation, Software, Writing – review & editing. HB: Writing – review & editing. XC: Writing – review & editing.

Funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work was supported by the Cultivation of backup projects for National Science and Technology Awards(20223AEI91007), Jiangxi Science and Technology Innovation Base Plan - Jiangxi Clinical Medical Research Center (20223BCG74012), Science and Technology Innovation Base Construction Project (20221ZDG02010), Jiangxi Provincial Natural Science Foundation (20212ACB206019, 20224BAB206090, 20232BAB206140, 20232ACB216006), Jiangxi Provincial Health Commission Science and Technology Project (202130440, 202210495, 202310528), Jiangxi Provincial Drug Administration Science and Technology Project (2022JS41, 2023JS26), Fund project of the Second Affiliated Hospital of Nanchang University (2016YNQN12034, 2019YNLZ12010, 2021efyA01, 2021YNFY2024).

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher’s note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

Supplementary material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fendo.2023.1326436/full#supplementary-material

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Keywords: insulin resistance, METS-IR, cardiovascular events, cardiac death, all-cause mortality, shock

Citation: Zhang L, Yu C, Wang T, Zhou W, Bao H and Cheng X (2024) Association of the metabolic score for insulin resistance with cardiovascular diseases, cardiovascular and all-cause mortality in Chinese hypertensive population. Front. Endocrinol. 14:1326436. doi: 10.3389/fendo.2023.1326436

Received: 23 October 2023; Accepted: 18 December 2023;
Published: 08 March 2024.

Edited by:

Lingfang Zeng, King’s College London, United Kingdom

Reviewed by:

Lei Huang, Tianjin Third Central Hospital, China
Yaoshan Dun, Central South University, China

Copyright © 2024 Zhang, Yu, Wang, Zhou, Bao and Cheng. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Huihui Bao, Huihui_bao77@126.com

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