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Impact of mental disorders on the risk of heart failure among Korean patients with diabetes: a cohort study

Abstract

Background

Few studies have assessed the correlation between coexisting mental disorders in participants with diabetes mellitus (DM) and the risk of heart failure (HF). Herein, we conducted a cohort study to determine the association between the accumulation of mental disorders in participants with DM and the risk of HF.

Methods

The Korean National Health Insurance Service records were assessed. 2,447,386 adults with DM who underwent health screening between 2009 and 2012 were analyzed. Participants with major depressive disorder, bipolar disorder, schizophrenia, insomnia, or anxiety disorders were included. In addition, participants were categorized based on the number of coexisting mental disorders. Each participant was followed until December 2018 or until the onset of HF. Cox proportional hazard modelling with confounding factors adjustment was conducted. In addition, a competing risk analysis was conducted. Subgroup analysis assessed the impact of clinical variables on the association between the accumulation of mental disorders and the risk of HF.

Results

The median follow-up duration was 7.09 years. The accumulation of mental disorders was associated with a risk of HF (zero mental disorder (0), reference; 1 mental disorder, adjusted hazard ratio (aHR): 1.222, 95% confidence intervals (CI): 1.207–1.237; 2 mental disorders, aHR: 1.426, CI: 1.403–1.448; ≥3 mental disorders, aHR: 1.667, CI: 1.632–1.70. In the subgroup analysis, the strength of association was the strongest in the younger age group (< 40 years, 1 mental disorder, aHR 1.301, CI 1.143–1.481; ≥2 mental disorders, aHR 2.683, CI 2.257–3.190; 40–64 years, 1 mental disorder, aHR 1.289, CI 1.265–1.314; ≥2 mental disorders, aHR 1.762, CI 1.724–1.801; ≥65 years, 1 mental disorder, aHR 1.164, CI 1.145–1.183; ≥2 mental disorders, aHR 1.353, CI 1.330–1.377; Pinter<0.001). In addition, income, BMI, hypertension, chronic kidney disease, history of cardiovascular disease, insulin use, and duration of DM showed significant interactions.

Conclusions

Comorbid mental disorders in participants with DM are associated with an increased risk of HF. In addition, the association was stronger in a younger age group. Participants with DM and mental disorders should be monitored with increased frequency for signs of HF; for which they have a higher risk than the general population.

Background

Mental disorders are the leading cause of the global disease burden [1]. Previous studies have reported a prevalence of 322 million participants with depression, 264 million with anxiety disorders, 46 million with bipolar disorders, and 20 million with schizophrenia worldwide [2, 3]. Additionally, substantial evidence indicates that mental disorders are associated with other medical conditions [4]. These medical conditions are often left unattended and lead to a decreased quality of life, increased healthcare utilization, and premature death in participants with mental disorders [4, 5]. Due to the high prevalence and its impact on physical health, research is recommended to establish causal pathways between mental disorders and fatal health outcomes [1].

Previous research has shown a higher incidence of major depressive disorders, bipolar disorders, schizophrenia, anxiety disorders, and sleep disorders in participants with DM than in the general population [6]. In addition, coexisting mental disorders in participants with DM often lead to decreased adherence to treatment and an increased risk of severe complications, including blindness, amputations, stroke, and cognitive decline [7].

Another medical condition that might be affected by mental disorders includes circulatory disorders such as heart failure (HF), ischemic heart disease, peripheral artery occlusive disease, atrial fibrillation, hypertension, dyslipidemia, and stroke [4]. Momen et al. suggested that the absolute risk of developing circulatory disorders within 15 years of the onset of mental disorders is 54.1% [4]. Additionally, a recent study has suggested that severe mental disorders affect the prognosis of heart failure (HF) patients [8].

DM is known to increase the risk of HF [9, 10]; however, few large-scale studies have assessed the association between the coexisting mental health disorder in participants with DM on the risk of HF [11]. Assessing the risk of HF in DM patients with mental disorders can help us predict the prognosis of this subset of patients. Therefore, we conducted a cohort study using large datasets from the South Korean adult population to determine whether the accumulation of mental disorders in DM participants was associated with an increased risk of HF.

Methods

The national health insurance service records and the korean national health screening database

The National Health Insurance Service (NHIS) records and the Korean National Health Screening (KNHS) database were assessed in our study. The NHIS is a large-scale South Korean cohort [12, 13]. Approximately 50 million (97.2%) South Koreans are registered in the NHIS [14]. In South Korea, adults over 20 must undergo regular health check-ups provided by the NHIS every one to two years. Additionally, most South Koreans receive medical treatment at least once a year, with an average of 16.6 visits per person per year [14, 15]. All data and results, including patient demographics, examination findings, treatment administered to the participants, and International Classification of Diseases (ICD-10) codes from this health check-up and clinic visit, are sent to the NHIS [16]. This database forms the KNHS database, which provides information of the health-screening questionnaires and laboratory findings [12]. The Institutional Review Board (IRB) of the NHIS and Soongsil University approved this study (SSU-202,003-HR-201-01). The requirement for informed consent was waived because de-identified data were used in this study.

Study design

Data from the NHIS and KNHS databases of the South Korean population with DM who underwent health check-ups between 2009 and 2012 were assessed (n = 2,746,079). Participants with the following characteristics were excluded from the analysis: (1) age < 20 years (n = 390), (2) missing covariates for the analysis (n = 117,446), (3) participants with HF at baseline (n = 153,682), (4) participants who died within one year of enrollment in the study, and (5) those who were diagnosed with HF within one year of enrollment in the study (n = 27,176). After exclusion, 2,447,386 participants were included in this study (Fig. 1). The primary outcome was the risk of new-onset HF. The participants were followed up until December 31, 2018, or they developed newly diagnosed HF or until they died. The development of HF was assessed using the NHIS claims records at the end of 2018.

Fig. 1
figure 1

Flow diagram of study participants. Abbreviation: HF, heart failure

Data collection

A standardized questionnaire was used to assess the health-related behaviors of the participants, including smoking, alcohol consumption, physical activity level, and income level [13]. Smoking status was categorized as (1) “never smoked,” (2) “ex-smokers,” or (3) “current smoker [17].” Alcohol consumption habits were categorized as (1) “no drinking,” (2) “mild drinking” (< 30 g/day), and (3) “heavy drinking” (≥ 30 g/day) [18, 19]. Regular exercise was defined as (1) participants engaged in > 25 min of high-intensity physical activity ≥ 3 days per week or (2) > 30 min of moderate-intensity physical activity ≥ 5 days per week [20]. The low-income group was defined as the total income of participants belonging to (1) the 25th percentile of the South Korean population or (2) if a patient received support for medical costs from the South Korean government.

Trained medical staff collected anthropometric data, including body weight (kg) and height (cm), using an electronic scale. Body mass index (BMI) was calculated as weight (kg) divided by height (m) squared. The participants were asked to rest for at least five minutes before the blood pressure measurement in a sitting position using a sphygmomanometer with the brachial artery at the heart level. Waist circumference (cm) was measured as the distance between the midpoint of the rib cage and the iliac crest [13]. The participants were asked to fast for at least eight hours before blood sample collection.

Definition of medical conditions

DM was diagnosed when participants had one of the following findings at baseline: (1) a record of fasting blood glucose ≥ 126 mg/dL in the KNHS database, (2) a claim history for ICD-10 code E11–14, and (3) a record of antidiabetic medication prescription before January 2009 [21, 22]. The duration of DM and the number of oral hypoglycemic agents used were assessed by examining the claim history for ICD-10 codes E11–14 or antidiabetic medication prior to 2009. The risk of HF was assessed based on the number of baseline mental disorders. HF at baseline was defined as the presence of an ICD record (I50) and admission record due to HF prior to inclusion in the study. Incident HF was diagnosed when participants had a new ICD record of I50 and an admission record for HF during the follow-up period.

Chronic kidney disease (CKD) was defined as an estimated glomerular filtration rate of < 60 mL/min/1.73m2 by the Modification of Diet in the Renal Disease method [23]. Hypertension was defined when participants had one of the following conditions: (1) a systolic blood pressure ≥ 140 mmHg, (2) a diastolic blood pressure ≥ 90 mmHg, (3) the presence of ICD codes ICD 10–15, and (4) an antihypertensive medication claim history. Dyslipidemia was defined when participants had one of the following criteria: (1) a total cholesterol level ≥ 240 mg/dL or (2) an ICD code E78 with dyslipidemia medication claim history [13].

The participants were divided into four groups (0, 1, 2, ≥ 3 mental disorders) based on the number of coexisting mental disorders at baseline using ICD-10 codes: major depressive disorder (F32, F33), bipolar disorder (F30, F31), schizophrenia (F20), insomnia (F47.0, F51.0), and anxiety disorder (F40, F41). Participants with a diagnosis code within five years of study inclusion were considered to have mental disorders at baseline. The participants with multiple mental disorders were counted separately. For example, participants with depression and bipolar disorder were counted once in the depression category and once in the bipolar disorder category and were categorized into the two mental disorders group.

Statistical methods

Data were expressed as mean ± standard deviation or geometric mean (95% CI) based on the distribution of continuous variables. Categorical variables were expressed as frequencies (%). The One-way Analysis of Variance (ANOVA) was used to compare the means of continuous variables, while the chi-square test was used to compare the means of categorical variables. Incidence was calculated per 1,000 person-years.

The Cox proportional hazards model was used to assess the association between the number of coexisting mental disorders and the risk of HF. In addition, the association between each mental disorder and the risk of HF was assessed. Hazard ratios (HRs) and 95% CIs were calculated. Five different sequential models were created for the multivariable analysis. Model 1 was a crude model. Model 2 was minimally adjusted for biological factors (age and sex). Model 3 was adjusted for lifestyle and social factors, in addition to Model 2 (age, sex, BMI, low income, smoking, drinking, and regular exercise). Model 4 was adjusted for past medical history, DM treatment, and severity, in addition to Model 3 (age, sex, BMI, low income, smoking, drinking, regular exercise, hypertension, dyslipidemia, CKD, fasting glucose, duration of DM, insulin use, duration of DM ≥ 5 years, and use of more than three types of oral hypoglycemic agents). Finally, Model 5 was adjusted for CVD at baseline in addition to Model 4. As mortality events could compete with the outcome, a competing risk analysis was conducted using the Fine and Gray model by adjusting for confounding factors for all models. The assumption of proportionality was verified using Schoenfeld residuals and log-log plots. Harrell’s C-index and Akaike Information Criterion (AIC) were calculated in the multivariable models to compare the predictive power of survival models. The original model assessed the predictive power of models 1–5. The mental disorder accumulation model was created to compare whether adding a mental disorder accumulation variable to the original model strengthens the predictive power. In addition, Integrated Discrimination Index (IDI) and Net Reclassification Index (NRI) were calculated for reclassification improvement analysis to compare the predictive power of models with and without mental disorders. The models without competing risk analysis were used for Harrell’s C-index, AIC, IDI, and NRI calculation. The cumulative incidence function curve from the full-adjusted model (Model 5) was plotted using the Kaplan-Meier method.

The participants were further divided into three subgroups: (1) 0 mental disorder, (2) 1 mental disorder, and (3) ≥ 2 mental disorders. Interaction analyses were conducted in each subgroup to determine the clinical factors (age, sex, income, BMI, smoking, drinking, regular exercise, hypertension, dyslipidemia, CKD, CVD, insulin use, number of oral hypoglycemic agents used, and duration of DM) that could affect the association between the number of mental disorders and the risk of HF. Multiplicative interaction terms were used to test the interactions. A new term created by multiplying the two variables was added to the Cox regression model. Multiple testing was adjusted by using Sidak method. In addition, participants were divided into three groups according to age (20–39 years, 40–64 years, and ≥ 65 years old group) to assess the impact of aging. Two-sided p-values of < 0.05 were defined as statistically significant. SAS (Statistical Analysis Software 9.4; SAS Institute Inc., Cary, North Carolina, USA) was used to conduct all statistical analyses.

Results

Baseline characteristics

The median follow-up duration was 7.09 (5.89–8.06) years. Among the participants, 1,660,732 had 0 mental disorder, 503,414 had 1 mental disorder, 201,357 had 2 mental disorders, and 81,883 had ≥ 3 mental disorders. 32.14% (n = 786,654) of patients had mental disorders. All clinical characteristics showed significant differences between the groups (Table 1). The mean age of patients with mental disorders was 61.14 ± 11.22 years, and that of participants without mental disorders was 54.84 ± 12.16 years (p < 0.001). Participants without mental disorders had a higher proportion of men (68.95%), smoking rate (30.77%), heavy drinking rate (12.01%), systolic blood pressure (129.18 ± 15.76 mmHg), fasting glucose level (148.29 ± 47.69 mg/dL), and total cholesterol level (198.21 ± 42.38 mg/dL) (p < 0.001). The mental disorder group had lower BMIs (25.11 ± 3.39 kg/m2 vs. 24.92 ± 3.38 kg/m2), systolic blood pressures (129.18 ± 15.76 mmHg vs. 128.56 ± 15.81 mmHg), waist circumferences (85.53 ± 8.6 cm vs. 84.98 ± 8.68 cm), LDL-C (111.83 ± 41.12 mg/dL vs. 110.72 ± 41.17 mg/dL), and heavy drinking rates (12.01% vs. 6.62%) than the group of participants without mental disorders (p < 0.001) (Supplemental Table S1). When we compared characteristics based on each mental disorder, all variables showed significant differences, except for age (p = 0.113) and eGFR (p = 0.059), between patients with and without bipolar disorder; dyslipidemias (p = 0.056), CKD (p = 0.702), CVD (p = 0.236), LDL-C level (p = 0.137), and eGFR (p = 0.355) between participants with and without schizophrenia (Supplemental Table S2).

Table 1 Baseline characteristics according to the number of mental disorders

Risk of HF according to the number of coexisting mental disorders

The risk of HF in participants with mental disorders was significantly associated with the number of mental disorders in the crude model. The strength of the association showed a graded increase with an increasing number of coexisting mental disorders in the crude model (Table 2, competing risk model 1). The associations were significant after adjusting for confounding factors in multiple sequential models (Table 2, Competing risk model 2–5). The cumulative incidence curve showed increased incidence probability with a higher number of coexisting mental disorders (Fig. 2). Adding the mental disorder accumulation variable to the predictive model (mental disorder accumulation model) showed a higher c-index in all models compared to the original model. In addition, AIC values were lower in the mental disorder accumulation model (Supplemental Table S3, S4). IDI and NRI values were higher than 0, indicating that a model with a mental disorder accumulation predicts the risk of HF better than a model without it (Supplemental Table S5).

Table 2 Risk of heart failure according to the number of coexisting mental disorders
Fig. 2
figure 2

Cumulative incidence curve using adjusted Kaplan-Meier methods

X axis = time (Years), Y axis = incidence probability. 0: 0 mental disorder; 1: 1 mental disorder; ≥ 2: ≥ 2 mental disorders.

When we assessed the each mental disorder separately, each mental disorder was associated with an increased risk of HF. This association was significant after adjusting for confounding factors (competing risk model 5: depression, HR, 1.321; CI, 1.304–1.338; bipolar disorder HR, 1.406; CI, 1.301–1.520; schizophrenia HR, 1.405; CI, 1.302–1.516; insomnia, HR, 1.305; CI, 1.289–1.322; anxiety disorder, HR, 1.287; CI, 1.273–1.302) (Supplemental Table S6).

Subgroup analysis

Interaction analysis and subsequent subgroup analysis were performed. In the < 40 years age group, the impact of mental disorder accumulation was stronger than that in the older age groups (either 40–64 or ≥ 65 years). In addition, mental disorder accumulation had a stronger impact on the low-income group (Q1), with higher BMI (≥ 25 kg/m2), no-hypertension, no-CKD, no-CVD history, no-insulin use, less than three types of OHA use, and less than five years of DM group. (Fig. 3; Table 3).

Fig. 3
figure 3

Forest plot of subgroup analysis result

X axis = adjusted hazard ratio, Y axis = mental disorders. Abbreviations: Ref, reference; HR, hazard ratio; C.I, confidence interval; BMI, body mass index; CKD, chronic kidney disease; CVD, cardiovascular disease; OHA, oral hypoglycemic agent; DM, diabetes mellitus

Table 3 Subgroup analysis according to the number of mental disorders

The baseline characteristics of each subgroup and the follow-up duration were compared. In the age subgroups, the follow-up duration was shorter in the < 40 years group than in the ≥ 65 years age group, and the proportion of men was significantly higher in the < 40 years group (81.72%) than in the ≥ 65 years group. The mean age of the low- and high-income groups was similar (56.88 ± 11.67 vs. 56.86 ± 12.37, p = 0.247). However, compared with the CKD subgroup, the mean age of the no-CKD subgroup was significantly lower (55.89 ± 11.99 vs. 65.06 ± 11, p < 0.0001) (Supplemental Table S7, S8).

The subgroup analysis according to mental disorders (Supplemental Table S9-S13) revealed that both men and women with depression had an increased risk of HF (Supplemental Table S9). In addition, smoking, drinking, and regular exercise did not contribute to the development of HF in the schizophrenia group (Supplemental Table S11).

In addition, we conducted a subgroup analysis according to age. Participants were divided into 20–39 years, 40–64 years, and ≥ 65 years old. Variables did not show a significant interaction in the 20–39 years group. Sex, obesity, number of OHA use, and DM duration showed significant interactions in the 40–64 years group. The strength of association between mental disorder accumulation and the risk of HF was stronger in the women, obese, and less than three types of OHA use, and less than five years of DM group in 40–64 years. In ≥65 years old group, obesity, CKD, and DM duration showed significant interactions. The CKD group showed a weaker association with the risk of HF than the no-CKD group (Supplemental Tables 14–16).

Discussion

This is a novel study assessing the association between mental disorders and HF in a large-scale DM population. Our results showed that an increased number of coexisting mental disorders was associated with a risk of HF in a population with DM. In addition, mental disorders such as depression, bipolar disorders, schizophrenia, insomnia, and anxiety disorders were significantly associated with the risk of HF in participants with DM. The impact of mental disorder accumulation was the strongest in the young age group (≤40). This association was consistent after adjusting for confounding factors and competing risk analysis.

DM and mental disorders have a bidirectional relationship. Individuals with DM are at an increased risk for mental disorders due to continuous distress, such as feeling overwhelmed by the DM regimen, concerns about possible complications, and guilt when their DM is not managed well [7]. Conversely, many first- and second-generation antipsychotic medications increase the risk of type 2 DM, obesity, and dyslipidemia [24]. Additionally, participants with severe mental disorders have multiple barriers to effective control of DM, such as stress, isolation, periods of deteriorating mental health, low self-efficacy, lack of social support, and poor relationships with healthcare providers [25].

Even though numerous studies demonstrate a clear relationship between mental health and CVDs, the impact of mental disorders on the development of HF has rarely been investigated [26]. Poliwartek et al. conducted a study in a US population of 20,906 participants. They showed that participants with severe mental disorders, such as schizophrenia, bipolar disorder, and severe depression, presented with clinical HF seven years earlier than the general population. Additionally, men with severe mental disorders showed higher mortality rates than those without [8]. However, this study did not investigate the risk of HF. Our study is unique as we used a larger population and specifically included participants with DM. Williams et al. prospectively assessed the risk of HF in 2,501 participants. They showed that depression was associated with a greater risk of HF in older women but not in older men. However, the study results were limited because of the small number of participants with depression (n = 188; 132 women and 56 men) [27]. In our subgroup analysis, depression in both men and women was significantly associated with an increased risk of HF. In addition, the risk of HF was consistently elevated in all age groups in the depression group. It is possible that the relatively small number of participants masked the results of the previous study.

Previously, an unhealthy lifestyle in patients with mental disorders, including increased smoking, a high-calorie diet, higher intake of cholesterol and carbohydrate-rich diet, and decreased exercise time, which leads to metabolic disturbances, was suggested as a cause of the increased risk of CVDs in these patients [26, 28,29,30]. Interestingly, participants with mental disorders in our cohort had lower smoking rates and BMIs than those without mental disorders. Furthermore, the elevated HF risk in the participants with mental disorders persisted after adjusting for social and lifestyle-related confounding factors such as BMI, smoking, drinking, income, and physical activity levels. These findings suggest that in addition to medications that can cause metabolic disturbances and unhealthy lifestyles in participants with mental disorders, mental disorders per se can directly impact HF development in participants with DM. Furthermore, our findings suggest that multiple coexisting mental disorders can increase the risk of HF in an additive fashion in participants with DM.

The impact of mental disorders on the development of HF can be explained through multiple mechanisms. First, hyperactivation of the sympathetic nervous system in participants with mental disorders may contribute to HF development. Depression, insomnia, schizophrenia, and anxiety disorders are associated with increased serum adrenaline levels [26, 31,32,33]. In addition, the noradrenaline metabolite is increased in the serum of participants with untreated bipolar disorder compared to that in healthy controls [34]. Additionally, antipsychotics can increase plasma catecholamine levels [35]. This leads to chronically elevated sympathetic neural signals in the heart, potentially contributing to HF development [36].

Second, altered left ventricular (LV) structure and cardiac remodeling can reduce the LV ejection fraction and lead to HF [8]. This could be due to the intrinsic effects of mental disorders, in addition to the poor lifestyle habits of participants with mental disorders and the effects of antipsychotic drug treatment [8, 37]. Pillinger et al. showed that early diffuse fibroinflammatory myocardial process is present in medicated participants with schizophrenia compared to a matched healthy cohort. The results suggested that myocardial fibrosis and inflammation in participants with schizophrenia are due to antipsychotic treatment or factors intrinsic to schizophrenia [37]. This potential intrinsic effect of schizophrenia or antipsychotic medications on the heart might explain the results of the subgroup analysis of our study; there were no interactions with behavioral factors in the schizophrenia group. Finally, the medication effect could have contributed to the increased HF risk. Tricyclic antidepressants can also decrease cardiac contractility [38]. Lithium has a potential depressant effect on the myocardium [39]. Atypical antipsychotics can indirectly contribute to the development of HF by increasing sympathetic activity, thereby causing weight gain and insulin resistance [39].

Our subgroup analysis revealed several interesting findings. First, the impact of mental disorder accumulation was stronger in the younger age groups than in the older age groups. This might be due to desensitization of the aged heart against adrenergic stimulation from mental disorders [26, 31,32,33,34, 40, 41].

Second, the low-income group was more affected by mental disorder accumulation, although there was no significant difference in age between the low- and higher-income groups. Low-income households are known to be associated with a lifetime risk of mental disorders [42]. In addition, household income is strongly associated with heart disease [43]. This finding suggests that low income might potentiate the detrimental effects of mental disorder accumulation on HF development.

Third, participants with CKD were less affected by the accumulation of mental disorders, especially in age ≥65 years. Correcting for multiple cardiovascular risk factors, such as hypertension, diabetes, and dyslipidemia does not neutralize the impact of CKD on the risk of CVD [44]. CKD may be a more potent driving factor for HF than mental disorder accumulation in participants with CKD, especially in the older adult group.

Fourth, CVD history, insulin use, the number of oral hypoglycemic agents used (OHA, ≥ 3 types), and duration of DM (≥ 5 years) all showed strong interactions. Participants with these characteristics were less affected by mental disorder accumulation, older, and more frequently associated with other CVD risk factors, such as hypertension, dyslipidemia, and CKD. The presence of multiple cardiovascular risk factors in this population may have partially masked the effects of mental disorder accumulation.

Of note, sex interaction was insignificant in the risk of HF in participants with DM and concurrent mental disorders. The impact of mental disorder accumulation on the risk of HF might be similar in both men and women.

Our study has several strengths. First, we included a large cohort with DM from the South Korean population. Second, in addition to a large number of participants, our cohort represented the community because we used an established nationwide cohort, the NHIS records [14]. Third, we extensively assessed the association between mental disorders and the risk of HF in participants with DM by conducting rigorous statistical analysis.

Limitations

Our study had some limitations. First, it was a retrospective study; however, having a large cohort size, our study can reliably suggest a relationship between mental disorders and the risk of HF. Second, the study was conducted in a single ethnicity, South Korean. Finally, the analysis did not include participants who developed HF after 2018. To mitigate this limitation, we tracked the presence of mental disorders five years before inclusion in the study. This provided an adequate follow-up period to assess the risk of HF. Prospective studies focusing on broader ethnic groups and longer follow-up durations should be conducted to confirm our study results.

CONCLUSIONS

In conclusion, our results show that the presence and accumulation of mental disorders in participants with DM are significantly associated with an increased risk of HF. Therefore, participants with DM and comorbid mental disorders should be monitored more frequently for HF development than the general population.

Data Availability

The datasets were derived from sources in the public domain: [National Health Information Database of the National Health Insurance Service, https://nhiss.nhis.or.kr/].

Abbreviations

HF:

Heart failure

DM:

Diabetes mellitus

HR:

Hazard ratio

CI:

Confidence interval

CVD:

Cardiovascular disease

NHIS:

National health insurance service

KNHS:

Korean national health screening

ICD-10:

International Classification of Diseases

IRB:

Institutional Review Board

BMI:

Body mass index

CKD:

Chronic kidney disease

SAS:

Statistical Analysis System

eGFR:

Estimated glomerular filtration rate

LDL-C:

Low density lipoprotein cholesterol

HDL-C:

High density lipoprotein cholesterol

LV:

Left ventricle

Q:

Quartile

OHA:

Oral hypoglycemic agent

SBP:

Systolic blood pressure

DBP:

Diastolic blood pressure

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Acknowledgements

We acknowledge the NHIS and its employees for providing all the necessary data for this research.

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Authors

Contributions

TKY: Conceptualization, writing – original draft, writing, reviewing, and editing.

K-DH: Methodology, software, validation, investigation, resources, and data curation.

E-JR: Conceptualization, writing – original draft, writing, reviewing, editing, and supervision.

W-YL: Conceptualization, writing, reviewing, editing, project administration, and supervision.

Guarantor: W-YL.

Corresponding authors

Correspondence to Eun-Jung Rhee or Won-Young Lee.

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The Institutional Review Board of the NHIS and Soongsil University Institutional Review Board (IRB) approved this study (SSU-202003-HR-201-01) and waived the requirement for informed consent because anonymized and de-identified data were used in this study.

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Yoo, T.K., Han, KD., Rhee, EJ. et al. Impact of mental disorders on the risk of heart failure among Korean patients with diabetes: a cohort study. Cardiovasc Diabetol 22, 115 (2023). https://doi.org/10.1186/s12933-023-01809-4

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