Literature DB >> 29258504

Dipeptidyl peptidase-4 inhibitor decreases the risk of atrial fibrillation in patients with type 2 diabetes: a nationwide cohort study in Taiwan.

Chia-Yu Chang1, Yung-Hsin Yeh1,2, Yi-Hsin Chan1,2,3, Jia-Rou Liu4,5, Shang-Hung Chang1,2, Hsin-Fu Lee1,2, Lung-Sheng Wu1,2, Kun-Chi Yen1,2, Chi-Tai Kuo1,2, Lai-Chu See6,7,8.   

Abstract

BACKGROUND: Whether dipeptidyl peptidase-4 inhibitor (DPP4i) is associated with a lower risk of new-onset atrial fibrillation (AF) in patients with diabetes remains unclear. This study aimed to evaluate the risk of AF associated with use of DPP4i among a longitudinal cohort of patients with diabetes.
METHODS: Over a 3-year period, 480,000 patients with diabetes were analyzed utilizing Taiwan's National Health Insurance Research Database and 90,880 patients taking metformin as first-line therapy were enrolled. Patients were further divided into two groups: (1) DPP4i users: those taking DPP4i and (2) non-DPP4i users: those prescribed other hypoglycemic agents (HAs) as second-line drug. Study end point was defined by diagnosis of AF, addition of any third-line HA, or the end of the study period (December 31, 2013), whichever came first.
RESULTS: A total of 16,017 DPP4i users and 74,863 non-DPP4i users were eligible for the study. For the DPP4i group, most patients were prescribed sitagliptin (n = 12,180; 76%). Among the non-DPP4i group, most patients took sulfonylurea (n = 60,606; 81%) as their second-line medication. DPP4i users were associated with a lower risk of new-onset AF compared with non-DPP4i users after propensity-score weighting (hazard ratio 0.65; P < 0.0001). Subgroup analysis showed that DPP4i user were associated with a lower risk of new-onset AF compared with non-DPP4i users in most subgroups. Multivariate analysis indicated that use of DPP4i was associated with lower risk of new-onset AF and age > 65 years, presence of hypertension, and ischemic heart disease were independent risk factors for new-onset AF.
CONCLUSIONS: Among patients with diabetes prescribed with metformin, the patients with DPP4i as second HA were associated with a lower risk of AF compared with the patients with other drugs as second HAs in real-world practice.

Entities:  

Keywords:  Atrial fibrillation; Dipeptidyl peptidase-4 inhibitor; Type 2 diabetes mellitus

Mesh:

Substances:

Year:  2017        PMID: 29258504      PMCID: PMC5735601          DOI: 10.1186/s12933-017-0640-5

Source DB:  PubMed          Journal:  Cardiovasc Diabetol        ISSN: 1475-2840            Impact factor:   9.951


Introduction

Atrial fibrillation (AF) is the most common cardiac arrhythmia and significantly increases the risk of comorbidity and mortality [1, 2] with a threefold increased risk of heart failure and a fivefold increased risk of stroke [3-6]. As the world population ages, the prevalence of AF is predicted to increase by 2.5 fold in the next 50 years [7]. Diabetes mellitus (DM) is an important independent risk factor for AF [8-12]. In a previous study, AF occurred in 14.9% of diabetic patients and 10.3% in non-diabetic patients [8]. Furthermore, diabetes was highly associated with the prevalence of metabolic syndrome, which is also associated with a higher risk for AF [8]. Alogliptin, a dipeptidyl peptidase-4 inhibitor (DPP-4i), not only has anti-hyperglycemic effects, but can also inhibit the maintenance of AF induced by tachy-pacing, as shown in a recent animal study [13]. However, Only a few studies investigated if DPP4i has cardiac protective effects including AF [14-16]. This study had as its underlying hypothesis that DPP4i could potentially reduce the incidence of AF in type-2 diabetic patients. The goal of the present study was to evaluate the risk of AF associated with use of DPP4i in a nationwide cohort study of diabetic patients in Taiwan.

Materials and methods

Data source

This study was approved by the Institutional Review Board of Chang Gung Memorial Hospital, Linkou, Taiwan. Informed consent was waived because the original identification number of each patient in the National Health Insurance (NHI) research database (NHIRD) of Taiwan was encrypted and de-identified to protect their privacy. The NHI program is a compulsory universal health insurance program in Taiwan which provides comprehensive medical care coverage to more than 99% of Taiwanese residents. The NHIRD of the National Health Research Institutes of Taiwan included detailed health care information for 23.72 million enrollees in 2014 [17].

Study cohort and outcomes

From 2009 to 2012, 480,000 patients with diabetes were analyzed utilizing a Longitudinal Cohort of Diabetes Patients Database (LHDB) using newly diagnosed DM codes based on the International Classification of Diseases, ninth revision, Clinical Modification (ICD-9-CM) as previous described [18]. A flowchart of enrollment of the study cohort is summarized in Fig. 1. Subjects who were less than 20 years of age (n = 5526), had the diagnosis of AF (n = 10,388), or any cardiovascular event (n = 27,834) before the diagnosis of diabetes were excluded from the study. In Taiwan, metformin is considered a first-line hypoglycemic agent (HA) according to the current guidelines. Second-line HAs (which include sulfonylurea, alpha glucosidase inhibitor, thiazolidinedione (TZD), meglitinide, insulin, GLP-1 analogue, and DPP4i) are administered when inadequate therapeutic response to metformin is suspected, according to the current guidelines and payment criteria of the NHI in Taiwan. Subjects who were not prescribed any HA during their whole treatment course, who were first prescribed a HA other than metformin, who were only prescribed metformin during their whole treatment course, or who were prescribed with any HAs before the diagnosis of diabetes were also excluded from the current study (n = 341,457). Finally, 90,880 patients with diabetes taking metformin as the first-line therapy were enrolled in the study. Study subjects were further divided into two groups: those taking DPP4i (the DPP4i group) versus those prescribed other HAs as second-line drug (the non-DPP4i group). The DPP4i group (n = 16,017) was defined by the use of DPP4i as the second-line HA. The non-DPP4i group (n = 74,863) was defined by the use of other HAs as the second-line HA. The first claim date of the DPP4i group or the non-DPP4i group was defined as the drug index date. The study outcome was defined by the diagnosis of AF based on the ICD-9-CM code of 427.31, in either an in-patient or outpatient department at least once. The follow-up period was defined from the index date until the occurrence of the first study outcome (AF), the addition of any new HA due to inadequate sugar control, or the end of the study period (December 31, 2013), whichever came first.
Fig. 1

Enrollment of diabetic patients taking metformin plus DPP-4 inhibitor versus other hypoglycemic agents. A total of 16,017 diabetic patients taking metformin plus DPP-4 inhibitor are compared with 74,863 patients prescribed other hypoglycemic agents (including sulfonylurea, alpha glucosidase inhibitor, thiazolidinedione, meglitinide, insulin, or glucagon-like peptide 1). AF atrial fibrillation, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, HA hypoglycemic agent

Enrollment of diabetic patients taking metformin plus DPP-4 inhibitor versus other hypoglycemic agents. A total of 16,017 diabetic patients taking metformin plus DPP-4 inhibitor are compared with 74,863 patients prescribed other hypoglycemic agents (including sulfonylurea, alpha glucosidase inhibitor, thiazolidinedione, meglitinide, insulin, or glucagon-like peptide 1). AF atrial fibrillation, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, HA hypoglycemic agent

Covariates

Risk factors for cardiovascular events and use of medication at baseline were obtained from claim records using the above diagnoses or medication codes prior to the index date. A history of specific prescribed medicines was confined to medications used at least once within the 3 months preceding the index date. The ICD-9-CM codes used to identify the study outcomes and covariates are summarized in Additional file 1: Table S1.

Statistical analysis

Propensity score method, which simulates the gold-standard of a randomized clinical trial (RCT) for observational data, was used to compare the effect between the two study groups on study outcomes. Inverse probability of treatment weighting (IPTW) of propensity scores was used to balance covariates across the two study groups [19]. The balance of potential confounders at baseline (index date) between the two study groups was evaluated by using standardized mean difference (SMD), rather than using statistical testing, because balance is a property of the sample and not of an underlying population. The value of absolute of SMD ≤ 0.1 indicates a negligible difference in potential confounders between the two study groups. Risk of study outcomes over time for the DPP-4 inhibitor group compared with non-DPP-4 inhibitor group (reference) was obtained by using survival analysis (Kaplan–Meier method for univariate analysis and Cox proportional hazards regression for multivariate analysis) after IPTW. Subgroup analysis was performed to determine whether the DPP4i group continued to have a lower risk of new-onset AF when compared with non-DPP4i in subgroups. Statistical significance was defined at a P value < 0.05. All statistical analyses were performed using SAS 9.3 (SAS Institute Inc., Cary, North Carolina).

Results

A total of 16,017 DPP4i users and 74,863 non-DPP4i users were eligible for the study. Most patients in the DPP4i group were prescribed sitagliptin (n = 12,180, 76%); while 291, 1501 and 2045 patients were prescribed linagliptin (2%), saxagliptin (9%), and vildagliptin (13%), respectively. Among the non-DPP4i group, most patients were prescribed sulfonylurea (n = 60,606, 81%) as the second-line HA. In addition, 4087, 4783, 2334, 1032, and five patients were prescribed alpha glucosidase inhibitor (5%), meglitinide (6%), thiazolidinedione (3%), insulin (1%), and GLP-1 analogue (0%), respectively. There were 2016 patients (4%) taking more than two second-line HAs concurrently. Table 1 summarizes the baseline demographic characteristics, comorbidities, and medication differences between the two groups. Before propensity score weighting, the DPP4i group had a higher use of statins and angiotensin-converting enzyme inhibitor/angiotensin receptor blockers than non-DPP4i group, while age, gender, comorbidities and other medications were all similar between two study groups at baseline (all ASMD < 0.1). After propensity-score weighting, the two study groups were well-balanced in all characteristics (all ASMD < 0.1).
Table 1

Baseline characteristics of diabetic patients taking metformin plus DPP4i versus other hypoglycemic agents, before and after propensity score weighting

Before weightingAfter weighting
DPP4i usersNon-DPP4i usersStandardized mean differenceDPP4i usersNon-DPP4i usersStandardized mean difference
(n = 16,017)(n = 74,863)(n = 16,017)(n = 74,863)
Follow-up time (years)
 Mean ± SD2.04 ± 1.212.41 ± 1.272.07 ± 2.902.41 ± 1.39
Age at index date
 Mean ± SD54.51 ± 12.5354.88 ± 12.2054.43 ± 30.1654.88 ± 13.41
 < 65 year80.23%79.59%0.016279.87%79.70%0.0043
 ≥ 65 years19.77%20.41%20.13%20.30%
Gender0.0162− 0.0008
 Female42.64%41.84%41.95%41.99%
History of comorbidity
 Hypertension58.33%57.34%0.019957.38%57.52%− 0.0029
 Hyperlipidemia59.76%56.96%0.056757.51%57.44%0.0014
 Ischemic heart disease2.57%2.02%0.03862.10%2.11%− 0.0006
 Heart valve surgery0.09%0.05%0.02000.05%0.05%− 0.0032
 Obstructive sleep apnea0.00%0.00%0.00%0.00%
 Hyperthyroidism2.68%2.08%0.04062.19%2.19%0.0003
 Chronic kidney disease7.56%7.09%0.01827.11%7.17%− 0.0024
 PAOD0.51%0.36%0.02390.36%0.39%− 0.0038
 Gout19.31%20.61%− 0.032320.37%20.39%− 0.0006
 Chronic lung disease1.29%1.35%− 0.00491.31%1.34%− 0.0026
 Congestive heart failure0.28%0.13%0.03550.15%0.16%− 0.0015
Medication
 Beta-blocker13.78%13.75%0.000813.67%13.75%− 0.0026
 Diltiazem/verapamil3.02%2.38%0.04082.48%2.49%− 0.0002
 Statin33.60%25.83%0.174527.18%27.20%− 0.0005
 ACEI/ARB36.62%30.55%0.130531.66%31.61%0.0012

ACEI angiotensin-converting-enzyme inhibitor, AF atrial fibrillation, ARB angiotensin II receptor antagonists, CI confidence interval, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, GLP-1 glucagon-like peptide-1, PAOD peripheral arterial obstructive disease, TZD thiazolidinedione

Baseline characteristics of diabetic patients taking metformin plus DPP4i versus other hypoglycemic agents, before and after propensity score weighting ACEI angiotensin-converting-enzyme inhibitor, AF atrial fibrillation, ARB angiotensin II receptor antagonists, CI confidence interval, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, GLP-1 glucagon-like peptide-1, PAOD peripheral arterial obstructive disease, TZD thiazolidinedione DPP4i users were associated with a lower risk of new-onset AF compared with non-DPP4i users, either before or after propensity-score weighting [hazard ratio (HR): 0.65; 95% confidential interval (CI) 0.56–0.76; P < 0.0001]. It was noted that most HAs, with the exception of insulin/GLP1, were associated with a significantly higher risk of new-onset AF when compared with DPP4i (Table 2). Figure 2 and Additional file 2: Figure S1 show a clear separation of event curves for new-onset AF between these two groups either before or after propensity score weighting adjustment. The time interval from the index day to the occurrence of AF in DPP4i user vs non-user is 1.9 ± 2.9 years and 1.7 ± 1.2 years respectively. Some patients did not take DPP4i at the diagnosis of the first AF. Among the 45 AF events in DPP4i users, 10 of them (22.2%) did not take DPP4i within 3 months of the events. Subgroup analysis revealed that DPP4i usage was associated with a lower risk of new-onset AF compared with non-DPP4i usage in most subgroups (Fig. 3).
Table 2

Incidence (per 100 person-years) of new-onset AF in diabetic patients taking metformin plus DPP4i or other hypoglycemic agents

New-onset AF
NumbersEventsIncidence before weightingIncidence after weightingHRa 95% CIP value
DPP4i16,017450.14 (0.10–0.18)0.14 (0.12–0.15)*1.00(Reference)
Other hypoglycemic agents rather than DPP4i74,8633860.21 (0.19–0.24)0.21 (0.19–0.23)1.53(1.31–1.78)P < 0.0001
Sulfonylurea62,2163180.20 (0.18–0.23)0.20 (0.18–0.23)1.45(1.24–1.70)P < 0.0001
Alpha glucosidase inhibitor5091240.24 (0.14–0.33)0.23 (0.15–0.32)1.75(1.19–2.57)P = 0.0045
Meglitinide5164410.38 (0.26–0.49)0.38 (0.27–0.48)2.78(2.05–3.76)P < 0.0001
TZD3091150.23 (0.11–0.34)0.23 (0.12–0.33)1.68(1.05–2.69)P = 0.0307
Insulin136130.11 (0.02–0.32)0.11 (0.03–0.29)0.79(0.28–2.26)P = 0.20
GLP150

There were 2016 patients taking more than two hypoglycemic agents as second-line hypoglycemic agents at the same time

ACEI angiotensin-converting-enzyme inhibitor, AF atrial fibrillation, ARB angiotensin II receptor antagonists, CI confidence interval, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, GLP-1 glucagon-like peptide-1; PAOD peripheral arterial obstructive disease, TZD thiazolidinedione

aFor other hypoglycemic agents versus DPP-4 inhibitors (reference) after propensity score weighting

Fig. 2

Cumulative risk curve of new-onset AF for the study cohorts treated with metformin plus DPP-4 inhibitor versus other hypoglycemic agents after propensity score weighting. DPP4i group (solid line) shows a significantly lower cumulative risk of new-onset AF compared with non-DPP4i group in patients treated with metformin (dotted line). DPP4i dipeptidyl peptidase-4 inhibitor

Fig. 3

Forest plot of hazard ratio of risk of new-onset AF for DM patients treated with metformin plus DPP-4 inhibitor versus other hypoglycemic agents after propensity score weighting. DPP4i is shown to be associated with a lower risk of new-onset AF compared with other hypoglycemic agents in most subgroups. DPP4i dipeptidyl peptidase-4 inhibitor

Incidence (per 100 person-years) of new-onset AF in diabetic patients taking metformin plus DPP4i or other hypoglycemic agents There were 2016 patients taking more than two hypoglycemic agents as second-line hypoglycemic agents at the same time ACEI angiotensin-converting-enzyme inhibitor, AF atrial fibrillation, ARB angiotensin II receptor antagonists, CI confidence interval, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, GLP-1 glucagon-like peptide-1; PAOD peripheral arterial obstructive disease, TZD thiazolidinedione aFor other hypoglycemic agents versus DPP-4 inhibitors (reference) after propensity score weighting Cumulative risk curve of new-onset AF for the study cohorts treated with metformin plus DPP-4 inhibitor versus other hypoglycemic agents after propensity score weighting. DPP4i group (solid line) shows a significantly lower cumulative risk of new-onset AF compared with non-DPP4i group in patients treated with metformin (dotted line). DPP4i dipeptidyl peptidase-4 inhibitor Forest plot of hazard ratio of risk of new-onset AF for DM patients treated with metformin plus DPP-4 inhibitor versus other hypoglycemic agents after propensity score weighting. DPP4i is shown to be associated with a lower risk of new-onset AF compared with other hypoglycemic agents in most subgroups. DPP4i dipeptidyl peptidase-4 inhibitor In Table 3, Cox’s model was performed after propensity score weighting in order to identify the independent risk factors for the new-onset AF for those patients taking HAs. The multivariate analysis indicated that use of DPP4i was associated with lower risk of new-onset AF (HR 0.69; 95% CI 0.59–0.81; P < 0.0001), and age > 65 years (HR 4.75; 95% CI 4.07–5.55; P < 0.0001), presence of hypertension (HR 1.74; 95% CI 1.45–2.06; P < 0.0001), and ischemic heart disease (HR 1.98; 95% CI 1.48–2.66; P < 0.0001) were independent risk factors for new-onset AF.
Table 3

Predictors of new-onset AF for diabetic patients taking hypoglycemic agents after propensity score weighting

Hazard ratio (95% CI); P value
UnivariateMultivariate
DPP4i versus other hypoglycemic agents0.65 (0.56–0.76); < 0.00010.69 (0.59–0.81); P < 0.0001
Age (years)
 < 651.00 (reference)1.00 (reference)
 ≥ 655.76 (4.97–6.68); < 0.00014.75 (4.07–5.55); P < 0.0001
Female gender0.87 (0.75–1.01); 0.0714
Chronic lung disease2.28 (1.46–3.56); 0.0003
Chronic kidney disease1.74 (1.37–2.21); < 0.0001
Hypertension2.64 (2.22–3.13); < 0.00011.74 (1.45–2.06); P < 0.0001
Ischemic heart disease3.84 (2.88–5.13); < 0.00011.98 (1.48–2.66); P < 0.0001

ACEI angiotensin-converting-enzyme inhibitor, AF atrial fibrillation, ARB angiotensin II receptor antagonists, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, GLP-1 glucagon-like peptide-1, PAOD peripheral arterial obstructive disease, TZD thiazolidinedione

Predictors of new-onset AF for diabetic patients taking hypoglycemic agents after propensity score weighting ACEI angiotensin-converting-enzyme inhibitor, AF atrial fibrillation, ARB angiotensin II receptor antagonists, DM diabetes mellitus, DPP4i dipeptidyl peptidase-4 inhibitor, GLP-1 glucagon-like peptide-1, PAOD peripheral arterial obstructive disease, TZD thiazolidinedione

Discussion

The nationwide cohort study evaluated the risk of new-onset AF in metformin-based patients with diabetes taking DPP4i versus other second-line hypoglycemic agents. Recently we had presented metformin users were associated with a lower risk of AF in patients with diabetes compared with non-users [20, 21]. In this study, in addition to use of metformin, we observed that patients taking DPP4i had a significantly lower risk of new-onset AF than those treated with other HAs including sulfonylurea, alpha-glucosidase inhibitors, meglitinide, and thiazolidinedione. The risk reduction of new-onset AF for DPP4i users versus other HAs was similar among most subgroups. Several studies have indicated that diabetes, as well as age, hypertension, and structural heart diseases, are independent risk factors for AF [22]. Atrial fibrosis and chronic inflammation are known to contribute to AF [23, 24]. Diabetes is associated with numerous metabolic defects which could be responsible for AF occurrence. Diabetes could also cause structural, electrical, electromechanical and autonomic remodeling, triggering AF in patients with diabetes [25]. In several animal studies, DPP4i inhibitors increase in threshold of ventricular fibrillation during the ischemic period and stabilized cardiac electrophysiology, protected cardiac mitochondrial function [26]. DPP4i is commonly used for the treatment of patients with diabetes in clinical practice. By inhibiting the degradation of GLP-1, DPP4i has been shown to increase the serum levels of GLP-1, which indirectly stimulate insulin secretion and enhance beta-cell function. DPP-4 is highly expressed in endothelial cells and the GLP-1 receptor is expressed on cardiomyocytes, vascular smooth muscle cells, and endothelial cells. A previous animal study showed that DPP4i had both GLP-1-dependent and GLP-1-independent cardioprotective effects using an ischemic heart model [27]. A recent study also showed that DPP4i may exert antiarrhythmic effects and reduce infarct size during myocardial ischemia and reperfusion [28]. There were several mechanisms to explain the relationship between diabetes and AF and the mechanism of DPP4i in lowering AF risk. Recently Chang et al. showed that in spontaneously hypertensive rats, sitagliptin would modulate the electrical and mechanical properties of pulmonary veins and atria, suggesting that DPP4i may be protective against AF genesis [29]. Furthermore, Yamamoto et al. [13]. demonstrated that alogliptin, a DPP4i, can shorten the AF duration caused by ventricular tachy-pacing in rabbits with fibrotic atria. The underlying mechanisms may include augmentation of atrial remodeling and improvement of mitochondrial function [30]. Further, administration of nitric oxide synthase inhibitor has been shown to block the protective effects of alogliptin via shortening AF duration, capillary density, and atrial fibrosis. Their findings suggest that DPP4i may have an antiarrhythmic effect in the prevention of heart-failure-induced AF [13]. In contrast, Hayami et al. [31]. demonstrated that administration of sulfonylurea and DPP4i both inhibited inflammation and fibrosis of the atria in streptozotocin-induced diabetic rats. However, no significant differences were observed between the two oral HAs. They concluded that reduced atrial fibrosis may derive from the tight control of blood glucose levels rather than a drug-specific anti-inflammatory property. The monotherapy of metformin is suggested as first-line therapy for glycemic control in newly diagnosed patients with type 2 diabetes according to the current guidelines [32]. If monotherapy does not achieve the therapeutic goal, a second HA would be added [33]. Several studies have indicated that patients with diabetes have an increased risk of developing adverse cardiovascular outcomes [34]. Therefore, prevention of any adverse cardiovascular outcome seems to be an important consideration when choosing second-line HAs. Until now, only empagliflozin, a potent inhibitor of sodium glucose cotransporter 2 (SGLT2), and metformin have provided cardioprotective effects in patients with diabetes beyond the hypoglycemic effects [35, 36]. It is unclear if GLP-1 receptor agonists was associated with AF [37]. At the present time, it is still unclear whether DPP4i would lead to better outcomes with a reduction in incidence of major adverse cardiovascular events [38-41]. Recent large scale clinical trials, including EXAMINE, SAVOR-TIMI53, and TECOS, all failed to show significant improvement in cardiovascular outcomes in type 2 diabetic patients treated with DPP4i [38, 42, 43]. In contrast, several nationwide cohort studies presented that DPP4i may have cardioprotective properties, including the ability to lower the incidence of heart failure, coronary heart disease, and stroke [15, 39, 44]. In subgroup analysis (Fig. 3), however, we did not find differences in the occurrence of new-onset AF between DPP4 users and non-users in patients > 65 years. It is likely that more AF-precipitating factors coexist in aged diabetic patients, which would remove the protective effect of DPP4i. Until now, no randomized control trials directly compared the risk of new-onset AF in patients with diabetes taking DPP4i compared with patients taking other HAs. Our data revealed that DPP4i was associated with a lower risk of new-onset AF in patients with diabetes, indicating that DPP4i as a feasible second-line oral HA for AF primary prevention. Future prospective studies are necessary, however, to evaluate the potential role of DPP4i on atrial remodeling and AF prevention in the setting of diabetes.

Study limitations

Our study had several limitations including lack of laboratory data such as hemoglobin A1c levels, blood sugar levels, renal function, and lipid profiles, thus, the severity of diabetes in each patient could not be classified. Furthermore, because of the lack of EKG data, the contribution of persistent AF or paroxysmal AF to acute illness could not be assessed. In addition, although an extensive number of variables had been selected for our propensity score model, and a close balance among those factors was successfully achieved in our study, there were other unmeasured confounding factors that may have biased our results including the use of tobacco and/or alcohol, body mass index, family history, and physicians’ preference for a specific HA. Also, coding errors regarding outcomes and comorbidities may have existed because of each physician’s different response when caring for their own patients. Finally, this was a retrospective, observational study. Therefore, further prospective randomized studies are needed to determine whether our findings are applicable to non-Asian patients with type 2 diabetes.

Conclusions

Among patients with diabetes prescribed with metformin, the patients with DPP4i as second HA were associated with a lower risk of AF compared with the patients with other drugs as second HAs in real-world practice. Additional file 1: Table S1. International Classification of Disease (9th edition) Clinical Modification (ICD 9-CM) codes used to define the co-morbidities and clinical outcome in the study cohort. Additional file 2: Figure S1. Cumulative risk curve of the new-onset AF for the study cohorts treated with metformin plus DDP-4 inhibitor or other hypoglycemic agents before propensity score weighting. DDP4i group (solid line) had a significantly lower cumulative risk of new-onset AF compared with non-DDP4i group in patients treated with metformin (dotted line). DPP4i dipeptidyl peptidase-4 inhibitor.
  43 in total

1.  Saxagliptin and cardiovascular outcomes in patients with type 2 diabetes mellitus.

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Journal:  N Engl J Med       Date:  2013-09-02       Impact factor: 91.245

2.  An interaction between glucagon-like peptide-1 and adenosine contributes to cardioprotection of a dipeptidyl peptidase 4 inhibitor from myocardial ischemia-reperfusion injury.

Authors:  Madoka Ihara; Hiroshi Asanuma; Satoru Yamazaki; Hisakazu Kato; Yoshihiro Asano; Yoshihiro Shinozaki; Hidezo Mori; Tetsuo Minamino; Masanori Asakura; Masaru Sugimachi; Naoki Mochizuki; Masafumi Kitakaze
Journal:  Am J Physiol Heart Circ Physiol       Date:  2015-03-06       Impact factor: 4.733

3.  Incidence and prevalence of atrial fibrillation and associated mortality among Medicare beneficiaries, 1993-2007.

Authors:  Jonathan P Piccini; Bradley G Hammill; Moritz F Sinner; Paul N Jensen; Adrian F Hernandez; Susan R Heckbert; Emelia J Benjamin; Lesley H Curtis
Journal:  Circ Cardiovasc Qual Outcomes       Date:  2012-01-10

4.  Diabetes mellitus, fasting blood glucose concentration, and risk of vascular disease: a collaborative meta-analysis of 102 prospective studies.

Authors:  N Sarwar; P Gao; S R Kondapally Seshasai; R Gobin; S Kaptoge; E Di Angelantonio; E Ingelsson; D A Lawlor; E Selvin; M Stampfer; C D A Stehouwer; S Lewington; L Pennells; A Thompson; N Sattar; I R White; K K Ray; J Danesh
Journal:  Lancet       Date:  2010-06-26       Impact factor: 202.731

5.  Temporal relations of atrial fibrillation and congestive heart failure and their joint influence on mortality: the Framingham Heart Study.

Authors:  Thomas J Wang; Martin G Larson; Daniel Levy; Ramachandran S Vasan; Eric P Leip; Philip A Wolf; Ralph B D'Agostino; Joanne M Murabito; William B Kannel; Emelia J Benjamin
Journal:  Circulation       Date:  2003-05-27       Impact factor: 29.690

6.  Sitagliptin Modulates the Electrical and Mechanical Characteristics of Pulmonary Vein and Atrium.

Authors:  Chien-Jung Chang; Ten-Fang Yang; Tin-I Lee; Yao-Chang Chen; Yu-Hsun Kao; Shih-Ann Chen; Yi-Jen Chen
Journal:  Acta Cardiol Sin       Date:  2014-01       Impact factor: 2.672

7.  No Additional Effect of DPP-4 Inhibitor on Preventing Atrial Fibrosis in Streptozotocin-Induced Diabetic Rat as Compared With Sulfonylurea.

Authors:  Noriyuki Hayami; Akiko Sekiguchi; Yu-Ki Iwasaki; Yuji Murakawa; Takeshi Yamashita
Journal:  Int Heart J       Date:  2016-04-28       Impact factor: 1.862

Review 8.  An update on atrial fibrillation in 2014: From pathophysiology to treatment.

Authors:  R Ferrari; M Bertini; C Blomstrom-Lundqvist; D Dobrev; P Kirchhof; C Pappone; U Ravens; J Tamargo; L Tavazzi; G G Vicedomini
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9.  The impact of DPP-4 inhibitors on long-term survival among diabetic patients after first acute myocardial infarction.

Authors:  Mei-Tzu Wang; Sheng-Che Lin; Pei-Ling Tang; Wang-Ting Hung; Chin-Chang Cheng; Jin-Shiou Yang; Hong-Tai Chang; Chun-Peng Liu; Guang-Yuan Mar; Wei-Chun Huang
Journal:  Cardiovasc Diabetol       Date:  2017-07-11       Impact factor: 9.951

10.  A comparison between angiotensin converting enzyme inhibitors and angiotensin receptor blockers on end stage renal disease and major adverse cardiovascular events in diabetic patients: a population-based dynamic cohort study in Taiwan.

Authors:  Lung-Sheng Wu; Shang-Hung Chang; Gwo-Jyh Chang; Jia-Rou Liu; Yi-Hsin Chan; Hsin-Fu Lee; Ming-Shien Wen; Wei-Jan Chen; Yung-Hsin Yeh; Chi-Tai Kuo; Lai-Chu See
Journal:  Cardiovasc Diabetol       Date:  2016-04-02       Impact factor: 9.951

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  15 in total

1.  Glucose-lowering drug use and new-onset atrial fibrillation in patients with diabetes mellitus.

Authors:  Gregoire Fauchier; Arnaud Bisson; Alexandre Bodin; Julien Herbert; Denis Angoulvant; Pierre Henri Ducluzeau; Gregory Y H Lip; Laurent Fauchier
Journal:  Diabetologia       Date:  2021-08-25       Impact factor: 10.122

2.  The risk of incident atrial fibrillation in patients with type 2 diabetes treated with sodium glucose cotransporter-2 inhibitors, glucagon-like peptide-1 receptor agonists, and dipeptidyl peptidase-4 inhibitors: a nationwide cohort study.

Authors:  Yi-Hsin Chan; Tze-Fan Chao; Shao-Wei Chen; Hsin-Fu Lee; Pei-Ru Li; Wei-Min Chen; Yung-Hsin Yeh; Chi-Tai Kuo; Lai-Chu See; Gregory Y H Lip
Journal:  Cardiovasc Diabetol       Date:  2022-06-28       Impact factor: 8.949

Review 3.  Effect of antidiabetic drugs on the risk of atrial fibrillation: mechanistic insights from clinical evidence and translational studies.

Authors:  Ting-Wei Lee; Ting-I Lee; Yung-Kuo Lin; Yao-Chang Chen; Yu-Hsun Kao; Yi-Jen Chen
Journal:  Cell Mol Life Sci       Date:  2020-09-23       Impact factor: 9.261

4.  Ethnic differences in atrial fibrillation among patients with heart failure in Asia.

Authors:  Eugene S J Tan; Vera Goh; Bernadet T Santema; Wan Ting Tay; Tiew-Hwa Katherine Teng; Jonathan Yap; Jasper Tromp; Chung-Lieh Hung; Vijay Chopra; Inder Anand; Michael R MacDonald; Lieng Hsi Ling; Isabelle C Van Gelder; Michiel Rienstra; Adriaan A Voors; A Mark Richards; Carolyn S P Lam
Journal:  ESC Heart Fail       Date:  2020-05-08

Review 5.  Diabetes and Arrhythmias: Pathophysiology, Mechanisms and Therapeutic Outcomes.

Authors:  Laurel A Grisanti
Journal:  Front Physiol       Date:  2018-11-26       Impact factor: 4.566

6.  Effect of pioglitazone in acute ischemic stroke patients with diabetes mellitus: a nested case-control study.

Authors:  Min-Hee Woo; Hye Sun Lee; Jinkwon Kim
Journal:  Cardiovasc Diabetol       Date:  2019-05-31       Impact factor: 9.951

7.  The impact of body weight and diabetes on new-onset atrial fibrillation: a nationwide population based study.

Authors:  Yun Gi Kim; Kyung-Do Han; Jong-Il Choi; Ki Yung Boo; Do Young Kim; Suk-Kyu Oh; Kwang-No Lee; Jaemin Shim; Jin Seok Kim; Young-Hoon Kim
Journal:  Cardiovasc Diabetol       Date:  2019-10-01       Impact factor: 9.951

8.  Atrial fibrillation and its arrhythmogenesis associated with insulin resistance.

Authors:  Yi-Hsin Chan; Gwo-Jyh Chang; Ying-Ju Lai; Wei-Jan Chen; Shang-Hung Chang; Li-Man Hung; Chi-Tai Kuo; Yung-Hsin Yeh
Journal:  Cardiovasc Diabetol       Date:  2019-09-26       Impact factor: 9.951

Review 9.  Association of Antihyperglycemic Therapy with Risk of Atrial Fibrillation and Stroke in Diabetic Patients.

Authors:  Cristina-Mihaela Lăcătușu; Elena-Daniela Grigorescu; Cristian Stătescu; Radu Andy Sascău; Alina Onofriescu; Bogdan-Mircea Mihai
Journal:  Medicina (Kaunas)       Date:  2019-09-15       Impact factor: 2.430

Review 10.  Mitochondrial Dysfunction in Atrial Fibrillation-Mechanisms and Pharmacological Interventions.

Authors:  Paweł Muszyński; Tomasz A Bonda
Journal:  J Clin Med       Date:  2021-05-28       Impact factor: 4.241

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