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Article

Risk of Incident Non-Valvular Atrial Fibrillation after Dialysis-Requiring Acute Kidney Injury

1
Division of Nephrology, Department of Internal Medicine, Saint Mary’s Hospital Luodong, Loudong 265, Yilan, Taiwan
2
Saint Mary’s Junior College of Medicine, Nursing and Management, Sanxing Township, Yilan County 266, Taiwan
3
Division of Nephrology, Department of Internal medicine, Chi Mei Medical Center, Yongkang District, Tainan City 710, Taiwan
4
Department of Biological Science and Technology, Chung Hwa University of Medical Technology, Rende District, Tainan City 717, Taiwan
5
Division of Nephrology, Department of Internal Medicine, Chi Mei Medical Center, Liouying, Tainan City 736, Taiwan
6
Graduate Institute of Clinical Medicine, National Taiwan University College of Medicine, Taipei 106, Taiwan
7
Division of Nephrology, Department of Internal Medicine, National Taiwan University Hospital, Taipei 100, Taiwan
8
Division of Hospital Medicine, Department of Internal Medicine, National Taiwan University Hospital, Taipei 100, Taiwan
9
Institute of Population Health Sciences, National Health Research Institutes, Zhunan, Miaoli County 350, Taiwan
10
Case Western Reserve University, No. 10900 Euclid Ave., Cleveland, OH 44106, USA
11
Department of Nursing, Saint Mary’s Hospital Luodong, Loudong 265, Yilan, Taiwan
12
Department of Surgery, National Taiwan University Hospital, Taipei 100, Taiwan
13
NSARF, National Taiwan University Study Group on Acute Renal Failure
*
Author to whom correspondence should be addressed.
J. Clin. Med. 2018, 7(9), 248; https://doi.org/10.3390/jcm7090248
Submission received: 20 July 2018 / Revised: 27 August 2018 / Accepted: 29 August 2018 / Published: 29 August 2018

Abstract

:
The influence of acute kidney injury (AKI) on subsequent incident atrial fibrillation (AF) has not yet been fully addressed. This retrospective nationwide cohort study was conducted using Taiwan’s National Health Insurance Research Database from 1 January 2000 to 31 December 2010. A total of 41,463 patients without a previous AF, mitral valve disease, and hyperthyroidism who developed de novo dialysis-requiring AKI (AKI-D) during their index hospitalization were enrolled. After propensity score matching, “non-recovery group” (n = 2895), “AKI-recovery group” (n = 2895) and “non-AKI group” (control group, n = 5790) were categorized. Within a follow-up period of 6.52 ± 3.88 years (median, 6.87 years), we found that the adjusted risks for subsequent incident AF were increased in both AKI-recovery group (adjusted hazard ratio (aHR) = 1.30; 95% confidence intervals (CI), 1.07–1.58; p ≤ 0.01) and non-recovery group (aHR = 1.62; 95% CI, 1.36–1.94) compared to the non-AKI group. Furthermore, the development of AF carried elevated risks for major adverse cardiac events (aHR = 2.11; 95% CI, 1.83–2.43), ischemic stroke (aHR = 1.33; 95% CI, 1.19–1.49), and all stroke (aHR = 1.28; 95% CI, 1.15–1.43). (all p ≤ 0.001, except otherwise expressed) The authors concluded that AKI-D, even in those who withdrew from temporary dialysis, independently increases the subsequent risk of de novo AF.

1. Introduction

Atrial fibrillation (AF) is the most common sustained cardiac arrhythmia with an increasing trend of prevalence following widespread population aging [1]. It is estimated that AF currently affects around 2.3 million adults in the United States, and the number of affected people is projected to increase to 5.6–15.9 million by 2050 [1]. AF has a significant effect on cardiovascular events including stroke, peripheral embolization, and associated morbidities and mortalities [1]. The existence of AF is independently associated with the risk of the development and severity of acute kidney injury (AKI) in both surgical and medical settings [2].
Recent studies suggest that AKI episodes are associated with a higher risk of developing cardiovascular events and overall mortality [3,4,5]. Nevertheless, the influence of AKI on subsequent incident AF has not been fully addressed in previous research. Most investigations only evaluate the concurrent occurrence of AKI and AF in a limited number of patients undergoing cardiac surgeries within a relatively short follow-up period [6,7]. In these studies, the development of postoperative AKI was found as an independent factor associated with the new-onset postoperative AF [6,7]. In line with these interpretations, new-onset AF after AKI in a nationwide survey for an extended followed-up period is necessary [7,8,9,10]. In particular, the National Institute for Health and Clinical Excellence (NICE) guideline raises an ultimate critical point: if the development of AF occurs, the assessment to evaluate the risk of having a stroke is necessary. However, little information is available regarding cardiovascular events and outcomes after new-onset AF in this subset.
A proper understanding of the risk factors associated with kidney disease and AF development may allow primary care physicians to initiate preventive strategies and thereby potentially decrease the risk of AF. Thus, we conducted this study aiming to test the hypothesis that the occurrence of dialysis-requiring AKI (AKI-D), as well as the “recovery pattern” of the AKI, would increase the subsequent risk of subsequent AF and result in worse cardiovascular injury.

2. Materials and Methods

2.1. Data Source

This retrospective population-based cohort study was conducted using the data of Taiwan’s National Health Insurance Research Database (NHIRD) in the period from 1 January 2000 to 3 December 2010. The NHIRD is an encrypted database released by the National Health Research Institutes (NHRI) for research purposes. The NHIRD includes all information on outpatient visits, hospital admissions, prescriptions, interventional procedures, disease profiles, and vital status of the National Health Insurance (NHI) program which provides comprehensive medical care covering more than 99% of the country’s population of 23 million people. The baseline comorbidities were identified from at least three outpatient visits or one inpatient claim within one year preceding the index hospitalization with the first dialysis. This identification method has been well validated with adequate predictive power [3]. The Charlson Comorbidity Index (CCI) was calculated by weighting baseline comorbidities.
For confidentiality purposes, identification numbers were encrypted before being released for research, but the uniqueness of the encrypted identification is retained to ensure valid internal linkage. The study protocol conformed to the ethical guidelines of the 1975 Declaration of Helsinki. The study was approved by the institutional review board of the National Taiwan University Hospital (201212021RINC), and informed consent was waived since all personal data were de-identified in the database to protect privacy.

2.2. Study Cohort and Design

This study included patients aged 18 to 100 years without a history of AF, mitral valve disease, and hyperthyroidism for at least one year preceding study enrollment, and who developed de novo AKI-D during their index hospitalization and survived to at least 30 days after discharge.
Disease diagnoses were classified according to the International Classification of Diseases, Ninth Revision, Clinical Modification (ICD-9-CM). AKI-D was defined by ICD-9 codes for AKI (584.3, 634.3, 635.3, 636.3, 637.3, 638.3, 639.3, 669.3, or 958.5) along with procedure codes for acute dialysis. CKD was defined by ICD-9 codes for CKD (580, 580.x, 584.x, 586, 399.5). Advanced CKD was defined as CKD patients with concomitant erythropoiesis-stimulating agents [3]. The diagnosis accuracy of AKI and chronic kidney disease (CKD) by ICD-9-CM, as well as the definition of advanced CKD, were detailed in Supplementary File 1.
Renal function recovery was defined by withdrawal from dialysis before the 31st day after discharge. The patients who had successfully withdrawn from dialysis within hospitalization or within the 30-day period after hospital discharge were categorized into “AKI-recovery” group, while those had not withdrawn from dialysis within the 30-day period were categorized in “non-recovery” group. In an attempt to make a less biased comparison, we further constructed a control group which contained patients without AKI and who survived to discharge from the remaining hospitalized patients (non-AKI group).

2.3. Research Variables

The demographic data including age, gender, monthly income, hospital levels, baseline comorbidities, CHA2DS2-VASc scores before discharge, the frequency of outpatient visits and medications within one year following discharge, and the patients’ outcomes were identified and analyzed.

2.4. Outcome Variables

Our primary outcome was de novo AF development (ICD-9-CM code 427.31) after hospital discharge. To ensure the accuracy of the AF identification, the diagnosis of AF needed to be confirmed by a doctor, or doctors, and recorded in the diagnosis list of the chart more than twice in outpatient visits, or recorded in the discharge diagnosis list more than once in an inpatient setting. The diagnostic accuracy of AF based on the ICD-9-CM codes has been previously validated [11,12,13]. The secondary outcomes included major adverse cardiac event (MACE), ischemic stroke (ICD-9-CM code 433.x, 434.x, or 436), and hemorrhage stroke (ICD-9-CM code 431 or 432). MACE was defined as coronary artery disease-related death, nonfatal myocardial infarction, angina, and revascularizations.
We evaluated the influences of AKI-D on the risk of subsequent incident AF in the whole study population as well as in different subgroups. Furthermore, besides testing the association between AKI-D and these outcomes, we also evaluated the association between AF and the above-mentioned secondary outcomes. All enrolled patients were followed from the date of index hospital discharge to the first diagnosed outcomes and were censored at death unrelated to coronary artery disease, or at the end of the study (31 December 2010).

2.5. Statistical Analysis

Statistical analyses were performed using SAS 9.4 (SAS Institute, Cary, NC, USA). A two-sided p-value of ≤ 0.05 was considered statistically significant. Continuous variables were presented as the mean ± standard deviation (SD), and categorical variables were described as counts (percentages). The propensity scores were determined by multivariate logistic regression analysis. The Cox proportional hazard model was applied to examine the effect of non-recovery and AKI-recovery groups on subsequent AF development, as well as the influence of AF on other major adverse events. Because withdrawal from dialysis is likely to adhere to the condition of acute kidney disease, advanced CKD was identified to be a time-varying covariate [3,14].
By using the propensity score matching method, we proposed three matched groups (non-recovery group: AKI-recovery group: non-AKI group) on a 1:1:2 ratio. The propensity scores, containing the baseline characteristics and risk factors listed in Table 1, were calculated by multivariate logistic regression.
Several demographic factors were adjusted in the hazard models to evaluate the impact of AKI on AF, as well as the influence of incident AF to other adverse events. Variable selection was performed using stepwise multiple regression methods, with both p-to-enter and p-to-leave equal to 0.15. Final results of multivariate analyses were presented by hazard ratio (HR) and adjusted HR (aHR) with 95% confidence interval (CI). To exclude the confounding effect of subsequent impaired renal function and the influence of chronic dialysis, we additionally took “advanced CKD” as a “time-varying covariate” in the Cox proportional hazard model determining the adjusted risk for subsequent AF.

3. Results

3.1. Characteristics of the Three Groups

From the period of 1 January 2000, to 31 December 2010, a total of 10,091 AKI-D patients were eligible for inclusion. Among them, 5284 patients withdrew from dialysis for at least 30 days, but 4807 patients did not. After the exclusion and sampling processes, a total of 10,450 patients without AKI and who survived to hospital discharge were enrolled as control group. After propensity score matching on a 1:1:2 ratio, we categorized these patients into non-recovery (n = 2895), AKI-recovery (n = 2895) and non-AKI (n = 5790) groups (Figure 1).
The follow-up period of the whole post-matching cohort was 6.38 ± 3.83 years (median, 6.68 years; range, 0.02–10.99 years). Among the three groups, the non-AKI group was the oldest. While the gender, socioeconomic status, baseline comorbidities, as well as outpatient follow-up visits and medication status were not statistically different among the three groups (Table 1). All primary outcome (AF, p = 0.002) and secondary outcomes (MACE, ischemic stroke, hemorrhage stroke and all stroke, all p ≤ 0.001) were of statistical significance among the three groups (Table 2).

3.2. Risk of Incident Atrial Fibrillation

The occurrence time of AF since discharge was 3.24 ± 2.94 years (median, 0.24 years; range, 0.02–10.94 years). The incidence rates of AF were 0.94%, 1.14%, and 1.34% before propensity score matching in “non-AKI group”, “AKI-recovery group”, and “non-recovery group”, respectively.
After propensity score matching, the adjusted risks for subsequent de novo AF development were significantly higher in both the “non-recovery group” (aHR = 1.62; 95% CI, 1.36–1.94; p ≤ 0.001) and the “AKI-recovery group” (aHR = 1.30; 95% CI, 1.07–1.58; p ≤ 0.01) compared to the “Non-AKI group” (Table 3 and Figure 2). When compared with “non-recovery group”, the “AKI-recovery group” had a significantly lower risk of subsequent AF (aHR = 0.80; 95% CI, 0.616–0.933; p ≤ 0.01).

3.3. Risk of Incident Atrial Fibrillation in Subgroups

In the subgroup comparison, we found that “AKI-recovery group” has a significantly higher risk of incident AF than the “non-AKI group” in some subgroups. These subgroups included the patients without congestive heart failure (CHF) (aHR = 1.23; 95% CI, 1.06–1.42) and chronic obstructive pulmonary disease (aHR = 1.18; 95% CI, 1.01–1.36), those with CKD (aHR = 1.37; 95% CI, 1.05–1.80) and diabetes mellitus (aHR = 1.37; 95% CI, 1.05–1.79), as well as those receiving angiotensin-converting-enzyme inhibitor (ACEI)/angiotensin receptor blocker (ARB) (aHR = 1.27; 95% CI, 1.04–1.54) and beta-blocker (aHR = 1.49; 95% CI, 1.24–1.80). Additionally, the subgroups who received anticoagulants (aHR = 1.23; 95% CI, 1.00–1.51) had marginally significant increased risks of AF (Figure 3).

3.4. Risk of Major Adverse Events between Patients with and without Incident Atrial Fibrillation

After propensity score matching, the patients with de novo AF augmented risks for MACE (aHR = 2.11; 95% CI, 1.83–2.43), ischemic stroke (aHR = 1.33; 95% CI, 1.19–1.49) and all stroke (aHR = 1.28; 95% CI, 1.15–1.43) (all p ≤ 0.001) (Table 4).

4. Discussion

This study is the first to demonstrate a long-term association between AKI and the subsequent incident AF in critically ill patients using a large nationwide cohort. We found that the experience of severe AKI necessitating dialysis, even in the patients who only required temporary dialysis, was associated with increased risk of subsequent incident AF. Moreover, the experience of incident AF further carried a higher risk of MACE, and ischemic stroke in these patients. Since AKI carries an increased risk of coronary events [3], the increased AF following AKI could at least partially explain the elevated probability of MACE after AKI. Since the current study was designed using a selected population set from a nationwide database to evaluate the influence of AKI-D on the incident AF, the incidence rate of AF in this study was not comparable to other investigations [15,16] for an epidemiological purpose.
Most of the previous studies evaluating the association between AF and AKI were designed with a relatively short study period using patients who underwent cardiac surgeries [6,7]. One such study enrolled 446 cardiac surgical patients and found that the development of postoperative AKI was an independent factor associated with new-onset AF [6]. Another prospective study including 2572 cardiac surgical patients disclosed that the occurrence of postoperative AKI carried the 1.7-fold increased risk of developing postoperative AF [7]. In the subgroup comparison of the current study, although insufficient case numbers made the results not statistically significant, we also observed a tendency that patients receiving cardiac surgeries had a higher risk of incident AF than those without (aHR, 1.35 versus 1.14) (Figure 3). Nevertheless, the results from post-cardiac surgical patients probably could not be extensively applied to other patient settings, because the cardiac surgical patient is a special population with a higher risk of AF due to the relevant involvement of heart structurally and electrically [8,17]. Furthermore, the temporal association between AKI and AF was difficult to be clarified by these studies because of a short period of observation [7,9,10]. Compared to the previous studies, the clarified temporal association between in-hospital AKI and new-onset AF after hospital discharge, along with the long-term follow-up period in the current study, provides more strengthened evidence in this field.
In particular, we provide an important outcome estimate: that is, even after being adjusted with progression to subsequent advanced CKD or ESRD, in the worst of circumstances, AKI still independently contributes to subsequent incident AF or all-cause mortality. Therefore, the risk factors of the kidney injury that had engendered an AKI event may persist and eventually lead to future AF without direct causal association to the subsequent CKD.

4.1. Acute Kidney Injury and Atrial Fibrillation

An increasing body of evidence has shown that AKI is independently associated with the occurrence of AF [18]. AKI causes “remote organ injury” in the heart by the “classical” acute uremic effect, the inflammatory state and the modulating effect of the underlying morbidities associated with the injured kidneys, as well as the health care dilemma [5].
Several mechanisms are proposed for explaining the association between AKI and the elevated risk of AF: (1) The increased preload because of the AKI-induced salt and water retention at the acute stage could increase the cardiac structural change [19,20,21,22]. (2) The myocardial damage and impaired left ventricular function secondary to the enhanced neutrophil trafficking, endothelial dysfunction, myocyte apoptosis, as well as an increased level of inflammatory cytokines [19,20,21,22]. Additionally, fibroblast growth factor 23 (FGF-23), a biomarker for predicting early AKI presentation and cardiovascular morbidity and mortality [23], is disclosed to have markedly elevated serum level in patients with AKI. Higher FGF-23 levels were also found to be associated with elevated risk of AF development in both patients with and without clinical cardiovascular disease [24]. Thus, the enhanced AF incidence might be attributed to the atrial remodeling related to increased FGF-23 levels [25]. Taken together, these results provide a new perspective on the pathogenesis of sinoatrial dysfunction after AKI and open new avenues for treatment of the disease. (3) The activation of the sympathetic nervous system: previous studies have demonstrated that ischemia-reperfusion injury related AKI would activate a sympathetic reflex [26]. The activating sympathetic activation of the atrium would subsequently cause remodeling of the cardiac autonomic neural tissue and promote further persistence and recurrence of AF [27].
Of note, in the subgroup of “patients without CHF”, the finding that “recovery AKI-D patients had a higher risk of subsequent AF than non-AKI patients” was consistent with the results from our whole study population. This was reasonable when we considered this finding as a result without the confounding the effect of CHF. Nevertheless, diverse observations were disclosed in patients with CHF. In these patients, the indication of dialysis could more likely be “fluid overload”, which was associated with a more favorable prognosis than other indications. On the contrary, the mortality risk might be higher in patients with more severe AKI-D and CHF than those who only had AKI-D. Owing to the lack of the etiology and severity of congestive heart failure, and the indication of dialysis in the database for further analysis, the observation among patients with CHF should be inconclusive (Figure 3).
Additionally, the results among the subgroups of “hypertensive patients taking beta-blocker and ACEI/ARB” were also consistent with the findings from the whole population. These findings could be interpreted as the beneficial effects of the aforementioned anti-hypertensive medications minimizing the other confounding effects of the underlying cardiovascular disease. In contrast, the influences of AKI-D on AF were blunted in the patients not taking beta-blockers and ACEI/ARB. In fact, this subgroup contains two patient groups (patients without hypertension, and hypertensive patients not taking beta-blocker or ACEI/ARB for treatment) with different prognostic characteristics. Without doing further analysis, we could not draw any conclusions regarding this issue (Figure 3).

4.2. Major Adverse Events Associated with Atrial Fibrillation

In the current study, incident AF was associated with several major adverse events (Table 4). Similar findings were also demonstrated that the development of AKI-D was associated with increased risk of in-hospital mortality and adverse events among patients with AF [2]. Following our results, patients who have AF and AKI will have a high incidence of cardiovascular events, especially coronary events and ischemic stroke. Distant organ injury, a direct consequence of deleterious systemic effects following AKI, is an important issue for clinical care [5].
The association between AF and abnormal renal function is also an interesting and essential issue to be discussed. Among stable anticoagulated patients with AF, the presence of impaired baseline renal function was reported as an independent risk factor of the occurrence of thrombotic/vascular events, stroke, bleeding, and mortality [28,29]. During the two-year follow-up period, about 21% to 32% of patients had a rapid renal function deterioration (decline of estimated Glomerular filtration rate (eGFR) > 5–10 mL/min/1.73 m2) [28,30]. More renal function deterioration in absolute levels (decreases of eGFR ≥ 15–25 mL/min/1.73 m2 within two years) or relative percentage (decline of ≥ 25% eGFR) within 2 years was independently associated with the occurrence of stroke or death in these patients [29]. The independent risk factors for the development of severe kidney disease include diabetes, CHF, coronary artery disease and impaired baseline renal function [28]. However, normal or near-normal baseline renal function did not exclude the subsequent development of severe renal impairment over time [28].
Regarding the therapeutic strategy for AF, the old drug “Warfarin” is thought to be associated with higher risk for AKI, which is probably due to a higher risk of glomerular hemorrhage known as anticoagulation-related nephropathy [31]. In a randomized study enrolling 18,113 patients, Bohm et al. [32] found that patients receiving warfarin, as opposed to those receiving direct oral anticoagulants (DOAC), have more rapid eGFR decline after an average follow-up period of 30 months. Patients with poor international normalized ratio control (i.e., time in the therapeutic range <65%) tend to have a faster decline in eGFR. Similarly, Chan et al. [33] found that DOAC users had an overall 21% lower risk of AKI compared with warfarin users among Asians with nonvalvular AF. The beneficial effect was especially disclosed in among patients with eGFR > 60 mL/min/1.73 m2.
As to the association between AF and MACE, some information should be addressed. In a prospective cohort of 23,928 participants without coronary artery disease conducted by Soliman et al. [34], AF was associated with around two-fold elevated the risk of myocardial infarction within a 6.9 year (median 4.5 years) follow-up. Consistent findings were found in the study enrolling 4,608 participants by O’Neal et al. [35]. Within the median follow-up period of 12.2 years, 17.3% participants developed myocardial infarction, and AF independently carried 1.7 folds increase the risk of myocardial infarction. The increased cardiovascular risk of AF was further confirmed by a systemic review and meta-analysis including 15 cohort studies. Another work also found that AF is associated with an elevated risk of CHF and all-cause mortality in patients regardless of having coronary artery disease, and additionally with an elevated risk of subsequent myocardial infarction in those without coronary artery disease [36]. Of note, the influences of AF on increasing risk of cardiovascular events were more prominent in women than men and African-Americans than Caucasians [34,35,37].
Despite receiving oral warfarin treatment, patients with AF still have a high rate of cardiovascular events, including fatal/nonfatal myocardial infarction, cardiac revascularization, and cardiovascular death. The independent predictors of cardiovascular events included age, smoking, history of cerebrovascular and cardiac events, metabolic syndrome, CHF, and male gender [38].
The cardiovascular safety of oral anticoagulants has long been debated. By using a systemic review and meta-analysis, Tornyos et al., [39] disclosed that most of the DOACs were of safer than warfarin regarding the risk of subsequent myocardial infarction. A very recent work by Lee et al. [40] further exhibited a favorable effect of DOACs as compared to warfarin in reducing cardiac complications in AF. In the analysis using 31,739 patients, all DOACs were associated with lower risk of myocardial infarction than warfarin.
AKI is now considered a growing global health alert [41]. These findings are noteworthy from the perspective of a clinician caring for an individual with dialysis-requiring AKI. Considerable growth in AKI epidemiology and improvements in post-hospitalization resource utilization [42] allowed us to examine the impact of AKI on AF and identify a large vulnerable population with increased risk of cardiovascular events and all-cause mortality [3,4].

4.3. Limitations

Several limitations are worth mentioning. First, the nature of the observational study is subject to bias. Second, the study using administrative data is potentially limited by unmeasured confounding. The epidemiological data, the etiology, and severity of AKI, the indication of dialysis initiation, as well as some known risk factors including alcohol abuse and body mass index, which may further provide meaningful information regarding the association with subsequent AF, are not available in such a nationwide insurance research database. Third, the primary outcome of the current study is “non-valvular AF”. The observations accrued here might not be extrapolated to patients with “valvular AF”. Fourth, the precision of the disease diagnoses based on ICD-9-CM may be a concern. Fifth, although we have taken “advanced CKD” as a covariate in the Cox model when evaluating the adjusted risk for subsequent AF, the confounding effect of subsequent impaired renal function and chronic dialysis could not be completely excluded. Sixth, the start point of the follow-up period is indeed arguable. Some confounding effect from acute dialysis may exist, which probably increases the risk of AF in “AKI-recovery group”, if immediate period after discharge is included in the observation period. Nevertheless, changing the start point from “after discharge” to “the 31st day after discharge” decreases 11% AF events without changing the results of the current study.
However, despite widespread interest and extensive research on AF, our understanding of the etiology and pathogenesis of this disease process is still incomplete. As a result, there are no set primary preventive strategies in a place apart from general cardiac risk factor prevention goals. Our result seems intuitive that a better understanding of acute dialysis as the risk factors for AF would better prepare medical professionals to initially prevent or subsequently treat these patients and follow up with groups who could not wean from acute dialysis.

5. Conclusions

In this current nationwide cohort study, we found that the experience of severe AKI necessitating dialysis carries an increased risk of subsequent AF, even in those weaned from acute dialysis. Further study is needed to determine the mechanisms which link AKI and subsequent AF and to identify potentially modifiable risk factors to decrease the burden of AF and subsequent risk of major adverse events.

Supplementary Materials

The following are available online at https://www.mdpi.com/2077-0383/7/9/248/s1, Supplementary File 1. Validation of AKI code by NSARF; Validation of CKD code by NSARF; Definition of advanced CKD.

Author Contributions

Formal analysis: C.-C.S., Y.-T.H., and V.-C.W.; Investigation: V.-C.W.; supervision: V.-C.W.; validation: C.-C.S., J.-J.W., Y.-F.L., L.C., E.C., W.-P.C., L.-J.T., C.-H.W., and Y.-T.H.; writing—original draft: C.-C.S., W.C.K., and Y.-T.H.; writing—review and editing: C.-C.S., J.-J.W., Y.-F.L., L.C., E.C., W.-P.C., L.-J.T., C.-H.W., and V.-C.W.

Funding

This study was supported by Taiwan National Science Council (101-2314-B-002-085-MY3, 102-2314-B-002-140-MY2, 104-2314-B-002-125-MY3, 106-2314-B-002-166-MY3, 107-2314-B-002-026-MY3), National Health Research Institutes (PH-102-SP-09), National Taiwan University Hospital (106-FTN20, 106-P02, UN106-014, 106-S3582, 105-P05, VN105-04, 105-S3061, 107-S3809, 107-T02), and the Ministry of Science and Technology (MOST) of the Republic of China (Taiwan) (grant number, MOST 106-2321-B-182-002).

Acknowledgments

The study was partly based on data provided by the National Health Insurance Administration, Ministry of Health and Welfare, Taiwan. The interpretation and conclusions shown in this paper do not represent those of National Health Insurance Administration, Ministry of Health and Welfare, National Health Research Institutes, or the National Taiwan University Hospital. We also express our sincere gratitude to all staff of the Taiwan Clinical Trial Consortium, TCTC.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Study flow diagram. Abbreviations: AF, atrial fibrillation; MV, mitral valve; PDC, peritoneal dialysis catheter; VA, vascular access.
Figure 1. Study flow diagram. Abbreviations: AF, atrial fibrillation; MV, mitral valve; PDC, peritoneal dialysis catheter; VA, vascular access.
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Figure 2. Cumulative incidences of atrial fibrillation among the three groups. Note: The analysis was performed using the Cox proportional hazard method with adjustment to the Charlson Comorbidity Index, age, gender and advanced chronic kidney disease (time-varying covariate). *** denotes p < 0.001, ** denotes p < 0.01. Abbreviations: AF, atrial fibrillation; AKI, acute kidney injury.
Figure 2. Cumulative incidences of atrial fibrillation among the three groups. Note: The analysis was performed using the Cox proportional hazard method with adjustment to the Charlson Comorbidity Index, age, gender and advanced chronic kidney disease (time-varying covariate). *** denotes p < 0.001, ** denotes p < 0.01. Abbreviations: AF, atrial fibrillation; AKI, acute kidney injury.
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Figure 3. Subgroup comparisons for the risk of atrial fibrillation. Note: The forest plot for the comparison of AKI-recovery group versus non-AKI group was drawn using the before-matching population with adjustment to the Charlson Comorbidity Index, age, and gender. Abbreviations: ACEI, angiotensin-converting enzyme inhibitor; ARB, angiotensin receptor blocker; AF, atrial fibrillation; AKI, acute kidney injury; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease.
Figure 3. Subgroup comparisons for the risk of atrial fibrillation. Note: The forest plot for the comparison of AKI-recovery group versus non-AKI group was drawn using the before-matching population with adjustment to the Charlson Comorbidity Index, age, and gender. Abbreviations: ACEI, angiotensin-converting enzyme inhibitor; ARB, angiotensin receptor blocker; AF, atrial fibrillation; AKI, acute kidney injury; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease.
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Table 1. Comparisons of the baseline characteristics among the three groups.
Table 1. Comparisons of the baseline characteristics among the three groups.
Before Matching
n = 20,540
After Matching
n = 11,680
VariablesNon-Recovery
n = 4807
AKI-Recovery
n = 5283
Non-AKI
n = 10,450
pNon-Recovery
n = 2895
AKI-Recovery
n = 2895
Non-AKI
n = 5790
p
Age, years59.7 ± 15.260.3 ± 17.759.8 ± 16.1<0.00159.6 ± 15.760.2 ± 17.260.6 ± 15.70.01
Gender, men2390 (49.7%)3172 (60.0%)5540 (53.0%)<0.0011542 (53.3%)1535 (53.0%)3178 (54.9%)0.68
Monthly income, NTD <0.001 0.21
<19,1001700 (35.4%)2103 (39.8%)3649 (34.9%) 1064 (36.8%)1099 (38.0%)2203 (38.1%)
19,100–41,9992449 (51.0%)2434 (46.1%)5285 (50.6%) 1443 (49.8%)1378 (47.6%)2925 (50.5%)
≥42,000658 (13.7%)746 (14.1%)1516 (14.5%) 388 (13.4%)418 (14.4%)762 (13.2%)
Hospital level * <0.001 <0.001
Level 11916 (39.9%)2648 (50.1%)4046 (38.7%) 1218 (42.1%)1184 (40.9%)2641 (45.6%)
Level 22092 (43.5%)2158 (40.84%)3972 (38.0%) 1249 (43.1%)1340 (46.3%)2282 (39.4%)
Levels 3 + 4799 (16.6%)477 (9.0%)2,432 (23.3%) 428 (14.8%)371 (12.8%)967 (16.7%)
Baseline Comorbidities
CCI2.8 ± 1.62.1 ± 1.52.4 ± 1.6<0.0012.4 ± 1.62.4 ± 1.62.4 ± 1.60.29
Myocardial infarction22 (0.5%)27 (0.5%)37 (0.4%)0.3112 (0.4%)10 (0.4%)22 (0.4%)0.91
Congestive heart failure287 (6.0%)215 (4.1%)457 (4.4%)<0.001131 (4.5%)136 (4.7%)279 (4.8%)0.91
Peripheral vascular disease26 (0.5%)34 (0.6%)54 (0.5%)0.5913 (0.5%)17 (0.6%)39 (0.7%)0.47
Cerebrovascular disease284 (5.9%)335 (6.3%)629 (6.0%)0.62175 (6.0%)173 (6.0%)345 (6.0%)0.94
Dementia24 (0.5%)74 (1.4%)68 (0.7%)<0.00120 (0.7%)19 (0.7%)35 (0.6%)0.85
COPD333 (6.9%)362 (6.9%)640 (6.1%)0.08179 (6.2%)209 (7.2%)414 (7.2%)0.23
Rheumatologic disease47 (1.0%)61 (1.2%)103 (1.0%)0.5730 (1.0%)28 (1.0%)69 (1.2%)0.66
Peptic ulcer disease403 (8.4%)350 (6.6%)691 (6.6%)<0.001205 (7.1%)207 (7.2%)450 (7.8%)0.55
Hemiplegia or paraplegia10 (0.2%)20 (0.4%)25 (0.2%)0.188 (0.3%)9 (0.3%)13 (0.2%)0.71
CKD2396 (49.8%)1063 (20.1%)3225 (30.9%)<0.0011005 (34.7%)932 (32.2%)1910 (33.0%)0.06
Liver disease a178 (3.7%)204 (3.9%)355 (3.4%)0.3096 (3.3%)99 (3.4%)192 (3.3%)0.93
Tumor86 (1.8%)137 (2.6%)195 (1.9%)0.00462 (2.1%)56 (1.9%)113 (2.0%)0.77
Diabetes1254 (26.1%)1186 (22.5%)2653 (25.4%)<0.001687 (23.7%)708 (24.5%)1504 (26.0%)0.16
CHA2DS2-VASc † <0.001 <0.001
0211 (4.4%)706 (13.4%)1018 (9.7%) 204 (7.1%)200 (6.9%)400 (6.9%)
1890 (18.5%)996 (18.9%)1979 (18.9%) 636 (22.0%)631 (21.8%)1125 (19.4%)
21268 (26.4%)976 (18.5%)1908 (18.3%) 834 (28.8%)613 (21.2%)1144 (19.8%)
3885 (18.4%)858 (16.2%)1896 (18.1%) 534 (18.5%)505 (17.4%)1124 (19.4%)
4706 (14.7%)683 (12.9%)1462 (14.0%) 438 (15.1%)410 (14.2%)894 (15.4%)
5456 (9.5%)483 (9.1%)1123 (10.8%) 279 (9.6%)307 (10.6%)691 (11.9%)
6245 (5.1%)350 (6.6%)660 (6.3%) 194 (6.7%)158 (5.5%)306 (5.3%)
7120 (2.5%)174 (3.3%)296 (2.8%) 98 (3.4%)91 (3.1%)155 (2.7%)
824 (0.5%)50 (1.0%)99 (1.0%) 23 (0.8%)27 (0.9%)45 (0.8%)
92 (0.04%)7 (0.1%)9 (0.1%) 2 (0.1%)3 (0.1%)6 (0.1%)
Note: Continuous variables were presented as a mean ± standard deviation, and statistically analyzed using one-way analysis of variance, while categorical variables were described as counts (percentages) and analyzed using Chi-squared tests. † denotes “before discharge”; a moderate or severe liver disease. * Level 1, 2, 3 and 4 denote medical center, regional hospital, district hospital and local medical clinic, respectively; Abbreviations: ACEI, angiotensin-converting enzyme inhibitor; ARB, angiotensin receptor blocker; CCI, Charlson Comorbidity Index; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease; ESRD, end-stage renal disease; Gr, group; MACE, major adverse cardiac event; NSAID, non-steroid anti-inflammatory drug; NTD, new Taiwan Dollar.
Table 2. Comparisons of the variables within one year following hospital discharge and outcomes among the three groups.
Table 2. Comparisons of the variables within one year following hospital discharge and outcomes among the three groups.
Before Matching
n = 20,540
After Matching
n = 11,680
VariablesNon-Recovery
n = 4807
AKI-Recovery
n = 5283
Non-AKI
n = 10,450
pNon-Recovery
n = 2895
AKI-Recovery
n = 2895
Non-AKI
n = 5790
p
Outpatient visits, times < 0.001 0.09
0–5 visits4596 (95.6%)4932 (93.3%)9297 (89.0%) 2763 (95.4%)2747 (94.9%)5530 (95.5%)
6–10 visits121 (2.5%)151 (2.9%)450 (4.3%) 67 (2.3%)74 (2.6%)190 (3.3%)
11–15 visits66 (1.4%)123 (2.3%)479 (4.6%) 47 (1.6%)50 (1.7%)123 (2.1%)
>15 visits24 (0.5%)77 (1.5%)224 (2.1%) 18 (0.6%)24 (0.8%)47 (0.8%)
Medication for hypertension
Alpha-Blocker571 (11.9%)629 (11.9%)1000 (9.6%)<0.001358 (12.4%)341 (11.8%)698 (12.1%)0.74
Beta-Blocker2000 (41.6%)1898 (35.9%)3904 (37.4%)<0.0011129 (39.0%)1143 (39.5%)2369 (40.9%)0.52
Calcium-Channel Blocker3006 (62.5%)2610 (49.4%)4986 (47.7%)<0.0011614 (55.8%)1630 (56.3%)3360 (58.0%)0.49
Diuretic1707 (35.5%)2485 (47.0%)4168 (39.9%)<0.0011193 (41.2%)1231 (42.5%)2522 (43.6%)0.35
ACEI/ARB1725 (35.9%)1791 (33.9%)4176 (40.0%)<0.0011057 (36.5%)1073 (37.1%)2231 (38.5%)0.44
Other Medication
Anti-diabetic drugs1468 (30.5%)1595 (30.2%)3230 (30.9%)0.57849 (29.3%)887 (30.6%)1846 (31.9%)0.16
Aspirin411 (8.6%)396 (7.5%)1259 (12.1%)<0.001246 (8.5%)247 (8.5%)517 (8.9%)0.88
Clopidogrel143 (3.0%)291 (5.5%)443 (4.2%)<0.001104 (3.6%)114 (3.9%)212 (3.7%)0.70
Ticlopidine208 (4.33%)117 (2.2%)370 (3.5%)<0.00185 (2.9%)86 (3.0%)194 (3.4%)0.57
Dipyridamole1059 (22.0%)792 (15.0%)2224 (21.3%)<0.001538 (18.6%)555 (19.2%)1147 (19.8%)0.61
Nitrate868 (18.1%)1050 (19.9%)1262 (12.1%)<0.001501 (17.3%)524 (18.1%)1053 (18.2%)0.71
Statin519 (10.8%)628 (11.9%)1524 (15.6%)<0.001334 (11.5%)355 (12.3%)743 (12.8%)0.35
Proton pump inhibitor26 (0.5%)57 (1.1%)64 (0.6%)0.00124 (0.8%)22 (0.8%)42 (0.7%)0.84
NSAID3062 (63.7%)2832 (53.6%)7863 (75.2%)<0.0011811 (65.6%)1833 (63.3%)3707 (64.0%)0.84
H2-blocker1173 (24.4%)1232 (23.3%)2718 (26.0%)<0.001692 (23.9%)739 (25.5%)1535 (26.5%)0.09
Outcome ‡‡
Atrial fibrillation384 (8.0%)274 (5.2%)759 (7.3%)<0.001214 (7.4%)149 (5.2%)383 (6.6%)0.002
MACE 830 (17.3%)617 (11.7%)1449 (13.9%)<0.001467 (16.1%)333 (11.5%)772 (13.3%)<0.001
Ischemia Stroke1226 (25.5%)824 (15.6%)4195 (40.1%)<0.001696 (24.0%)481 (16.6%)2286 (39.5%)<0.001
Hemorrhage Stroke367 (7.6%)229 (4.3%)1176 (11.3%)<0.001222 (7.7%)140 (4.8%)719 (13.7%)<0.001
All stroke1399 (29.1%)944 (17.9%)4748 (45.4%)<0.001802 (27.7%)555 (19.2%)2617 (45.2%)<0.001
Advanced CKD988 (20.6%)723 (13.7%)702 (6.8%)<0.001822 (28.4%)482 (16.6%)423 (7.3%)<0.001
Mortality2486 (51.7%)2204 (41.7%)3025 (29.0%)<0.0011482 (51.2%)1188 (41.0 %)1890 (32.6%)<0.001
Note: Continuous variables were presented as a mean ± standard deviation, and statistically analyzed using one-way analysis of variance, while categorical variables were described as counts (percentages) and analyzed using Chi-squared tests. † denotes “before discharge”; denotes “within one year following hospital discharge”; ‡‡ denotes “follow-up until death or the end of the study (31 December 2010)”; Abbreviations: ACEI, angiotensin-converting enzyme inhibitor; ARB, angiotensin receptor blocker; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease; Gr, group; MACE, major adverse cardiac event; NSAID, non-steroid anti-inflammatory drug; NTD, new Taiwan dollar.
Table 3. Incidences and risks of atrial fibrillation development among the three groups.
Table 3. Incidences and risks of atrial fibrillation development among the three groups.
Atrial FibrillationCrude RiskAdjusted Risk Adjusted Risk ‡‡
EventsPerson-YearsIncidence Rate §HR (95% CI)aHR (95% CI)aHR (95% CI)
Before propensity score-matching
non-AKI75981,186.670.94refrefref
AKI-recovery27424,007.061.141.08 (0.94–1.24)1.16 (1.00–1.33)1.15 (1.10–1.32)
non-recovery38428,726.821.341.36 *** (1.20–1.54)1.62 *** (1.43–1.83)1.58 *** (1.39–1.80)
After propensity score-matching
non-AKI38345,562.790.84refrefref
AKI-recovery14913,462.421.111.18 (0.98–1.43)1.33 ** (1.10–1.61)1.30 ** (1.07–1.58)
non-recovery21417,088.481.251.42 *** (1.20–1.68)1.72 *** (1.45–2.03)1.62 *** (1.36–1.94)
Note: Cox proportional hazard model was applied to exam the effect of dialysis-requiring AKI on subsequent atrial fibrillation development. § presented as “100 person-year”. Adjusted for Charlson Comorbidity Index, age, and gender. ‡‡ Adjusted for Charlson Comorbidity Index, age, gender, and advanced chronic kidney disease (time-varying covariate). ** denotes p-value ≤ 0.01; *** denotes p-value ≤ 0.001. Abbreviations: aHR, adjusted hazard ratio; CI, confidence interval; Gr, group; HR, hazard ratio.
Table 4. Incidences and risks of major adverse events between patients with and without atrial fibrillation.
Table 4. Incidences and risks of major adverse events between patients with and without atrial fibrillation.
AFNon-AFCrude RiskAdjusted Risk
EventPerson-YearIncidence Rate §EventPerson-YearIncidence Rate §HR (95% CI)HR (95% CI)
Before propensity score-matching
MACE 9879230.5910.692466117,959.622.092.25 ** (2.03–2.49)1.88 ** (1.70–2.09)
Hemorrhagic stroke16110,381.481.551611121,543.881.331.20 * (1.02–1.41)1.24 * (1.05–1.46)
Ischemic stroke6677077.349.42557896,917.205.761.62 ** (1.49–1.75)1.31 ** (1.21–1.42)
Total stroke 7146867.7810.40637793,540.776.821.50 ** (1.39–1.62)1.26 ** (1.17–1.36)
After propensity score-matching
MACE 5114729.3310.80133767,595.801.982.49 ** (2.17–2.86)2.11 ** (1.83–2.43)
Hemorrhagic stroke895321.741.6799268,827.181.441.20 (0.97–1.49)1.23 (0.99–1.53)
Ischemic stroke3333766.118.84313055,361.135.651.57 ** (1.40–1.75)1.33 ** (1.19–1.49)
All Stroke3623654.729.90361253,357.196.771.46 ** (1.31–1.63)1.28 ** (1.15–1.43)
Note: Cox proportional hazard model was applied to exam the effect of dialysis-requiring AKI on subsequent atrial fibrillation development. § presented as “100 person-year”. Adjusted to Charlson Comorbidity Index, age, and gender. * denotes p-value ≤ 0.05; ** denotes p-value ≤ 0.001; Abbreviations: aHR, adjusted hazard ratio; CI, confidence interval; ESRD, end-stage renal disease; HR, hazard ratio; MACE, major adverse cardiac event.

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Shiao, C.-C.; Kan, W.-C.; Wang, J.-J.; Lin, Y.-F.; Chen, L.; Chueh, E.; Huang, Y.-T.; Chiang, W.-P.; Tseng, L.-J.; Wang, C.-H.; et al. Risk of Incident Non-Valvular Atrial Fibrillation after Dialysis-Requiring Acute Kidney Injury. J. Clin. Med. 2018, 7, 248. https://doi.org/10.3390/jcm7090248

AMA Style

Shiao C-C, Kan W-C, Wang J-J, Lin Y-F, Chen L, Chueh E, Huang Y-T, Chiang W-P, Tseng L-J, Wang C-H, et al. Risk of Incident Non-Valvular Atrial Fibrillation after Dialysis-Requiring Acute Kidney Injury. Journal of Clinical Medicine. 2018; 7(9):248. https://doi.org/10.3390/jcm7090248

Chicago/Turabian Style

Shiao, Chih-Chung, Wei-Chih Kan, Jian-Jhong Wang, Yu-Feng Lin, Likwang Chen, Eric Chueh, Ya-Ting Huang, Wen-Po Chiang, Li-Jung Tseng, Chih-Hsien Wang, and et al. 2018. "Risk of Incident Non-Valvular Atrial Fibrillation after Dialysis-Requiring Acute Kidney Injury" Journal of Clinical Medicine 7, no. 9: 248. https://doi.org/10.3390/jcm7090248

APA Style

Shiao, C. -C., Kan, W. -C., Wang, J. -J., Lin, Y. -F., Chen, L., Chueh, E., Huang, Y. -T., Chiang, W. -P., Tseng, L. -J., Wang, C. -H., & Wu, V. -C. (2018). Risk of Incident Non-Valvular Atrial Fibrillation after Dialysis-Requiring Acute Kidney Injury. Journal of Clinical Medicine, 7(9), 248. https://doi.org/10.3390/jcm7090248

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