Literature DB >> 27301557

Access to alcohol and heart disease among patients in hospital: observational cohort study using differences in alcohol sales laws.

Jonathan W Dukes1, Thomas A Dewland2, Eric Vittinghoff3, Jeffrey E Olgin1, Mark J Pletcher2, Judith A Hahn4, Rachel A Gladstone1, Gregory M Marcus1.   

Abstract

OBJECTIVE: To investigate the relation between alcohol consumption and heart disease by using differences in county level alcohol sales laws as a natural experiment.
DESIGN: Observational cohort study using differences in alcohol sales laws.
SETTING: Hospital based healthcare encounters in Texas, USA. POPULATION: 1 106 968 patients aged 21 or older who were residents of "wet" (no alcohol restrictions) and "dry" (complete prohibition of alcohol sales) counties and admitted to hospital between 2005 and 2010, identified using the Texas Inpatient Research Data File. OUTCOME MEASURES: Prevalent and incident alcohol misuse and alcoholic liver disease were used for validation analyses. The main cardiovascular outcomes were atrial fibrillation, acute myocardial infarction, and congestive heart failure.
RESULTS: Residents of wet counties had a greater prevalence and incidence of alcohol misuse and alcoholic liver disease. After multivariable adjustment, wet county residents had a greater prevalence (odds ratio 1.05, 95% confidence interval 1.01 to 1.09; P=0.007) and incidence (hazard ratio 1.07, 1.01 to 1.13; P=0.014) of atrial fibrillation, a lower prevalence (odds ratio 0.83, 0.79 to 0.87; P<0.001) and incidence (hazard ratio 0.91, 0.87 to 0.99; P=0.019) of myocardial infarction, and a lower prevalence (odds ratio 0.87, 0.84 to 0.90; P<0.001) of congestive heart failure. Conversion of counties from dry to wet resulted in statistically significantly higher rates of alcohol misuse, alcoholic liver disease, atrial fibrillation, and congestive heart failure, with no detectable difference in myocardial infarction.
CONCLUSIONS: Greater access to alcohol was associated with more atrial fibrillation and less myocardial infarction and congestive heart failure, although an increased risk of congestive heart failure was seen shortly after alcohol sales were liberalized. Published by the BMJ Publishing Group Limited. For permission to use (where not already granted under a licence) please go to http://group.bmj.com/group/rights-licensing/permissions.

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Year:  2016        PMID: 27301557      PMCID: PMC4908314          DOI: 10.1136/bmj.i2714

Source DB:  PubMed          Journal:  BMJ        ISSN: 0959-8138


Introduction

Alcohol is the most widely consumed drug in the United States.1 After the end of Prohibition, multiple states enacted laws permitting counties and local municipalities to place restrictions on the sale of alcohol. The most populous state to enact such laws was Texas, where “local option” laws have created a patchwork of counties where alcohol sales are unrestricted (“wet” counties), partially restricted, or completely prohibited (“dry” counties). The health effects of such laws have not been previously studied. Heart disease remains the most common cause of death in the world.2 Alcohol may be an important determinant of heart disease, but the evidence is complex and often conflicting. Although the available evidence suggests that alcohol may increase the risk of atrial fibrillation3 4 5 6 7 and reduce the risk of myocardial infarction,8 9 10 11 the data remain inconsistent.3 4 5 6 7 8 11 12 13 14 15 These results rely almost entirely on self reported alcohol use. Given the inaccuracies inherent to such ascertainment,16 17 misclassification of alcohol consumption may be an important problem that is challenging to overcome. In the absence of a controlled clinical trial, this primary predictor (alcohol consumption) is determined by the choice of each individual in all population based studies that have been described, setting the stage for substantial confounding that even the most comprehensive multivariable adjustment may be inadequate to overcome. As access to alcohol in residents of wet compared with dry counties is essentially assigned, we sought to use that assignment as a natural experiment. A particularly unique opportunity arises from counties that have converted from dry to wet, providing a comparison (the change in access to alcohol) within the same population that should minimize effects from both measured and unmeasured confounders. We therefore sought to investigate the relation between alcohol sales laws and hospital admissions for common cardiac diseases.

Methods

Information on the alcohol sales laws and local option election results for all counties in the state of Texas from 2005 and 2010 came from the Texas Alcoholic Beverage Commission. We also obtained all county-wide and municipal local option election records from 1937 to 2010 from the same source and reviewed them to validate a county’s alcohol sales status. We defined a dry county as a county that prohibited all alcohol sales in all locations in the county throughout the follow-up time period and a wet county as one that had no prohibition on alcohol sales over the course of the follow-up period. We did two analyses. Firstly, we did a double cohort analysis wherein we compared cross sectional and longitudinal patient level outcomes among patients residing in wet versus dry counties, excluding patients residing in counties with partial restrictions on alcohol sales or where alcohol laws had changed during the study period. We used a double cohort design to longitudinally examine outcomes among two groups, each selected on the basis of the primary predictor (in this case, the presence versus absence of alcohol sales laws restrictions). Secondly, we did longitudinal analyses of a cohort of residents in counties that changed alcohol sales laws during the study period by comparing outcomes before and after the conversion. We obtained county level median income by using the 2010 census data from the United States Census Bureau (http://quickfacts.census.gov). County hospital bed counts came from the Dartmouth Atlas of Healthcare (http://www.dartmouthatlas.org). We used the Texas Inpatient Research Data File obtained from the Texas Department of State Health Services (Austin, TX) to identify all patients older than 21 years admitted to a hospital in the state of Texas between 1 January 2005 and 31 December 2009 (n=4 832 460). We linked individual databases for each calendar year by using an encrypted linkage variable specific to each patient, allowing for longitudinal follow-up of an individual over time. We excluded patients with missing admission date, county of residence, age, sex, race, or ethnicity data or residence outside of the state of Texas (n=195 741). Patients were entered into the study cohort at the time of their first admission and followed until 31 December 2009 for diagnosis of the outcome of interest or censoring at the time of inpatient death. The admitting institution recorded age, sex, race, ethnicity, and county of residence at each healthcare encounter. We defined patients’ county of residence at the time of their first hospital admission. Up to 24 ICD-9 (international classification of diseases, 9th revision) codes were provided for each encounter to identify outcomes of interest and relevant covariates (supplementary table A). Dichotomous medical comorbidities were accumulated at each healthcare encounter and carried forward over time. We did a proof of concept analysis using alcohol misuse and alcoholic liver disease as outcomes. The primary heart disease outcomes of interest were atrial fibrillation, acute myocardial infarction, and congestive heart failure. As postoperative atrial fibrillation may have a different underlying mechanism than atrial fibrillation occurring outside of the acute surgical setting, we did not include diagnoses of atrial fibrillation in the analysis if the patient had undergone cardiothoracic surgery during the same hospital admission or within the previous 30 days. For the analyses of prevalent diseases, we used only ICD-9 codes present at the time of the first hospital admission. In analyses of incident disease, we excluded patients with the outcome of interest at the time of their first hospital admission.

Patient involvement

This research used de-identified patient data. No patients were involved in setting the research question or the outcome measures, nor were they involved in developing plans for the design or implementation of the study. No patients were asked to advise on interpretation or writing up of results. There are no plans to disseminate the results of the research to study participants or the relevant patient community.

Statistical analysis

Continuous variables with a normal distribution are presented as means and standard deviations and were compared using Student’s t test. Non-normally distributed continuous variables are presented as medians with interquartile ranges and were compared using Kruskal-Wallis tests. Associations between categorical variables were assessed using χ2 tests. We used logistic regression for multivariable analyses of dichotomous outcomes. We estimated differences in the cumulative incidence of each outcome by using a Fine Gray competing risks model,18 with in-hospital death treated as a competing risk. We used Cox proportional hazards models to investigate incident outcomes after multivariable adjustment. Patients who had more than one outcome, such as atrial fibrillation, then myocardial infarction, then congestive heart failure, would remain in the model until the outcome of interest occurred; the relevant comorbidities (such as atrial fibrillation or myocardial infarction before congestive heart failure) were included accordingly as time updated covariates. We tested hazard proportionality assumptions graphically using smoothed scaled Schoenfeld estimates, which showed no violation of the proportional hazard assumption. All analyses were controlled for potential confounders identified a priori that were available in the administrative dataset and selected on the basis of biological plausibility and convention determined by previous literature. Owing to significant differences in the baseline covariates between the wet and dry counties, we also did propensity adjusted and sensitivity analyses. We used propensity score methods to estimate adjusted relative hazards for the association of baseline county wet-dry status with alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure by using the multivariable adjusted Cox models. The Cox models were then adjusted for the tenth of the propensity score. Selection of covariates for integration into these propensity scores was based on published recommendations to include all available potential confounders identified a priori while avoiding inclusion of mediators or colliders and erring on the side of inclusion when potential confounders were known to be particularly important to the outcome (as opposed to only the predictor) relevant to the analysis of interest.19 20 The specific covariates included for each outcome are listed in supplementary table B. We evaluated the models used to estimate the propensity scores by plotting the observed versus expected percentages living in wet counties (supplementary figure). Visual inspection of these plots showed acceptable calibration. Given known differences in cardiovascular outcomes by race, ethnicity, and sex,7 21 we did sensitivity analyses by restricting the cohorts to non-Hispanic white men. To compare rates of admission for heart disease before and after changes in alcohol sales laws, we used logistic models to compare disease prevalence in the two periods among admitted residents of the counties that changed wet/dry status. We also did county level ecologic analyses, in which we calculated population based admission rates by using the population of the each county. We then used Poisson models to estimate and compare adjusted admission rates. We used Stata 12 for all analyses. We considered a two tailed P value less than 0.05 to be statistically significant.

Results

Twenty nine counties were identified as dry, 47 counties were wet, and seven counties changed from dry to wet. After applying exclusion criteria, we identified 4 662 123 patients aged 21 or older who were admitted to hospital in the state of Texas between 1 January 2005 and 31 December 2009. The dry counties had prohibited alcohol sales since Prohibition, and the most recent year that any of the wet counties had been dry was 1959.

Patient level analyses in wet versus dry counties

Among 1 046 759 wet county residents with at least one hospital admission, a total of 2 388 700 admissions occurred. In dry counties, 60 209 residents were admitted to hospital, resulting in 139 192 admissions. Table 1 shows the baseline characteristics of these patients. Table 2 shows the crude (unadjusted) prevalence and incidence of each outcome, as well as the same summary statistics restricted to non-Hispanic white men, in wet and dry counties.
Table 1

Baseline characteristics of patients admitted to hospital stratified by dry and wet county residence. Values are numbers (percentages) unless stated otherwise

VariableDry county (n=60 209)Wet county (n=1 046 759)P value
Median (interquartile range) age, years60 (42-74)50 (32-69)<0.001
Female sex35 549 (59)687 465 (66)<0.001
Race:
 White49 435 (82)581 327 (56)<0.001
 Black5050 (8)57 999 (6)
 Asian/Pacific Islander84 (0.1)12 277 (1)
 Native American452 (0.8)15 272 (1)
 Other5077 (8)378 402 (36)
Hispanic ethnicity6345 (11)554 239 (53)<0.001
Obesity4414 (7)76 719 (7)0.99
Hypertension27 206 (45)386 725 (37)<0.001
Coronary artery disease12 508 (21)144 579 (14)<0.001
Diabetes12 174 (20)221 406 (21)<0.001
Chronic kidney disease1940 (3)39 843 (4)<0.001
Valvular heart disease2379 (4)29 126 (3)<0.001
Pulmonary disease9619 (16)103 603 (10)<0.001
Congestive heart failure6560 (11)78 847 (8)<0.001
Acute myocardial infarction2392 (4)27 395 (3)<0.001
Atrial fibrillation4543 (8)52 002 (5)<0.001
Table 2

Crude (unadjusted) prevalence and incidence of alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure in wet and dry counties

OutcomePrevalence (%)Median (interquartile range) years of follow-upIncidence (per 1000 person years)
WetDryWetDry
Alcohol misuse2.62.52.9 (1.5-4.1)3.62.5
 Sensitivity*5.04.42.9 (1.4-4.1)4.73.5
Alcoholic liver disease0.70.42.9 (1.5-4.1)1.40.8
 Sensitivity*0.90.62.9 (1.4-4.1)2.21.3
Atrial fibrillation4.97.52.9 (1.5-4.1)7.410.0
 Sensitivity*10.710.02.8 (1.4-4.1)12.813.9
Acute myocardial infarction2.64.02.9 (1.5-4.1)5.46.7
 Sensitivity*4.86.32.9 (1.4-4.1)7.48.7
Congestive heart failure7.110.42.9 (1.5-4.0)12.516.0
 Sensitivity*10.512.22.8 (1.4-4.0)16.918.5

*Sensitivity analysis was restricted to non-Hispanic white men.

Baseline characteristics of patients admitted to hospital stratified by dry and wet county residence. Values are numbers (percentages) unless stated otherwise Crude (unadjusted) prevalence and incidence of alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure in wet and dry counties *Sensitivity analysis was restricted to non-Hispanic white men.

Differences in alcohol misuse and alcoholic liver disease as proof of concept

After adjustment for age, race, ethnicity, and sex, the prevalence of alcohol misuse was significantly greater among residents of wet counties than in dry counties (fig 1). Also after multivariable adjustment, we found a 36% greater risk of incident alcohol misuse among admitted residents of wet counties than in dry counties (hazard ratio 1.36, 1.23 to 1.50; P<0.001). After adjustment for the same covariates, prevalent alcoholic liver disease was also more common in admitted wet county residents (fig 1). Similarly, incident alcoholic liver disease was higher among patients residing in wet counties, with an adjusted hazard ratio of 1.81 (1.51 to 2.16; P<0.001).

Fig 1 Association between wet county residence and prevalent hospital admissions. Squares represent main and propensity score adjusted analyses odds ratios for prevalent alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure in wet county residents compared with dry county residents (see text for list of covariates included in each model)

Fig 1 Association between wet county residence and prevalent hospital admissions. Squares represent main and propensity score adjusted analyses odds ratios for prevalent alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure in wet county residents compared with dry county residents (see text for list of covariates included in each model)

Cardiovascular diagnoses

Atrial fibrillation was significantly more prevalent among wet county residents after adjustment for age, race, ethnicity, sex, diabetes, hypertension, obesity, tobacco abuse, congestive heart failure, coronary artery disease, lung disease, and valvular disease (fig 1). Similarly, wet counties residents had a significantly greater adjusted incidence of atrial fibrillation than did patients residing in dry counties (hazard ratio 1.07, 1.01 to 1.13; P=0.014). After adjustment for age, race, ethnicity, sex, diabetes, hypertension, obesity, and tobacco use, wet county resident status was associated with a significantly lower odds of acute myocardial infarction on the first hospital admission observed (fig 1). Residents of wet counties also had a significantly lower risk of incident acute myocardial infarction (adjusted hazard ratio 0.91, 0.87 to 0.99; P=0.019). After multivariable adjustment for age, race, ethnicity, sex, diabetes, hypertension, obesity, tobacco use, acute myocardial infarction, and coronary artery disease, wet county residents had a significantly lower odds of prevalent congestive heart failure (fig 1). After adjustment for the same potential cofounders, wet country residents had a decreased risk of incident congestive heart failure that did not meet statistical significance (adjusted hazard ratio 0.98, 0.94 to 1.03; P=0.431).

Propensity analyses

The propensity adjusted analyses showed no meaningful differences in prevalent disease compared with the conventional multivariable adjusted analyses (fig 1). In the incidence analyses, only one meaningful difference was observed: with propensity adjustment, the association of wet county status with incident congestive heart failure maintained the same point estimate hazard ratio but became statistically significant (0.96, 0.91 to 1.00; P=0.045). Figure 2 shows the propensity adjusted cumulative incidence curves.

Fig 2 Propensity score adjusted cumulative incidence for alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure admissions in dry and wet counties. Stratified by dry and wet counties in Texas between 1 January 2005 and 31 December 2010. Numbers in parentheses represent number at risk in study population. See text for the covariates included in each model

Fig 2 Propensity score adjusted cumulative incidence for alcohol misuse, alcoholic liver disease, atrial fibrillation, acute myocardial infarction, and congestive heart failure admissions in dry and wet counties. Stratified by dry and wet counties in Texas between 1 January 2005 and 31 December 2010. Numbers in parentheses represent number at risk in study population. See text for the covariates included in each model

Conversion of county status

During the five years of observation, no counties converted from wet to dry. However, seven dry counties passed countywide referendums lifting restrictions on alcohol sales. The total number of hospital admissions before and after the referendums in those counties were 43 559 and 42 734 over a median duration of 15 (interquartile range 7-22) months before and 15 (8-25) months after the law change. The post-conversion interval (from dry to wet county status) was associated with a greater odds of alcohol misuse (odds ratio 1.31, 1.19 to 1.43; P<0.001), alcoholic liver disease (1.61, 1.35 to 1.91; P<0.001), atrial fibrillation (1.07, 1.03 to 1.12; P=0.001), and congestive heart failure (1.07, 1.04 to 1.11; P<0.001) among patients admitted to hospital; we found no difference in acute myocardial infarction (odds ratio 0.99, 0.91 to 1.07; P=0.746). In an ecological analysis using the population of the counties as the denominator, we observed a higher incidence of alcohol misuse, alcoholic liver disease, atrial fibrillation, and congestive heart failure admissions per 1000 person years after the lifting of alcohol sale restrictions, whereas myocardial infarction showed no meaningful change (fig 3). Note that the incidence differences shown reflect the difference between the before and after referendum rates for a given outcome.

Fig 3 Change in incidence of alcoholic liver disease, alcohol misuse, atrial fibrillation, acute myocardial infarction, and congestive heart failure admissions before and after conversion from dry to wet county status. Squares represent change in incident rates for each type of hospital admission in seven counties that converted from dry to wet. Denominators for incident rates were determined using 2010 US census data. Incident difference is difference between incident rates before and after referendum for given outcome. Error bars indicate 95% confidence intervals

Fig 3 Change in incidence of alcoholic liver disease, alcohol misuse, atrial fibrillation, acute myocardial infarction, and congestive heart failure admissions before and after conversion from dry to wet county status. Squares represent change in incident rates for each type of hospital admission in seven counties that converted from dry to wet. Denominators for incident rates were determined using 2010 US census data. Incident difference is difference between incident rates before and after referendum for given outcome. Error bars indicate 95% confidence intervals

Discussion

Among all patients admitted to hospital in Texas from 2005 to 2010, those residing in a county without alcohol sales restrictions had a higher prevalence and incidence of alcohol misuse, alcoholic liver disease, and atrial fibrillation; a lower prevalence and incidence of acute myocardial infarction; and a lower prevalence and incidence of congestive heart failure. Over the same five years, conversion of counties from restrictive to open alcohol laws resulted in increased rates of alcohol misuse, alcoholic liver disease, atrial fibrillation, and congestive heart failure.

Comparison with other studies

Previous studies examining the associations between alcohol and heart disease have been limited by two major factors. Firstly, they have generally relied on self report, which is not necessarily reliable.16 17 Secondly, alcohol consumption among research participants is primarily based on each individual’s discretion. This makes extricating the associations between alcohol consumption and other related behaviors, decisions, and exposures that may serve as important confounders difficult if not impossible. Our approach eliminates concerns about the accuracy of self reported alcohol consumption. This allows our alternative research approach to complement and add clarity to the previous survey based studies. Most importantly, the before versus after intra-county analyses provide outcome data in the same population with and without restriction of alcohol sales, delivering a particularly potent approach to minimize confounding. The validity of the use of dry and wet county status as a marker for alcohol use was shown by our alcohol misuse and alcoholic liver disease analyses. Although most population based studies have suggested that increased alcohol consumption is associated with a higher risk of incident atrial fibrillation,5 6 22 23 not all reports have identified a significant association.3 4 7 In this study, wet county residents had more atrial fibrillation, whether analyzed as a prevalent or incident outcome. Atrial fibrillation was the only outcome that showed divergent results between the unadjusted numbers and the adjusted results in the intra-county analyses. Such results were in fact expected owing to two important considerations: firstly, dry county residents were older and more often male and non-Hispanic white, all particularly important risk factors for atrial fibrillation7 21; secondly, owing to the inverse relations between county status and myocardial infarction and congestive heart failure, some “negative confounding” (sometimes termed “suppression”) was likely, which, once accounted for, uncovered wet county status as a risk factor for atrial fibrillation. Propensity based analyses also showed that atrial fibrillation was more common in wet counties. As this database tracked patients on their county of residence, and not by the location of the admitting hospital, these findings are unlikely to be explained by rural versus urban hospital referral patterns. These findings are further supported by our more robust intra-county before and after election analysis, which showed an increase in admissions for atrial fibrillation after the liberalization of drinking laws. Although previous data generally favor a protective effect of alcohol on the risk of myocardial infarction,10 11 results from conventional epidemiologic studies have been conflicting.11 12 13 24 25 26 Previous studies have used per capita alcohol consumption and population based outcomes to understand the relation between alcohol and cardiovascular health.24 25 26 27 Interestingly, the most consistent message is that more per capita alcohol consumption is associated with an increased mortality among patients with ischemic heart disease.25 26 27 However, none of these studies focused on incident myocardial infarction, heart failure, or atrial fibrillation. In our study, patients residing in wet counties had a lower risk of myocardial infarction. In contrast, no significant changes in admissions for myocardial infarction were observed after a change in alcohol sales laws within the same counties. Although this may suggest that some residual confounding in the wet versus dry county analyses remains, it may be that the chronic beneficial effects of alcohol had inadequate time to confer any demonstrable protection against myocardial infarction with changes in alcohol access over a relatively short timeframe. Most of the beneficial effects on coronary artery disease are thought to be chronic, including influencing pathways related to cholesterol transport, insulin sensitivity, abdominal obesity, and oxidative stress.28 The relation between heart failure and alcohol use has been one of the more complex associations to elucidate. On the one hand, alcohol is known to cause cardiomyopathy.29 30 On the other hand, some studies have suggested that alcohol may have a protective effect when consumed in moderation.14 15 Both atrial fibrillation and myocardial infarction can lead to heart failure,31 32 with myocardial infarction likely being much the more important of the two. As with myocardial infarction, wet county residents had significantly less prevalent congestive heart failure. In addition, the propensity based analysis showed a decreased incidence of congestive heart failure in wet county residents. After referendums to liberalize alcohol sales in the intra-county analyses, incidence of congestive heart failure increased. Once again, although we cannot exclude residual confounding in the between county analyses as an explanation for these disparate results, it may be that the acute effects of alcohol (known to result in negative inotropy33 34) trump the beneficial chronic effects (such as via reduction in myocardial infarction) during this switch in access to alcohol over only one to two years. In contrast, the alcohol laws were stable for decades preceding the study timeframe of the between county analyses, which may have resulted in lower rates of myocardial infarction (through chronic protective effects against coronary artery disease) and thus lower overall rates of congestive heart failure in chronically wet versus chronically dry counties. The discordant results, showing more atrial fibrillation but less myocardial infarction and congestive heart failure in wet compared with dry counties, are particularly remarkable given that these outcomes generally share all of the same risk factors and that each can lead to the other. Specifically, atrial fibrillation predicts myocardial infarction and congestive heart failure,31 35 36 37 just as myocardial infarction predicts atrial fibrillation7 38 39 and congestive heart failure predicts atrial fibrillation.7 31 Therefore, given these potential “downstream” influences, these discordant results may suggest that the direct effects of alcohol are more potent than the point estimates reported.

Strengths and limitations of study

Although this is the largest study of alcohol use and heart disease and the first to use differences in alcohol sales laws as a predictor of disease, we must acknowledge several limitations. As alcohol laws in the state of Texas limit only the sale of alcohol in a municipality and not its transport or consumption, misclassification of the exposure in the form of alcohol consumption in dry counties is possible. This misclassification could have attenuated the observed effects. We cannot exclude the possibility that patterns of practice in one country differed (such as having a lower threshold to admit to hospital for cardiovascular disease), but our discordant findings between the atrial fibrillation and the myocardial infarction and congestive heart failure results strongly suggest that no systematic difference in referral patterns for hospital admission existed. The Texas Inpatient Research Data File is an administrative database that is derived from physicians’ admission and discharge coding. Although we were not able to validate physicians’ coding for an individual patient (all data are de-identified), our predictor (access to alcohol) did not rely on physicians’ coding and differences in alcohol misuse and alcoholic liver disease validated our assumptions. Most acute myocardial infarctions that come to medical attention likely result in a hospital admission, but we would have failed to capture out of hospital fatal myocardial infarctions and episodes of atrial fibrillation and congestive heart failure treated in emergency departments or outpatient clinics. As mentioned throughout the manuscript, residual confounding as an explanation for our results is an important consideration. Some potentially important covariates, such as individual alcohol exposure, county level per capita alcohol use, dietary habits, physical activity, and disease severity, were not available in this dataset. However, most of our results persisted after both multivariable adjustment and propensity analyses, as well as in the robust change analyses within the same counties. Finally, we acknowledge that these observational data are insufficient to prove any causal relations. Dry counties were on average less wealthy (supplementary table C). Although differences in socioeconomic status might explain some of the results observed, individual level measures of income or education were not available in this dataset. We did not adjust for county level income in the between county analyses owing to collinearity with the primary predictor. Importantly, it would seem to be unlikely that differences in socioeconomic status could explain discordant results on the relation between alcohol and atrial fibrillation compared with the myocardial infarction and congestive heart failure outcomes (that is, more atrial fibrillation in wet counties, yet less myocardial infarction and congestive heart failure), and our previous publication using similar data from California and geographic location as a surrogate of socioeconomic status failed to show an association between location and atrial fibrillation after adjustment for race.21 Finally, this once again likely points to the superior reliability of the within county analyses, in which such factors would be expected to remain constant in a given county. Dry counties also on average had fewer hospital beds. However, the location of the participants was based on their county of residence rather than where they sought medical care, and access to inpatient facilities would be determined primarily by insurance status and referral patterns of primary care physicians rather than county of residence. We also cannot take proximity of a hospital across county lines into account. Once again, it would seem unlikely that access to hospitals explained our discordant results (as more access in general would be expected to be associated with more of each diagnosis rather than more of some and less of others). Finally, the number of hospital beds in a particular county should not influence the within county analyses. Taken together, however, clear differences exist in the characteristics of dry versus wet counties, and we cannot exclude the possibility that some unmeasured confounder(s) apart from the alcohol access laws may explain the between county results. This is in part why our validation analyses, showing more alcohol misuse and more alcoholic liver disease in wet than dry counties, may be especially important in showing true differences in alcohol consumption between counties.

Conclusions and policy implications

We have shown, for the first time, that laws limiting alcohol sales have measurable public health effects. Increased access to alcohol was consistently associated with more atrial fibrillation and less myocardial infarction. Given that this investigation of the most commonly consumed drug (alcohol) and the leading cause of death (heart disease) leverages a natural experiment to minimize confounding, we believe that our results have broadly applicable health implications relevant to people with and at risk for various types of cardiovascular disease. More broadly, this research shows that public laws limiting access to a commonly consumed substance have important health effects that may be both beneficial and harmful. The association between alcohol (the most commonly consumed drug in the world) and heart disease (the most common cause of death) is complex and often conflicting The available evidence suggests that alcohol consumption may be associated with a higher risk of atrial fibrillation, a lower risk of myocardial infarction, and varying associations with heart failure Previous observational studies have relied almost entirely on self reported alcohol use, resulting in the potential for substantial confounding regarding associated outcomes Laws limiting alcohol sales have measurable public health effects, and increased access to alcohol is associated with more admissions for alcohol misuse and alcoholic liver disease Increased access to alcohol is consistently associated with more atrial fibrillation, but fewer myocardial infarctions Effects on atrial fibrillation are observed within only a few years after liberalization of alcohol sales laws
  37 in total

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Authors:  Maike Krenz; Ronald J Korthuis
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2.  Alcohol consumption and idiopathic dilated cardiomyopathy: a case control study.

Authors:  C J McKenna; M B Codd; H A McCann; D D Sugrue
Journal:  Am Heart J       Date:  1998-05       Impact factor: 4.749

3.  Acute effects of alcohol on left ventricular function in healthy subjects at rest and during upright exercise.

Authors:  H Kelbaek; T Gjørup; I Brynjolf; N J Christensen; J Godtfredsen
Journal:  Am J Cardiol       Date:  1985-01-01       Impact factor: 2.778

4.  Fluctuations in male ischaemic heart disease mortality in Russia 1959-1998: assessing the importance of alcohol.

Authors:  Mats Ramstedt
Journal:  Drug Alcohol Rev       Date:  2009-07

5.  Alcohol consumption, drinking pattern and acute myocardial infarction. A case referent study based on the Swedish Twin Register.

Authors:  N Hammar; A Romelsjö; L Alfredsson
Journal:  J Intern Med       Date:  1997-02       Impact factor: 8.989

6.  Population prevalence, incidence, and predictors of atrial fibrillation in the Renfrew/Paisley study.

Authors:  S Stewart; C L Hart; D J Hole; J J McMurray
Journal:  Heart       Date:  2001-11       Impact factor: 5.994

7.  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

8.  Alcohol and risk of atrial fibrillation or flutter: a cohort study.

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Journal:  Arch Intern Med       Date:  2004-10-11

9.  Roles of drinking pattern and type of alcohol consumed in coronary heart disease in men.

Authors:  Kenneth J Mukamal; Katherine M Conigrave; Murray A Mittleman; Carlos A Camargo; Meir J Stampfer; Walter C Willett; Eric B Rimm
Journal:  N Engl J Med       Date:  2003-01-09       Impact factor: 91.245

10.  Lifetime alcohol use and overall and cause-specific mortality in the European Prospective Investigation into Cancer and nutrition (EPIC) study.

Authors:  Pietro Ferrari; Idlir Licaj; David C Muller; Per Kragh Andersen; Mattias Johansson; Heiner Boeing; Elisabete Weiderpass; Laure Dossus; Laureen Dartois; Guy Fagherazzi; Kathryn E Bradbury; Kay-Tee Khaw; Nick Wareham; Eric J Duell; Aurelio Barricarte; Esther Molina-Montes; Carmen Navarro Sanchez; Larraitz Arriola; Peter Wallström; Anne Tjønneland; Anja Olsen; Antonia Trichopoulou; Vasiliki Benetou; Dimitrios Trichopoulos; Rosario Tumino; Claudia Agnoli; Carlotta Sacerdote; Domenico Palli; Kuanrong Li; Rudolf Kaaks; Petra Peeters; Joline Wj Beulens; Luciana Nunes; Marc Gunter; Teresa Norat; Kim Overvad; Paul Brennan; Elio Riboli; Isabelle Romieu
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Authors:  Tuomas Kerola; Thomas A Dewland; Eric Vittinghoff; Susan R Heckbert; Phyllis K Stein; Gregory M Marcus
Journal:  Europace       Date:  2019-06-01       Impact factor: 5.214

3.  Trends in the diffusion of robotic surgery in prostate, uterus, and colorectal procedures: a retrospective population-based study.

Authors:  Gary Chung; Piet Hinoul; Paul Coplan; Andrew Yoo
Journal:  J Robot Surg       Date:  2020-06-20

4.  Alcohol Abuse and Cardiac Disease.

Authors:  Isaac R Whitman; Vratika Agarwal; Gregory Nah; Jonathan W Dukes; Eric Vittinghoff; Thomas A Dewland; Gregory M Marcus
Journal:  J Am Coll Cardiol       Date:  2017-01-03       Impact factor: 24.094

5.  A Randomized, Double-Blind, Placebo-Controlled Trial of Intravenous Alcohol to Assess Changes in Atrial Electrophysiology.

Authors:  Gregory M Marcus; Jonathan W Dukes; Eric Vittinghoff; Gregory Nah; Nitish Badhwar; Joshua D Moss; Randall J Lee; Byron K Lee; Zian H Tseng; Tomos E Walters; Vasanth Vedantham; Rachel Gladstone; Shannon Fan; Emily Lee; Christina Fang; Kelsey Ogomori; Trisha Hue; Jeffrey E Olgin; Melvin M Scheinman; Henry Hsia; Vijay A Ramchandani; Edward P Gerstenfeld
Journal:  JACC Clin Electrophysiol       Date:  2021-01-27

6.  Past alcohol consumption and incident atrial fibrillation: The Atherosclerosis Risk in Communities (ARIC) Study.

Authors:  Shalini Dixit; Alvaro Alonso; Eric Vittinghoff; Elsayed Z Soliman; Lin Y Chen; Gregory M Marcus
Journal:  PLoS One       Date:  2017-10-18       Impact factor: 3.240

7.  Does cannabis legalisation change healthcare utilisation? A population-based study using the healthcare cost and utilisation project in Colorado, USA.

Authors:  Francesca N Delling; Eric Vittinghoff; Thomas A Dewland; Mark J Pletcher; Jeffrey E Olgin; Gregory Nah; Kirstin Aschbacher; Christina D Fang; Emily S Lee; Shannon M Fan; Dhruv S Kazi; Gregory M Marcus
Journal:  BMJ Open       Date:  2019-05-15       Impact factor: 2.692

  7 in total

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