Aims: Besides early percutaneous coronary intervention (PCI) long-term medical treatment is crucial for outcomes after ST-elevation myocardial infarction (STEMI). The present study aimed to identify predictors of adherence to evidence-based medication in this high risk population.
Methods and results: A total of 1025 consecutive patients with adjudicated STEMI treated by primary PCI in a single centre as part of the Cologne Infarction Model (KIM) were prospectively analysed. Gender-specific multivariate predictors of long-term medication adherence were identified. Follow-up with available information on drug use was completed for 610 of 738 (82.7%) patients confirmed to be alive after a median period of 36 months. Adherence was persistently high for evidence-based medication with 90.8% for acetylsalicylic acid (ASA), 88.2% for statins, 87.5% for beta-blockers and 79.2% for ACE-inhibitors or angiotensin-receptor blockers (ARBs). Patients with a history of heart failure had a higher medication adherence to beta-blockers, ACE-inhibitors/ARBs and diuretics, whereas long-term prescription rates for calcium channel blockers (CCBs) were lower in patients with reduced versus preserved ejection fraction. Patients with a history of hypertension presented higher medication adherence to CCBs, ACE-inhibitors/ARBs and diuretics but not to beta-blockers. On multivariate analysis, age, body mass index (BMI), hypertension, chronic kidney disease and lack of PCI were independently associated with prescription of diuretics at follow-up. In women, adherence was lower to beta-blockers and higher to CCBs compared to men.
Conclusion: In the high risk population of STEMI patients long-term adherence to evidence-based medication is high. The lower adherence to beta-blockers and higher prescription rate for CCBs in women needs particular attention.
Keywords: ST-elevation myocardial infarction; gender; medication adherence; secondary prevention.
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