The developed algorithms achieved a positive predictive value of approximately 90% for first AMI events and 80% for recurrent stroke events.
Observational (n=3,140)
Yes
Do health claims-based algorithms accurately identify first and recurrent acute myocardial infarction and stroke events in the Korean population?
The developed algorithms using the Korean NHIS database demonstrated high positive predictive values for identifying first and recurrent AMI and stroke events, providing a reliable tool for national cardiovascular disease surveillance.
OBJECTIVES: The escalating burden of cardiovascular disease (CVD) is a critical public health issue worldwide. CVD, especially acute myocardial infarction (AMI) and stroke, is the leading contributor to morbidity and mortality in Korea. We aimed to develop algorithms for identifying AMI and stroke events from the National Health Insurance Service (NHIS) database and validate these algorithms through medical record review.METHODS: We first established a concept and definition of “hospitalization episode,” taking into account the unique features of health claims-based NHIS database. We then developed first and recurrent event identification algorithms, separately for AMI and stroke, to determine whether each hospitalization episode represents a true incident case of AMI or stroke. Finally, we assessed our algorithms’ accuracy by calculating their positive predictive values (PPVs) based on medical records of algorithm-identified events.RESULTS: We developed identification algorithms for both AMI and stroke. To validate them, we conducted retrospective review of medical records for 3,140 algorithm-identified events (1,399 AMI and 1,741 stroke events) across 24 hospitals throughout Korea. The overall PPVs for the first and recurrent AMI events were around 92% and 78%, respectively, while those for the first and recurrent stroke events were around 88% and 81%, respectively.CONCLUSIONS: We successfully developed algorithms for identifying AMI and stroke events. The algorithms demonstrated high accuracy, with PPVs of approximately 90% for first events and 80% for recurrent events. These findings indicate that our algorithms hold promise as an instrumental tool for the consistent and reliable production of national CVD statistics in Korea.
Cho et al. (Tue,) conducted a observational in acute myocardial infarction and stroke (n=3,140). AMI and stroke identification algorithms was evaluated on Positive Predictive Value (PPV) for first and recurrent AMI and stroke events. The developed algorithms achieved a positive predictive value of approximately 90% for first AMI events and 80% for recurrent stroke events.