AI Article Synopsis

  • Contemporary guidelines highlight the need for better risk assessment in patients undergoing percutaneous coronary intervention (PCI), focusing on improving patient care.
  • The study analyzed data from two national databases involving over 43,000 patients with acute and chronic coronary syndromes, comparing three risk prediction models based on different data sources.
  • Results showed that merging clinical registry data with administrative claims significantly enhanced the predictive accuracy for in-hospital mortality and bleeding events during PCI.

Article Abstract

Background: Contemporary guidelines emphasize the importance of risk stratification in improving the quality of care for patients undergoing percutaneous coronary intervention (PCI). We aimed to investigate whether adding information from a procedure-based academic registry to administrative claims data would improve the performance of risk prediction model.

Methods: We combined two nationally representative administrative and clinical databases. The study cohort comprised 43,095 patients; 18,719 and 23, 525 with acute [ACS] and chronic [CCS] coronary syndrome, respectively. Each population was randomly divided into the logistic regression model (derivation cohort, 80%) and model validation (validation cohort, 20%) groups. The performances of the following models were compared using C-statistics: (1) variables restricted to baseline claims data (model #1), (2) clinical registry data (model #2), and (3) expanded to both claims and clinical registry data (model #3). The primary outcomes were in-hospital mortality and bleeding.

Results: The primary outcomes occurred in 3.7% (in-hospital mortality)/5.0% (bleeding) of patients with ACS and 0.21%/0.95% of CCS patients. For each event, the model performance was 0.65 (95% confidence interval [CI], 0.60-0.69) /0.67 (0.63-0.71) in ACS and 0.52 (0.35-0.76) /0.62 (0.54-0.70) for CCS patients in model #1, 0.83 (0.80-0.87) /0.77 (0.74-0.81) in ACS and 0.76 (0.60-0.92) /0.67 (0.59-0.75) in CCS for model #2, and 0.83 (0.79-0.86) /0.78 (0.75-0.81) in ACS and 0.76 (0.61-0.92) /0.67 (0.58-0.74) in CCS for model #3.

Conclusions: Combining clinical information from the academic registry with claims databases improved its performance in predicting adverse events.

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Source
http://dx.doi.org/10.1016/j.ijcard.2022.10.144DOI Listing

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