Acute Myocardial Infarction Readmission Risk Prediction Models: A Systematic Review of Model Performance.

Circ Cardiovasc Qual Outcomes

From the Department of Internal Medicine (L.N.S., A.N.M., S.R.D., E.A.H., O.K.N.), Department of Clinical Sciences (A.N.M., E.A.H., O.K.N.), and Health Sciences Digital Library and Learning Center (H.M.), UT Southwestern Medical Center, Dallas, TX; and Department of Internal Medicine, University of California San Diego, La Jolla (D.D.).

Published: January 2018

AI Article Synopsis

  • - The study examines various risk prediction models for 30-day hospital readmissions in patients with acute myocardial infarction (AMI), highlighting the need for better tools to identify those at high risk of readmission.
  • - Researchers reviewed 11 studies and found 18 unique AMI-specific risk models, with a median 30-day readmission rate of 16.3%, but observed that most models only show modest predictive ability.
  • - Despite some models effectively stratifying risk, they suffer from generalizability issues and do not provide real-time actionable insights for healthcare providers to identify high-risk AMI patients before discharge.

Article Abstract

Background: Hospitals are subject to federal financial penalties for excessive 30-day hospital readmissions for acute myocardial infarction (AMI). Prospectively identifying patients hospitalized with AMI at high risk for readmission could help prevent 30-day readmissions by enabling targeted interventions. However, the performance of AMI-specific readmission risk prediction models is unknown.

Methods And Results: We systematically searched the published literature through March 2017 for studies of risk prediction models for 30-day hospital readmission among adults with AMI. We identified 11 studies of 18 unique risk prediction models across diverse settings primarily in the United States, of which 16 models were specific to AMI. The median overall observed all-cause 30-day readmission rate across studies was 16.3% (range, 10.6%-21.0%). Six models were based on administrative data; 4 on electronic health record data; 3 on clinical hospital data; and 5 on cardiac registry data. Models included 7 to 37 predictors, of which demographics, comorbidities, and utilization metrics were the most frequently included domains. Most models, including the Centers for Medicare and Medicaid Services AMI administrative model, had modest discrimination (median C statistic, 0.65; range, 0.53-0.79). Of the 16 reported AMI-specific models, only 8 models were assessed in a validation cohort, limiting generalizability. Observed risk-stratified readmission rates ranged from 3.0% among the lowest-risk individuals to 43.0% among the highest-risk individuals, suggesting good risk stratification across all models.

Conclusions: Current AMI-specific readmission risk prediction models have modest predictive ability and uncertain generalizability given methodological limitations. No existing models provide actionable information in real time to enable early identification and risk-stratification of patients with AMI before hospital discharge, a functionality needed to optimize the potential effectiveness of readmission reduction interventions.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5858710PMC
http://dx.doi.org/10.1161/CIRCOUTCOMES.117.003885DOI Listing

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