4.6 Article

Implementation Experience with a 30-Day Hospital Readmission Risk Score in a Large, Integrated Health System: A Retrospective Study

Journal

JOURNAL OF GENERAL INTERNAL MEDICINE
Volume 37, Issue 12, Pages 3054-3061

Publisher

SPRINGER
DOI: 10.1007/s11606-021-07277-4

Keywords

hospital readmission; electronic medical record; decision support model

Funding

  1. Healthcare Delivery and Implementation Science Center at Cleveland Clinic

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This study evaluated the predictive accuracy of a readmission risk score in various settings, including different hospitals, diagnosis categories, medical specialties, and patient race and ethnicity. The results showed that the risk score performed well across different conditions, even during the COVID-19 pandemic. Evaluating clinical decision-making tools post-implementation is crucial to ensure their continued relevance and improve their performance.
Background Driven by quality outcomes and economic incentives, predicting 30-day hospital readmissions remains important for healthcare systems. The Cleveland Clinic Health System (CCHS) implemented an internally validated readmission risk score in the electronic medical record (EMR). Objective We evaluated the predictive accuracy of the readmission risk score across CCHS hospitals, across primary discharge diagnosis categories, between surgical/medical specialties, and by race and ethnicity. Design Retrospective cohort study. Participants Adult patients discharged from a CCHS hospital April 2017-September 2020. Main Measures Data was obtained from the CCHS EMR and billing databases. All patients discharged from a CCHS hospital were included except those from Oncology and Labor/Delivery, patients with hospice orders, or patients who died during admission. Discharges were categorized as surgical if from a surgical department or surgery was performed. Primary discharge diagnoses were classified per Agency for Healthcare Research and Quality Clinical Classifications Software Level 1 categories. Discrimination performance predicting 30-day readmission is reported using the c-statistic. Results The final cohort included 600,872 discharges from 11 Northeast Ohio and Florida CCHS hospitals. The readmission risk score for the cohort had a c-statistic of 0.6875 with consistent yearly performance. The c-statistic for hospital sites ranged from 0.6762, CI [0.6634, 0.6876], to 0.7023, CI [0.6903, 0.7132]. Medical and surgical discharges showed consistent performance with c-statistics of 0.6923, CI [0.6807, 0.7045], and 0.6802, CI [0.6681, 0.6925], respectively. Primary discharge diagnosis showed variation, with lower performance for congenital anomalies and neoplasms. COVID-19 had a c-statistic of 0.6387. Subgroup analyses showed c-statistics of > 0.65 across race and ethnicity categories. Conclusions The CCHS readmission risk score showed good performance across diverse hospitals, across diagnosis categories, between surgical/medical specialties, and by patient race and ethnicity categories for 3 years after implementation, including during COVID-19. Evaluating clinical decision-making tools post-implementation is crucial to determine their continued relevance, identify opportunities to improve performance, and guide their appropriate use.

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