External Validation and Comparison of a General Ward Deterioration Index Between Diversely Different Health Systems

Author:

Cummings Brandon C.12,Blackmer Joseph M.12,Motyka Jonathan R.12,Farzaneh Negar12,Cao Loc12,Bisco Erin L.12,Glassbrook James D.3,Roebuck Michael D.24,Gillies Christopher E.12,Admon Andrew J.156,Medlin Richard P.12,Singh Karandeep578,Sjoding Michael W.158,Ward Kevin R.129,Ansari Sardar12

Affiliation:

1. The Max Harry Weil Institute of Critical Care Research & Innovation, University of Michigan, Ann Arbor, MI.

2. Department of Emergency Medicine, University of Michigan Medical School, Ann Arbor, MI.

3. Information Technology, Hurley Medical Center, Flint, MI.

4. Department of Emergency Medicine, Hurley Medical Center, Flint, MI.

5. Department of Internal Medicine, University of Michigan Medical School, Ann Arbor, MI.

6. Medicine Service, LTC Charles S. Kettles VA Medical Center, Ann Arbor, MI.

7. Department of Learning Health Sciences, University of Michigan Medical School, Ann Arbor, MI.

8. Precision Health, University of Michigan, Ann Arbor, MI.

9. Department of Biomedical Engineering, University of Michigan, Ann Arbor, MI.

Abstract

OBJECTIVES: Implementing a predictive analytic model in a new clinical environment is fraught with challenges. Dataset shifts such as differences in clinical practice, new data acquisition devices, or changes in the electronic health record (EHR) implementation mean that the input data seen by a model can differ significantly from the data it was trained on. Validating models at multiple institutions is therefore critical. Here, using retrospective data, we demonstrate how Predicting Intensive Care Transfers and other UnfoReseen Events (PICTURE), a deterioration index developed at a single academic medical center, generalizes to a second institution with significantly different patient population. DESIGN: PICTURE is a deterioration index designed for the general ward, which uses structured EHR data such as laboratory values and vital signs. SETTING: The general wards of two large hospitals, one an academic medical center and the other a community hospital. SUBJECTS: The model has previously been trained and validated on a cohort of 165,018 general ward encounters from a large academic medical center. Here, we apply this model to 11,083 encounters from a separate community hospital. INTERVENTIONS: None. MEASUREMENTS AND MAIN RESULTS: The hospitals were found to have significant differences in missingness rates (> 5% difference in 9/52 features), deterioration rate (4.5% vs 2.5%), and racial makeup (20% non-White vs 49% non-White). Despite these differences, PICTURE’s performance was consistent (area under the receiver operating characteristic curve [AUROC], 0.870; 95% CI, 0.861–0.878), area under the precision-recall curve (AUPRC, 0.298; 95% CI, 0.275–0.320) at the first hospital; AUROC 0.875 (0.851–0.902), AUPRC 0.339 (0.281–0.398) at the second. AUPRC was standardized to a 2.5% event rate. PICTURE also outperformed both the Epic Deterioration Index and the National Early Warning Score at both institutions. CONCLUSIONS: Important differences were observed between the two institutions, including data availability and demographic makeup. PICTURE was able to identify general ward patients at risk of deterioration at both hospitals with consistent performance (AUROC and AUPRC) and compared favorably to existing metrics.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Critical Care and Intensive Care Medicine

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