Prediction of In-hospital Mortality Among Intensive Care Unit Patients Using Modified Daily Laboratory-based Acute Physiology Score, Version 2

Author:

Kohn Rachel123ORCID,Weissman Gary E.123,Wang Wei2,Ingraham Nicholas E.4,Scott Stefania2,Bayes Brian2,Anesi George L.123,Halpern Scott D.12356,Kipnis Patricia7,Liu Vincent X.7,Dudley Raymond Adams4,Kerlin Meeta Prasad123

Affiliation:

1. Department of Medicine, Perelman School of Medicine at the University of Pennsylvania

2. Palliative and Advanced Illness Research (PAIR) Center at the University of Pennsylvania

3. Leonard Davis Institute of Health Economics, Perelman School of Medicine at the University of Pennsylvania, Philadelphia, PA

4. Department of Medicine, University of Minnesota, Minneapolis, MN

5. Department of Biostatistics, Epidemiology and Informatics, Perelman School of Medicine at the University of Pennsylvania

6. Department of Medical Ethics and Health Policy, Perelman School of Medicine at the University of Pennsylvania, Philadelphia, PA

7. Division of Research, Kaiser Permanente, Oakland, CA

Abstract

Background: Mortality prediction for intensive care unit (ICU) patients frequently relies on single ICU admission acuity measures without accounting for subsequent clinical changes. Objective: Evaluate novel models incorporating modified admission and daily, time-updating Laboratory-based Acute Physiology Score, version 2 (LAPS2) to predict in-hospital mortality among ICU patients. Research design: Retrospective cohort study. Patients: ICU patients in 5 hospitals from October 2017 through September 2019. Measures: We used logistic regression, penalized logistic regression, and random forest models to predict in-hospital mortality within 30 days of ICU admission using admission LAPS2 alone in patient-level and patient-day-level models, or admission and daily LAPS2 at the patient-day level. Multivariable models included patient and admission characteristics. We performed internal-external validation using 4 hospitals for training and the fifth for validation, repeating analyses for each hospital as the validation set. We assessed performance using scaled Brier scores (SBS), c-statistics, and calibration plots. Results: The cohort included 13,993 patients and 107,699 ICU days. Across validation hospitals, patient-day-level models including daily LAPS2 (SBS: 0.119−0.235; c-statistic: 0.772−0.878) consistently outperformed models with admission LAPS2 alone in patient-level (SBS: 0.109−0.175; c-statistic: 0.768−0.867) and patient-day-level (SBS: 0.064−0.153; c-statistic: 0.714−0.861) models. Across all predicted mortalities, daily models were better calibrated than models with admission LAPS2 alone. Conclusions: Patient-day-level models incorporating daily, time-updating LAPS2 to predict mortality among an ICU population performs as well or better than models incorporating modified admission LAPS2 alone. The use of daily LAPS2 may offer an improved tool for clinical prognostication and risk adjustment in research in this population.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Public Health, Environmental and Occupational Health

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