Obesity Science & Practice (Aug 2022)

Machine learning to predict in‐hospital mortality among patients with severe obesity: Proof of concept study

  • Shelly Soffer,
  • Eyal Zimlichman,
  • Matthew A. Levin,
  • Alexis M. Zebrowski,
  • Benjamin S. Glicksberg,
  • Robert Freeman,
  • David L. Reich,
  • Eyal Klang

DOI
https://doi.org/10.1002/osp4.571
Journal volume & issue
Vol. 8, no. 4
pp. 474 – 482

Abstract

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Abstract Objectives Hospitalized patients with severe obesity require adapted hospital management. The aim of this study was to evaluate a machine learning model to predict in‐hospital mortality among this population. Methods Data of unselected consecutive emergency department admissions of hospitalized patients with severe obesity (BMI ≥ 40 kg/m2) was analyzed. Data was retrieved from five hospitals from the Mount Sinai health system, New York. The study time frame was between January 2011 and December 2019. Data was used to train a gradient‐boosting machine learning model to identify in‐hospital mortality. The model was trained and evaluated based on the data from four hospitals and externally validated on held‐out data from the fifth hospital. Results A total of 14,078 hospital admissions of inpatients with severe obesity were included. The in‐hospital mortality rate was 297/14,078 (2.1%). In univariate analysis, albumin (area under the curve [AUC] = 0.77), blood urea nitrogen (AUC = 0.76), acuity level (AUC = 0.73), lactate (AUC = 0.72), and chief complaint (AUC = 0.72) were the best single predictors. For Youden’s index, the model had a sensitivity of 0.77 (95% CI: 0.67–0.86) with a false positive rate of 1:9. Conclusion A machine learning model trained on clinical measures provides proof of concept performance in predicting mortality in patients with severe obesity. This implies that such models may help to adopt specific decision support tools for this population.

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