Your browser doesn't support javascript.
Machine Learning Prediction of Death in Critically Ill Patients With Coronavirus Disease 2019.
Churpek, Matthew M; Gupta, Shruti; Spicer, Alexandra B; Hayek, Salim S; Srivastava, Anand; Chan, Lili; Melamed, Michal L; Brenner, Samantha K; Radbel, Jared; Madhani-Lovely, Farah; Bhatraju, Pavan K; Bansal, Anip; Green, Adam; Goyal, Nitender; Shaefi, Shahzad; Parikh, Chirag R; Semler, Matthew W; Leaf, David E.
  • Churpek MM; Division of Pulmonary and Critical Care, Department of Medicine, University of Wisconsin, Madison, WI.
  • Gupta S; Division of Renal Medicine, Department of Medicine, Brigham and Women's Hospital, Boston, MA.
  • Spicer AB; Division of Pulmonary and Critical Care, Department of Medicine, University of Wisconsin, Madison, WI.
  • Hayek SS; Division of Cardiology, Department of Medicine, University of Michigan, Ann Arbor, MI.
  • Srivastava A; Center for Translational Metabolism and Health, Institute for Public Health and Medicine, Department of Medicine, Division of Nephrology and Hypertension, Northwestern University Feinberg School of Medicine, Chicago, IL.
  • Chan L; Division of Nephrology, Department of Medicine, Icahn School of Medicine at Mount Sinai, New York, NY.
  • Melamed ML; Department of Medicine, Montefiore Medical Center/Albert Einstein College of Medicine, Bronx, NY.
  • Brenner SK; Department of Internal Medicine, Hackensack Meridian School of Medicine, Seton Hall, NJ.
  • Radbel J; Heart and Vascular Hospital, Hackensack Meridian Health Hackensack University Medical Center, Hackensack, NJ.
  • Madhani-Lovely F; Department of Medicine, Rutgers Robert Wood Johnson Medical School, New Brunswick, NJ.
  • Bhatraju PK; Department of Pulmonary and Critical Care Medicine, Renown Health, Reno, NV.
  • Bansal A; Department of Medicine, Division of Pulmonary, Critical Care and Sleep Medicine, University of Washington, Seattle, WA.
  • Green A; Department of Medicine, Division of Renal Diseases and Hypertension, University of Colorado Anschutz Medical Campus Aurora, CO.
  • Goyal N; Department of Critical Care Medicine, Cooper University Health Care, Camden, NJ.
  • Shaefi S; Department of Medicine, Division of Nephrology, Tufts Medical Center, Boston, MA.
  • Parikh CR; Department of Anesthesia, Critical Care and Pain Medicine, Beth Israel Deaconess Medical Center, Boston, MA.
  • Semler MW; Department of Medicine, Division of Nephrology, Johns Hopkins School of Medicine, Baltimore, MD.
  • Leaf DE; Department of Medicine, Division of Allergy, Pulmonary, and Critical Care Medicine, Vanderbilt University Medical Center, Nashville, TN.
Crit Care Explor ; 3(8): e0515, 2021 08.
Article in English | MEDLINE | ID: covidwho-1393344
ABSTRACT

OBJECTIVES:

Critically ill patients with coronavirus disease 2019 have variable mortality. Risk scores could improve care and be used for prognostic enrichment in trials. We aimed to compare machine learning algorithms and develop a simple tool for predicting 28-day mortality in ICU patients with coronavirus disease 2019.

DESIGN:

This was an observational study of adult patients with coronavirus disease 2019. The primary outcome was 28-day inhospital mortality. Machine learning models and a simple tool were derived using variables from the first 48 hours of ICU admission and validated externally in independent sites and temporally with more recent admissions. Models were compared with a modified Sequential Organ Failure Assessment score, National Early Warning Score, and CURB-65 using the area under the receiver operating characteristic curve and calibration.

SETTING:

Sixty-eight U.S. ICUs. PATIENTS Adults with coronavirus disease 2019 admitted to 68 ICUs in the United States between March 4, 2020, and June 29, 2020.

INTERVENTIONS:

None. MEASUREMENTS AND MAIN

RESULTS:

The study included 5,075 patients, 1,846 (36.4%) of whom died by day 28. eXtreme Gradient Boosting had the highest area under the receiver operating characteristic curve in external validation (0.81) and was well-calibrated, while k-nearest neighbors were the lowest performing machine learning algorithm (area under the receiver operating characteristic curve 0.69). Findings were similar with temporal validation. The simple tool, which was created using the most important features from the eXtreme Gradient Boosting model, had a significantly higher area under the receiver operating characteristic curve in external validation (0.78) than the Sequential Organ Failure Assessment score (0.69), National Early Warning Score (0.60), and CURB-65 (0.65; p < 0.05 for all comparisons). Age, number of ICU beds, creatinine, lactate, arterial pH, and Pao2/Fio2 ratio were the most important predictors in the eXtreme Gradient Boosting model.

CONCLUSIONS:

eXtreme Gradient Boosting had the highest discrimination overall, and our simple tool had higher discrimination than a modified Sequential Organ Failure Assessment score, National Early Warning Score, and CURB-65 on external validation. These models could be used to improve triage decisions and clinical trial enrichment.
Keywords

Full text: Available Collection: International databases Database: MEDLINE Type of study: Observational study / Prognostic study / Randomized controlled trials Language: English Journal: Crit Care Explor Year: 2021 Document Type: Article

Similar

MEDLINE

...
LILACS

LIS


Full text: Available Collection: International databases Database: MEDLINE Type of study: Observational study / Prognostic study / Randomized controlled trials Language: English Journal: Crit Care Explor Year: 2021 Document Type: Article