Using Machine Learning to Predict ICU Transfer in Hospitalized COVID-19 Patients

被引:114
作者
Cheng, Fu-Yuan [1 ]
Joshi, Himanshu [1 ,2 ]
Tandon, Pranai [3 ]
Freeman, Robert [1 ,4 ]
Reich, David L. [4 ,5 ]
Mazumdar, Madhu [1 ,2 ]
Kohli-Seth, Roopa [6 ]
Levin, Matthew A. [5 ,7 ]
Timsina, Prem [1 ]
Kia, Arash [1 ]
机构
[1] Icahn Sch Med Mt Sinai, Inst Healthcare Delivery Sci, 1425 Madison Ave, New York, NY 10029 USA
[2] Icahn Sch Med Mt Sinai, Dept Populat Hlth Sci & Policy, 1425 Madison Ave, New York, NY 10029 USA
[3] Icahn Sch Med Mt Sinai, Resp Inst, 10 E 102nd St, New York, NY 10029 USA
[4] Mt Sinai Hosp, Hosp Adm, 1 Gustave L Levy Pl, New York, NY 10029 USA
[5] Icahn Sch Med Mt Sinai, Dept Anesthesiol Perioperat & Pain Med, 1 Gustave L Levy Pl, New York, NY 10029 USA
[6] Icahn Sch Med Mt Sinai, Inst Crit Care Med, New York, NY 10029 USA
[7] Icahn Sch Med Mt Sinai, Dept Genet & Genom Sci, 1 Gustave L Levy Pl, New York, NY 10029 USA
关键词
COVID-19; critical care; supervised machine learning; random forest; intensive care units;
D O I
10.3390/jcm9061668
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Objectives: Approximately 20-30% of patients with COVID-19 require hospitalization, and 5-12% may require critical care in an intensive care unit (ICU). A rapid surge in cases of severe COVID-19 will lead to a corresponding surge in demand for ICU care. Because of constraints on resources, frontline healthcare workers may be unable to provide the frequent monitoring and assessment required for all patients at high risk of clinical deterioration. We developed a machine learning-based risk prioritization tool that predicts ICU transfer within 24 h, seeking to facilitate efficient use of care providers' efforts and help hospitals plan their flow of operations. Methods: A retrospective cohort was comprised of non-ICU COVID-19 admissions at a large acute care health system between 26 February and 18 April 2020. Time series data, including vital signs, nursing assessments, laboratory data, and electrocardiograms, were used as input variables for training a random forest (RF) model. The cohort was randomly split (70:30) into training and test sets. The RF model was trained using 10-fold cross-validation on the training set, and its predictive performance on the test set was then evaluated. Results: The cohort consisted of 1987 unique patients diagnosed with COVID-19 and admitted to non-ICU units of the hospital. The median time to ICU transfer was 2.45 days from the time of admission. Compared to actual admissions, the tool had 72.8% (95% CI: 63.2-81.1%) sensitivity, 76.3% (95% CI: 74.7-77.9%) specificity, 76.2% (95% CI: 74.6-77.7%) accuracy, and 79.9% (95% CI: 75.2-84.6%) area under the receiver operating characteristics curve. Conclusions: A ML-based prediction model can be used as a screening tool to identify patients at risk of imminent ICU transfer within 24 h. This tool could improve the management of hospital resources and patient-throughput planning, thus delivering more effective care to patients hospitalized with COVID-19.
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页数:12
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