Abstract
Background: Despite the necessity, there is no reliable biomarker to predict disease severity and prognosis of patients with COVID-19. The currently published prediction models are not fully applicable to clinical use.
Objectives: To identify predictive biomarkers of COVID-19 severity and to justify their threshold values for the stratification of the risk of deterioration that would require transferring to the intensive care unit (ICU).
Methods: The study cohort (560 subjects) included all consecutive patients admitted to Dubai Mediclinic Parkview Hospital from February to May 2020 with COVID-19 confirmed by the PCR. The challenge of finding the cut-off thresholds was the unbalanced dataset (eg, the disproportion in the number of 72 patients admitted to ICU vs 488 non-severe cases). Therefore, we customised supervised machine learning (ML) algorithm in terms of threshold value used to predict worsening.
Results: With the default thresholds returned by the ML estimator, the performance of the models was low. It was improved by setting the cut-off level to the 25th percentile for lymphocyte count and the 75th percentile for other features. The study justified the following threshold values of the laboratory tests done on admission: lymphocyte count <2.59×10 9 /L, and the upper levels for total bilirubin 11.9 μmol/L, alanine aminotransferase 43 U/L, aspartate aminotransferase 32 U/L, D-dimer 0.7 mg/L, activated partial thromboplastin time (aPTT) 39.9 s, creatine kinase 247 U/L, C reactive protein (CRP) 14.3 mg/L, lactate dehydrogenase 246 U/L, troponin 0.037 ng/mL, ferritin 498 ng/mL and fibrinogen 446 mg/dL.
Conclusion: The performance of the neural network trained with top valuable tests (aPTT, CRP and fibrinogen) is admissible (area under the curve (AUC) 0.86; 95% CI 0.486 to 0.884; p<0.001) and comparable with the model trained with all the tests (AUC 0.90; 95% CI 0.812 to 0.902; p<0.001). Free online tool at https://med-predict.com illustrates the study results.
Keywords: COVID-19; biochemistry; biotechnology & bioinformatics; infectious diseases; information technology; respiratory infections.
【저자키워드】 COVID-19, respiratory infections, Infectious diseases, Biochemistry, bioinformatics, information technology, biotechnology &, 【초록키워드】 respiratory infections, Stratification, Biomarker, Infectious diseases, Biochemistry, intensive care, Prognosis, disease severity, creatine, bioinformatics, intensive care unit, COVID-19 severity, risk, CRP, D-dimer, troponin, ferritin, Laboratory tests, Biotechnology, information technology, lactate dehydrogenase, ICU, Lymphocyte count, lymphocyte, Deterioration, Dubai, PCR, Features, Algorithm, Patient, Aspartate aminotransferase, fibrinogen, dataset, creatine kinase, respiratory, threshold, information, predict, Lactate, Bilirubin, AUC, online tool, Laboratory test, Predictive, alanine aminotransferase, partial thromboplastin time, C reactive protein, activated partial thromboplastin time, Clinical use, total bilirubin, 95% CI, aPTT, worsening, aspartate, Alanine, THROMBOPLASTIN, cut-off, disproportion, study cohort, threshold value, non-severe cases, cut-off threshold, Free, identify, activated, subjects, comparable, prognosis of patient, returned, admitted to ICU, consecutive patient, with COVID-19, 【제목키워드】 prediction, Laboratory, ML model, thresholds,