COVID-19 diagnosis by routine blood tests using machine learning

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作者
Matjaž Kukar
Gregor Gunčar
Tomaž Vovko
Simon Podnar
Peter Černelč
Miran Brvar
Mateja Zalaznik
Mateja Notar
Sašo Moškon
Marko Notar
机构
[1] Smart Blood Analytics Swiss SA,Faculty of Computer and Information Science
[2] University of Ljubljana,Faculty of Chemistry and Chemical Technology
[3] University of Ljubljana,Department of Infectious Diseases
[4] University Medical Centre Ljubljana,Division of Neurology
[5] University Medical Centre Ljubljana,Centre for Clinical Toxicology and Pharmacology
[6] University Medical Centre Ljubljana,Division of Internal Medicine
[7] University Medical Centre Ljubljana,undefined
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摘要
Physicians taking care of patients with COVID-19 have described different changes in routine blood parameters. However, these changes hinder them from performing COVID-19 diagnoses. We constructed a machine learning model for COVID-19 diagnosis that was based and cross-validated on the routine blood tests of 5333 patients with various bacterial and viral infections, and 160 COVID-19-positive patients. We selected the operational ROC point at a sensitivity of 81.9% and a specificity of 97.9%. The cross-validated AUC was 0.97. The five most useful routine blood parameters for COVID-19 diagnosis according to the feature importance scoring of the XGBoost algorithm were: MCHC, eosinophil count, albumin, INR, and prothrombin activity percentage. t-SNE visualization showed that the blood parameters of the patients with a severe COVID-19 course are more like the parameters of a bacterial than a viral infection. The reported diagnostic accuracy is at least comparable and probably complementary to RT-PCR and chest CT studies. Patients with fever, cough, myalgia, and other symptoms can now have initial routine blood tests assessed by our diagnostic tool. All patients with a positive COVID-19 prediction would then undergo standard RT-PCR studies to confirm the diagnosis. We believe that our results represent a significant contribution to improvements in COVID-19 diagnosis.
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