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Effect of Ferritin, Inr, and D-Dimer Immunological Parameters Levels as Predictors of Covid-19 Mortality: a Strong Prediction With the Decision Trees

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Date

2023

Journal Title

Journal ISSN

Volume Title

Publisher

Cell Press

Abstract

Background and objective: A hyperinflammatory environment is thought to be the distinctive characteristic of COVID-19 infection and an important mediator of morbidity. This study aimed to determine the effect of other immunological parameter levels, especially ferritin, as a predictor of COVID-19 mortality via decision-trees analysis.Material and method: This is a retrospective study evaluating a total of 2568 patients who died (n = 232) and recovered (n = 2336) from COVID-19 in August and December 2021. Immunological laboratory data were compared between two groups that died and recovered from patients with COVID-19. In addition, decision trees from machine learning models were used to evaluate the performance of immunological parameters in the mortality of the COVID-19 disease. Results: Non-surviving from COVID-19 had 1.75 times higher ferritin, 10.7 times higher CRP, 2.4 times higher D-dimer, 1.14 times higher international-normalized-ratio (INR), 1.1 times higher Fibrinogen, 22.9 times higher procalcitonin, 3.35 times higher troponin, 2.77 mm/h times higher erythrocyte-sedimentation-rate (ESR), 1.13sec times longer prothrombin time (PT) when compared surviving patients. In addition, our interpretable decision tree, which was constructed with only the cut-off values of ferritin, INR, and D-dimer, correctly predicted 99.7% of surviving patients and 92.7% of non-surviving patients.Conclusions: This study perfectly predicted the mortality of COVID-19 with our interpretable decision tree constructed with INR and D-dimer, especially ferritin. For this reason, we think that it may be important to include ferritin, INR, and D-dimer parameters and their cut-off values in the scoring systems to be planned for COVID-19 mortality.

Description

Huyut, Mehmet Tahir/0000-0002-2564-991X

Keywords

Covid-19, Mortality Risk Biomarkers, Coagulation Tests, Immunological Tests, Ferritin, Chaid Decision Trees, Machine Learning, Artificial Intelligence

Turkish CoHE Thesis Center URL

WoS Q

Q2

Scopus Q

Q1

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Volume

9

Issue

3

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