Huyut Mehmet Tahir, Huyut Zübeyir
Erzincan Binali Yıldırım University, Faculty of Medicine, Department of Biostatistics and Medical Informatics, Erzincan, Turkey.
Van Yuzuncu Yıl University, Faculty of Medicine, Department of Biochemistry, Van, Turkey.
Heliyon. 2023 Mar;9(3):e14015. doi: 10.1016/j.heliyon.2023.e14015. Epub 2023 Mar 5.
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.
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.
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.
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.
高炎症环境被认为是新型冠状病毒肺炎(COVID-19)感染的显著特征以及发病的重要介导因素。本研究旨在通过决策树分析确定其他免疫参数水平,尤其是铁蛋白,作为COVID-19死亡率预测指标的作用。
这是一项回顾性研究,评估了2021年8月和12月共2568例COVID-19死亡患者(n = 232)和康复患者(n = 2336)。比较了COVID-19死亡和康复患者两组之间的免疫实验室数据。此外,使用机器学习模型的决策树来评估免疫参数在COVID-19疾病死亡率中的表现。
与存活患者相比,COVID-19死亡患者的铁蛋白高1.75倍、C反应蛋白(CRP)高10.7倍、D-二聚体高2.4倍、国际标准化比值(INR)高1.14倍、纤维蛋白原高1.1倍、降钙素原高22.9倍、肌钙蛋白高3.35倍、红细胞沉降率(ESR)高2.77mm/h、凝血酶原时间(PT)长1.13秒。此外,我们仅用铁蛋白、INR和D-二聚体的临界值构建的可解释决策树,正确预测了99.7%的存活患者和92.7%的死亡患者。
本研究通过我们用INR和D-二聚体,尤其是铁蛋白构建的可解释决策树完美预测了COVID-19的死亡率。因此,我们认为在为COVID-19死亡率规划的评分系统中纳入铁蛋白、INR和D-二聚体参数及其临界值可能很重要。