EFFECTS OF CORONARY ARTERY CALCIFIED PLAQUE AND STENT ON SEVERITY AND SURVIVAL OF COVID-19 PATIENTS: A DECISION TREE MODEL STUDY
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2023Metadata
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Aim We aimed to investigate the relationship between the presence of calcified plaques and stents in coronary arteries as evaluated by the chest computed tomography severity score (CT-SS) and mortality rates in patients with COVID-19. Material and methods A single-center retrospective analysis was conducted of 492 patients (>= 18 yrs) who were hospitalized between March and June 2020. All included patients had RT-PCR tests positive for COVID-19. A radiologist recorded pulmonary imaging findings and the presence of coronary calcified plaque and/or stent, sternotomy wires, and cardiac valve replacement on initial non-contrast chest CT. Also, cardiothoracic ratios (CTR) were calculated on chest CTs. Data were analyzed using univariate and multivariate analyses and a chi-squared automatic interaction detection (CHAID) tree analysis, which was developed as a predictive model for survival of COVID-19 patients according to chest CT findings. Results The mean CT-SS value of the patients with coronary plaque was 11.88 +/- 7.88, and a significant relationship was found between CT-SS with coronary calcified plaque (p<0.001). No statistical difference was found between CT-SS and coronary stent (p=0.296). In multivariate analysis, older age was associated with 1.69-fold (p<0.001), the presence of coronary calcified plaque 1.943-fold (p=0.034) and higher CT- SS 1.038-fold (p=0.042) higher risk of mortality. In the CHAID tree analysis, the highest mortality rate was seen in patients with coronary plaque and CTR>0.57. Conclusion The presence of coronary artery calcified plaque and cardiomegaly were high risks for severe prognosis and mortality in COVID-19 patients and may help to predict the survival of patients.