CORONET online risk assessment tool and Charlson comorbidity index in predicting fatalities in cancer patients with COVID-19

A. S. Rusanov, M. I. Sekacheva, A. A. Tyazhelnikov
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Abstract

Purpose of the study. Сomparing and evaluating the prognostic potential of the CORONET online risk assessment tool and the Charlson Comorbidity Index in predicting mortality in cancer patients with COVID-19.Materials and methods. The results are drawn from the data of 168 case histories of cancer patients who were undergoing inpatient treatment for COVID-19 at the University Clinical Hospitals of Sechenov University between March 2020 and February 2022. The study was conducted as part of the program of the world-class research center “Digital Biodesign and Personalized Healthcare” of Sechenov University, with participation in the ESMO-CoCARE Registry project. Patients with a history of solid or hematologic malignancies were included in the study; their treatment period before the study was 5 years or less. The age ranged from 37 to 100 years, the median age was 69 years. The CORONET online risk assessment tool and the Charlson comorbidity index were used to objectify the severity of multimorbidity status and prognosis of fatal outcomes in cancer patients with COVID-19.Results. It was demonstrated that statistically significant effects on the prognosis of mortality in patients with cancer were: age, percentage of saturation on admission, treatment in intensive care units (ICU), National Early Warning Score 2 (NEWS2) distress syndrome severity scale score, computed tomography (CT) assessment of disease course severity, decreased blood albumin and platelet counts, and increased blood neutrophil counts in both categorical and immediate indicator value formats. In addition, it was determined that as the number of comorbidities increased, the probability of mortality increased significantly, odds ratio (OR) = 2.162 (CI 95 % 1.016–4.600; p = 0.045). The CORONET calculator score yields one of the highest OR values among all established statistically significant predictors,20.410 (CI 95 % 4.894–85.113; p < 0.001). For oncopathology in COVID-19 patients, the Charlson index score shows statistical significance as a predictor of mortality, OR =1.396 (CI 9 5 % 1.105–1.765; p = 0.005).Conclusion. The obtained advantages in using the CORONET online decision support tool over the Charlson comorbidity index in predicting mortality in cancer patients with COVID-19 are recognized as convincing.
CORONET在线风险评估工具和Charlson合并症指数在预测COVID-19癌症患者死亡中的作用
研究目的比较和评估CORONET在线风险评估工具和Charlson合并症指数在预测COVID-19癌症患者死亡率方面的预后潜力。研究结果来自2020年3月至2022年2月期间在谢切诺夫大学临床医院接受COVID-19住院治疗的168例癌症患者的病历数据。该研究是谢切诺夫大学世界级研究中心 "数字生物设计与个性化医疗 "计划的一部分,并参与了ESMO-CoCARE注册项目。研究对象包括有实体肿瘤或血液系统恶性肿瘤病史的患者;他们在研究前的治疗时间不超过5年。患者年龄从37岁到100岁不等,中位年龄为69岁。使用CORONET在线风险评估工具和Charlson合并症指数来客观评估COVID-19癌症患者多病状态的严重程度和致命结局的预后。结果表明,在统计学上对癌症患者死亡预后有显著影响的因素包括:年龄、入院时饱和度百分比、在重症监护室(ICU)接受的治疗、全国早期预警评分 2(NEWS2)窘迫综合征严重程度量表评分、计算机断层扫描(CT)对病程严重程度的评估、血白蛋白和血小板计数减少,以及以分类和即时指标值形式表示的血中性粒细胞计数增加。此外,研究还发现,随着合并症数量的增加,死亡概率也会显著增加,赔率比 (OR) = 2.162 (CI 95 % 1.016-4.600; p = 0.045)。CORONET计算器评分是所有已确定的具有统计学意义的预测因子中OR值最高的一个,为20.410 (CI 95 % 4.894-85.113; p < 0.001)。就 COVID-19 患者的肿瘤病理学而言,Charlson 指数评分作为死亡率预测因子具有统计学意义,OR =1.396 (CI 9 5 % 1.105-1.765; p = 0.005)。在预测 COVID-19 癌症患者死亡率方面,CORONET 在线决策支持工具比 Charlson 合并症指数更具优势,这一点令人信服。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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