HRCT 严重程度评分作为 COVID-19 患者严重程度评估的预测性生物标记物

Dipesh Karki, Sundar Adhikari
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摘要

背景/目的:2020 年,世界卫生组织宣布 2019 年冠状病毒病(COVID-19)为大流行病,因为它具有广泛传播的性质。导致患者死亡的 COVID-19 感染的严重程度受多种因素影响。因此,找出并解决这些诱因对于有效治疗 COVID-19 至关重要:本研究于 2021 年 1 月 23 日至 2021 年 6 月 19 日在尼泊尔西部一家拥有 100 张病床的医院进行。记录了患者的人口统计学数据和高分辨率计算机断层扫描严重程度评分。使用 Microsoft Excel 和社会科学统计软件包进行数据统计分析。采用二项回归和卡方检验,显著性水平设定为 P<0.05,置信区间为 95%:研究发现,在住院的 COVID-19 感染者中,计算机断层扫描(CT)严重程度、性别和年龄与治疗结果之间存在明显关联。CT严重程度在16到25分之间的患者死亡率高出8倍(OR:-8.802;95% CI:3.506-18.491):结论:COVID-19感染的严重程度和死亡率受年龄、性别和CT严重程度评分所显示的生物标志物等因素的影响。确定导致 COVID-19 患者病情恶化和增加死亡风险的其他因素至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HRCT severity score as a predictive biomarker in severity assessment of COVID-19 patients
Background/Aim: In 2020, the World Health Organization declared the Coronavirus disease of 2019 (COVID-19) a pandemic due to its widespread nature. The severity of COVID-19 infections leading to patient deaths is influenced by various factors. Therefore, it is crucial to identify and address these contributing causes for effective treatment of COVID-19. Methods: This study was conducted between 23 January 2021 and 19 June 2021 at a hospital with 100 beds in Western Nepal. Patient demographic data and High-resolution computed tomography severity scores were recorded. Microsoft Excel and Statistical Package for the Social Sciences were used for statistical data analysis. Binomial regression and Chi-square tests were applied, setting the significance level at P<0.05 with a confidence interval of 95%. Results: The study found a significant association between computed tomography (CT) severity, gender, and age with the treatment outcome among COVID-19-infected patients admitted to the hospital. Patients with a CT severity score between 16 and 25 had an eightfold higher mortality rate (OR: -8.802; 95% CI: 3.506–18.491). Conclusion: The severity and mortality of COVID-19 infections are influenced by factors such as age, gender, and biomarkers indicated by CT severity scores. Identifying additional factors that worsen COVID-19 patient’s conditions and increase the risk of mortality is essential.
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