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Risk factors related to the severity of COVID-19 in Wuhan

机译:武汉Covid-19严重程度有关的风险因素

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Objective: To evaluate the characteristics at admission of patients with moderate COVID-19 in Wuhan and to explore risk factors associated with the severe prognosis of the disease for prognostic prediction. Methods: In this retrospective study, moderate and severe disease was defined according to the report of the WHO-China Joint Mission on COVID-19. Clinical characteristics and laboratory findings of 172 patients with laboratory-confirmed moderate COVID-19 were collected when they were admitted to the Cancer Center of Wuhan Union Hospital between February 13, 2020 and February 25, 2020. This cohort was followed to March 14, 2020. The outcomes, being discharged as mild cases or developing into severe cases, were categorized into two groups. The data were compared and analyzed with univariate logistic regression to identify the features that differed significantly between the two groups. Based on machine learning algorithms, a further feature selection procedure was performed to identify the features that can contribute the most to the prediction of disease severity. Results: Of the 172 patients, 112 were discharged as mild cases, and 60 developed into severe cases. Four clinical characteristics and 18 laboratory findings showed significant differences between the two groups in the statistical test (P0.01) and univariate logistic regression analysis (P0.01). In the further feature selection procedure, six features were chosen to obtain the best performance in discriminating the two groups with a linear kernel support vector machine. The mean accuracy was 91.38%, with a sensitivity of 0.90 and a specificity of 0.94. The six features included interleukin-6, high-sensitivity cardiac troponin I, procalcitonin, high-sensitivity C-reactive protein, chest distress and calcium level. Conclusions: With the data collected at admission, the combination of one clinical characteristic and five laboratory findings contributed the most to the discrimination between the two groups with a linear kernel support vector machine classifier. These factors may be risk factors that can be used to perform a prognostic prediction regarding the severity of the disease for patients with moderate COVID-19 in the early stage of the disease.? The author(s).
机译:目的:评价武汉中温和Covid-19患者的特征,探讨与预后预测严重预后相关的危险因素。方法:在此回顾性研究中,根据Covid-19的WHO - 中国联合任务的报告确定了中度和严重的疾病。在2020年2月13日和2月25日在2020年2月25日在武汉联盟医院癌症中心收集了172例实验室确认的中度Covid-19患者的临床特征和实验室发现。此队列随访于2020年3月14日。结果,作为轻度病例排放或发展到严重病例,分为两组。将数据进行比较和分析,以单变量逻辑回归分析,以确定两组之间有显着不同的特征。基于机器学习算法,进行了进一步的特征选择程序以识别对疾病严重程度最大的特征。结果:172例患者,112例被排放为轻度病例,60例发育成严重病例。四个临床特征和18个实验室发现在统计试验中的两组与单变量逻辑回归分析(P <0.01)之间的两组之间存在显着差异。在进一步的特征选择过程中,选择六个特征以在利用线性内核支持向量机鉴别两个组时获得最佳性能。平均准确度为91.38%,灵敏度为0.90,特异性为0.94。六个特征包括白细胞介素-6,高敏感性心肌肌钙蛋白I,ProCalcitonin,高敏感性C反应蛋白,胸部窘迫和钙水平。结论:在入院时收集的数据,一个临床特征和五个实验室发现的组合对两组与线性内核支持向量机分类器的歧视贡献最大。这些因素可能是危险因素,可用于对疾病早期疾病的中度Covid-19患者进行预后预测的疾病严重程度。作者。

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