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Early prediction and identification for severe patients during the pandemic of COVID-19: A severe COVID-19 risk model constructed by multivariate logistic regression analysis

机译:Covid-19大流行病中严重患者的早期预测和鉴定:多变量逻辑回归分析构建的严重Covid-19风险模型

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Background As an emergent and fulminant infectious disease, Corona Virus Disease 2019 (COVID-19) has caused a worldwide pandemic. The early identification and timely treatment of severe patients are crucial to reducing the mortality of COVID-19. This study aimed to investigate the clinical characteristics and early predictors for severe COVID-19, and to establish a prediction model for the identification and triage of severe patients. Methods All confirmed patients with COVID-19 admitted by the Second Affiliated Hospital of Air Force Medical University were enrolled in this retrospective non-interventional study. The patients were divided into a mild group and a severe group, and the clinical data were compared between the two groups. Univariate and multivariate analysis were used to identify the independent early predictors for severe COVID-19, and the prediction model was constructed by multivariate logistic regression analysis. Receiver operating characteristic (ROC) curve was used to evaluate the predictive value of the prediction model and each early predictor. Results A total of 40 patients were enrolled in this study, of whom 19 were mild and 21 were severe. The proportions of patients with venerable age (≥60 years old), comorbidities, and hypertension in severe patients were higher than that of the mild ( P ?&?0.05). The duration of fever and respiratory symptoms, and the interval from illness onset to viral clearance were longer in severe patients ( P ?&?0.05). Most patients received at least one form of oxygen treatments, while severe patients required more mechanical ventilation ( P ?&?0.05). Univariate and multivariate analysis showed that venerable age, hypertension, lymphopenia, hypoalbuminemia and elevated neutrophil lymphocyte ratio (NLR) were the independent high-risk factors for severe COVID-19. ROC curves demonstrated significant predictive value of age, lymphocyte count, albumin and NLR for severe COVID-19. The sensitivity and specificity of the newly constructed prediction model for predicting severe COVID-19 was 90.5% and 84.2%, respectively, and whose positive predictive value, negative predictive value and crude agreement were all over 85%. Conclusions The severe COVID-19 risk model might help clinicians quickly identify severe patients at an early stage and timely take optimal therapeutic schedule for them.
机译:背景作为一种新兴和暴发性传染病,电晕病毒疾病2019(Covid-19)导致了全球大流行。早期鉴定和及时治疗严重患者对降低Covid-19的死亡率至关重要。本研究旨在调查严重Covid-19的临床特征和早期预测因子,并建立严重患者鉴定和分类的预测模型。方法对空军医学大学第二附属医院第二附属医院承认的Covid-19患者均已注册这项回顾性的非介入研究。将患者分为轻度组和严重组,并在两组之间进行临床数据。使用单变量和多变量分析来识别严重Covid-19的独立早期预测因子,并且通过多变量逻辑回归分析构建预测模型。接收器操作特征(ROC)曲线用于评估预测模型和每个早期预测因子的预测值。结果共有40名患者参加本研究,其中19名均为轻度,21例严重。严重患者的尊重年龄(≥60岁),可变性和高血压的患者的比例高于温和(P = 0.05)。发烧的持续时间和呼吸症状,并且在严重患者中,疾病发病的间隔较长,患者较长,较长患者(P?Δ0.05)。大多数患者接受至少一种形式的氧气处理,而严重患者需要更多的机械通气(p≤≤0.05)。单变量和多变量分析表明,静止的年龄,高血压,淋巴结,低聚蛋白血症和升高的中性粒细胞淋巴细胞比(NLR)是严重Covid-19的独立高危因素。 ROC曲线显示出严重Covid-19的年龄,淋巴细胞计数,白蛋白和NLR的显着预测值。预测严重Covid-19的新构建预测模型的敏感性和特异性分别为90.5%和84.2%,其阳性预测值,负面预测值和粗略协议均超过85%。结论严重的Covid-19风险模型可能有助于临床医生在早期阶段迅速识别严重患者,并及时对其进行最佳的治疗时间表。

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