Department of Laboratory Medicine, West China Hospital, Sichuan University, Chengdu, China.
Sichuan Clinical Research Center for Laboratory Medicine, Chengdu, China.
Ann Med. 2024 Dec;56(1):2400312. doi: 10.1080/07853890.2024.2400312. Epub 2024 Sep 6.
At the beginning of December 2022, the Chinese government made major adjustments to the epidemic prevention and control measures. The epidemic infection data and laboratory makers for infected patients based on this period may help with the management and prognostication of COVID-19 patients.
The COVID-19 patients hospitalized during December 2022 were enrolled. Logistic regression analysis was used to screen significant factors associated with mortality in patients with COVID-19. Candidate variables were screened by LASSO and stepwise logistic regression methods and were used to construct logistic regression as the prognostic model. The performance of the models was evaluated by discrimination, calibration, and net benefit.
888 patients were eligible, consisting of 715 survivors and 173 all-cause deaths. Factors significantly associated with mortality in COVID-19 patients were: lactate dehydrogenase (LDH), albumin (ALB), procalcitonin (PCT), age, smoking history, malignancy history, high density lipoprotein cholesterol (HDL-C), lactate, vaccine status and urea. 335 of the 888 eligible patients were defined as ICU cases. Seven predictors, including neutrophil to lymphocyte ratio, D-dimer, PCT, C-reactive protein, ALB, bicarbonate, and LDH, were finally selected to establish the prognostic model and generate a nomogram. The area under the curve of the receiver operating curve in the training and validation cohorts were respectively 0.842 and 0.853. In terms of calibration, predicted probabilities and observed proportions displayed high agreements. Decision curve analysis showed high clinical net benefit in the risk threshold of 0.10-0.85. A cutoff value of 81.220 was determined to predict the outcome of COVID-19 patients this nomogram.
The laboratory model established in this study showed high discrimination, calibration, and net benefit. It may be used for early identification of severe patients with COVID-19.
2022 年 12 月初,中国政府对疫情防控措施进行了重大调整。基于此时期的感染患者的流行病学数据和实验室标志物可能有助于 COVID-19 患者的管理和预后判断。
纳入 2022 年 12 月期间住院的 COVID-19 患者。使用逻辑回归分析筛选与 COVID-19 患者死亡相关的显著因素。候选变量通过 LASSO 和逐步逻辑回归方法筛选,并用于构建逻辑回归预测模型。通过区分度、校准度和净效益评估模型的性能。
共纳入 888 例患者,其中 715 例存活,173 例全因死亡。COVID-19 患者死亡的相关因素包括:乳酸脱氢酶(LDH)、白蛋白(ALB)、降钙素原(PCT)、年龄、吸烟史、恶性肿瘤病史、高密度脂蛋白胆固醇(HDL-C)、乳酸、疫苗接种情况和尿素。888 例合格患者中 335 例被定义为 ICU 病例。最终选择了包括中性粒细胞与淋巴细胞比值、D-二聚体、PCT、C 反应蛋白、ALB、碳酸氢盐和 LDH 在内的 7 个预测因素,建立了预测模型并生成了诺模图。训练集和验证集的受试者工作特征曲线下面积分别为 0.842 和 0.853。在校准方面,预测概率与观察比例显示出高度一致性。决策曲线分析表明,在风险阈值为 0.10-0.85 时,该模型具有较高的临床净效益。确定了 81.220 的截断值来预测 COVID-19 患者的结局。
本研究建立的实验室模型具有较高的区分度、校准度和净效益,可能有助于早期识别 COVID-19 重症患者。