Dong Rongrong, Yao Han, Chen Taoran, Yang Wenjing, Zhou Qi, Xu Jiancheng
Department of Laboratory Medicine, First Hospital of Jilin University, Changchun 130021, Jilin, China.
Department of Pediatrics, First Hospital of Jilin University, Changchun 130021, Jilin, China.
Can J Infect Dis Med Microbiol. 2025 May 12;2025:6606842. doi: 10.1155/cjid/6606842. eCollection 2025.
The mortality rate is very high in patients with severe COVID-19. Nearly 32% of COVID-19 patients are critically ill, with mortality rates ranging from 8.1% to 33%. Early risk factor detection makes it easier to get the right care and estimate the prognosis. This study aimed to develop and validate a model to predict the risk of mortality based on hematological parameters at hospital admission in patients with severe COVID-19. The study retrospectively collected clinical data and laboratory test results from 396 and 112 patients with severe COVID-19 in two tertiary care hospitals as Cohort 1 and Cohort 2, respectively. Cohort 1 was to train the model. The LASSO method was used to screen features. The models built by nine machine learning algorithms were compared to screen the best algorithm and model. The model was visualized using nomogram, followed by trend analyses, and finally subgroup analyses. Cohort 2 was for external validation. In Cohort 1, the model developed by the LR algorithm performed the best, with an AUC of 0.852 (95% CI: 0.750-0.953). Five features were included in the model, namely, D-dimer, platelets, neutrophil count, lymphocyte count, and activated partial thromboplastin time. The mode had higher diagnostic accuracy in patients with severe COVID-19 > 65 years of age (AUC = 0.814), slightly lower than in patients with severe COVID-19 ≤ 65 years of age (AUC = 0.875). The ability of the model to predict the occurrence of mortality was validated in Cohort 2 (AUC = 0.841). The risk prediction model for mortality for patients with severe COVID-19 was constructed by the LR algorithm using only hematological parameters in this study. The model contributes to the timely and accurate stratification and management of patients with severe COVID-19.
重症新型冠状病毒肺炎(COVID-19)患者的死亡率非常高。近32%的COVID-19患者病情危重,死亡率在8.1%至33%之间。早期检测风险因素有助于获得恰当的治疗并评估预后。本研究旨在开发并验证一个基于重症COVID-19患者入院时血液学参数预测死亡风险的模型。该研究回顾性收集了分别来自两家三级医疗机构的396例和112例重症COVID-19患者的临床数据及实验室检查结果,将其作为队列1和队列2。队列1用于训练模型。采用LASSO方法筛选特征。比较了由九种机器学习算法构建的模型,以筛选出最佳算法和模型。使用列线图对模型进行可视化,随后进行趋势分析,最后进行亚组分析。队列2用于外部验证。在队列1中,由逻辑回归(LR)算法开发的模型表现最佳,曲线下面积(AUC)为0.852(95%置信区间:0.750 - 0.953)。该模型纳入了五个特征,即D-二聚体、血小板、中性粒细胞计数、淋巴细胞计数和活化部分凝血活酶时间。该模型在年龄>65岁的重症COVID-19患者中诊断准确性较高(AUC = 0.814),略低于年龄≤65岁的重症COVID-19患者(AUC = 0.875)。该模型预测死亡发生的能力在队列2中得到验证(AUC = 0.841)。本研究通过LR算法仅使用血液学参数构建了重症COVID-19患者的死亡风险预测模型。该模型有助于对重症COVID-19患者进行及时、准确的分层和管理。