He Qionghan, You Zihao, Dong Qiuping, Guo Jiale, Zhang Zhaoru
Department of Infectious Diseases, Chaohu Hospital of Anhui Medical University, Hefei, China.
Department of General Medicine, Chaohu Hospital of Anhui Medical University, Hefei, China.
Front Microbiol. 2024 Sep 13;15:1458670. doi: 10.3389/fmicb.2024.1458670. eCollection 2024.
Severe fever with thrombocytopenia syndrome (SFTS) has attracted attention due to the rising incidence and high severity and mortality rates. This study aims to construct a machine learning (ML) model to identify SFTS patients at high risk of death early in hospital admission, and to provide early intensive intervention with a view to reducing the risk of death.
Data of patients hospitalized for SFTS in two hospitals were collected as training and validation sets, respectively, and six ML methods were used to construct the models using the screened variables as features. The performance of the models was comprehensively evaluated and the best model was selected for interpretation and development of an online web calculator for application.
A total of 483 participants were enrolled in the study and 96 (19.88%) patients died due to SFTS. After a comprehensive evaluation, the XGBoost-based model performs best: the AUC scores for the training and validation sets are 0.962 and 0.997.
Using ML can be a good way to identify high risk individuals in SFTS patients. We can use this model to identify patients at high risk of death early in their admission and manage them intensively at an early stage.
由于发病率不断上升以及严重程度和死亡率居高不下,发热伴血小板减少综合征(SFTS)已引起关注。本研究旨在构建一种机器学习(ML)模型,以在患者入院早期识别出有高死亡风险的SFTS患者,并提供早期强化干预,以降低死亡风险。
分别收集两家医院因SFTS住院患者的数据作为训练集和验证集,并使用六种ML方法,以筛选出的变量为特征构建模型。对模型的性能进行综合评估,并选择最佳模型进行解读并开发在线网络计算器以供应用。
本研究共纳入483名参与者,96名(19.88%)患者死于SFTS。综合评估后,基于XGBoost的模型表现最佳:训练集和验证集的AUC分数分别为0.962和0.997。
使用ML可以成为识别SFTS患者中高危个体的良好方法。我们可以使用该模型在患者入院早期识别出有高死亡风险的患者,并在早期对其进行强化管理。