Zhou Luyao, Zhang Weimin, Shao Min, Wang Cui, Wang Yu
School of Biomedical Engineering, Anhui Medical University, Hefei, 230032, China.
Department of Critical Care Medicine, First Affiliated Hospital of Anhui Medical University, Hefei, China.
Sci Rep. 2025 Apr 8;15(1):12057. doi: 10.1038/s41598-025-93961-y.
Sepsis is a clinically heterogeneous disease with high mortality. It is crucial to develop relevant therapeutic strategies for different sepsis phenotypes, but the impact of phenotypes on patients' clinical outcomes is unclear. This study aimed to identify potential sepsis phenotypes using readily available clinical parameters and assess their predictive value for 28-day clinical outcomes by logistic regression analysis. In this retrospective analysis, researchers extracted clinical data from adult patients admitted to the First Affiliated Hospital of Anhui Medical University between April and August 2022 and from the 2014-2015 eICU Collaborative Study database. K-Means clustering was utilized to identify and refine sepsis phenotypes, and their predictive performance was subsequently evaluated. Logistic regression models were trained independently for each phenotype and five-fold cross-validation was used to predict clinical outcomes. Predictive accuracy was then compared to traditional non-clustered prediction methods using model assessment scores. The study cohort consisted of 250 patients from the First Affiliated Hospital of Anhui Medical University, allocated in a 7:3 ratio for training and testing, respectively, and an external validation cohort of 3100 patients from the eICU Cooperative Research Database. The results of the phenotype-based prediction model demonstrated an improvement in F1 score from 0.74 to 0.82 and AUC from 0.74(95%CI 0.71-0.80) to 0.84(95%CI 0.82-0.87), and these results also highlight the superiority of clinical outcome prediction with the help of sepsis phenotypes over traditional prediction methods. Phenotype-based prediction of 28-day clinical outcomes in sepsis demonstrated significant advantages over traditional models, highlighting the impact of phenotype-driven modeling on clinical outcomes in sepsis.
脓毒症是一种临床异质性疾病,死亡率很高。针对不同的脓毒症表型制定相关治疗策略至关重要,但表型对患者临床结局的影响尚不清楚。本研究旨在利用现成的临床参数识别潜在的脓毒症表型,并通过逻辑回归分析评估其对28天临床结局的预测价值。在这项回顾性分析中,研究人员提取了2022年4月至8月期间安徽医科大学第一附属医院成年患者以及2014 - 2015年eICU协作研究数据库中的临床数据。采用K均值聚类法识别和细化脓毒症表型,随后评估其预测性能。针对每种表型独立训练逻辑回归模型,并使用五折交叉验证来预测临床结局。然后使用模型评估分数将预测准确性与传统的非聚类预测方法进行比较。研究队列包括来自安徽医科大学第一附属医院的250名患者,分别以7:3的比例分配用于训练和测试,以及来自eICU合作研究数据库的3100名患者组成的外部验证队列。基于表型的预测模型结果显示F1分数从0.74提高到0.82,AUC从0.74(95%CI 0.71 - 0.80)提高到0.84(95%CI 0.82 - 0.87),这些结果也凸显了借助脓毒症表型进行临床结局预测优于传统预测方法。基于表型对脓毒症28天临床结局的预测显示出相对于传统模型的显著优势,突出了表型驱动建模对脓毒症临床结局的影响。