医学
回顾性队列研究
列线图
脑病
败血症
急诊医学
队列
健康信息学
重症监护医学
儿科
内科学
病理
公共卫生
作者
Xuemei Hu,Jianbao Wang,Shaowei Wang,Tianfeng Hua,Min Yang
标识
DOI:10.1186/s12911-025-03222-1
摘要
Sepsis-associated encephalopathy (SAE) is a fatal complication of sepsis, with a high mortality rate worldwide. This study aimed to reduce mortality and improve the quality of life of patients with SAEs by developing a practical nomogram to predict the risk factors associated with ICU mortality. The MIMIC database was used as the training set to build the model, and the eICU-CRD served as the validation set for external verification. LASSO regression analysis was conducted to identify predictive variables and develop the nomogram model. Receiver Operating Characteristic (ROC) curves were generated to assess the model's discriminative ability. Model calibration was assessed using calibration curves and the Hosmer-Lemeshow goodness-of-fit tests. Clinical decision curves were plotted to assess the model's net benefit and evaluate its clinical applicability. A total of 5,242 patients from the MIMIC database and 3,103 from the eICU-CRD were included in the study. LASSO regression, identified eight predictive variables for inclusion in the final model. The nomogram was evaluated against standard ICU scoring systems, including SAPS II, SOFA and GOS scores, with AUROC values of 0.832, 0.769, 0.607, and 0.575, respectively, in the training set. Conversely, the validation set demonstrated AUROC values of 0.825, 0.715, 0.714, and 0.587. P-values from the Hosmer-Lemeshow goodness-of-fit test for both the training and validation sets were 0.129 and 0.583, respectively, indicating a good fit quality. DCA revealed that the nomogram consistently provides greater net benefits compared to SAPS II, SOFA, and GCS scores. Developing mortality prediction models for SAE patients in the ICU can facilitate early intervention strategies and potentially reduce mortality rates in this high-risk population. Not applicable.
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