Zhao Cong-Cong, Nan Zi-Han, Li Bo, Yin Yan-Ling, Zhang Kun, Liu Li-Xia, Hu Zhen-Jie
The Fourth Hospital of Hebei Medical University, Shijiazhuang, Hebei, China.
Panzhihua Municipal Central Hospital, Panzhihua, Sichuan, China.
BMJ Open. 2025 Jan 28;15(1):e088404. doi: 10.1136/bmjopen-2024-088404.
This study aimed to develop a prediction model for the detection of early sepsis-associated acute kidney injury (SA-AKI), which is defined as AKI diagnosed within 48 hours of a sepsis diagnosis.
A retrospective study design was employed. It is not linked to a clinical trial. Data for patients with sepsis included in the development cohort were extracted from the Medical Information Mart for Intensive Care IV (MIMIC-IV) database. The least absolute shrinkage and selection operator regression method was used to screen the risk factors, and the final screened risk factors were constructed into four machine learning models to determine an optimal model. External validation was performed using another single-centre intensive care unit (ICU) database.
Data for the development cohort were obtained from the MIMIC-IV 2.0 database, which is a large publicly available database that contains information on patients admitted to the ICUs of Beth Israel Deaconess Medical Center in Boston, Massachusetts, USA, from 2008 to 2019. The external validation cohort was generated from a single-centre ICU database from China.
A total of 7179 critically ill patients with sepsis were included in the development cohort and 269 patients with sepsis were included in the external validation cohort.
A total of 12 risk factors (age, weight, atrial fibrillation, chronic coronary syndrome, central venous pressure, urine output, temperature, lactate, pH, difference in alveolar-arterial oxygen pressure, prothrombin time and mechanical ventilation) were included in the final prediction model. The gradient boosting machine model showed the best performance, and the areas under the receiver operating characteristic curve of the model in the development cohort, internal validation cohort and external validation cohort were 0.794, 0.725 and 0.707, respectively. Additionally, to aid interpretation and clinical application, SHapley Additive exPlanations techniques and a web version calculation were applied.
This web-based clinical prediction model represents a reliable tool for predicting early SA-AKI in critically ill patients with sepsis. The model was externally validated using another ICU cohort and exhibited good predictive ability. Additional validation is needed to support the utility and implementation of this model.
本研究旨在开发一种用于检测早期脓毒症相关急性肾损伤(SA-AKI)的预测模型,SA-AKI定义为在脓毒症诊断后48小时内诊断出的急性肾损伤。
采用回顾性研究设计。该研究与临床试验无关。纳入开发队列的脓毒症患者数据从重症监护医学信息数据库IV(MIMIC-IV)中提取。使用最小绝对收缩和选择算子回归方法筛选危险因素,并将最终筛选出的危险因素构建成四个机器学习模型以确定最优模型。使用另一个单中心重症监护病房(ICU)数据库进行外部验证。
开发队列的数据来自MIMIC-IV 2.0数据库,该数据库是一个大型公开可用数据库,包含2008年至2019年期间美国马萨诸塞州波士顿贝斯以色列女执事医疗中心ICU收治患者的信息。外部验证队列来自中国的一个单中心ICU数据库。
开发队列共纳入7179例重症脓毒症患者,外部验证队列纳入269例脓毒症患者。
最终预测模型纳入了12个危险因素(年龄、体重、心房颤动、慢性冠状动脉综合征、中心静脉压、尿量、体温、乳酸、pH值、肺泡-动脉氧分压差、凝血酶原时间和机械通气)。梯度提升机模型表现最佳,该模型在开发队列、内部验证队列和外部验证队列中的受试者操作特征曲线下面积分别为0.794、0.725和0.707。此外,为便于解释和临床应用,应用了SHapley加性解释技术和网络版计算。
这种基于网络的临床预测模型是预测重症脓毒症患者早期SA-AKI的可靠工具。该模型使用另一个ICU队列进行了外部验证,具有良好的预测能力。需要进一步验证以支持该模型的实用性和实施。