Yue Xiao, Li Zhifang, Wang Lei, Huang Li, Zhao Zhikang, Wang Panpan, Wang Shuo, Gong Xiyun, Zhang Shu, Wang Zhengbin
Department of Emergency Medicine, the First Affiliated Hospital of Zhengzhou University, Zhengzhou 450052, Henan, China. Corresponding author: Wang Zhengbin, Email:
Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2024 May;36(5):465-470. doi: 10.3760/cma.j.cn121430-20231218-01091.
To develop and evaluate a nomogram prediction model for the 3-month mortality risk of patients with sepsis-associated acute kidney injury (S-AKI).
Based on the American Medical Information Mart for Intensive Care- IV (MIMIC- IV), clinical data of S-AKI patients from 2008 to 2021 were collected. Initially, 58 relevant predictive factors were included, with all-cause mortality within 3 months as the outcome event. The data were divided into training and testing sets at a 7 : 3 ratio. In the training set, univariate Logistic regression analysis was used for preliminary variable screening. Multicollinearity analysis, Lasso regression, and random forest algorithm were employed for variable selection, combined with the clinical application value of variables, to establish a multivariable Logistic regression model, visualized using a nomogram. In the testing set, the predictive value of the model was evaluated through internal validation. The receiver operator characteristic curve (ROC curve) was drawn, and the area under the curve (AUC) was calculated to evaluate the discrimination of nomogram model and Oxford acute severity of illness score (OASIS), sequential organ failure assessment (SOFA), and systemic inflammatory response syndrome score (SIRS). The calibration curve was used to evaluate the calibration, and decision curve analysis (DCA) was performed to assess the net benefit at different probability thresholds.
Based on the survival status at 3 months after diagnosis, patients were divided into 7 768 (68.54%) survivors and 3 566 (31.46%) death. In the training set, after multiple screenings, 7 variables were finally included in the nomogram model: Logistic organ dysfunction system (LODS), Charlson comorbidity index, urine output, international normalized ratio (INR), respiratory support mode, blood urea nitrogen, and age. Internal validation in the testing set showed that the AUC of nomogram model was 0.81 [95% confidence interval (95%CI) was 0.80-0.82], higher than the OASIS score's 0.70 (95%CI was 0.69-0.71) and significantly higher than the SOFA score's 0.57 (95%CI was 0.56-0.58) and SIRS score's 0.56 (95%CI was 0.55-0.57), indicating good discrimination. The calibration curve demonstrated that the nomogram model's calibration was better than the OASIS, SOFA, and SIRS scores. The DCA curve suggested that the nomogram model's clinical net benefit was better than the OASIS, SOFA, and SIRS scores at different probability thresholds.
A nomogram prediction model for the 3-month mortality risk of S-AKI patients, based on clinical big data from MIMIC- IV and including seven variables, demonstrates good discriminative ability and calibration, providing an effective new tool for assessing the prognosis of S-AKI patients.
建立并评估脓毒症相关性急性肾损伤(S-AKI)患者3个月死亡风险的列线图预测模型。
基于重症监护医学信息集市-IV(MIMIC-IV),收集2008年至2021年S-AKI患者的临床资料。最初纳入58个相关预测因素,以3个月内全因死亡作为结局事件。数据按7:3的比例分为训练集和测试集。在训练集中,采用单因素Logistic回归分析进行初步变量筛选。运用多重共线性分析、Lasso回归和随机森林算法进行变量选择,并结合变量的临床应用价值,建立多变量Logistic回归模型,并用列线图进行可视化展示。在测试集中,通过内部验证评估模型的预测价值。绘制受试者工作特征曲线(ROC曲线),计算曲线下面积(AUC),以评估列线图模型与牛津急性疾病严重程度评分(OASIS)、序贯器官衰竭评估(SOFA)及全身炎症反应综合征评分(SIRS)的区分度。采用校准曲线评估校准情况,并进行决策曲线分析(DCA)以评估不同概率阈值下的净效益。
根据诊断后3个月的生存状态,患者分为7768例(68.54%)幸存者和3566例(31.46%)死亡者。在训练集中,经过多次筛选,最终列线图模型纳入7个变量:Logistic器官功能障碍系统(LODS)、Charlson合并症指数、尿量、国际标准化比值(INR)、呼吸支持模式、血尿素氮和年龄。测试集的内部验证显示,列线图模型的AUC为0.81[95%置信区间(95%CI)为0.80 - 0.82],高于OASIS评分的0.70(95%CI为0.69 - 0.71),显著高于SOFA评分的0.57(95%CI为0.56 - 0.58)和SIRS评分的0.56(95%CI为0.55 - 0.57),表明具有良好的区分度。校准曲线表明,列线图模型的校准优于OASIS、SOFA和SIRS评分。DCA曲线提示,在不同概率阈值下,列线图模型的临床净效益优于OASIS、SOFA和SIRS评分。
基于MIMIC-IV临床大数据、包含7个变量的S-AKI患者3个月死亡风险列线图预测模型,具有良好的区分能力和校准性,为评估S-AKI患者预后提供了一种有效的新工具。