Ye Ming, Liu Chang, Yang Duo, Gao Hai
Center for Coronary Artery Disease, Division of Cardiology, Beijing Anzhen Hospital, Capital Medical University, 2 Anzhen Road, Chaoyang District, Beijing, 100029, China.
National Clinical Research Center of Cardiovascular Diseases, Beijing, China.
BMC Cardiovasc Disord. 2025 Jan 10;25(1):12. doi: 10.1186/s12872-024-04466-x.
Acute Kidney Injury (AKI) is a sudden and often reversible condition characterized by rapid kidney function reduction, posing significant risks to coronary artery disease (CAD) patients. This study focuses on developing accurate predictive models to improve the early detection and prognosis of AKI in CAD patients.
We used Electronic Health Records (EHRs) from a nationwide CAD registry including 54 429 patients. Initially, univariate analysis identified potential predictors. Subsequently, a stepwise multivariate logistic model integrated clinical significance and data distribution. To refine predictor selection, we applied a random forest algorithm. The top 10 variables, including admission to the surgical department, EGFR, hemoglobin, and others, were incorporated into a logistic regression-based prediction model. Model performance was assessed using the area under the curve (AUC) and calibration analysis, and a nomogram was developed for practical application.
During hospitalization, 2,112 (3.88%) patients in the overall population of both the development and validation groups experienced AKI within 30 days. The final prediction model exhibited strong discrimination with an AUC of 0.867 (95% CI: 0.858 to 0.876) and well calibration capability in both the development and validation groups. Key predictors included surgical department admission, eGFR, hemoglobin, chronic kidney disease history, male sex, white blood cell count, age, left ventricular ejection fraction, acute myocardial infarction at admission, and congestive heart failure history. Bootstrap resampling confirmed model stability (Harrell's optimism-correct AUC = 0.866). The nomogram provided a practical tool for AKI risk assessment.
This study introduced a refined AKI risk prediction model for CAD patients. This model showed adaptability to subgroups and held the potential for early AKI alerts and personalized interventions, thereby enhancing patient care.
急性肾损伤(AKI)是一种突然发生且通常可逆的病症,其特征为肾功能迅速减退,对冠状动脉疾病(CAD)患者构成重大风险。本研究致力于开发准确的预测模型,以改善CAD患者中AKI的早期检测和预后。
我们使用了来自全国性CAD登记处的电子健康记录(EHR),其中包括54429名患者。最初,单因素分析确定了潜在的预测因素。随后,一个逐步多变量逻辑模型整合了临床意义和数据分布。为了优化预测因素的选择,我们应用了随机森林算法。包括入住外科、估算肾小球滤过率(eGFR)、血红蛋白等在内的前10个变量被纳入基于逻辑回归的预测模型。使用曲线下面积(AUC)和校准分析评估模型性能,并开发了列线图以供实际应用。
在住院期间,开发组和验证组的总体人群中有2112名(3.88%)患者在30天内发生了AKI。最终的预测模型表现出很强的区分能力,AUC为0.867(95%置信区间:0.858至0.876),并且在开发组和验证组中均具有良好的校准能力。关键预测因素包括入住外科、eGFR、血红蛋白、慢性肾病病史、男性、白细胞计数、年龄、左心室射血分数、入院时急性心肌梗死以及充血性心力衰竭病史。自助重抽样证实了模型的稳定性(哈雷尔乐观校正AUC = 0.866)。列线图为AKI风险评估提供了一个实用工具。
本研究为CAD患者引入了一种优化的AKI风险预测模型。该模型显示出对亚组的适应性,并具有早期AKI警报和个性化干预的潜力,从而改善患者护理。