Department of Nephrology, the First Affiliated Hospital, Fujian Medical University, Fuzhou, China.
Ren Fail. 2022 Dec;44(1):43-53. doi: 10.1080/0886022X.2022.2036619.
Acute kidney injury (AKI) is a common complication and associated with a poor clinical outcome. In this study, we developed and validated a model for predicting the risk of AKI through machine learning methods in critical care patients with acute cerebrovascular disease.
This study was a retrospective study based on two different cohorts. Five machine learning methods were used to develop AKI risk prediction models. We used six popular metrics (AUROC, F2-Score, accuracy, sensitivity, specificity and precision) to evaluate the performance of these models.
We identified 2935 patients in the MIMIC-III database and 499 patients in our local database to develop and validate the AKI risk prediction model. The incidence of AKI in these two different cohorts was 18.3% and 61.7%, respectively. Analysis showed that several laboratory parameters (serum creatinine, hemoglobin, white blood cell count, bicarbonate, blood urea nitrogen, sodium, albumin, and platelet count), age, and length of hospital stay, were the top ten important factors associated with AKI. The analysis demonstrated that the XGBoost had higher AUROC (0.880, 95%CI: 0.831-0.929), indicating that the XGBoost model was better at predicting AKI risk in patients with acute cerebrovascular disease than other models.
This study developed machine learning methods to identify critically ill patients with acute cerebrovascular disease who are at a high risk of developing AKI. This result suggested that machine learning techniques had the potential to improve the prediction of AKI risk models in critical care.
急性肾损伤(AKI)是一种常见的并发症,与不良临床结局相关。本研究通过机器学习方法,在急性脑血管病的重症监护患者中建立并验证了一种预测 AKI 风险的模型。
这是一项基于两个不同队列的回顾性研究。我们使用了五种机器学习方法来开发 AKI 风险预测模型。我们使用了六个常用指标(AUROC、F2-Score、准确性、敏感度、特异度和精密度)来评估这些模型的性能。
我们从 MIMIC-III 数据库中确定了 2935 名患者,从我们的本地数据库中确定了 499 名患者,用于开发和验证 AKI 风险预测模型。这两个不同队列的 AKI 发生率分别为 18.3%和 61.7%。分析表明,几种实验室参数(血清肌酐、血红蛋白、白细胞计数、碳酸氢盐、尿素氮、钠、白蛋白和血小板计数)、年龄和住院时间是与 AKI 相关的前十大重要因素。分析表明,XGBoost 的 AUROC 更高(0.880,95%CI:0.831-0.929),这表明 XGBoost 模型在预测急性脑血管病患者的 AKI 风险方面优于其他模型。
本研究通过机器学习方法确定了急性脑血管病的重症监护患者中 AKI 风险较高的患者。这一结果表明,机器学习技术有可能提高重症监护中 AKI 风险预测模型的预测能力。