KU Leuven, Campus KULAK - Department of Public Health and Primary Care, Etienne Sabbelaan 53, 8500, Kortrijk, Belgium.
ITEC - imec and KU Leuven, Etienne Sabbelaan 51, 8500, Kortrijk, Belgium.
Sci Rep. 2023 Jun 18;13(1):9864. doi: 10.1038/s41598-023-36782-1.
Acute Kidney Injury (AKI) is a sudden episode of kidney failure that is frequently seen in critically ill patients. AKI has been linked to chronic kidney disease (CKD) and mortality. We developed machine learning-based prediction models to predict outcomes following AKI stage 3 events in the intensive care unit. We conducted a prospective observational study that used the medical records of ICU patients diagnosed with AKI stage 3. A random forest algorithm was used to develop two models that can predict patients who will progress to CKD after three and six months of experiencing AKI stage 3. To predict mortality, two survival prediction models have been presented using random survival forests and survival XGBoost. We evaluated established CKD prediction models using AUCROC, and AUPR curves and compared them with the baseline logistic regression models. The mortality prediction models were evaluated with an external test set, and the C-indices were compared to baseline COXPH. We included 101 critically ill patients who experienced AKI stage 3. To increase the training set for the mortality prediction task, an unlabeled dataset has been added. The RF (AUPR: 0.895 and 0.848) and XGBoost (c-index: 0.8248) models have a better performance than the baseline models in predicting CKD and mortality, respectively Machine learning-based models can assist clinicians in making clinical decisions regarding critically ill patients with severe AKI who are likely to develop CKD following discharge. Additionally, we have shown better performance when unlabeled data are incorporated into the survival analysis task.
急性肾损伤 (AKI) 是重症患者中经常出现的突发性肾衰竭。AKI 与慢性肾脏病 (CKD) 和死亡率有关。我们开发了基于机器学习的预测模型,以预测重症监护病房 AKI 第 3 阶段事件后的结局。我们进行了一项前瞻性观察性研究,使用了 ICU 中诊断为 AKI 第 3 阶段的患者的病历。随机森林算法用于开发两种模型,以预测在经历 AKI 第 3 阶段后 3 个月和 6 个月进展为 CKD 的患者。为了预测死亡率,使用随机生存森林和生存 XGBoost 提出了两种生存预测模型。我们使用 AUCROC、AUPR 曲线评估了既定的 CKD 预测模型,并将其与基线逻辑回归模型进行了比较。使用外部测试集评估了死亡率预测模型,并将 C 指数与基线 COXPH 进行了比较。我们纳入了 101 名经历 AKI 第 3 阶段的重症患者。为了增加死亡率预测任务的训练集,添加了一个未标记的数据集。RF(AUPR:0.895 和 0.848)和 XGBoost(c-index:0.8248)模型在预测 CKD 和死亡率方面的性能均优于基线模型。基于机器学习的模型可以帮助临床医生对可能在出院后发展为 CKD 的重症 AKI 患者做出临床决策。此外,当将未标记的数据纳入生存分析任务时,我们表现出了更好的性能。