Division of Nephrology, Department of Internal Medicine, Ulsan University Hospital, University of Ulsan College of Medicine, Ulsan, Republic of Korea.
Lawrence Livermore National Laboratory, Livermore, CA, USA.
Sci Rep. 2023 Mar 21;13(1):4605. doi: 10.1038/s41598-023-30074-4.
Fluid balance is a critical prognostic factor for patients with severe acute kidney injury (AKI) requiring continuous renal replacement therapy (CRRT). This study evaluated whether repeated fluid balance monitoring could improve prognosis in this clinical population. This was a multicenter retrospective study that included 784 patients (mean age, 67.8 years; males, 66.4%) with severe AKI requiring CRRT during 2017-2019 who were treated in eight tertiary hospitals in Korea. Sequential changes in total body water were compared between patients who died (event group) and those who survived (control group) using mixed-effects linear regression analyses. The performance of various machine learning methods, including recurrent neural networks, was compared to that of existing prognostic clinical scores. After adjusting for confounding factors, a marginal benefit of fluid balance was identified for the control group compared to that for the event group (p = 0.074). The deep-learning model using a recurrent neural network with an autoencoder and including fluid balance monitoring provided the best differentiation between the groups (area under the curve, 0.793) compared to 0.604 and 0.606 for SOFA and APACHE II scores, respectively. Our prognostic, deep-learning model underlines the importance of fluid balance monitoring for prognosis assessment among patients receiving CRRT.
液体平衡是需要连续肾脏替代治疗(CRRT)的重症急性肾损伤(AKI)患者的一个关键预后因素。本研究评估了反复监测液体平衡是否能改善该临床人群的预后。这是一项多中心回顾性研究,纳入了 2017 年至 2019 年期间在韩国 8 家三级医院接受 CRRT 治疗的 784 例(平均年龄 67.8 岁;男性 66.4%)重症 AKI 患者。使用混合效应线性回归分析比较了死亡(事件组)和存活(对照组)患者的总体水的变化。比较了各种机器学习方法(包括递归神经网络)与现有预后临床评分的性能。在调整混杂因素后,与事件组相比,对照组的液体平衡有边缘获益(p=0.074)。与 SOFA 和 APACHE II 评分(分别为 0.604 和 0.606)相比,使用具有自动编码器的递归神经网络的深度学习模型并包括液体平衡监测,对组间的区分度最佳(曲线下面积为 0.793)。我们的预后深度学习模型强调了在接受 CRRT 的患者中监测液体平衡对预后评估的重要性。