Bredt Luis Cesar, Peres Luis Alberto Batista, Risso Michel, Barros Leandro Cavalcanti de Albuquerque Leite
Department of Surgical Oncology and Hepatobilary Surgery, Unioeste, Cascavel 85819-110, Paraná, Brazil.
Department of Nephrology, Unioeste, Cascavel 85819-110, Paraná, Brazil.
World J Hepatol. 2022 Mar 27;14(3):570-582. doi: 10.4254/wjh.v14.i3.570.
Acute kidney injury (AKI) has serious consequences on the prognosis of patients undergoing liver transplantation. Recently, artificial neural network (ANN) was reported to have better predictive ability than the classical logistic regression (LR) for this postoperative outcome.
To identify the risk factors of AKI after deceased-donor liver transplantation (DDLT) and compare the prediction performance of ANN with that of LR for this complication.
Adult patients with no evidence of end-stage kidney dysfunction (KD) who underwent the first DDLT according to model for end-stage liver disease (MELD) score allocation system was evaluated. AKI was defined according to the International Club of Ascites criteria, and potential predictors of postoperative AKI were identified by LR. The prediction performance of both ANN and LR was tested.
The incidence of AKI was 60.6% ( = 88/145) and the following predictors were identified by LR: MELD score > 25 (odds ratio [OR] = 1.999), preoperative kidney dysfunction (OR = 1.279), extended criteria donors (OR = 1.191), intraoperative arterial hypotension (OR = 1.935), intraoperative massive blood transfusion (MBT) (OR = 1.830), and postoperative serum lactate (SL) (OR = 2.001). The area under the receiver-operating characteristic curve was best for ANN (0.81, 95% confidence interval [CI]: 0.75-0.83) than for LR (0.71, 95%CI: 0.67-0.76). The root-mean-square error and mean absolute error in the ANN model were 0.47 and 0.38, respectively.
The severity of liver disease, pre-existing kidney dysfunction, marginal grafts, hemodynamic instability, MBT, and SL are predictors of postoperative AKI, and ANN has better prediction performance than LR in this scenario.
急性肾损伤(AKI)对肝移植患者的预后有严重影响。最近有报道称,人工神经网络(ANN)对这种术后结果的预测能力优于经典逻辑回归(LR)。
确定脑死亡供体肝移植(DDLT)后AKI的危险因素,并比较ANN与LR对该并发症的预测性能。
对根据终末期肝病模型(MELD)评分分配系统接受首次DDLT且无终末期肾功能不全(KD)证据的成年患者进行评估。根据国际腹水俱乐部标准定义AKI,并通过LR确定术后AKI的潜在预测因素。测试了ANN和LR的预测性能。
AKI的发生率为60.6%(n = 88/145),通过LR确定的预测因素如下:MELD评分>25(比值比[OR]=1.999)、术前肾功能不全(OR = 1.279)、扩大标准供体(OR = 1.191)、术中动脉低血压(OR = 1.935)、术中大量输血(MBT)(OR = 1.830)和术后血清乳酸(SL)(OR = 2.001)。受试者工作特征曲线下面积对ANN而言(0.81,95%置信区间[CI]:0.75 - 0.83)优于LR(0.71,95%CI:0.67 - 0.76)。ANN模型中的均方根误差和平均绝对误差分别为0.47和0.38。
肝病严重程度、既往肾功能不全、边缘供肝、血流动力学不稳定、MBT和SL是术后AKI的预测因素,在这种情况下ANN的预测性能优于LR。