Artificial neural network for prediction of acute kidney injury after liver transplantation for cirrhosis and hepatocellular carcinoma

L. Bredt, L. Peres
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Abstract

Acute kidney injury (AKI) has serious consequences on the prognosis of patients undergoing liver transplantation (LT) for liver cancer and cirrhosis. Artificial neural network (ANN) has recently been proposed as a useful tool in many fields in the setting of solid organ transplantation and surgical oncology, where patient prognosis depends on a multidimensional and nonlinear relationship between variables pertaining to the surgical procedure, the donor (graft characteristics), and the recipient comorbidities. In the specific case of LT, ANN models have been developed mainly to predict survival in patients with cirrhosis, to assess the best donor-to-recipient match during allocation processes, and to foresee postoperative complications and outcomes. This is a specific opinion review on the role of ANN in the prediction of AKI after LT for liver cancer and cirrhosis, highlighting potential strengths of the method to forecast this serious postoperative complication.
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人工神经网络预测肝硬化、肝癌肝移植术后急性肾损伤
急性肾损伤(AKI)对肝癌和肝硬化肝移植患者的预后有严重影响。人工神经网络(ANN)最近被认为是实体器官移植和外科肿瘤学中许多领域的有用工具,在这些领域中,患者预后取决于手术过程、供体(移植物特征)和受体合并症等变量之间的多维和非线性关系。在肝移植的具体情况下,人工神经网络模型主要用于预测肝硬化患者的生存,评估分配过程中供体与受体的最佳匹配,并预测术后并发症和预后。本文是对ANN在预测肝癌和肝硬化肝移植后AKI中的作用的具体观点综述,突出了该方法预测这一严重术后并发症的潜在优势。
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