Abstract

ObjectiveMachine learning methods may have better or comparable predictive ability than traditional analysis. We explore machine learning methods to predict the likelihood of acute kidney injury after liver cancer resection.MethodsThis is a secondary analysis cohort study. We reviewed data from patients who had undergone resection of primary hepatocellular carcinoma between January 2008 and October 2015.ResultsThe analysis included 1,173 hepatectomy patients, 77 (6.6%) of whom had AKI and 1,096 (93.4%) who did not. The importance matrix for the Gbdt algorithm model shows that age, cholesterol, tumor size, surgery duration and PLT were the five most important parameters. Figure 1 shows that Age, tumor size and surgery duration had weak positive correlations with AKI. Cholesterol and PLT also had weak negative correlations with AKI. The models constructed by the four machine learning algorithms in the training group were compared. Among the four machine learning algorithms, random forest and gbm had the highest accuracy, 0.989 and 0.970 respectively. The precision of four of the five algorithms was 1, random forest being the exception. Among the test group, gbm had the highest accuracy (0.932). Random forest and gbm had the highest precision, both being 0.333. The AUC values for the four algorithms were: Gbdt (0.772), gbm (0.725), forest (0.662) and DecisionTree (0.628).ConclusionsMachine learning technology can predict acute kidney injury after hepatectomy. Age, cholesterol, tumor size, surgery duration and PLT influence the likelihood and development of postoperative acute kidney injury.

Highlights

  • Acute kidney injury (AKI) is a common postoperative complication among surgical patients

  • This study investigated the preoperative risk factors associated with secondary AKI after hepatectomy

  • The Gbdt algorithm indicated that age, cholesterol, tumor size, surgery duration and PLT were the five most important weights for AKI

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Summary

Introduction

Acute kidney injury (AKI) is a common postoperative complication among surgical patients. The incidence of postoperative AKI accounts for 18%–47% of total hospitalized AKI patients (Tang & Murray, 2004). Postoperative AKI can prolong the hospitalization period and increase the risk of both in-hospital mortality and chronic kidney disease. Postoperative AKI is easy to overlook, and the diagnostic rate is low (Moore et al, 2010; Bennet et al, 2010). How to cite this article Lei L, Wang Y, Xue Q, Tong J, Zhou C-M, Yang J-J. A comparative study of machine learning algorithms for predicting acute kidney injury after liver cancer resection.

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