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用于预测肝癌切除术后急性肾损伤的机器学习算法的比较研究

A comparative study of machine learning algorithms for predicting acute kidney injury after liver cancer resection.

作者信息

Lei Lei, Wang Ying, Xue Qiong, Tong Jianhua, Zhou Cheng-Mao, Yang Jian-Jun

机构信息

Department of Anesthesiology, Pain and Perioperative Medicine, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.

出版信息

PeerJ. 2020 Feb 25;8:e8583. doi: 10.7717/peerj.8583. eCollection 2020.

Abstract

OBJECTIVE

Machine 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.

METHODS

This 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.

RESULTS

The 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).

CONCLUSIONS

Machine 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.

摘要

目的

机器学习方法可能比传统分析方法具有更好或相当的预测能力。我们探索机器学习方法以预测肝癌切除术后急性肾损伤的可能性。

方法

这是一项二次分析队列研究。我们回顾了2008年1月至2015年10月期间接受原发性肝细胞癌切除术患者的数据。

结果

分析纳入了1173例肝切除术患者,其中77例(6.6%)发生急性肾损伤,1096例(93.4%)未发生。Gbdt算法模型的重要性矩阵显示,年龄、胆固醇、肿瘤大小、手术时长和血小板是五个最重要的参数。图1显示,年龄、肿瘤大小和手术时长与急性肾损伤呈弱正相关。胆固醇和血小板与急性肾损伤也呈弱负相关。比较了训练组中四种机器学习算法构建的模型。在这四种机器学习算法中,随机森林和gbm的准确率最高,分别为0.989和0.970。五种算法中有四种的精确率为1,随机森林除外。在测试组中,gbm的准确率最高(0.932)。随机森林和gbm的精确率最高,均为0.333。四种算法的AUC值分别为:Gbdt(0.772)、gbm(0.725)、forest(0.662)和DecisionTree(0.628)。

结论

机器学习技术可预测肝切除术后的急性肾损伤。年龄、胆固醇、肿瘤大小、手术时长和血小板会影响术后急性肾损伤的可能性和发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/20b9/7047869/7937bee14a85/peerj-08-8583-g001.jpg

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