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机器学习模型预测体外冲击波碎石术后结石清除状态的系统评价和荟萃分析。

Machine Learning Models for Predicting Stone-Free Status after Shockwave Lithotripsy: A Systematic Review and Meta-Analysis.

出版信息

Urology. 2021 Oct;156:16-22. doi: 10.1016/j.urology.2021.04.006. Epub 2021 Apr 21.

Abstract

We performed a systematic review and meta-analysis to investigate the use of machine learning techniques for predicting stone-free rates following Shockwave Lithotripsy (SWL). Eight papers (3264 patients) were included. Two studies used decision-tree approaches, five studies utilised Artificial Neural Networks (ANN), and one study combined a variety of approaches. The summary true positive rate was 79%, summary false positive rate was 14%, and Receiver Operator Characteristic (ROC) was 0.90 for machine learning approaches. Machine learning algorithms were at least as good as standard approaches. Further prospective evidence is needed to routinely apply machine learning algorithms in clinical practice.

摘要

我们进行了系统评价和荟萃分析,以调查机器学习技术在预测体外冲击波碎石术 (SWL) 后结石清除率方面的应用。共纳入 8 篇文献(3264 例患者)。其中 2 项研究采用决策树方法,5 项研究采用人工神经网络(ANN),1 项研究则结合了多种方法。机器学习方法的汇总真阳性率为 79%,汇总假阳性率为 14%,ROC 为 0.90。机器学习算法与标准方法至少同样有效。需要进一步的前瞻性证据,以便在临床实践中常规应用机器学习算法。

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