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机器学习在经皮肾镜取石术后全身感染中的诊断性能及相关危险因素的识别

Diagnostic performance of machine learning in systemic infection following percutaneous nephrolithotomy and identification of associated risk factors.

作者信息

Li Pengju, Tang Yiming, Zeng Qinsong, Mo Chengqiang, Ali Nur, Bai Baohua, Ji Song, Zhang Yubing, Luo Junhang, Liang Hui, Wu Rongpei

机构信息

Department of Urology, The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, PR China.

Department of Urology, The Second Affiliated Hospital of Guangzhou Medical University, Guangzhou, PR China.

出版信息

Heliyon. 2024 May 9;10(10):e30956. doi: 10.1016/j.heliyon.2024.e30956. eCollection 2024 May 30.

Abstract

OBJECTIVE

This study aims to investigate the predictive performance of machine learning in predicting the occurrence of systemic inflammatory response syndrome (SIRS) and urosepsis after percutaneous nephrolithotomy (PCNL).

METHODS

A retrospective analysis was conducted on patients who underwent PCNL treatment between January 2016 and July 2022. Machine learning techniques were employed to establish and select the best predictive model for postoperative systemic infection. The feasibility of using relevant risk factors as predictive markers was explored through interpretability with Machine Learning.

RESULTS

A total of 1067 PCNL patients were included in this study, with 111 (10.4 %) patients developing SIRS and 49 (4.5 %) patients developing urosepsis. In the validation set, the risk model based on the GBM protocol demonstrated a predictive power of 0.871 for SIRS and 0.854 for urosepsis. Preoperative and postoperative platelet changes were identified as the most significant predictors. Both thrombocytopenia and thrombocytosis were found to be risk factors for SIRS or urosepsis after PCNL. Furthermore, it was observed that when the change in platelet count before and after PCNL surgery exceeded 30*109/L (whether an increase or decrease), the risk of developing SIRS or urosepsis significantly increased.

CONCLUSION

Machine learning can be effectively utilized for predicting the occurrence of SIRS or urosepsis after PCNL. The changes in platelet count before and after PCNL surgery serve as important predictors.

摘要

目的

本研究旨在探讨机器学习在预测经皮肾镜取石术(PCNL)后全身炎症反应综合征(SIRS)和尿脓毒症发生方面的预测性能。

方法

对2016年1月至2022年7月期间接受PCNL治疗的患者进行回顾性分析。采用机器学习技术建立并选择术后全身感染的最佳预测模型。通过机器学习的可解释性探索使用相关危险因素作为预测标志物的可行性。

结果

本研究共纳入1067例PCNL患者,其中111例(10.4%)发生SIRS,49例(4.5%)发生尿脓毒症。在验证集中,基于GBM协议的风险模型对SIRS的预测能力为0.871,对尿脓毒症的预测能力为0.854。术前和术后血小板变化被确定为最显著的预测因素。血小板减少和血小板增多均被发现是PCNL后发生SIRS或尿脓毒症的危险因素。此外,观察到PCNL手术前后血小板计数变化超过30×10⁹/L(无论增加或减少)时,发生SIRS或尿脓毒症的风险显著增加。

结论

机器学习可有效用于预测PCNL后SIRS或尿脓毒症的发生。PCNL手术前后血小板计数变化是重要的预测因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3934/11137387/52f95daff5f3/gr1.jpg

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