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全膝关节置换术后血钾紊乱和急性肾损伤的风险预测:使用机器学习算法

Risk prediction of kalaemia disturbance and acute kidney injury after total knee arthroplasty: use of a machine learning algorithm.

作者信息

Tran Pierre, Knecht Siam, Tamine Lyna, Faure Nicolas, Orban Jean-Christophe, Bronsard Nicolas, Gonzalez Jean-François, Micicoi Grégoire

机构信息

Institut Universitaire Locomoteur et du Sport (IULS), Hôpital Pasteur 2, CHU de Nice, 30 voie Romaine, 06000 Nice, France.

Aix-Marseille Université, CNRS, EFS, ADES, 13007 Marseille, France.

出版信息

Orthop Traumatol Surg Res. 2025 Feb;111(1):103958. doi: 10.1016/j.otsr.2024.103958. Epub 2024 Jul 22.

Abstract

INTRODUCTION

Total knee arthroplasty (TKA) is a procedure associated with risks of electrolyte and kidney function disorders, which are rare but can lead to serious complications if not correctly identified. A routine check-up is very often carried out to assess the seric ionogram and kidney function after TKA, that rarely requires clinical intervention in the event of a disturbance. The aim of this study was to identify perioperative variables that would lead to the creation of a machine learning model predicting the risk of kalaemia disorders and/or acute kidney injury after total knee arthroplasty.

HYPOTHESIS

A predictive model could be constructed to estimate the risk of kalaemia disorders and/or acute kidney injury after total knee arthroplasty.

MATERIAL AND METHODS

This single-centre retrospective study included 774 total knee arthroplasties (TKA) operated on between January 2020 and March 2023. Twenty-five preoperative variables were incorporated into the machine learning model and filtered by a first algorithm. The most predictive variables selected were used to construct a second algorithm to define the overall risk model for postoperative kalaemia and/or acute kidney injury (K A). Two groups were formed of K A and non-K A patients after TKA. A univariate analysis was performed and the performance of the machine learning model was assessed by the area under the curve representing the sensitivity of the model as a function of 1 - specificity.

RESULTS

Of the 774 patients included who had undergone TKA surgery, 46 patients (5.9%) had a postoperative kalaemia disorder requiring correction and 13 patients (1.7%) had acute kidney injury, of whom 5 patients (0.6%) received vascular filling. Eight variables were included in the machine learning predictive model, including body mass index, age, presence of diabetes, operative time, lowest mean arterial pressure, Charlson score, smoking and preoperative glomerular filtration rate. Overall performance was good with an area under the curve of 0.979 [CI95% 0.938-1.02], sensitivity was 90.3% [CI95% 86.2-94.4] and specificity 89.7% [CI95% 85.5-93.8]. The tool developed to assess the risk of impaired kalaemia and/or acute kidney injury after TKA is available on https://arthrorisk.com.

CONCLUSION

The risk of kalaemia disturbance and postoperative acute kidney injury after total knee arthroplasty could be predicted by a model that identifies low-risk and high-risk patients based on eight pre- and intraoperative variables. This machine learning tool is available on a web platform accessible for everyone, easy to use and has a high predictive performance. The aim of the model was to better identify and anticipate the complications of dyskalaemia and postoperative acute kidney injury in high-risk patients. Further prospective multicentre series are needed to assess the value of a systematic postoperative biochemical work-up in the absence of risk predicted by the model.

LEVEL OF EVIDENCE

IV; retrospective study of case series.

摘要

引言

全膝关节置换术(TKA)存在电解质和肾功能紊乱风险,此类情况虽罕见,但若未正确识别可导致严重并发症。TKA术后常进行常规检查以评估血清离子图和肾功能,若出现紊乱很少需要临床干预。本研究旨在确定围手术期变量,以创建一个机器学习模型来预测全膝关节置换术后高钾血症紊乱和/或急性肾损伤的风险。

假设

可以构建一个预测模型来估计全膝关节置换术后高钾血症紊乱和/或急性肾损伤的风险。

材料与方法

本单中心回顾性研究纳入了2020年1月至2023年3月期间进行的774例全膝关节置换术(TKA)。将25个术前变量纳入机器学习模型,并通过第一种算法进行筛选。选择最具预测性的变量来构建第二种算法,以定义术后高钾血症和/或急性肾损伤(KA)的总体风险模型。TKA术后将患者分为KA组和非KA组。进行单因素分析,并通过代表模型敏感性与1-特异性函数关系的曲线下面积评估机器学习模型的性能。

结果

在纳入的774例接受TKA手术的患者中,46例(5.9%)术后出现需要纠正的高钾血症紊乱,13例(1.7%)发生急性肾损伤,其中5例(0.6%)接受了血管补液。机器学习预测模型纳入了8个变量,包括体重指数、年龄、糖尿病史、手术时间、最低平均动脉压、Charlson评分、吸烟情况和术前肾小球滤过率。总体性能良好,曲线下面积为0.979 [95%CI 0.938-1.02],敏感性为90.3% [95%CI 86.2-94.4],特异性为89.7% [95%CI 85.5-93.8]。用于评估TKA术后高钾血症和/或急性肾损伤风险的工具可在https://arthrorisk.com上获取。

结论

通过一个基于8个术前和术中变量识别低风险和高风险患者的模型,可以预测全膝关节置换术后高钾血症紊乱和术后急性肾损伤的风险。这个机器学习工具可在一个人人可访问的网络平台上获取,易于使用且具有较高的预测性能。该模型的目的是更好地识别和预测高危患者的血钾异常和术后急性肾损伤并发症。需要进一步的前瞻性多中心系列研究来评估在模型未预测到风险时系统的术后生化检查的价值。

证据水平

IV;病例系列回顾性研究。

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