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基于机器学习的人工关节假体周围感染预测:用于诊断的可理解个性化决策支持。

Periprosthetic Joint Infection Prediction via Machine Learning: Comprehensible Personalized Decision Support for Diagnosis.

机构信息

Department of Orthopaedic Surgery, Kaohsiung Chang Gung Memorial Hospital, College of Medicine, Chang Gung University, Kaohsiung, Taiwan.

College of Computer Science, National Yang Ming Chiao Tung University, Hsinchu, Taiwan.

出版信息

J Arthroplasty. 2022 Jan;37(1):132-141. doi: 10.1016/j.arth.2021.09.005. Epub 2021 Sep 17.

Abstract

BACKGROUND

The criteria outlined in the International Consensus Meeting (ICM) in 2018, which were prespecified and fixed, have been commonly practiced by clinicians to diagnose periprosthetic joint infection (PJI). We developed a machine learning (ML) system for PJI diagnosis and compared it with the ICM scoring system to verify the feasibility of ML.

METHODS

We designed an ensemble meta-learner, which combined 5 learning algorithms to achieve superior performance by optimizing their synergy. To increase the comprehensibility of ML, we developed an explanation generator that produces understandable explanations of individual predictions. We performed stratified 5-fold cross-validation on a cohort of 323 patients to compare the ML meta-learner with the ICM scoring system.

RESULTS

Cross-validation demonstrated ML's superior predictive performance to that of the ICM scoring system for various metrics, including accuracy, precision, recall, F1 score, Matthews correlation coefficient, and area under receiver operating characteristic curve. Moreover, the case study showed that ML was capable of identifying personalized important features missing from ICM and providing interpretable decision support for individual diagnosis.

CONCLUSION

Unlike ICM, ML could construct adaptive diagnostic models from the available patient data instead of making diagnoses based on prespecified criteria. The experimental results suggest that ML is feasible and competitive for PJI diagnosis compared with the current widely used ICM scoring criteria. The adaptive ML models can serve as an auxiliary system to ICM for diagnosing PJI.

摘要

背景

2018 年国际共识会议(ICM)中规定的标准是临床医生诊断假体周围关节感染(PJI)的常用标准。我们开发了一种用于 PJI 诊断的机器学习(ML)系统,并将其与 ICM 评分系统进行比较,以验证 ML 的可行性。

方法

我们设计了一个集成元学习者,该学习者结合了 5 种学习算法,通过优化它们的协同作用来实现卓越的性能。为了提高 ML 的可理解性,我们开发了一个解释生成器,该生成器可以对个别预测产生可理解的解释。我们对 323 名患者的队列进行了分层 5 折交叉验证,比较了 ML 元学习者与 ICM 评分系统。

结果

交叉验证表明,ML 在各种指标上的预测性能优于 ICM 评分系统,包括准确性、精度、召回率、F1 分数、马修斯相关系数和接收者操作特征曲线下面积。此外,案例研究表明,ML 能够识别 ICM 中缺失的个性化重要特征,并为个体诊断提供可解释的决策支持。

结论

与 ICM 不同,ML 可以根据可用的患者数据构建自适应诊断模型,而不是基于预设标准进行诊断。实验结果表明,与当前广泛使用的 ICM 评分标准相比,ML 用于 PJI 诊断是可行且具有竞争力的。自适应 ML 模型可以作为 ICM 的辅助系统,用于诊断 PJI。

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