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机器学习方法能否生成准确且易于使用的膝关节置换术后一年疼痛和功能改善的术前预测模型?

Can Machine Learning Methods Produce Accurate and Easy-to-Use Preoperative Prediction Models of One-Year Improvements in Pain and Functioning After Knee Arthroplasty?

机构信息

Center for Innovation to Implementation, VA Palo Alto Healthcare System, Palo Alto, CA; Department of Surgery, Stanford-Surgical Policy Improvement Research and Education (S-SPIRE) Center, Stanford, CA.

San Francisco Veterans Affairs Medical Center, University of California, San Francisco, CA.

出版信息

J Arthroplasty. 2021 Jan;36(1):112-117.e6. doi: 10.1016/j.arth.2020.07.026. Epub 2020 Jul 20.

Abstract

BACKGROUND

Approximately 15%-20% of total knee arthroplasty (TKA) patients do not experience clinically meaningful improvements. We sought to compare the accuracy and parsimony of several machine learning strategies for developing predictive models of failing to experience minimal clinically important differences in patient-reported outcome measures (PROMs) 1 year after TKA.

METHODS

Patients (N = 587) in 3 large Veteran Health Administration facilities completed PROMs before and 1 year after TKA (92% follow-up). Preoperative PROMs and electronic health record data were used to develop and validate models to predict failing to experience at least a minimal clinically important difference in Knee Injury and Osteoarthritis Outcome Score (KOOS) Total, KOOS JR, and KOOS subscales (Pain, Symptoms, Activities of Daily Living, Quality of Life, and recreation). Several machine learning strategies were used for model development. Ten-fold cross-validation and bootstrapping were used to produce measures of overall accuracy (C-statistic, Brier Score). The sensitivity and specificity of various predicted probability cut-points were examined.

RESULTS

The most accurate models produced were for the Activities of Daily Living, Pain, Symptoms, and Quality of Life subscales of the KOOS (C-statistics 0.76, 0.72, 0.72, and 0.71, respectively). Strategies varied substantially in terms of the numbers of inputs required to achieve similar accuracy, with none being superior for all outcomes.

CONCLUSION

Models produced in this project provide estimates of patient-specific improvements in major outcomes 1 year after TKA. Integrating these models into clinical decision support, informed consent and shared decision making could improve patient selection, education, and satisfaction.

LEVEL OF EVIDENCE

Level III, diagnostic study.

摘要

背景

约 15%-20%的全膝关节置换术(TKA)患者没有经历有临床意义的改善。我们试图比较几种机器学习策略在开发预测模型方面的准确性和简约性,以预测患者在 TKA 后 1 年报告的结果测量(PROMs)中未能达到最小临床重要差异。

方法

3 家大型退伍军人健康管理机构的 587 名患者在 TKA 前和 1 年后完成了 PROMs(92%的随访率)。使用术前 PROMs 和电子健康记录数据来开发和验证模型,以预测在膝关节损伤和骨关节炎结果评分(KOOS)总得分、KOOS JR 和 KOOS 子量表(疼痛、症状、日常生活活动、生活质量和娱乐)中未能达到至少最小临床重要差异的情况。使用了几种机器学习策略来开发模型。十折交叉验证和引导法用于生成总体准确性的度量标准(C 统计量、Brier 评分)。检查了各种预测概率截断点的敏感性和特异性。

结果

最准确的模型是 KOOS 的日常生活活动、疼痛、症状和生活质量子量表(C 统计量分别为 0.76、0.72、0.72 和 0.71)。这些策略在所需输入数量方面存在很大差异,以达到相似的准确性,没有一种策略在所有结果上都具有优势。

结论

本项目中生成的模型提供了 TKA 后 1 年主要结局患者特定改善的估计值。将这些模型纳入临床决策支持、知情同意和共同决策可以改善患者选择、教育和满意度。

证据水平

三级,诊断研究。

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