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Machine Learning Algorithms Predict Clinically Significant Improvements in Satisfaction After Hip Arthroscopy

机译:机器学习算法预测临床在满意度显著改善臀部关节镜检查

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摘要

Purpose: To develop machine learning algorithms to predict failure to achieve clinically significant satisfaction after hip arthroscopy. Methods: We queried a clinical repository for consecutive primary hip arthroscopy patients treated between January 2012 and January 2017. Five supervised machine learning algorithms were developed in a training set of patients and internally validated in an independent testing set of patients by discrimination, Brier score, calibration, and decision-curve analysis. The minimal clinically important difference (MCID) for the visual analog scale (VAS) score for satisfaction was derived by an anchor-based method and used as the primary outcome. Results: A total of 935 patients were included, of whom 148 (15.8%) did not achieve the MCID for the VAS satisfaction score at a minimum of 2 years postoperatively. The best-performing algorithm was the neural network model (C statistic, 0.94; calibration intercept, e0.43; calibration slope, 0.94; and Brier score, 0.050). The 5 most important features to predict failure to achieve the MCID for the VAS satisfaction score were history of anxiety or depression, lateral center-edge angle, preoperative symptom duration exceeding 2 years, presence of 1 or more drug allergies, and Workers? Compensation. Con-clusions: Supervised machine learning algorithms conferred excellent discrimination and performance for predicting clinically significant satisfaction after hip arthroscopy, although this analysis was performed in a single population of patients. External validation is required to confirm the performance of these algorithms.
机译:目的:开发机器学习算法预测未能实现临床意义重大满意后臀部关节镜检查。连续临床库查询主要的臀部之间的关节镜治疗的患者2012年1月和2017年1月。机器学习算法被开发训练集的患者和内部验证在一个独立的测试组患者歧视,荆棘得分、校准和decision-curve分析。重要的区别(MCID)视觉模拟满意度量表(血管)得分是派生的一个anchor-based作为主要方法和使用结果。包括,其中有148(15.8%)没有实现MCID脉管的满意度得分最低术后2年。算法是神经网络模型(C统计,0.94;校准斜率,0.94;5个最重要的特性来预测失败实现MCID脉管的满意度分数是焦虑或抑郁的历史,横向center-edge角,术前症状持续时间超过2年,1或更多药物过敏,和工人?结论:监督机器学习授予优秀的歧视和算法性能预测临床意义重大满意后臀部关节镜,虽然这个在一个人口分析病人。确认这些算法的性能。

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