伴随手术、黑人种族、男性性别和全身麻醉对肩袖修复手术时间延长的预测价值不高:利用机器学习对 NSQIP 数据库进行分析。

Teja Yeramosu, Laura M Krivicich, Richard N Puzzitiello, Guy Guenthner, Matthew J Salzler
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引用次数: 0

摘要

目的:本研究旨在利用美国外科学院国家质量改进计划(ACS-NSQIP)数据库开发机器学习模型,以预测肩袖修复术(RCR)的手术时间延长(POT)。此外,本研究还旨在使用训练有素的机器学习(ML)模型与传统的多元逻辑回归(MLR)进行交叉对比,以确定可能预测肩袖修复术手术时间延长的关键围手术期变量:数据来自 2021 年的大型国家数据库(NSQIP)。纳入了单侧 RCR 手术患者。对人口统计学、术前和手术变量进行了分析。使用曲线下面积(AUC)、校准、布赖尔评分和决策曲线分析比较了多变量逻辑回归(MLR)模型和其他各种机器学习技术,包括随机森林(RF)和人工神经网络(ANN)。从总体表现最佳的模型中确定特征的重要性:共有 6690 名患者符合纳入标准。随机森林(RF)ML 模型的内部验证 AUC 最高(0.706),Brier 评分最低(0.15),优于其他模型。在校准曲线评估(斜率 = 0.86,截距 = 0.08)和决策曲线分析中,RF 模型也表现出色。该模型确定了同时进行的手术,特别是唇瓣修复术和二头肌腱膜切开术,是决定 POT 的最重要变量,其次是年龄结论:尽管本研究中使用了先进的机器学习模型,但 NSQIP 数据集只能对 RCR 后的 POT 进行较好的预测。RF 模型确定了同时进行的手术,特别是唇瓣修复和二头肌腱膜切开术,是决定 POT 的最重要变量。此外,人口统计学因素,如年龄
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Concomitant Procedures, Black Race, Male Sex, and General Anesthesia Show Fair Predictive Value for Prolonged Rotator Cuff Repair Operative Time: Analysis of the National Quality Improvement Program Database Using Machine Learning.

Purpose: To develop machine learning models using the American College of Surgeons National Quality Improvement Program (ACS-NSQIP) database to predict prolonged operative time (POT) for rotator cuff repair (RCR), as well as use the trained machine learning models, cross-referenced with traditional multivariate logistic regression (MLR), to determine the key perioperative variables that may predict POT for RCR.

Methods: Data were obtained from a large national database (ACS-NSQIP) from 2021. Patients with unilateral RCR procedures were included. Demographic, preoperative, and operative variables were analyzed. An MLR model and various other machine learning techniques, including random forest (RF) and artificial neural network, were compared using area under the curve, calibration, Brier score, and decision curve analysis. Feature importance was identified from the overall best-performing model.

Results: A total of 6,690 patients met inclusion criteria. The RF machine learning model had the highest area under the curve upon internal validation (0.706) and the lowest Brier score (0.15), outperforming the other models. The RF model also demonstrated strong performance upon assessment of the calibration curves (slope = 0.86, intercept = 0.08) and decision curve analysis. The model identified concomitant procedure, specifically labral repair and biceps tenodesis, as the most important variable for determining POT, followed by age <30 years, Black or African American race, male sex, and general anesthesia.

Conclusions: Despite the advanced machine learning models used in this study, the ACS-NSQIP data set was only able to fairly predict POT following RCR. The RF model identified concomitant procedures, specifically labral repair and biceps tenodesis, as the most important variables for determining POT. Additionally, demographic factors such as age <30 years, Black race, and general anesthesia were significant predictors. While male sex was identified as important in the RF model, the MLR model indicated that its predictive value is primarily in conjunction with specific procedures like biceps tenodesis and subacromial decompression.

Level of evidence: Level IV, retrospective comparative prognostic trial.

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来源期刊
CiteScore
9.30
自引率
17.00%
发文量
555
审稿时长
58 days
期刊介绍: Nowhere is minimally invasive surgery explained better than in Arthroscopy, the leading peer-reviewed journal in the field. Every issue enables you to put into perspective the usefulness of the various emerging arthroscopic techniques. The advantages and disadvantages of these methods -- along with their applications in various situations -- are discussed in relation to their efficiency, efficacy and cost benefit. As a special incentive, paid subscribers also receive access to the journal expanded website.
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