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机器学习和投球手臂动力学的统计预测。

Machine Learning and Statistical Prediction of Pitching Arm Kinetics.

机构信息

Department of Orthopaedic Surgery, Wake Forest School of Medicine, Winston-Salem, North Carolina, USA.

Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology, and Musculoskeletal Sciences, University of Oxford, Oxford, UK.

出版信息

Am J Sports Med. 2022 Jan;50(1):238-247. doi: 10.1177/03635465211054506. Epub 2021 Nov 15.

Abstract

BACKGROUND

Over the past decade, research has attempted to elucidate the cause of throwing-related injuries in the baseball athlete. However, when considering the entire kinetic chain, full body mechanics, and pitching cycle sequencing, there are hundreds of variables that could influence throwing arm health, and there is a lack of quality investigations evaluating the relationship and influence of multiple variables on arm stress.

PURPOSE

To identify which variables have the most influence on elbow valgus torque and shoulder distraction force using a statistical model and a machine learning approach.

STUDY DESIGN

Cross-sectional study; Level of evidence, 3.

METHODS

A retrospective review was performed on baseball pitchers who underwent biomechanical evaluation at the university biomechanics laboratory. Regression models and 4 machine learning models were created for both elbow valgus torque and shoulder distraction force. All models utilized the same predictor variables, which included pitch velocity and 17 pitching mechanics.

RESULTS

The analysis included a total of 168 high school and collegiate pitchers with a mean age of 16.7 years (SD, 3.2 years) and BMI of 24.4 (SD, 1.2). For both elbow valgus torque and shoulder distraction force, the gradient boosting machine models demonstrated the smallest root mean square errors and the most precise calibrations compared with all other models. The gradient boosting model for elbow valgus torque reported the highest influence for pitch velocity (relative influence, 28.4), with 5 mechanical variables also having significant influence. The gradient boosting model for shoulder distraction force reported the highest influence for pitch velocity (relative influence, 20.4), with 6 mechanical variables also having significant influence.

CONCLUSION

The gradient boosting machine learning model demonstrated the best overall predictive performance for both elbow valgus torque and shoulder distraction force. Pitch velocity was the most influential variable in both models. However, both models also revealed that pitching mechanics, including maximum humeral rotation velocity, shoulder abduction at foot strike, and maximum shoulder external rotation, significantly influenced both elbow and shoulder stress.

CLINICAL RELEVANCE

The results of this study can be used to inform players, coaches, and clinicians on specific mechanical variables that may be optimized to mitigate elbow or shoulder stress that could lead to throwing-related injury.

摘要

背景

在过去的十年中,研究试图阐明导致棒球运动员投掷相关损伤的原因。然而,当考虑整个运动链、全身力学和投球周期顺序时,可能有数百个变量会影响投掷臂的健康,而且缺乏评估多个变量对手臂压力的关系和影响的高质量研究。

目的

使用统计模型和机器学习方法确定对肘内翻扭矩和肩部分离力影响最大的变量。

研究设计

横断面研究;证据水平,3 级。

方法

对在大学生物力学实验室进行生物力学评估的棒球投手进行回顾性分析。为肘内翻扭矩和肩部分离力创建了回归模型和 4 个机器学习模型。所有模型均使用相同的预测变量,包括投球速度和 17 个投球力学。

结果

分析共纳入 168 名高中和大学投手,平均年龄为 16.7 岁(标准差,3.2 岁),BMI 为 24.4(标准差,1.2)。对于肘内翻扭矩和肩部分离力,梯度提升机模型的均方根误差最小,校准最精确,与其他所有模型相比。肘内翻扭矩的梯度提升模型报告了投球速度的最高影响(相对影响,28.4%),有 5 个力学变量也具有显著影响。肩部分离力的梯度提升模型报告了投球速度的最高影响(相对影响,20.4%),有 6 个力学变量也具有显著影响。

结论

梯度提升机机器学习模型在肘内翻扭矩和肩部分离力的预测性能均表现最佳。投球速度是两个模型中最具影响力的变量。然而,两个模型还表明,投球力学,包括肱骨最大旋转速度、足着地时的肩部外展和最大肩部外旋,显著影响肘部和肩部的压力。

临床相关性

本研究的结果可用于告知运动员、教练和临床医生可能需要优化的特定力学变量,以减轻可能导致投掷相关损伤的肘部或肩部压力。

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