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Using Machine Learning to Predict Lower-Extremity Injury in US Special Forces

机译:使用机器学习预测美国特种部队的下肢损伤

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摘要

Introduction Musculoskeletal injury rates in military personnel remain unacceptably high. Application of machine learning algorithms could be useful in multivariate models to predict injury in this population. The purpose of this study was to investigate if interaction between individual predictors, using a decision tree model, could be used to develop a population-specific algorithm of lower-extremity injury (LEI) risk. Methods One hundred forty Air Force Special Forces Operators (27.4 +/- 5.0 yr, 177.6 +/- 5.8 cm, 83.8 +/- 8.4 kg) volunteered for this prospective cohort study. Baseline testing included body composition, isokinetic strength, flexibility, aerobic/anaerobic capacity, anaerobic power, and landing biomechanics. To evaluate unilateral landing patterns, subjects jumped off two-feet from a distance (40% of their height) over a hurdle and landing single-legged on a force plate. Medical chart reviews were conducted 365 d postbaseline. chi(2) automatic interaction detection (CHAID) was used, which compares predictor variables to LEI and assigns a population-specific "cut-point" for the most relevant predictors. Results Twenty-seven percent of operators (n = 38) suffered LEI. A maximum knee flexion angle difference of 25.1% had the highest association with injury in this population (P = 0.006). Operators with >25.1% differences in max knee flexion angle (n = 13) suffered LEI at a 69.2% rate. Seven of the 13 Operators with >25.1% difference in max knee flexion angle weighed >81.8 kg, and 100% of those operators suffered LEI (P = 0.047; n = 7). Only 33% of operators with >25.1% difference in max knee flexion angle that weighed Conclusions This study demonstrated increased risk of LEI over a 365-d period in Operators with greater differences in single-leg landing strategies and higher body mass. The CHAID approach can be a powerful tool to analyze population-specific risk factors for injury, along with how those factors may interact to enhance risk.
机译:军事人员的肌肉骨骼伤害率仍然不可接受。机器学习算法的应用可以在多变量模型中有用,以预测该人群的伤害。本研究的目的是调查使用决策树模型的个体预测因子之间的相互作用,可用于开发群体的下肢损伤(LEI)风险的群体算法。方法有一百四十空军特种部用力运营商(27.4 +/- 5.0厘米,177.6 +/- 5.8厘米,83.8 +/- 8.4千克)为这项未来的队列研究志愿进行。基线测试包括身体成分,异动强度,柔韧性,有氧/厌氧容量,厌氧功率和着陆生物力学。为了评估单侧着陆模式,受试者在跨栏和着陆力板上的距离(其高度的40%)跳下两英尺。医疗图表审查进行了365 D后期行。使用CHI(2)使用自动交互检测(CHAID),将预测因子变量与LEI进行比较,并为最相关的预测器分配人口特定的“切割点”。结果二十七位运营商(n = 38)遭受了林雷。最大膝关节屈曲角度差25.1%具有与该群体损伤的最高关联(P = 0.006)。 Max膝关节屈曲角度(n = 13)的25.1%差异为69.2%,率为69.2%。 13个操作员中的七个具有> 25.1%的最大膝关节屈曲角度差异> 81.8千克,100%的操作员遭受林雷(P = 0.047; n = 7)。只有33%的运营商,最大膝关节屈曲角度差异有25.1%,这项研究表明,单腿着陆策略和更高的体重差异的365-D期间林雷风险增加。 CHAID方法可以是分析伤害人口特定风险因素的强大工具,以及这些因素如何互动以提高风险。

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