Suppr超能文献

无监督聚类技术识别美国海军陆战队军官候选学校中与肌肉骨骼损伤风险相关的反向跳跃运动策略。

Unsupervised Clustering Techniques Identify Movement Strategies in the Countermovement Jump Associated With Musculoskeletal Injury Risk During US Marine Corps Officer Candidates School.

作者信息

Bird Matthew B, Mi Qi, Koltun Kristen J, Lovalekar Mita, Martin Brian J, Fain AuraLea, Bannister Angelique, Vera Cruz Angelito, Doyle Tim L A, Nindl Bradley C

机构信息

Neuromuscular Research Laboratory/Warrior Human Performance Research Center, Department of Sports Medicine and Nutrition, University of Pittsburgh, Pittsburgh, PA, United States.

Biomechanics, Physical Performance and Exercise Research Group, Department of Health Sciences, Macquarie University, Sydney, NSW, Australia.

出版信息

Front Physiol. 2022 May 11;13:868002. doi: 10.3389/fphys.2022.868002. eCollection 2022.

Abstract

Musculoskeletal injuries (MSKI) are a significant burden on the military healthcare system. Movement strategies, genetics, and fitness level have been identified as potential contributors to MSKI risk. Screening measures associated with MSKI risk are emerging, including novel technologies, such as markerless motion capture (mMoCap) and force plates (FP) and allow for field expedient measures in dynamic military settings. The aim of the current study was to evaluate movement strategies (i.e., describe variables) of the countermovement jump (CMJ) in Marine officer candidates (MOCs) mMoCap and FP technology by clustering variables to create distinct movement strategies associated with MSKI sustained during Officer Candidates School (OCS). 728 MOCs were tested and 668 MOCs (Male MOCs = 547, Female MOCs = 121) were used for analysis. MOCs performed 3 maximal CMJs in a mMoCap space with FP embedded into the system. De-identified MSKI data was acquired from internal OCS reports for those who presented to the OCS Physical Therapy department for MSKI treatment during the 10 weeks of OCS training. Three distinct clusters were formed with variables relating to CMJ kinetics and kinematics from the mMoCap and FPs. Proportions of MOCs with a lower extremity and torso MSKI across clusters were significantly different ( < 0.001), with the high-risk cluster having the highest proportions (30.5%), followed by moderate-risk cluster (22.5%) and low-risk cluster (13.8%). Kinetics, including braking rate of force development (BRFD), braking net impulse and propulsive net impulse, were higher in low-risk cluster compared to the high-risk cluster ( < 0.001). Lesser degrees of flexion and shorter CMJ phase durations (braking phase and propulsive phase) were observed in low-risk cluster compared to both moderate-risk and high-risk clusters. Male MOCs were distributed equally across clusters while female MOCs were primarily distributed in the high-risk cluster. Movement strategies (i.e., clusters), as quantified by mMoCap and FPs, were successfully described with MOCs MSKI risk proportions between clusters. These results provide actionable thresholds of key performance indicators for practitioners to use for screening measures in classifying greater MSKI risk. These tools may add value in creating modifiable strength and conditioning training programs before or during military training.

摘要

肌肉骨骼损伤(MSKI)给军事医疗系统带来了沉重负担。运动策略、遗传因素和体能水平已被确定为MSKI风险的潜在影响因素。与MSKI风险相关的筛查措施正在不断涌现,包括无标记运动捕捉(mMoCap)和测力板(FP)等新技术,这些技术可在动态军事环境中进行现场便捷测量。本研究的目的是通过对变量进行聚类,以评估海军陆战队军官候选人(MOC)在使用mMoCap和FP技术进行反向纵跳(CMJ)时的运动策略(即描述变量),从而创建与军官候选学校(OCS)期间发生的MSKI相关的不同运动策略。对728名MOC进行了测试,并使用其中668名MOC(男性MOC = 547名,女性MOC = 121名)进行分析。MOC在一个嵌入了FP的mMoCap空间中进行3次最大CMJ。从OCS内部报告中获取了在OCS训练的10周内到OCS物理治疗部门接受MSKI治疗的人员的匿名MSKI数据。根据mMoCap和FP中与CMJ动力学和运动学相关的变量形成了三个不同的聚类。不同聚类中发生下肢和躯干MSKI的MOC比例存在显著差异(<0.001),高风险聚类的比例最高(30.5%),其次是中度风险聚类(22.5%)和低风险聚类(13.8%)。与高风险聚类相比,低风险聚类中的动力学指标,包括力发展制动率(BRFD)、制动净冲量和推进净冲量更高(<0.001)。与中度风险和高风险聚类相比,低风险聚类中观察到的屈曲程度较小,CMJ阶段持续时间(制动阶段和推进阶段)较短。男性MOC在各聚类中的分布较为均匀,而女性MOC主要分布在高风险聚类中。通过mMoCap和FP量化的运动策略(即聚类)成功地描述了不同聚类间MOC的MSKI风险比例。这些结果为从业者在进行筛查措施以分类更高MSKI风险时提供了关键绩效指标的可操作阈值。这些工具可能在军事训练之前或期间制定可修改的力量和体能训练计划方面具有价值。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验