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Predicting Cumulative and Maximum Brain Strain Measures From HybridIII Head Kinematics: A Combined Laboratory Study and Post-Hoc Regression Analysis

机译:从HybridIII头部运动学预测累积和最大的脑力测量:组合的实验室研究和Hoc回归分析

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摘要

Due to growing concern on brain injury in sport, and the role that helmets could play in preventing brain injury caused by impact, biomechanics researchers and helmet certification organizations are discussing how helmet assessment methods might change to assess helmets based on impact parameters relevant to brain injury. To understand the relationship between kinematic measures and brain strain, we completed hundreds of impacts using a 50th percentile Hybrid III head-neck wearing an ice hockey helmet and input three-dimensional impact kinematics to a finite element brain model called the Simulated Injury Monitor (SIMon) (n = 267). Impacts to the helmet front, back and side included impact speeds from 1.2 to 5.8 ms−1. Linear regression models, compared through multiple regression techniques, calculating adjusted R 2 and the F-statistic, determined the most efficient set of kinematics capable of predicting SIMon-computed brain strain, including the cumulative strain damage measure (specifically CSDM-15) and maximum principal strain (MPS). Resultant change in angular velocity, Δω R, better predicted CSDM-15 and MPS than the current helmet certification metric, peak g, and was the most efficient model for predicting strain, regardless of impact location. In nearly all cases, the best two-variable model included peak resultant angular acceleration, α R, and Δω R.
机译:由于人们越来越关注运动中的脑损伤,以及头盔在预防撞击造成的脑损伤中所起的作用,生物力学研究人员和头盔认证组织正在讨论如何改变头盔评估方法,以根据与脑损伤相关的撞击参数评估头盔。为了了解运动学指标与脑部劳损之间的关系,我们使用戴冰球头盔的第50个百分位Hybrid III头颈完成了数百次冲击,并将三维冲击运动学输入到称为模拟伤害监测器(SIMon)的有限元脑模型中)(n = 267)。对头盔正面,背面和侧面的冲击包括从1.2到5.8ms -1 的冲击速度。线性回归模型通过多种回归技术进行比较,计算出调整后的R 2 和F统计量,确定了能够预测SIMon计算出的脑部应变的最有效的运动学参数集,包括累积应变损伤测度(特别是CSDM-15)和最大主应变(MPS)。结果角速度ΔωR的变化,比当前头盔认证指标的峰值g更好地预测了CSDM-15和MPS,并且是最有效的应变预测模型,无论碰撞位置如何。在几乎所有情况下,最佳二变量模型都包括峰值合成角加速度,αR和ΔωR。

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