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首页> 外文期刊>Journal of orthopaedic research >The prediction of stress fractures using a 'stressed volume' concept.
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The prediction of stress fractures using a 'stressed volume' concept.

机译:使用“应力体积”概念来预测应力裂缝。

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摘要

This paper addresses an anomaly which exists in the current literature regarding stress fractures. Analysis of the data on fatigue strength of bone samples in vitro would conclude that these fractures should never occur at the strain levels known to occur in vivo. This anomaly can be resolved by including in the analysis the effect of stressed volume, whereby larger volumes of material are expected to have worse fatigue properties. A Weibull analysis was used to predict the probability of failure, Pf; this was an upper-bound prediction because it did not include the effects of remodelling and adaptation. Combining this analysis with a finite element model of the human tibia, we predicted a Pf value of 21% after five weeks of strenuous exercise, which is comparable with reported incidences in military personnel. The high incidence of stress fractures in the cannon bone of racehorses could also be predicted (Pf = 62%, compared to 70% experimentally). The approach can be used to investigate the effect of variables in the exercise regime such as the distance run per day and the use of improved footwear. It can also predict the increased risk of stress fractures in elderly people. The results suggest certain simple rules which may be of clinical value in designing exercise regimes and in understanding the risk factors for this type of injury.
机译:本文解决了当前有关应力断裂的文献中存在的异常现象。对体外骨骼样品疲劳强度数据的分析将得出结论,这些骨折绝不应在已知体内发生的应变水平下发生。通过在分析中包括应力体积的影响,可以解决此异常问题,从而可以预期更大体积的材料具有较差的疲劳性能。韦布尔分析用于预测失效概率Pf。这是一个上限预测,因为它不包括重构和适应的影响。将此分析与人类胫骨的有限元模型相结合,我们预测在进行五周剧烈运动后,Pf值为21%,这与军事人员的报道发病率相当。还可以预测赛马大炮骨中应力性骨折的发生率很高(Pf = 62%,而实验中为70%)。该方法可用于调查运动方式中变量的影响,例如每天的跑步距离和使用改进的鞋类。它还可以预测老年人应力性骨折的风险增加。结果表明某些简单的规则可能对设计运动方案和理解此类伤害的危险因素具有临床价值。

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