A Prospective Cohort Study to Predict Running-Related Lower Limb Sports Injuries Using Gait Kinematic Parameters

Q2 Social Sciences
H. Gogoi, Y. S. Rajpoot, P. Borah
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引用次数: 6

Abstract

The study purpose was to follow a prospective cohort study design to use gait kinematic parameters to identify the risk factors and to develop a statistical model to predict running-related lower limb injuries of sportspersons.  Materials and methods. BTS G-WALK® gait analysis system was used to collect gait kinematic data of 87 subjects from an institute of physical education and sports science.  The subjects were followed for a full academic season after which the researcher inquired about their injury occurrences. Binary logistic regression was used to develop a prediction model to predict lower limb injuries of sportspersons. Results. The result of the study revealed that increasing Range of Obliquity, Range of Tilt and Range of Rotation were associated with increased likelihood of future running-related lower limb injury. However, the lower Symmetry Index was associated with increase in the likelihood of future running-related lower limb injury. Conclusions. The study confirmed that it is possible to predict injury, but for practical implication further research is essential with a bigger sample size.
一项使用步态运动学参数预测跑步相关下肢运动损伤的前瞻性队列研究
本研究的目的是采用前瞻性队列研究设计,利用步态运动学参数来识别危险因素,并建立统计模型来预测运动员跑步相关的下肢损伤。材料和方法。采用BTS G-WALK®步态分析系统采集某体育运动科学研究所87名受试者的步态运动学数据。研究对象被跟踪了整整一个学年,之后研究人员询问了他们受伤的情况。采用二元logistic回归建立预测运动员下肢损伤的预测模型。结果。研究结果显示,增加的倾斜范围、倾斜范围和旋转范围与未来与跑步相关的下肢损伤的可能性增加有关。然而,较低的对称指数与未来与跑步相关的下肢损伤的可能性增加有关。结论。该研究证实了预测损伤是可能的,但对于实际意义来说,进一步的研究是必要的,需要更大的样本量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Teoria ta Metodika Fizicnogo Vihovanna
Teoria ta Metodika Fizicnogo Vihovanna Health Professions-Physical Therapy, Sports Therapy and Rehabilitation
CiteScore
2.20
自引率
0.00%
发文量
63
审稿时长
15 weeks
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