O'Sullivan Finbarr, O'Sullivan Janet, Bull Anthony M J, McGregor Alison H
The Statistical Laboratory, Department of Statistics, University College Cork, Ireland.
Clin Biomech (Bristol). 2003 Jul;18(6):488-93. doi: 10.1016/s0268-0033(03)00077-9.
To investigate the ability of statistical techniques to detect systematic changes in rowing technique during a rowing session and to discriminate between rowers of different abilities with and without back pain.
Statistical techniques were applied to kinematic datasets of elite level rowers, in order to construct an empirical model of the rowing stroke.
The size and complexity of datasets generated by biomechanical kinematics evaluations has led to opportunities for analysing pathology whilst introducing substantial challenges for statistical analysis.
Spinal motion and load output of 18 International and National standard competitive rowers were monitored during ergometer rowing sessions. International rower data were used to construct an empirical model of this activity. Linear stroke models were derived using principal components and a generalized cross-validation procedure. Performance characteristics of the identified models were calculated for all rowing groups. The stroke model was applied to distinguishing pattern variations within and between rowers. A multivariate logistic regression analysis was carried out to examine the relationship between stroke model parameters on the incidence of low back pain.
90% of the variability in the data was explained by the first three principal component variables. Stroke models with three basis functions were selected for each variable. The models performed well on the National rowers, providing validation of the models. A 2-variable model showed a significant difference between the rowing stroke characteristics of rowers with and without low back pain (P<0.01).
A parsimonious collection of empirical models effectively describes motion and load characteristics of ergometer rowing. Patterns in rowing technique are found to be strongly associated with the incidence lower back pain.
Empirical statistical models can be used to track changes in rowing technique, and discriminate between different rowing groups. This may impact rowing training, and rehabilitation.
研究统计技术检测划船训练期间划船技术系统变化以及区分有无背痛的不同能力划船者的能力。
将统计技术应用于精英水平划船者的运动学数据集,以构建划船动作的经验模型。
生物力学运动学评估生成的数据集规模和复杂性为分析病理状况提供了机会,同时也给统计分析带来了巨大挑战。
在测功仪划船训练期间监测18名国际和国家标准竞技划船者的脊柱运动和负荷输出。使用国际划船者数据构建此活动的经验模型。采用主成分和广义交叉验证程序推导线性划桨模型。计算所有划船组已识别模型的性能特征。将划桨模型应用于区分划船者内部和之间的模式变化。进行多变量逻辑回归分析,以检查划桨模型参数与下背痛发生率之间的关系。
数据中90%的变异性由前三个主成分变量解释。为每个变量选择了具有三个基函数的划桨模型。这些模型在国家划船者中表现良好,验证了模型的有效性。一个双变量模型显示有和没有下背痛的划船者的划桨动作特征存在显著差异(P<0.01)。
一组简洁的经验模型有效地描述了测功仪划船的运动和负荷特征。发现划船技术模式与下背痛发生率密切相关。
经验统计模型可用于跟踪划船技术的变化,并区分不同的划船组。这可能会影响划船训练和康复。