Hoerzer Stefan, von Tscharner Vinzenz, Jacob Christian, Nigg Benno M
Human Performance Laboratory, University of Calgary, Calgary, Canada.
Human Performance Laboratory, University of Calgary, Calgary, Canada.
J Biomech. 2015 Jul 16;48(10):2072-9. doi: 10.1016/j.jbiomech.2015.03.017. Epub 2015 Mar 20.
A functional group is a collection of individuals who react in a similar way to a specific intervention/product such as a sport shoe. Matching footwear features to a functional group can possibly enhance footwear-related comfort, improve running performance, and decrease the risk of movement-related injuries. To match footwear features to a functional group, one has to first define the different groups using their distinctive movement patterns. Therefore, the main objective of this study was to propose and apply a methodological approach to define functional groups with different movement patterns using Self-Organizing Maps and Support Vector Machines. Further study objectives were to identify differences in age, gender and footwear-related comfort preferences between the functional groups. Kinematic data and subjective comfort preferences of 88 subjects (16-76 years; 45 m/43 f) were analysed. Eight functional groups with distinctive movement patterns were defined. The findings revealed that most of the groups differed in age or gender. Certain functional groups differed in their comfort preferences and, therefore, had group-specific footwear requirements to enhance footwear-related comfort. Some of the groups, which had group-specific footwear requirements, did not show any differences in age or gender. This is important because when defining functional groups simply using common grouping criteria like age or gender, certain functional groups with group-specific movement patterns and footwear requirements might not be detected. This emphasises the power of the proposed pattern recognition approach to automatically define groups by their distinctive movement patterns in order to be able to address their group-specific product requirements.
功能组是指对特定干预措施/产品(如运动鞋)有相似反应的个体集合。使鞋类特征与功能组相匹配可能会提高与鞋类相关的舒适度、改善跑步表现并降低与运动相关的受伤风险。为了使鞋类特征与功能组相匹配,必须首先利用其独特的运动模式来定义不同的组。因此,本研究的主要目的是提出并应用一种方法,利用自组织映射和支持向量机来定义具有不同运动模式的功能组。进一步的研究目标是确定功能组之间在年龄、性别以及与鞋类相关的舒适度偏好方面的差异。分析了88名受试者(16 - 76岁;45名男性/43名女性)的运动学数据和主观舒适度偏好。定义了八个具有独特运动模式的功能组。研究结果表明,大多数组在年龄或性别上存在差异。某些功能组在舒适度偏好上存在差异,因此有特定于组的鞋类需求,以提高与鞋类相关的舒适度。一些有特定于组的鞋类需求的组在年龄或性别上没有显示出任何差异。这很重要,因为当仅使用年龄或性别等常见分组标准来定义功能组时,可能无法检测到某些具有特定于组的运动模式和鞋类需求的功能组。这强调了所提出的模式识别方法的作用,即通过其独特的运动模式自动定义组,以便能够满足其特定于组的产品需求。