Eskofier Bjoern M, Kraus Martin, Worobets Jay T, Stefanyshyn Darren J, Nigg Benno M
Human Performance Laboratory, Faculty of Kinesiology, University of Calgary, 2500 University Dr NW, Calgary, AB T2N 1N4, Canada.
Comput Methods Biomech Biomed Engin. 2012;15(5):467-74. doi: 10.1080/10255842.2010.542153. Epub 2011 May 24.
The identification of differences between groups is often important in biomechanics. This paper presents group classification tasks using kinetic and kinematic data from a prospective running injury study. Groups composed of gender, of shod/barefoot running and of runners who developed patellofemoral pain syndrome (PFPS) during the study, and asymptotic runners were classified. The features computed from the biomechanical data were deliberately chosen to be generic. Therefore, they were suited for different biomechanical measurements and classification tasks without adaptation to the input signals. Feature ranking was applied to reveal the relevance of each feature to the classification task. Data from 80 runners were analysed for gender and shod/barefoot classification, while 12 runners were investigated in the injury classification task. Gender groups could be differentiated with 84.7%, shod/barefoot running with 98.3%, and PFPS with 100% classification rate. For the latter group, one single variable could be identified that alone allowed discrimination.
在生物力学中,识别不同组之间的差异通常很重要。本文介绍了使用前瞻性跑步损伤研究中的动力学和运动学数据进行的组分类任务。对由性别、穿鞋/赤脚跑步以及在研究期间出现髌股疼痛综合征(PFPS)的跑步者和无症状跑步者组成的组进行了分类。从生物力学数据中计算出的特征特意选择为通用的。因此,它们适用于不同的生物力学测量和分类任务,无需适应输入信号。应用特征排序来揭示每个特征与分类任务的相关性。对80名跑步者的数据进行了性别和穿鞋/赤脚分类分析,而在损伤分类任务中对12名跑步者进行了研究。性别组的分类准确率为84.7%,穿鞋/赤脚跑步的分类准确率为98.3%,PFPS的分类准确率为100%。对于后一组,可以识别出一个单独的变量,仅凭该变量就能进行区分。