Durkin Jennifer L, Dowling James J
Department of Kinesiology, McMaster University, Hamilton, Ontario, Canada L8S 4K1.
J Biomech Eng. 2003 Aug;125(4):515-22. doi: 10.1115/1.1590359.
Calculating the kinetics of motion using inverse or forward dynamics methods requires the use of accurate body segment inertial parameters. The methods available for calculating these body segment parameters (BSPs) have several limitations and a main concern is the applicability of predictive equations to several different populations. This study examined the differences in BSPs between 4 human populations using dual energy x-ray absorptiometry (DEXA), developed linear regression equations to predict mass, center of mass location (CM) and radius of gyration (K) in the frontal plane on 5 body segments and examined the errors produced by using several BSP sources in the literature. Significant population differences were seen in all segments for all populations and all BSPs except hand mass, indicating that population specific BSP predictors are needed. The linear regression equations developed performed best overall when compared to the other sources, yet no one set of predictors performed best for all segments, populations or BSPs. Large errors were seen with all models which were attributed to large individual differences within groups. Equations which account for these differences, including measurements of limb circumferences and breadths may provide better estimations. Geometric models use these parameters, however the models examined in this study did not perform well, possibly due to the assumption of constant density or the use of an overly simple shape. Creating solids which account for density changes or which mimic the mass distribution characteristics of the segment may solve this problem. Otherwise, regression equations specific for populations according to age, gender, race, and morphology may be required to provide accurate estimations of BSPs for use in kinetic equations of motion.
使用逆动力学或正向动力学方法计算运动学需要使用准确的身体节段惯性参数。用于计算这些身体节段参数(BSP)的现有方法存在若干局限性,一个主要问题是预测方程对多个不同人群的适用性。本研究使用双能X线吸收法(DEXA)检查了4个人群之间BSP的差异,建立了线性回归方程以预测5个身体节段在额平面上的质量、质心位置(CM)和回转半径(K),并检查了使用文献中几种BSP来源所产生的误差。除手部质量外,所有人群和所有BSP在所有节段均观察到显著的人群差异,这表明需要针对特定人群的BSP预测指标。与其他来源相比,所建立的线性回归方程总体表现最佳,但没有一组预测指标在所有节段、人群或BSP上都表现最佳。所有模型都存在较大误差,这归因于组内个体差异较大。考虑这些差异的方程,包括肢体周长和宽度的测量,可能会提供更好的估计。几何模型使用这些参数,但本研究中检查的模型表现不佳,可能是由于假设密度恒定或使用了过于简单的形状。创建考虑密度变化或模拟节段质量分布特征的实体可能会解决这个问题。否则,可能需要根据年龄、性别、种族和形态针对特定人群的回归方程,以提供用于运动动力学方程的BSP的准确估计。