标题: 地面反力与人体惯性参数之误差对步态分析结果的影响
Influence of Errors in Ground Reaction Forces and Segmental Inertial Properties on the Calculated Variables in Human Gait Analysis
作者: 谢宏荣
Hsieh, Hong-Jung
洪景华
曾锦焕
吕东武
Hung, Ching-Hua
Tseng, Ching-Huan
Lu, Tung-Wu
机械工程学系
关键字: 地面反作用力;测力板;压力中心;校正器;测力跑步机;人体测计学;Ground reaction force;forceplate;center of pressure;calibrator;instrumented treadmill;anthropometry
公开日期: 2010
摘要: 目前步态分析己被广泛运用于人体神经骨骼肌肉系统疾病之诊断以及治疗的规划与评估。而步态分析主要利用运动学、人体测计学与测力板资料间接求得人体下肢各关节所承受之作用力。因此,测力板所量测力量与压力中心是否精准,人体测计学所提供各肢段之质量、质心与惯性矩是否准确,对于步态分析之研究结果有极大的影响。本研究研制一台对固定式测力板作静态、动态校正的校正器,校正器重量轻、体积小且装有移动辅助轮,所以可快速移至实验室作现地校正。校正器固定方式采用吸盘吸附在实验室地板上因此架设容易,对实验室建筑物无侵入式破坏。校正器在施力点定位与施力大小的控制是采用PC-based 控制器,所以准确性高且快速。本研究利用静态校正测试作为类神经网路训谏资料,并将测力板量测力量与压力中心作修正补偿,在垂直力方向其力量误差平均值百分比在校正前是0.38%,校正后降为0.00%;在压力中心X、Y轴方向其位置误差平均值在校正前1.37mm、1.15mm,校正后降为0.02mm、0.04mm。在动态校正方面,在垂直力方向其力量误差平均值百分比在校正前是-0.19 %,校正后降为-0.03 %;在压力中心X、Y轴方向其位置误差平均值在校正前-0.50mm 、0.95mm,校正后降为-0.01mm、 -0.11 mm 。本研究利用测力板校正器对自行研制可测力量跑步机施以垂直力负载校正,并运用类神经网路校正方法来修正跑步机所量测的力量与压力中心之误差。在垂直力方向其力量误差平均值百分比在校正前是0.82%,校正后降为0.01%;在压力中心X、Y轴方向其位置误差平均值在校正前1.59mm、0.71mm,校正后降为0.07mm、-0.06mm 。
目前人体测计学不论是利用尸体或侵入性的方法在道德上均不适合儿童,而少数非侵入性方法则因操作不易、设备取得困难、成本过高等因素无法适用于例行临床步态分析实务与研究。所以本研究利用动作追踪系统量测各肢段之空间位置及测力板量测力量与压力中心,再运用最佳化方法来建立个人化人体测计学资料,其中包含各肢段之几何模拟、各肢段之质量、质心与惯性矩。本研究受试者选取12位健康成人(24□2 yrs; 69□8 kg; 178□5 cm)及20位健康儿童(9□3 yrs; 31□10 kg; 130□9 cm)。在静态量测时,双脚站立于测力板上,且摆20种不同姿势;在动态测试时,受试者则采屈膝下弯动作。本研究方法将求得人体测计学资料与Dempster(1955)、Cheng (2000)人体测计学资料文献值代入本研究中之人体数学模型作比较。在静态准确性之压力中心评估方面,成人压力中心误差平均值本研究方法小于5mm内,而文献方法在11mm~19mm之间;儿童压力中心误差平均值本研究方法小于4mm内,而文献方法在15mm~25mm之间。在动态准确性之压力中心评估方面,成人压力中心误差平均值本研究方法为9.4mm内,而文献方法在20.6mm~27.9mm之间;儿童压力中心误差平均值本研究方法为7.9mm内,而文献方法在24.8mm~31.1mm之间。在动态准确性之垂直方向地面反作用力评估方面,本研究方法与文献方法在成人与儿童垂直方向地面反作用力之误差平均值是相近的。本研究成功发展一套非侵入性、快速、低成本、准确且适合各种体型、性别及年龄的活体个人化量测学资料测量方法,并用以建立我国成人与6~12岁儿童人体测计学资料库,包括各肢段质量、质量中心及转动惯量等资料,以供临床步态及动作分析之需。
Clinical gait analysis is the process of using quantitative information, including kinematic, kinetic and anthropometric data to aid in understanding the etiology of gait abnormalities. It has been widely used in the diagnosis of patients with neuromusculoskeletal pathology, subsequent planning and evaluation of treatment. In human motion analysis, the kinetic data are usually obtained from forceplates mounted on the ground. Therefore, in situ calibration of the forceplate is necessary to improve the accuracy of the measured ground reaction force (GRF) and center of pressure (COP). The current study developed a small device (160 x 88 x 43 cm) with a mass of 50 kg, equipped with auxiliary wheels and fixing suction pads for rapid deployment and easy set-up. A PC-based controller enabled quick movement and accurate positioning of the applied force to the calibration point. After correction by an artificial neural network (ANN) trained with the static data from 121 points, the mean errors for the vertical GRF were all reduced from a maximum of 0.38 % to less than 0.00 %. Those for the X and Y components of COP were all reduced from a maximum of about 1.37 and 1.15 mm to less than 0.02 and 0.04 mm, respectively. For dynamic calibration, the mean errors for the vertical GRF were reduced from a maximum of -0.19 % to less than -0.03 %, while those for the X and Y components of COP were reduced from a maximum of -0.50 and 0.95 mm to less than -0.01 and -0.11 mm. The results suggested that the calibration device with the ANN method will be useful for obtaining more accurate GRF and COP measurements. Thereafter, the device was used to calibrate our newly developed instrumented treadmill to measure GRF on the treadmill during successive cycles of gait. By the same error analysis and neural network methods, the measured GRF and center of pressure (COP) can be calibrated to reduce the errors. The results of calibration indicated that mean errors for the vertical GRF from a maximum of 0.82 % to less than 0.01 %, while those for the X and Y components of COP were reduced from a maximum of 1.59 and 0.71 mm to less than 0.07 and -0.06 mm.
Correct anthropometric data is also needed for accurate calculation of the motion data. Currently, anthropometric data are mostly obtained from studies on adult cadavers because no data exist for the children between 6 to 12 years of age. However, methods using cadavers or invasive techniques are not suitable for children. Noninvasive methods are either too difficult or too expensive to be used routinely in clinical settings. The current study therefore aimed to develop a noninvasive, fast, cost-effective and accurate method for the estimation of the anthropometric data of subjects with different ages. We proposed an optimization-based, non-invasive, radiation-free method for estimating subject-specific body segment inertial properties (BSIPs) by using a motion capture system and two forceplates. Twelve healthy adult subjects (24□2 y/o; 69□8 kg; 178□5 cm) and twenty children (9□3 yrs; 31□10 kg; 130□9 cm) were recruited in this study. Firstly, a three-dimensional custom-made model of the human body was developed for the simulation of the segment geometry; the estimation of the mass, center of mass and second moment of inertia of the segments and the whole body. Then the subject was asked to stand in twenty different postures for static test, and to perform squatting for dynamic test. The static and dynamic tests were used to customize the model to the subject with optimization method, and the subject-specific anthropometric data were the calculated consequently. The performance of the current method was compared to two commonly used predictive methods (Dempter, 1955 and Cheng ,2000) in terms of the errors of the calculated COP and ground reaction force (GRF) using the corresponding predicted BSIPs. During stationary standing postures, the mean COP errors were less than 4 and 5 mm for the child and adult groups respectively, while those from the existing comparative methods ranged from 11 to 19 mm and 15 to 25 mm for these two groups respectively. During dynamic activities, mean COP errors from the current method were less than 7.9 and 9.4 mm for the child and adult groups respectively, while those from the existing methods ranged from 24.8 to 31.1 mm and 20.6 to 27.9 mm for these two groups respectively. In evaluation of the accuracy in vertical GRF during dynamic test, the mean error of vertical GRF from the current method showed similar values to the existing methods. The results showed that the current method was capable of producing estimates of subject-specific BSIPs that predicted accurately the important variables in human motion analysis during static and dynamic activities. In conclusion, this optimization-based and accurate method was developed for the estimation of the anthropometric data of subjects with different age groups for clinical gait or motion analysis. Being non-invasive and using standard motion laboratory equipment, the current method would be useful for building up the anthropometric data of adults and children in Taiwan.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079014802
http://hdl.handle.net/11536/40248
显示于类别:Thesis


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