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Pelvis and femur shape prediction using principal component analysis for body model on seat comfort assessment. Impact on the prediction of the used palpable anatomical landmarks as predictors

机译:使用主成分分析对人体模型进行骨盆和股骨形状预测,以评估座椅的舒适度。对使用的可触及解剖标志物作为预测变量的预测的影响

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摘要

A personalized pelvis and femur shape is required to build a finite element buttock thigh model when experimentally investigating seating discomfort. The present study estimates the shape of pelvis and femur using a principal component analysis (PCA) based method with a limited number of palpable anatomical landmarks (ALs) as predictors. A leave-one-out experiment was designed using 38 pelvises and femurs from a same sample of adult specimens. As expected, prediction errors decrease with the number of ALs. Using the maximum number of easily palpable ALs (13 for pelvis and 4 for femur), average errors were 5.4 and 4.8 mm respectively for pelvis and femur. Better prediction was obtained when the shapes of pelvis and femur were predicted separately without merging the data of both bones. Results also show that the PCA based method is a good alternative to predict hip and lumbosacral joint centers with an average error of 5.0 and 9.2 mm respectively.
机译:通过实验研究座椅不适时,需要个性化的骨盆和股骨形状来构建有限元的臀部大腿模型。本研究使用基于主成分分析(PCA)的方法估计骨盆和股骨的形状,并以可触知的解剖学界标(AL)数量有限作为预测因子。使用来自同一成人标本样本的38个骨盆和股骨设计了一项省去实验。如预期的那样,预测误差随着AL的数量而减少。使用最大数量的易于触及的AL(骨盆为13个,股骨为4个),骨盆和股骨的平均误差分别为5.4和4.8 mm。当分别预测骨盆和股骨的形状而不合并两个骨骼的数据时,可以获得更好的预测。结果还表明,基于PCA的方法可以很好地预测髋关节和腰s关节中心,其平均误差分别为5.0和9.2 mm。

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