Auckland Bioengineering Institute, 70 Symonds Street, Level 8, The University of Auckland, Auckland, New Zealand.
Auckland Bioengineering Institute, 70 Symonds Street, Level 8, The University of Auckland, Auckland, New Zealand; Department of Engineering Science & Biomedical Engineering, 70 Symonds Street, Level 0, The University of Auckland, Auckland, New Zealand.
J Biomech. 2024 Jul;172:112211. doi: 10.1016/j.jbiomech.2024.112211. Epub 2024 Jun 28.
Creating musculoskeletal models in a paediatric population currently involves either creating an image-based model from medical imaging data or a generic model using linear scaling. Image-based models provide a high level of accuracy but are time-consuming and costly to implement, on the other hand, linear scaling of an adult template musculoskeletal model is faster and common practice, but the output errors are significantly higher. An articulated shape model incorporates pose and shape to predict geometry for use in musculoskeletal models based on existing information from a population to provide both a fast and accurate method. From a population of 333 children aged 4-18 years old, we have developed an articulated shape model of paediatric lower limb bones to predict bone geometry from eight bone landmarks commonly used for motion capture. Bone surface root mean squared errors were found to be 2.63 ± 0.90 mm, 1.97 ± 0.61 mm, and 1.72 ± 0.51 mm for the pelvis, femur, and tibia/fibula, respectively. Linear scaling produced bone surface errors of 4.79 ± 1.39 mm, 4.38 ± 0.72 mm, and 4.39 ± 0.86 mm for the pelvis, femur, and tibia/fibula, respectively. Clinical bone measurement errors were low across all bones predicted using the articulated shape model, which outperformed linear scaling for all measurements. However, the model failed to accurately capture torsional measures (femoral anteversion and tibial torsion). Overall, the articulated shape model was shown to be a fast and accurate method to predict lower limb bone geometry in a paediatric population, superior to linear scaling.
在儿科人群中创建肌肉骨骼模型目前涉及要么从医学成像数据创建基于图像的模型,要么使用线性缩放创建通用模型。基于图像的模型提供了高度的准确性,但实施起来既耗时又昂贵,另一方面,成人模板肌肉骨骼模型的线性缩放速度更快,是常见做法,但输出误差要高得多。铰接形状模型结合了姿势和形状,根据来自人群的现有信息预测用于肌肉骨骼模型的几何形状,提供了一种快速准确的方法。从 333 名 4-18 岁的儿童人群中,我们开发了一种儿科下肢骨骼的铰接形状模型,以从常用于运动捕捉的 8 个骨骼标志预测骨骼几何形状。骨盆、股骨和胫骨/腓骨的骨骼表面均方根误差分别为 2.63±0.90、1.97±0.61 和 1.72±0.51 毫米。线性缩放产生的骨骼表面误差分别为 4.79±1.39、4.38±0.72 和 4.39±0.86 毫米。使用铰接形状模型预测的所有骨骼的临床骨骼测量误差都很低,该模型在所有测量中均优于线性缩放。然而,该模型未能准确捕捉扭转测量值(股骨前倾角和胫骨扭转)。总体而言,铰接形状模型被证明是一种快速准确的方法,可以预测儿科人群的下肢骨骼几何形状,优于线性缩放。