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Atlas-based non-rigid image registration to automatically define line-of-action muscle models: a validation study.

机译:基于Atlas的非刚性图像配准可自动定义动作线肌肉模型:一项验证研究。

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Research has raised a growing concern about the accuracy of rescaled generic musculoskeletal models for estimating a subject's musculoskeletal geometry. Information extracted from magnetic resonance (MR) images can improve the subject-specific detail and accuracy of musculoskeletal models. Nevertheless, methods that allow efficient, automated definition of subject-specific muscular models for use in biomechanical analysis of gait have not yet been published to the best of our knowledge. We report a novel method for automated definition of subject-specific muscle paths using non-rigid image registration between an atlas image and the subject's MR images. We validated this approach quantitatively by measuring the distance between automatically and manually defined coordinates of muscle attachment sites. Data was collected for 34 muscles in each lower limb of 5 paediatric subjects diagnosed with diplegic cerebral palsy and presenting varying degrees of increased femoral anteversion. Distances showed an overall median Euclidean error of 6.1mm: 2.0mm along the medio-lateral direction, 1.8mm along the anterior-posterior direction and 3.8mm along the superior-inferior direction. A qualitative validation between automatically defined muscle points and the muscular geometry observed in the subject's medical image data corroborated the quantitative validation. This automated approach followed by visual inspection and, if needed, correction to the muscle paths, reduced the time required for defining 34 lower-limb muscle paths from around 3.5 to 1h. Furthermore, the method was also applicable to aberrant skeletal geometry. Using the proposed method, defining MR-based musculoskeletal models becomes a time efficient and more accurate alternative to rescaling generic models.
机译:研究越来越引起人们对重新缩放的通用骨骼肌肉模型用于估计受试者骨骼肌肉几何形状的准确性的关注。从磁共振(MR)图像中提取的信息可以改善特定对象的细节和肌肉骨骼模型的准确性。然而,就我们所知,尚未公开允许在步态的生物力学分析中使用有效,自动定义对象特异性肌肉模型的方法。我们报告了一种新颖的方法,可以自动使用图集图像和受试者的MR图像之间的非刚性图像配准来自动定义受试者特定的肌肉路径。我们通过测量自动和手动定义的肌肉附着点坐标之间的距离来定量验证该方法。收集了5名被诊断为二肢瘫痪性脑瘫并表现出不同程度的股骨前倾的儿科受试者的下肢34条肌肉的数据。距离显示总体欧几里德误差为6.1mm:沿中外侧方向为2.0mm,沿前后方向为1.8mm,沿上下方向为3.8mm。在自动定义的肌肉点和对象的医学图像数据中观察到的肌肉几何形状之间的定性验证证实了定量验证。这种自动化方法随后进行了目视检查,并在需要时对肌肉路径进行了校正,从而将定义34条下肢肌肉路径所需的时间从大约3.5小时减少到1小时。此外,该方法也适用于异常骨骼几何。使用提出的方法,定义基于MR的肌肉骨骼模型成为重新调整通用模型的时间高效且更准确的替代方法。

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