Department of Orthopaedic Surgery, University of Pittsburgh, PA 15203, USA.
Ann Biomed Eng. 2010 Sep;38(9):2928-36. doi: 10.1007/s10439-010-0064-9. Epub 2010 May 22.
Quantitative knowledge of the distal femur morphology is critical to understanding the relation between the anatomy and function of the knee joint. Prior knowledge was contaminated by manual procedures and subjective visual inspections in extracting geometric information from image data. This article proposes a new computational framework to enable automated analysis of the distal femur articular geometry based on 3D surface data. The framework consists of a pattern recognition algorithm for sectioning the sagittal-view condyle profiles, a least-squares algorithm for fitting and analyzing the profiles, and an optimization algorithm for establishing a unified sagittal plane. An application of the proposed framework to 12 knee surface models demonstrated that it can analyze the condyle contour profiles and extract geometric measures automatically and accurately. The proposed framework also facilitated a simulation-based analysis of the uncertainty associated with conventional manual approaches, elucidating how subjective determination of the sagittal plane and flexion facet can hinder accurate understanding of the distal femur morphology and related kinematics.
定量了解股骨远端形态对于理解膝关节的解剖结构和功能之间的关系至关重要。在从图像数据中提取几何信息时,先前的知识受到手动操作和主观视觉检查的污染。本文提出了一种新的计算框架,可基于 3D 表面数据实现对股骨远端关节几何形状的自动分析。该框架由用于对矢状视图的髁突轮廓进行分段的模式识别算法、用于拟合和分析轮廓的最小二乘法算法以及用于建立统一矢状面的优化算法组成。将所提出的框架应用于 12 个膝关节表面模型的结果表明,它可以自动且准确地分析髁突轮廓并提取几何度量。该框架还便于基于模拟对与传统手动方法相关的不确定性进行分析,阐明了主观确定矢状面和弯曲面如何阻碍对股骨远端形态及其相关运动学的准确理解。