基于x射线图像的高度变形股骨的形状分割统计形状模型。

IF 1.5 4区 医学 Q3 SURGERY
Jongho Chien, Ho-Gun Ha, Seongpung Lee, Jaesung Hong
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引用次数: 0

摘要

为了使用统计形状模型(SSM)和x射线图像建立患者特定的股骨三维重建模型,假设目标形状不超出从训练数据集构建的SSM允许的变化范围。我们提出了形状分割统计形状模型(SPSSM)来覆盖目标形状的显著变化。这个模型可以将一个形状分成几个解剖感兴趣的部分。我们通过保留原始矩阵的相关行而不分割形状并为每个部分构建独立的SSM,将特征向量矩阵分解为SPSSM的相应代表矩阵。为了量化所提出方法的重建误差,我们生成了两组股骨变形模型,这两组模型是传统SSM难以表示的。一组股骨有前倾角度变形,另一组股骨有两种不同的股骨头鳞片。每个实验采用留一法对12根股骨进行。当股骨头旋转30°时,传统SSM的平均重建误差为5.34 mm,而该SPSSM的平均重建误差为3.82 mm。当股骨头尺寸减小20%时,SSM的平均重建误差为4.70 mm, SPSSM的平均重建误差为3.56 mm。当股骨头尺寸增加20%时,SSM的平均重建误差为4.28 mm, SPSSM的平均重建误差减小到3.10 mm。两组变形模型的实验结果表明,所提出的SPSSM优于传统的SSM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A shape-partitioned statistical shape model for highly deformed femurs using X-ray images.

To develop a patient-specific 3 D reconstruction of a femur modeled using the statistical shape model (SSM) and X-ray images, it is assumed that the target shape is not outside the range of variations allowed by the SSM built from a training dataset. We propose the shape-partitioned statistical shape model (SPSSM) to cover significant variations in the target shape. This model can divide a shape into several segments of anatomical interest. We break up the eigenvector matrix into the corresponding representative matrices for the SPSSM by preserving the relevant rows of the original matrix without segmenting the shape and building an independent SSM for each segment. To quantify the reconstruction error of the proposed method, we generated two groups of deformation models of the femur which cannot be easily represented by the conventional SSM. One group of femurs had an anteversion angle deformation, and the other group of femurs had two different scales of the femoral head. Each experiment was performed using the leave-one-out method for twelve femurs. When the femoral head was rotated by 30°, the average reconstruction error of the conventional SSM was 5.34 mm, which was reduced to 3.82 mm for the proposed SPSSM. When the femoral head size was decreased by 20%, the average reconstruction error of the SSM was 4.70 mm, which was reduced to 3.56 mm for the SPSSM. When the femoral head size was increased by 20%, the average reconstruction error of the SSM was 4.28 mm, which was reduced to 3.10 mm for the SPSSM. The experimental results for the two groups of deformation models showed that the proposed SPSSM outperformed the conventional SSM.

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来源期刊
Computer Assisted Surgery
Computer Assisted Surgery Medicine-Surgery
CiteScore
2.30
自引率
0.00%
发文量
13
审稿时长
10 weeks
期刊介绍: omputer Assisted Surgery aims to improve patient care by advancing the utilization of computers during treatment; to evaluate the benefits and risks associated with the integration of advanced digital technologies into surgical practice; to disseminate clinical and basic research relevant to stereotactic surgery, minimal access surgery, endoscopy, and surgical robotics; to encourage interdisciplinary collaboration between engineers and physicians in developing new concepts and applications; to educate clinicians about the principles and techniques of computer assisted surgery and therapeutics; and to serve the international scientific community as a medium for the transfer of new information relating to theory, research, and practice in biomedical imaging and the surgical specialties. The scope of Computer Assisted Surgery encompasses all fields within surgery, as well as biomedical imaging and instrumentation, and digital technology employed as an adjunct to imaging in diagnosis, therapeutics, and surgery. Topics featured include frameless as well as conventional stereotactic procedures, surgery guided by intraoperative ultrasound or magnetic resonance imaging, image guided focused irradiation, robotic surgery, and any therapeutic interventions performed with the use of digital imaging technology.
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