基于图像的骨形状和强度统计模型的构建和验证

C. Reyneke, Xolisile O. Thusini, T. Douglas, T. Vetter, Tinashe Ernest Mutsvangwa
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引用次数: 2

摘要

从3D和2D成像方式推断出的骨骼结构三维模型为医疗专业人员提供了许多用途。这种模型通常使用基于网格的方法和某种形式的主成分分析(PCA)来构建。基于图像的方法被认为比基于网格的方法有许多优点,例如没有固有的分割以及更好的再现保真度。此外,高斯过程变形模型最近被证明为传统的基于pca的方法提供了额外的好处,例如能够轻松地将先验知识合并到模型中,以及可以针对特定应用程序进行解决。我们演示了如何使用高斯过程变形模型构建基于图像的统计形状和强度模型(SSIM),并使用我们适应基于图像的范式的通用网格模型度量来验证模型的质量。结果表明,该模型能够生成有效的新股骨样本,并能与未见过的股骨样本进行配准,平均均方根误差为0.172,平均互信息得分为0.644。然而,只使用了20个二进制训练示例,每个示例限制包含大约65000体素。未来的工作将致力于扩展基于图像的SSIM,以包括CT强度值的全部范围;更大的CT体积,并缩短了模型构建时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction and validation of image-based statistical shape and intensity models of bone
Three-dimensional models of bone structures, inferred from 3D and 2D imaging modalities, provide a number of uses for medical professionals. Such models are typically constructed using mesh-based approaches and some form of principal component analysis (PCA). Image-based approaches are understood to have a number of advantages over mesh-based ones, such as the absence of intrinsic segmentation as well as a better reproduction fidelity. Furthermore, Gaussian process morphable models have recently been shown to offer added benefits to the traditional PCA-based approach, such as the ability to easily incorporate prior knowledge into the model, and a resolution that can be made application-specific. We demonstrate how to build an image-based statistical shape and intensity model (SSIM) using Gaussian process morphable models and validate the quality of the model using common mesh model metrics that we adapt to the image-based paradigm. Our results show that the model can generate valid novel femur examples and can be registered to unseen femur examples with average root mean square error and average mutual information score of 0.172 and 0.644, respectively. However, only twenty binary training examples are used, each limited to contain approximately 65000 voxels. Future work will aim at extending the image-based SSIM to include the full range of CT intensity values; larger CT volumes and improve on the model building time.
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