通过探索非参数回归模型对三维医学图像进行参数回归

C. Seiler, X. Pennec, M. Reyes
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引用次数: 2

摘要

目前,基于ct的骨诊断的使用越来越多,因为低辐射和低成本的2D成像模式不能提供骨诊断所需的3D信息。我们工作的基本目标是通过回归建立一个连接二维x射线信息和三维CT信息的模型。作为第一步,我们提出了对单个预测变量的单变量非参数回归来探索数据的非线性。为了以后结合这些单变量模型,我们用参数模型代替它们。我们在182个股骨CT图像的数据库中检查了两个预测因子,轴长和头柱骨干角。我们表明,对于每个预测器,可以通过一个简单的二阶参数模型来描述99%的方差。这些发现将使我们能够在未来扩展到多变量情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parametric regression of 3D medical images through the exploration of non-parametric regression models
Currently there is an increase usage of CT-based bone diagnosis because low-radiation and cost-effective 2D imaging modalities do not provide the necessary 3D information for bone diagnosis. The fundamental objective of our work is to build a model connecting 2D X-ray information to 3D CT information through regression. As a first step we propose an univariate non-parametric regression on individual predictor variables to explore the non-linearity of the data. To later combine these univariate models we then replace them with parametric models. We examine two predictors, shaft length and caput collum diaphysis angle on a database of 182 CT images of femurs. We show that for each predictor it is possible to describe 99% of the variance through a simple up to second order parametric model. These findings will allow us to extend to the multivariate case in the future.
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