Hong Yi, Singh Nikhil, Kwitt Roland, Niethammer Marc
Med Image Comput Comput Assist Interv. 2014;17(Pt 2):105-12. doi: 10.1007/978-3-319-10470-6_14.
We consider geodesic regression with parametric time-warps. This allows for example, to capture saturation effects as typically observed during brain development or degeneration. While highly-flexible models to analyze time-varying image and shape data based on generalizations of splines and polynomials have been proposed recently, they come at the cost of substantially more complex inference. Our focus in this paper is therefore to keep the model and its inference as simple as possible while allowing to capture expected biological variation. We demonstrate that by augmenting geodesic regression with parametric time-warp functions, we can achieve comparable flexibility to more complex models while retaining model simplicity. In addition, the time-warp parameters provide useful information of underlying anatomical changes as demonstrated for the analysis of corpora callosa and rat calvariae. We exemplify our strategy for shape regression on the Grassmann manifold, but note that the method is generally applicable for time-warped geodesic regression.
我们考虑带有参数化时间扭曲的测地线回归。例如,这能够捕捉大脑发育或退化过程中常见的饱和效应。虽然最近有人提出了基于样条和多项式推广的高度灵活的模型来分析随时间变化的图像和形状数据,但这些模型的代价是推理过程要复杂得多。因此,本文的重点是在允许捕捉预期生物变异的同时,尽可能保持模型及其推理的简单性。我们证明,通过用参数化时间扭曲函数增强测地线回归,我们可以在保持模型简单性的同时,实现与更复杂模型相当的灵活性。此外,如在胼胝体和大鼠颅骨分析中所展示的,时间扭曲参数提供了潜在解剖学变化的有用信息。我们在格拉斯曼流形上举例说明了形状回归的策略,但请注意,该方法一般适用于时间扭曲的测地线回归。