基于变形的非线性降维:在核形态计量学中的应用

G. Rohde, Wei Wang, Tao Peng, R. Murphy
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引用次数: 25

摘要

我们描述了一种新的方法来阐明在数字图像中描述的形状分布中的非线性自由度。通过将基于变形的测量两种形状之间距离的方法与多维尺度相结合,描述了一种确定形状分布中自由度数的方法。此外,还提出了一种可视化核形状分布中最具代表性的变化模式(底层形状参数化)的方法。该方法考虑了形状流形的非线性特性,并与ISOMAP算法相关。我们将该方法应用于海拉细胞核形状分布的分析,得出了大约三个参数对其形状变化负责的结论。排除尺寸、平移和方向的差异,这些差异是:伸长率、弯曲(凹度)和质量分布的变化。此外,结果表明,与通常的直觉相反,最可能的核形状配置是不对称的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deformation-based nonlinear dimension reduction: Applications to nuclear morphometry
We describe a new approach for elucidating the nonlinear degrees of freedom in a distribution of shapes depicted in digital images. By combining a deformation-based method for measuring distances between two shape configurations together with multidimensional scaling, a method for determining the number of degrees of freedom in a shape distribution is described. In addition, a method for visualizing the most representative modes of variation (underlying shape parameterization) in a nuclei shape distribution is also presented. The novel approach takes into account the nonlinear nature of shape manifolds and is related to the ISOMAP algorithm. We apply the method to the task of analyzing the shape distribution of HeLa cell nuclei and conclude that approximately three parameters are responsible for their shape variation. Excluding differences in size, translation, and orientation, these are: elongation, bending (concavity), and shifts in mass distribution. In addition, results show that, contrary to common intuition, the most likely nuclear shape configuration is not symmetric.
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