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首页> 外文期刊>Journal of Scientific Computing >Gene Expression Data to Mouse Atlas Registration Using a Nonlinear Elasticity Smoother and Landmark Points Constraints
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Gene Expression Data to Mouse Atlas Registration Using a Nonlinear Elasticity Smoother and Landmark Points Constraints

机译:基因表达数据使用非线性弹性平滑器和地标点约束的鼠标图集配准

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摘要

This paper proposes a numerical algorithm for image registration using energy minimization and nonlinear elasticity regularization. Application to the registration of gene expression data to a neuroanatomical mouse atlas in two dimensions is shown. We apply a nonlinear elasticity regularization to allow larger and smoother deformations, and further enforce optimality constraints on the landmark points distance for better feature matching. To overcome the difficulty of minimizing the nonlinear elasticity functional due to the non-linearity in the derivatives of the displacement vector field, we introduce a matrix variable to approximate the Jacobian matrix and solve for the simplified Euler-Lagrange equations. By comparison with image registration using linear regularization, experimental results show that the proposed nonlinear elasticity model also needs fewer numerical corrections such as regridding steps for binary image registration, it renders better ground truth, and produces larger mutual information; most importantly, the landmark points distance and L~2 dissimilarity measure between the gene expression data and corresponding mouse atlas are smaller compared with the registration model with biharmonic regularization.
机译:本文提出了一种基于能量最小化和非线性弹性正则化的图像配准数值算法。显示了二维向神经解剖学小鼠图谱注册基因表达数据的应用。我们应用非线性弹性正则化以允许更大和更平滑的变形,并进一步对地标点距离实施最佳约束,以实现更好的特征匹配。为了克服由于位移矢量场的导数中的非线性而使非线性弹性函数最小化的困难,我们引入了一个矩阵变量来逼近雅可比矩阵,并求解简化的Euler-Lagrange方程。通过与使用线性正则化的图像配准进行比较,实验结果表明,所提出的非线性弹性模型还需要较少的数值校正,例如用于二值图像配准的重新网格化步骤,它可以提供更好的地面真实性,并产生更大的互信息。最重要的是,与具有双谐波正则化的配准模型相比,基因表达数据与相应的小鼠图谱之间的界标点距离和L〜2差异度量较小。

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