基于地标/图像的基因表达数据的可变形配准。

Uday Kurkure, Yen H Le, Nikos Paragios, James P Carson, Tao Ju, Ioannis A Kakadiaris
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引用次数: 20

摘要

分析高通量原位杂交获得的脑图像中的基因表达模式需要准确和一致的解剖区域/亚区域注释。这种注释是通过基于强度和/或地标的配准方法或基于可变形模型的分割方法将解剖图谱映射到基因表达图像上获得的。由于基因表达图像的复杂外观,这些方法需要预处理步骤来确定地标对应,以便纳入基于地标的几何约束。在本文中,我们提出了一种新的地标约束的、基于强度的配准方法,而不需要先验地确定地标对应关系。该方法使用单个高阶马尔可夫随机场模型进行密集图像配准并同时识别地标对应。此外,利用机器学习技术,通过在较低维的汉明空间中投影局部描述符,提高了局部描述符对地标匹配的判别性。我们定性地表明,我们的方法取得了很好的结果,并且在定量上与专家的注释进行了比较,优于以前的方法。
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Landmark/Image-based Deformable Registration of Gene Expression Data.

Analysis of gene expression patterns in brain images obtained from high-throughput in situ hybridization requires accurate and consistent annotations of anatomical regions/subregions. Such annotations are obtained by mapping an anatomical atlas onto the gene expression images through intensity- and/or landmark-based registration methods or deformable model-based segmentation methods. Due to the complex appearance of the gene expression images, these approaches require a pre-processing step to determine landmark correspondences in order to incorporate landmark-based geometric constraints. In this paper, we propose a novel method for landmark-constrained, intensity-based registration without determining landmark correspondences a priori. The proposed method performs dense image registration and identifies the landmark correspondences, simultaneously, using a single higher-order Markov Random Field model. In addition, a machine learning technique is used to improve the discriminating properties of local descriptors for landmark matching by projecting them in a Hamming space of lower dimension. We qualitatively show that our method achieves promising results and also compares well, quantitatively, with the expert's annotations, outperforming previous methods.

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