基于纹理和空间接近的组织病理学图像配准。

Pangpang Liu, Fusheng Wang, George Teodoro, Jun Kong
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引用次数: 3

摘要

三维(3D)数字病理学已经出现在下一代基于组织的癌症研究中。为了使这样的组织病理学图像体积分析,连续的组织病理学切片需要很好地对齐。在本文中,我们提出了一种组织病理学图像配准微调方法,结合纹理和空间接近度的综合地标评估。首先检测具有代表性的解剖结构和图像角点特征作为候选地标。接下来,我们利用图像纹理特征和地标空间接近度量来识别强匹配地标并修改弱匹配地标。大量的定性和定量实验结果表明,我们提出的方法具有鲁棒性,可以进一步提高我们之前注册的图像集的配准精度,分别提高31.15%(相关性)、4.88%(互信息)和41.02%(均方误差)。实验结果表明,我们的方法可以作为一个微调模块来进一步提高配准精度,这是在信息无损的三维组织空间中进行组织空间和形态分析的前提。
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HISTOPATHOLOGY IMAGE REGISTRATION BY INTEGRATED TEXTURE AND SPATIAL PROXIMITY BASED LANDMARK SELECTION AND MODIFICATION.

Three-dimensional (3D) digital pathology has been emerging for next-generation tissue based cancer research. To enable such histopathology image volume analysis, serial histopathology slides need to be well aligned. In this paper, we propose a histopathology image registration fine tuning method with integrated landmark evaluations by texture and spatial proximity measures. Representative anatomical structures and image corner features are first detected as landmark candidates. Next, we identify strong and modify weak matched landmarks by leveraging image texture features and landmark spatial proximity measures. Both qualitative and quantitative results of extensive experiments demonstrate that our proposed method is robust and can further enhance registration accuracy of our previously registered image set by 31.15% (correlation), 4.88% (mutual information), and 41.02% (mean squared error), respectively. The promising experimental results suggest that our method can be used as a fine tuning module to further boost registration accuracy, a premise of histology spatial and morphology analysis in an information-lossless 3D tissue space for cancer research.

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