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Comparison of mutual information with a standard method for alignment of histological serial sections

机译:相互信息比较与组织学系列切片对齐的标准方法

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The purpose of the study was to compare the ability of a mutual information algorithm with that of a standard algorithm to align images of histological serial sections. The two align algorithms were implemented in C running on a Linux based PC. Both algorithms used the same gradient-based optimizer, but different cost functions standard (ST), and mutual information (MI) respectively. The object of the test was to align 4557 serial sections originating from a rat kidney. The alignment of kidney sections is difficult as these sections contain many nearly identical tubules, representing a high degree of translation symmetry. As a consequence there is a non-negligible chance of misalignment into a local minimum, making serial kidney sections good real life test objects for image alignment. We showed that images, which were difficult to align by the ST were easy to align with MI. We found that the most efficient strategy was first to align all 4557 images using the ST function and then to align the misaligned 54 images using the MI function.
机译:该研究的目的是比较互信息算法与标准算法对齐组织学连续切片图像的能力。这两种对齐算法是在基于Linux的PC上运行的C语言中实现的。两种算法都使用相同的基于梯度的优化器,但分别使用不同的成本函数标准(ST)和互信息(MI)。测试的目的是对齐源自大鼠肾脏的4557个连续切片。肾脏部分很难对齐,因为这些部分包含许多几乎相同的肾小管,代表高度的翻译对称性。结果,有极少的未对准机会发生局部最小化,使连续肾脏切片成为图像对准的真实测试对象。我们发现,ST难以对齐的图像很容易与MI对齐。我们发现最有效的策略是首先使用ST函数对齐所有4557张图像,然后使用MI函数对齐未对齐的54张图像。

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