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A comparative study of surface- and volume-based techniques for the automatic registration between CT and SPECT brain images.

机译:基于表面和基于体积的技术在CT和SPECT脑图像之间自动配准的比较研究。

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摘要

Image registration of multimodality images is an essential task in numerous applications in three-dimensional medical image processing. Medical diagnosis can benefit from the complementary information in different modality images. Surface-based registration techniques, while still widely used, were succeeded by volume-based registration algorithms that appear to be theoretically advantageous in terms of reliability and accuracy. Several applications of such algorithms for the registration of CT-MRI, CT-PET, MRI-PET, and SPECT-MRI images have emerged in the literature, using local optimization techniques for the matching of images. Our purpose in this work is the development of automatic techniques for the registration of real CT and SPECT images, based on either surface- or volume-based algorithms. Optimization is achieved using genetic algorithms that are known for their robustness. The two techniques are compared against a well-established method, the Iterative Closest Point-ICP. The correlation coefficient was employed as an independent measure of spatial match, to produce unbiased results. The repeated measures ANOVA indicates the significant impact of the choice of registration method on the magnitude of the correlation (F = 4.968, p = 0.0396). The volume-based method achieves an average correlation coefficient value of 0.454 with a standard deviation of 0.0395, as opposed to an average of 0.380 with a standard deviation of 0.0603 achieved by the surface-based method and an average of 0.396 with a standard deviation equal to 0.0353 achieved by ICP. The volume-based technique performs significantly better compared to both ICP (p<0.05, Neuman Keuls test) and the surface-based technique (p<0.05, Neuman-Keuls test). Surface-based registration and ICP do not differ significantly in performance.
机译:在三维医学图像处理的众多应用中,多模态图像的图像配准是一项必不可少的任务。医学诊断可以受益于不同模态图像中的补充信息。基于表面的配准技术虽然仍被广泛使用,但通过基于体积的配准算法获得了成功,该算法在可靠性和准确性方面在理论上似乎是有利的。使用局部优化技术来匹配图像,这种算法在CT-MRI,CT-PET,MRI-PET和SPECT-MRI图像配准中的一些应用已经出现。我们在这项工作中的目的是基于基于表面或基于体积的算法,开发用于配准实际CT和SPECT图像的自动技术。使用以其健壮性闻名的遗传算法可以实现优化。将这两种技术与公认的迭代最接近点ICP方法进行了比较。相关系数被用作空间匹配的独立度量,以产生无偏结果。重复测量方差分析表明配准方法的选择对相关幅度具有重大影响(F = 4.968,p = 0.0396)。基于体积的方法的平均相关系数值为0.454,​​标准偏差为0.0395,而基于表面的方法的平均值为0.380,标准偏差为0.0603,平均值为0.396,标准偏差等于达到ICP的0.0353。与ICP(p <0.05,Neuman Keuls检验)和基于表面的技术(p <0.05,Neuman-Keuls检验)相比,基于体积的技术的性能要好得多。基于表面的配准和ICP在性能上没有显着差异。

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