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The Superiority of Tsallis Entropy over Traditional Cost Functions for Brain MRI and SPECT Registration

机译:Tsallis熵优于传统成本函数的大脑MRI和SPECT配准

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Neuroimage registration has an important role in clinical (for both diagnostic and therapeutic purposes) and research applications. In this article we describe the applicability of Tsallis Entropy as a new cost function for neuroimage registration through a comparative analysis based on the performance of the traditional approaches (correlation based: Entropy Correlation Coefficient (ECC) and Normalized Cross Correlation (NCC); and Mutual Information (MI) based: Mutual Information using Shannon Entropy (MIS) and Normalized Mutual Information (NMI)) and the proposed one based on MI using Tsallis entropy (MIT). We created phantoms with known geometric transformations using Single Photon Emission Computed Tomography (SPECT) and Magnetic Resonance Imaging from 3 morphologically normal subjects. The simulated volumes were registered to the original ones using both the proposed and traditional approaches. The comparative analysis of the Relative Error (RE) showed that MIT was more accurate in the intra-modality registration, whereas for inter-modality registration, MIT presented the lowest RE for rotational transformations, and the ECC the lowest RE for translational transformations. In conclusion, we have shown that, with certain limitations, Tsallis Entropy has application as a better cost function for reliable neuroimage registration.
机译:神经图像配准在临床(用于诊断和治疗目的)和研究应用中具有重要作用。在本文中,我们通过基于传统方法(基于相关:熵相关系数(ECC)和归一化互相关(NCC);以及互相关基于信息(MI)的信息:使用Shannon熵(MIS)和归一化互信息(NMI)的互信息,以及基于MI的Tsallis熵(MIT)的拟议信息。我们使用单光子发射计算机断层扫描(SPECT)和磁共振成像技术从3个形态正常的受试者中创建了具有已知几何变换的体模。使用建议的方法和传统方法将模拟量注册到原始量。相对误差(RE)的比较分析表明,MIT在模态内配准方面更为准确,而对于模态间配准,MIT给出了旋转变换时最低的RE,而ECC给出了平移变换时的最低RE。总之,我们已经表明,在一定的限制下,Tsallis熵具有作为可靠的神经图像配准的更好成本函数的应用。

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