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Automatic PET-CT Image Registration Method Based on Mutual Information and Genetic Algorithms

机译:基于互信息和遗传算法的PET-CT图像自动配准方法

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摘要

Hybrid PET/CT scanners can simultaneously visualize coronary artery disease as revealed by computed tomography (CT) and myocardial perfusion as measured by positron emission tomography (PET). Manual registration is usually required in clinical practice to compensate spatial mismatch between datasets. In this paper, we present a registration algorithm that is able to automatically align PET/CT cardiac images. The algorithm bases on mutual information (MI) as registration metric and on genetic algorithm as optimization method. A multiresolution approach was used to optimize the processing time. The algorithm was tested on computerized models of volumetric PET/CT cardiac data and on real PET/CT datasets. The proposed automatic registration algorithm smoothes the pattern of the MI and allows it to reach the global maximum of the similarity function. The implemented method also allows the definition of the correct spatial transformation that matches both synthetic and real PET and CT volumetric datasets.
机译:混合PET / CT扫描仪可以同时显示计算机断层扫描(CT)揭示的冠状动脉疾病和通过正电子发射断层扫描(PET)测量的心肌灌注。在临床实践中通常需要手动注册以补偿数据集之间的空间不匹配。在本文中,我们提出了一种能够自动对齐PET / CT心脏图像的配准算法。该算法以互信息(MI)作为注册度量,并以遗传算法为优化方法。使用多分辨率方法来优化处理时间。该算法在体积PET / CT心脏数据的计算机模型和真实PET / CT数据集上进行了测试。提出的自动配准算法可以平滑MI的模式,并使其达到相似度函数的全局最大值。所实施的方法还允许定义与合成PET和真实PET和CT体积数据集匹配的正确空间变换。

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