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Indirect Knowledge-Based Approach to Non-Rigid Multi-Modal Registration of Medical Images

机译:基于间接知识的非刚性多模态登记的医学图像的方法

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Information acquired using different medical imaging techniques (e.g., MRI, PET, CT, etc.) can be combined to get a clear understanding of the overall condition of a patient for the purpose of diagnosis. Registering images from different modalities without a priori knowledge is difficult since the images may have very different intensity mappings and structural characteristics. This paper presents a novel approach to the multi-modal registration of medical images through the use of a priori knowledge to align medical images using an indirect mapping. The proposed algorithm uses stored information from successful alignment results to infer a relationship between the input images from different modalities. This relationship is then used to estimate the transformations needed to align the medical images together. Experimental results show that a high level of accuracy can be achieved using the proposed algorithm to align medical images from different modalities.
机译:可以组合使用不同的医学成像技术获得的信息(例如,MRI,PET,CT等)以清楚地了解患者的整体状况,以诊断。由于图像可能具有非常不同的强度映射和结构特征,因此难以在没有先验知识的情况下从不同模式中注册图像。本文通过使用先验知识来介绍医学图像的多模态登记的新方法,以使用间接映射对准医学图像。所提出的算法使用成功对准结果的存储信息来推断来自不同模态的输入图像之间的关系。然后使用这种关系来估计将医学图像调整在一起所需的变换。实验结果表明,可以使用所提出的算法实现高水平的准确度来对准不同模式的医学图像。

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