基于多特征相关匹配的PET/MR脑图像共配准

C. Lau, T. Adalı, Y. Wang
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引用次数: 6

摘要

医学图像分析在临床应用中越来越重要。图像共配是医学图像分析中一个活跃的研究领域,它涉及到从不同模态获得的断层扫描诊断图像的信息融合。提出了一种基于多图像特征的二值相关匹配的MRI与PET脑图像共配准方法。通过提取PET和MR图像的边缘和区域信息,形成双特征图像。通过统一PET和MR图像中的像素强度和解剖信息,对多特征PET和MR图像进行交叉相关,找到最小的失配能量,从而实现最佳匹配变换。错误配准曲线的一致性和对比研究表明,作者的匹配技术导致MRI和PET图像的鲁棒性和准确性的共配准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coregistration of PET/MR brain images by multi-feature correlation matching
Medical images analysis is becoming increasingly important in clinical applications. One of the active research areas in medical image analysis is image coregistration which involves information fusion of tomographic diagnostic images obtained from different modalities. The authors present a novel MRI and PET brain image coregistration technique using binary correlation matching based on multiple image features. A two-feature image is formed by extracting edge and region information from PET and MR images. By unifying the pixel intensities and anatomical information in the PET and MR images, the multi-feature PET and MR images are then cross-correlated to find the minimum mismatch energy which corresponds to best matching transformation. The consistent nature of the misregistration curves and comparative studies show that the authors' matching technique results in a robust and accurate coregistration of MRI and PET images.
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