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A novel mutual information-based similarity measure for 2D/3D registration in image guided intervention

机译:一种新颖的基于互信息的相似度度量,用于图像引导干预中的2D / 3D注册

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摘要

In image-guided intervention, 2D/3D medical image registration is crucial to supply the clinician space and anatomy information. Digitally reconstructed radiographs (DRR) obtained from 3D volume data are usually compared iteratively with an x-ray image by selecting similarity measure until a match is achieved. In this paper, a new similarity measure based on mutual information (MI) was proposed for 2D/3D rigid registration by combining intensities with space coordinates. By applying the measure to porcine skull phantom datasets from the Medical University Vienna, it is shown that the mean iteration of the measure and mean target registration error (mTRE) is respectively lower by 49.51% and 27.29% than that of mutual information. The proposed similarity measure is more robust and convergent faster than MI in 2D/3D registration.
机译:在图像引导的干预中,2D / 3D医学图像配准对于提供临床医生的空间和解剖信息至关重要。通常,通过选择相似性度量直到获得匹配为止,将从3D体数据中获得的数字重建射线照片(DRR)与X射线图像进行迭代比较。本文提出了一种新的基于互信息(MI)的相似度度量方法,该方法将强度与空间坐标相结合,用于2D / 3D刚性配准。通过将该度量应用于维也纳医科大学的猪颅骨体模数据集,结果表明,该度量的平均迭代次数和平均目标配准误差(mTRE)分别比互信息方法低49.51%和27.29%。在2D / 3D配准中,拟议的相似性度量比MI更健壮和收敛更快。

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