Edgeworth-based approximation of Mutual Information for medical image registration

M. Rubeaux, Jean-Claude Nunes, L. Albera, M. Garreau
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引用次数: 5

Abstract

Mutual Information (MI) has been extensively used as a similarity measure in image registration and motion estimation, and it is particularly robust for 3D multimodal medical image registration. However, MI estimators are known i) to have a high variance and ii) to be computationally costly. In order to overcome these drawbacks, we propose a new similarity measure based on an Edgeworth-based third order expansion of MI and named 3-EMI in the following. This kind of approximation is well known in signal processing, and especially in Independent Components Analysis (ICA), but its computation is easier since data can be prewhitened contrary to images in registration. The performance of affine and non-rigid registrations based on the 3-EMI metric is studied through computer results in the context of cardiac multislice computed tomography. In fact, an estimate of the 3-EMI metric using sample statistics is compared to a histogram-based estimate of the standard normalized MI, showing a better robustness of the 3-EMI measure with respect to the range of the searched deformation. In addition, in practice, one part of the floating image may be missing regarding the reference image. Computer results show that our approach is less sensitive to such a practical problem.
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基于edgeworth的互信息近似医学图像配准
互信息(MI)在图像配准和运动估计中作为一种相似度度量被广泛使用,对于三维多模态医学图像的配准尤其具有鲁棒性。然而,MI估计器已知i)具有高方差和ii)计算成本高。为了克服这些缺点,我们提出了一种新的相似性度量方法,该方法基于基于edgeworth的MI三阶扩展,并在下文中命名为3-EMI。这种近似在信号处理,特别是独立分量分析(ICA)中非常常见,但由于数据可以与配准中的图像相反进行预白,因此计算起来更容易。在心脏多层断层扫描的背景下,通过计算机结果研究了基于3-EMI度量的仿射和非刚性配准的性能。事实上,使用样本统计对3-EMI度量的估计与基于直方图的标准归一化MI估计进行了比较,显示出相对于搜索变形范围的3-EMI测量具有更好的鲁棒性。此外,在实践中,浮动图像的一部分可能会相对于参考图像缺失。计算机结果表明,我们的方法对这类实际问题不太敏感。
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