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A Statistical Deformation Model (SDM) based Regularizer for Non-rigid Image Registration: Application to registration of multimodal prostate MRI and histology

机译:基于统计变形模型(SDM)非刚性图像的规范器:应用于多模式前列腺MRI和组织学登记的应用

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Free form deformation (FFD) is a popular algorithm for non-linear image registration because of its ability to accurately recover deformations. However, due to the unconstrained nature of elastic registration, FFD may introduce unrealistic deformations, especially when differences between template and target image are large, thereby necessitating a regularizer to constrain the registration to a physically meaning transformation. Prior knowledge in the form of a Statistical Deformation Model (SDM) in a registration scheme has been shown to function as an effective regularizer. With a similar underlying premise, in this paper, we present a novel regularizer for FFD that leverages knowledge of known, valid deformations to train a statistical deformation model (SDM). At each iteration of the FFD registration, the SDM is utilized to calculate the likelihood of a given deformation occurring and appropriately influence the similarity metric to limit the registration to only realistic deformations. We quantitatively evaluate robustness of the SDM regularizer in the framework of FFD through a set of synthetic experiments using brain images with a range of induced deformations and 3 types of multiplicative noise - Gaussian, salt and pepper and speckle. We demonstrate that FFD with the inclusion of the SDM regularizer yields up to a 19% increase in normalized cross correlation (NCC) and a 16% decrease in root mean squared (RMS) error and mean absolute distance (MAD). Registration performance was also evaluated qualitatively and quantitatively in spatially aligning ex vivo pseudo whole mount histology (WMH) sections and in vivo prostate MRI in order to map the spatial extent of prostate cancer (CaP) onto corresponding radiologic imaging. Across all evaluation measures (MAD, RMS, and DICE), regularized FFD performed significantly better compared to unregularized FFD.
机译:自由形式变形(FFD)是一种流行的非线性图像配准算法,因为它能够准确地恢复变形。然而,由于弹性登记的不受约束性质,FFD可能引入不切实际的变形,尤其是当模板和目标图像之间的差异很大时,因此需要规律化器将注册限制为物理意义的转换。在登记方案中以统计变形模型(SDM)形式的先验知识已被证明是用作有效的常规器。在本文中,通过类似的底层前提,我们为FFD提出了一种新颖的常规器,其利用了知识的已知有效变形来训练统计变形模型(SDM)。在FFD注册的每次迭代中,SDM用于计算给定变形的可能性,并适当地影响相似度量以限制仅限于现实变形的标准。我们通过一组诱导变形和3种乘法噪声 - 高斯,盐和胡椒和斑点,通过一组合成实验定量评估FFD框架中的SDM规范器的框架。我们证明了包含SDM常规器的FFD高达19%的归一化交叉相关(NCC)增加,根部平均平方(RMS)误差和平均距离(MAD)的16%降低。还在定性和定量评估登记性能在空间对准的前体内伪整个安装组织学(WMH)部分和体内前列腺MRI中,以便将前列腺癌(帽)的空间程度映射到相应的放射学成像。遍布所有评估措施(疯狂,rms和骰子),与未反相的FFD相比,正则FFD显着更好地执行。

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