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Multi-attribute combined mutual information (MACMI): An image registration framework for leveraging multiple data channels

机译:多属性组合互信息(MACMI):用于利用多个数据通道的图像注册框架

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We present a novel methodological framework for leveraging multiple image sources, including different modalities, acquisition protocols or image features, in the registration of more than two images via information theoretic data fusion. The technique, referred to as multi-attribute combined mutual information (MACMI), adopts a multivariate application of mutual information (MI) to allow several coregistered images to be represented as a single high dimensional multi-attribute image. Our approach improves scenarios involving registration of multiple images as it, (1) utilizes all aligned images obtained in earlier registration steps, (2) improves alignment accuracy compared with pairwise approaches that only consider two images (and hence a fraction of the available data) at a time, and (3) avoids complex optimization problems often associated with fully-groupwise methods. For example, if two coregistered volumes such as T2-weighted and PD-weighted MRI are to be aligned with PET, it is intuitively better to use information from both MR protocols instead of choosing one for registration with PET. In the automated elastic registration of 20 corresponding multiprotocol (T1, T2, PD) synthetic MRI images of the brain with known misalignment of PD MRI, MACMI showed significant improvement in terms of deformation field error over conventional MI-based pairwise registration (p ≪ 0.05). For a total of 108 corresponding whole-mount histology (WMH), T2 MRI, and DCE (T1) MRI images obtained from 17 prostate specimens with cancer, elastic registration of WMH to bothMRI protocols simultaneously was performed viaMACMI. Improved alignment in terms of prostate overlap and cancer localization was observed using MACMI, compared to pairwise registration of WMH to the individual T2 and DCE MR protocols.
机译:我们提出了一种新颖的方法框架,可通过信息理论数据融合在利用两个以上图像的配准中利用多个图像源,包括不同的模态,采集协议或图像特征。该技术称为多属性组合互信息(MACMI),它采用互信息(MI)的多变量应用,以允许将多个共同注册的图像表示为单个高维多属性图像。我们的方法改进了涉及多张图像配准的场景,(1)利用了在较早的配准步骤中获得的所有对齐图像,(2)与仅考虑两张图像(因此只占可用数据的一小部分)的成对方法相比,提高了对齐精度。 (3)避免了通常与完全按组方法相关联的复杂优化问题。例如,如果要将两个共同注册的体积(例如T2加权和PD加权MRI)与PET对齐,则直观上最好使用两种MR协议中的信息,而不是选择一个用于与PET配准的信息。在已知的PD MRI失准的情况下,自动对20张相应的多协议(T1,T2,PD)大脑合成MRI图像进行自动弹性配准,相对于传统的基于MI的成对配准,MACMI在变形场误差方面表现出显着改善(p≪ 0.05 )。对于从17例前列腺癌标本中获得的总共108份相应的整体组织学(WMH),T2 MRI和DCE(T1)MRI图像,同时通过MACMI对两个MRI方案同时进行了WMH的弹性配准。与WMH对分别的T2和DCE MR协议的成对注册相比,使用MACMI可以观察到前列腺重叠和癌症定位方面的对齐改善。

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