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COLLINARUS: Collection of Image-derived Non-linear Attributes for Registration Using Splines

机译:Collinarus:使用样条键注册的图像派生非线性属性的集合

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We present a new method for fully automatic non-rigid registration of multimodal imagery, including structural and functional data, that utilizes multiple texutral feature images to drive an automated spline based non-linear image registration procedure. Multimodal image registration is significantly more complicated than registration of images from the same modality or protocol on account of difficulty in quantifying similarity between different structural and functional information, and also due to possible physical deformations resulting from the data acquisition process. The COFEMI technique for feature ensemble selection and combination has been previously demonstrated to improve rigid registration performance over intensity-based MI for images of dissimilar modali-ties with visible intensity artifacts. Hence, we present here the natural extension of feature ensembles for driving automated non-rigid image registration in our new technique termed Collection of Image-derived Non-linear Attributes for Registration Using Splines (COLLINARUS). Qualitative and quantitative evaluation of the COL-LINARUS scheme is performed on several sets of real multimodal prostate images and synthetic multiprotocol brain images. Multimodal (histology and MRI) prostate image registration is performed for 6 clinical data sets comprising a total of 21 groups of in vivo structural (T2-w) MRI, functional dynamic contrast enhanced (DCE) MRI, and ex vivo WMH images with cancer present. Our method determines a non-linear transformation to align WMH with the high resolution in vivo T2-w followed by mapping of the histopathologic cancer extent onto the T2-w MRI. The cancer extent is then mapped from T2-w MRI onto DCE-MRI using the combined non-rigid and affine transformations determined by the registration. Evaluation of prostate registration is per-formed by comparison with the 3 time point (3TP) representation of functional DCE data, which provides an independent estimate of cancer extent. The set of synthetic multiprotocol images, acquired from the BrainWeb Simulated Brain Database, comprises 11 pairs of Tl-w and proton density (PD) MRI of the brain. Following the application of a known warping to misalign the images, non-rigid registration was then performed to recover the original, correct alignment of each image pair. Quantitative evaluation of brain registration was performed by direct comparison of (1) the recovered deformation field to the applied field and (2) the original undeformed and recovered PD MRI. For each of the data sets, COLLINARUS is compared with the MI-driven counterpart of the B-spline technique. In each of the quantitative experiments, registration accuracy was found to be significantly (p < 0.05) for COLLINARUS compared with MI-driven B-spline registration. Over 11 slices, the mean absolute error in the deformation field recovered by COLLINARUS was found to be 0.8830 mm.
机译:我们提出了一种新方法,用于多式联图像的全自动图像,包括结构和功能数据,其利用多个TEXUTRAL特征图像来驱动自动化样条的非线性图像登记过程。由于难以定量不同结构和功能信息之间的相似性,并且由于数据采集过程产生的可能的物理变形,多模式图像注册比来自相同模态或协议的图像的登记显着复杂。先前已经证明了用于特征集合选择和组合的Cofemi技术,以改善基于强度的MI的刚性登记性能,用于具有可见强度伪影的不同模态线的图像。因此,我们在这里展示了用于在我们的新技术中驱动自动非刚性图像配准的特征集合的自然扩展,这些技术被称为使用样条(Collinarus)的注册图像派生的非线性属性的集合。对Col-Linarus方案的定性和定量评估是对几组真实多模式前列腺图像和合成多协议脑图像进行的。多峰(组织学和MRI)前列腺图像配准是针对总共21组体的体内结构(T2-W)MRI,功能性动态对比增强(DCE)MRI和癌症存在的临床数据集。我们的方法确定非线性变换,以将WMH与高分辨率与体内T2-W对齐,然后通过将组织病理癌程度映射到T2-W MRI上。然后使用通过注册测定的组合的非刚性和仿射变换从T2-W MRI映射到DCE-MRI上的癌症程度。通过与功能性DCE数据的3个时间点(3TP)表示,对前列腺注册进行评估,这提供了癌症程度的独立估计。从脑力模拟脑数据库获取的该组合式多协议图像包括11对大脑的TL-W和质子密度(Pd)MRI。在应用知名翘曲以错位的情况下,然后执行非刚性配准以恢复每个图像对的原始的正确对准。通过直接比较(1)回收的变形场与施加的场和(2)原始的未变形和回收的PD MRI进行定量评估脑注册的定量评估。对于每个数据集,将Collinarus与B样条曲线技术的MI驱动对应物进行比较。在每个定量实验中,与MI驱动的B样条配准相比,发现对Collinarus的注册精度显着(P <0.05)。超过11个切片,Collinarus回收的变形场中的平均绝对误差被发现为0.8830 mm。

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