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A Statistical Model-based Technique for Accounting for Prostate Gland Deformation in Endorectal Coil-based MR Imaging

机译:基于统计模型的基于前列腺腺体变形的基于统计模型技术

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In prostate brachytherapy procedures, combining high-resolution endorectal coil (ERC)-MRI with Computed Tomography (CT) images has shown to improve the diagnostic specificity for malignant tumors. Despite such advantage, there exists a major complication in fusion of the two imaging modalities due to the deformation of the prostate shape in ERC-MRI. Conventionally, nonlinear deformable registration techniques have been utilized to account for such deformation. In this work, we present a model-based technique for accounting for the deformation of the prostate gland in ERC-MR imaging, in which a unique deformation vector is estimated for every point within the prostate gland. Modes of deformation for every point in the prostate are statistically identified using a set of MR-based training set (with and without ERC-MRI). Deformation of the prostate from a deformed (ERC-MRI) to a non-deformed state in a different modality (CT) is then realized by first calculating partial deformation information for a limited number of points (such as surface points or anatomical landmarks) and then utilizing the calculated deformation from a subset of the points to determine the coefficient values for the modes of deformations provided by the statistical deformation model. Using a leave-one-out cross-validation, our results demonstrated a mean estimation error of 1mm for a MR-to-MR registration.
机译:在前列腺近距离放射治疗程序中,将高分辨率的倒置线圈(ERC)-MRI与计算机断层扫描(CT)图像相结合,已显示出改善恶性肿瘤的诊断特异性。尽管存在这样的优势,因此由于ERC-MRI中前列腺形状的变形而存在两种成像方式的融合中的主要复杂性。传统上,已经利用非线性可变形登记技术来解释这种变形。在这项工作中,我们提出了一种基于模型的技术,用于核对中前列腺的变形,其中估计了前列腺内的各个点的独特变形载体。使用基于MR的MR基训练集(具有和没有ERC-MRI),统计地识别前列腺中每个点的变形模式。然后通过首先计算有限数量的点(例如表面点或解剖学)和诸如地表或解剖标记)的部分变形信息来实现从变形(ERC-MRI)到不同模态(CT)中的非变形状态的前列腺术中的变形。然后利用从点的子集中计算的变形,以确定由统计变形模型提供的变形模式的系数值。使用休假交叉验证,我们的结果显示了MR-MR对注册的1mm的平均估计误差。

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