A supervoxel based random forest synthesis framework for bidirectional MR/CT synthesis.

Can Zhao, Aaron Carass, Junghoon Lee, Amod Jog, Jerry L Prince
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引用次数: 11

Abstract

Synthesizing magnetic resonance (MR) and computed tomography (CT) images (from each other) has important implications for clinical neuroimaging. The MR to CT direction is critical for MRI-based radiotherapy planning and dose computation, whereas the CT to MR direction can provide an economic alternative to real MRI for image processing tasks. Additionally, synthesis in both directions can enhance MR/CT multi-modal image registration. Existing approaches have focused on synthesizing CT from MR. In this paper, we propose a multi-atlas based hybrid method to synthesize T1-weighted MR images from CT and CT images from T1-weighted MR images using a common framework. The task is carried out by: (a) computing a label field based on supervoxels for the subject image using joint label fusion; (b) correcting this result using a random forest classifier (RF-C); (c) spatial smoothing using a Markov random field; (d) synthesizing intensities using a set of RF regressors, one trained for each label. The algorithm is evaluated using a set of six registered CT and MR image pairs of the whole head.

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基于超体素的随机森林双向MR/CT合成框架。
磁共振(MR)和计算机断层扫描(CT)图像的合成(彼此)对临床神经影像学具有重要意义。MR到CT的方向对于基于MRI的放疗计划和剂量计算至关重要,而CT到MR的方向可以为真实MRI的图像处理任务提供经济的替代方案。此外,两个方向的合成可以增强MR/CT多模态图像配准。现有的方法主要集中在从MR合成CT。本文提出了一种基于多图谱的混合方法,使用通用框架从CT合成t1加权MR图像,从t1加权MR图像合成CT图像。该任务是通过:(a)使用联合标签融合计算主题图像的基于超体素的标签字段;(b)使用随机森林分类器(RF-C)校正该结果;(c)利用马尔可夫随机场的空间平滑;(d)使用一组射频回归器合成强度,每个标签训练一个。该算法使用整个头部的六组注册CT和MR图像对进行评估。
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