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An Example-Based Brain MRI Simulation Framework

机译:基于示例的脑MRI仿真框架

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摘要

The simulation of magnetic resonance (MR) images plays an important role in the validation of image analysis algorithms such as image segmentation, due to lack of sufficient ground truth in real MR images. Previous work on MRI simulation has focused on explicitly modeling the MR image formation process. However, because of the overwhelming complexity of MR acquisition these simulations must involve simplifications and approximations that can result in visually unrealistic simulated images. In this work, we describe an example-based simulation framework, which uses an “atlas” consisting of an MR image and its anatomical models derived from the hard segmentation. The relationships between the MR image intensities and its anatomical models are learned using a patch-based regression that implicitly models the physics of the MR image formation. Given the anatomical models of a new brain, a new MR image can be simulated using the learned regression. This approach has been extended to also simulate intensity inhomogeneity artifacts based on the statistical model of training data. Results show that the example based MRI simulation method is capable of simulating different image contrasts and is robust to different choices of atlas. The simulated images resemble real MR images more than simulations produced by a physics-based model.
机译:由于在真实的MR图像中缺乏足够的地面真实性,因此磁共振(MR)图像的仿真在图像分析算法(例如图像分割)的验证中起着重要作用。 MRI仿真的先前工作集中于显式建模MR图像形成过程。但是,由于MR采集的压倒性的复杂性,这些模拟必须涉及简化和近似,这可能导致视觉上不真实的模拟图像。在这项工作中,我们描述了一个基于示例的仿真框架,该框架使用了“图集”,该图集包括MR图像及其从硬分割中得出的解剖模型。 MR图像强度与其解剖模型之间的关系是使用基于补丁的回归来学习的,该回归隐式地对MR图像形成的物理过程进行建模。给定新大脑的解剖模型,可以使用学习的回归模拟新的MR图像。该方法已扩展为还可以基于训练数据的统计模型来模拟强度不均匀性伪影。结果表明,基于示例的MRI模拟方法能够模拟不同的图像对比度,并且对不同的图集选择具有鲁棒性。模拟图像比基于物理模型的模拟更类似于真实的MR图像。

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