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首页> 外文期刊>Physics in medicine and biology. >MRI intensity inhomogeneity correction by combining intensity and spatial information.
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MRI intensity inhomogeneity correction by combining intensity and spatial information.

机译:通过组合强度和空间信息进行MRI强度不均匀性校正。

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摘要

We propose a novel fully automated method for retrospective correction of intensity inhomogeneity, which is an undesired phenomenon in many automatic image analysis tasks, especially if quantitative analysis is the final goal. Besides most commonly used intensity features, additional spatial image features are incorporated to improve inhomogeneity correction and to make it more dynamic, so that local intensity variations can be corrected more efficiently. The proposed method is a four-step iterative procedure in which a non-parametric inhomogeneity correction is conducted. First, the probability distribution of image intensities and corresponding second derivatives is obtained. Second, intensity correction forces, condensing the probability distribution along the intensity feature, are computed for each voxel. Third, the inhomogeneity correction field is estimated by regularization of all voxel forces, and fourth, the corresponding partial inhomogeneity correction is performed. The degree of inhomogeneity correction dynamics is determined by the size of regularization kernel. The method was qualitatively and quantitatively evaluated on simulated and real MR brain images. The obtained results show that the proposed method does not corrupt inhomogeneity-free images and successfully corrects intensity inhomogeneity artefacts even if these are more dynamic.
机译:我们提出了一种新颖的全自动方法,用于对强度不均匀性进行追溯校正,这在许多自动图像分析任务中都是不希望出现的现象,尤其是在定量分析是最终目标的情况下。除了最常用的强度特征之外,还合并了其他空间图像特征,以改善不均匀性校正并使之更加动态,从而可以更有效地校正局部强度变化。所提出的方法是一个四步迭代过程,其中进行了非参数不均匀性校正。首先,获得图像强度和相应的二阶导数的概率分布。其次,为每个体素计算强度校正力,该强度校正力会压缩沿强度特征的概率分布。第三,通过所有体素力的正则化估计不均匀性校正场,并且第四,执行相应的部分不均匀性校正。不均匀性校正动力学的程度取决于正则化内核的大小。该方法在模拟和真实MR大脑图像上进行了定性和定量评估。所获得的结果表明,所提出的方法不会破坏无不均匀性的图像,并且即使它们更加动态,也可以成功地校正强度不均匀性伪像。

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