首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention;MICCAI 2008 >A Local Mutual Information Guided Denoising Technique and Its Application to Self-calibrated Partially Parallel Imaging
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A Local Mutual Information Guided Denoising Technique and Its Application to Self-calibrated Partially Parallel Imaging

机译:局部互信息引导降噪技术及其在自校准部分平行成像中的应用

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The application of Partially Parallel Imaging (PPI) techniques to regular clinical Magnetic Resonance Imaging (MRI) studies has brought about the benefit of significantly faster acquisitions but at the cost of amplified and spatially variant noise, especially, for high parallel imaging acceleration rates. A Local Mutual Information (LMI) weighted Total Variation (TV) based model is proposed to remove non-evenly distributed noise while preserving image sharpness. For self-calibrated PPI, such as GeneRalized Auto-calibration Partially Parallel Acquisition (GRAPPA) and modified SENSitivity Encoding (mSENSE), a low spatial resolution high Signal to Noise Ratio (SNR) image is available besides the reconstructed high spatial resolution low SNR image. The LMI between these two images is used to detect the noise distribution and the location of edges automatically, and is then applied as guidance for denoising. To better preserve sharpness, Bregman iteration scheme is utilized to add the removed signal back to the denoised image. Entropy of the residual map is used to automatically terminate iteration without using any information of the golden standard or real noise. Results of the proposed algorithm on synthetic and in vivo MR images indicate that the proposed technique preserves image edges and suppresses noise well in the images reconstructed by GRAPPA. The comparison with some existing techniques further confirms the advantages. This algorithm can be applied to enhance the clinical applicability of self-calibrated PPI. Potentially, it can be extended to denoise general images with spatially variant noise.
机译:部分并行成像(PPI)技术在常规临床磁共振成像(MRI)研究中的应用带来的好处是采集速度显着加快,但以放大和空间变化的噪声为代价,尤其是对于高并行成像加速速率而言。提出了一种基于局部互信息(LMI)加权总变化(TV)的模型,以在保持图像清晰度的同时去除不均匀分布的噪声。对于自校准的PPI,例如Generalized自动校准的部分并行采集(GRAPPA)和改进的SENSitivity Encoding(mSENSE),除了重构的高空间分辨率低SNR图像外,还可以使用低空间分辨率的高信噪比(SNR)图像。 。这两个图像之间的LMI用于自动检测噪声分布和边缘位置,然后用作降噪指导。为了更好地保持清晰度,使用了Bregman迭代方案,将去除的信号添加回去噪图像。残差图的熵用于自动终止迭代,而无需使用黄金标准或真实噪声的任何信息。所提出的算法在合成和体内MR图像上的结果表明,所提出的技术在GRAPPA重建的图像中保留了图像边缘并很好地抑制了噪声。与一些现有技术的比较进一步证实了优点。该算法可用于增强自校准PPI的临床适用性。潜在地,它可以扩展为对具有空间变化噪声的普通图像进行降噪。

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