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Sparse reconstruction of compressive sensing MRI using cross-domain stochastically fully connected conditional random fields

机译:使用跨域随机全连接条件随机场的压缩感知MRI稀疏重建

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摘要

BackgroundMagnetic Resonance Imaging (MRI) is a crucial medical imaging technology for the screening and diagnosis of frequently occurring cancers. However, image quality may suffer from long acquisition times for MRIs due to patient motion, which also leads to patient discomfort. Reducing MRI acquisition times can reduce patient discomfort leading to reduced motion artifacts from the acquisition process. Compressive sensing strategies applied to MRI have been demonstrated to be effective in decreasing acquisition times significantly by sparsely sampling the k-space during the acquisition process. However, such a strategy requires advanced reconstruction algorithms to produce high quality and reliable images from compressive sensing MRI.
机译:背景技术磁共振成像(MRI)是一种用于筛查和诊断常见癌症的重要医学成像技术。但是,由于患者的运动,图像质量可能会因MRI采集时间长而受苦,这也会导致患者不适。减少MRI采集时间可以减少患者的不适感,从而减少采集过程中的运动伪影。通过在采集过程中稀疏采样k空间,已证明将压缩感知策略应用于MRI可有效减少采集时间。但是,这种策略需要先进的重建算法,才能从压缩感测MRI产生高质量和可靠的图像。

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