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Robust Spectral Denoising for Water-Fat Separation in Magnetic Resonance Imaging

机译:磁共振成像中水脂分离的稳健光谱去噪

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Fat quantification based on the multi-echo Dixon method is gaining importance in clinical practice as it can match the accuracy of spectroscopy but provides high spatial resolution. Accurate quantificar tion protocols, though, are limited to low SNR and suffer from a high noise bias. As the clinically relevant water and fat components are estimated by fitting a non-linear signal model to the data, the uncertainty is further amplified. In this work, we first establish the low-rank property and its locality assumptions for water-fat MRI and, consequently, propose a model-consistent but adaptive spectral denoising. A robust noise estimation in combination with a risk-minimizing threshold adds to a fully-automatic method. We demonstrate its capabilities on abdominal fat quantification data from in-vivo experiments. The denoising reduces the fit error on average by 37 % and the uncertainty of the fat fraction by 58 % in comparison to the original data while being edge-preserving.
机译:基于多回波迪克森方法的脂肪定量在临床实践中正变得越来越重要,因为它可以匹配光谱学的准确性,但具有很高的空间分辨率。但是,准确的量化协议仅限于低SNR并具有较高的噪声偏差。由于通过将非线性信号模型拟合到数据来估计临床上相关的水和脂肪成分,不确定性会进一步放大。在这项工作中,我们首先建立了水脂MRI的低秩属性及其局部性假设,因此,提出了一种与模型一致但自适应的频谱去噪方法。鲁棒的噪声估计与最小化风险阈值相结合,为全自动方法增添了乐趣。我们在体内实验中证明了其对腹部脂肪定量数据的功能。与保留边缘的原始数据相比,去噪平均将拟合误差平均降低了37%,脂肪分数的不确定性降低了58%。

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