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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >A deep learning approach to estimation of subject-level bias and variance in high angular resolution diffusion imaging
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A deep learning approach to estimation of subject-level bias and variance in high angular resolution diffusion imaging

机译:深度学习方法来估算高角度分辨率扩散成像的主题偏压和方差

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摘要

The ability to evaluate empirical diffusion MRI acquisitions for quality and to correct the resulting imaging metrics allows for improved inference and increased replicability. Previous work has shown promise for estimation of bias and variance of generalized fractional anisotropy (GFA) but comes at the price of computational complexity. This paper aims to provide methods for estimating GFA, bias of GFA and standard deviation of GFA quickly and accurately. In order to provide a method for bias and variance estimation that can return results faster than the previously studied statistical techniques, three deep, fully-connected neural networks are developed for GFA, bias of GFA, and standard deviation of GFA. The results of these networks are compared to the observed values of the metrics as well as those fit from the statistical techniques (i.e. Simulation Extrapolation (SIMEX) for bias estimation and wild bootstrap for variance estimation). Our GFA network provides predictions that are closer to the true GFA values than a Q-ball fit of the observed data (root-mean-square error (RMSE) 0.0077 vs 0.0082, p < .001). The bias network also shows statistically significant improvement in comparison to the SIMEX-estimated error of GFA (RMSE 0.0071 vs. 0.01, p < .001).
机译:评估实证扩散MRI采集的能力和纠正所产生的成像度量允许改进的推理和增加的可重量性。以前的工作表明了估计广义分数各向异性(GFA)的偏差和方差,而是以计算复杂性的价格估算。本文旨在提供估计GFA,GFA偏差和GFA的标准偏差的方法。为了提供偏置和方差估计的方法,可以恢复比先前研究的统计技术更快,为GFA,GFA的偏差和GFA的标准偏差开发了三个深,完全连接的神经网络。这些网络的结果与观察到的指标值以及统计技术的符合值(即偏差估计的仿真外推(SIMEX)进行差异估计)。我们的GFA网络提供了比观察数据的Q-Ball拟合更接近真实GFA值的预测(根均衡误差(RMSE)0.0077 Vs 0.0082,P <.001)。与GFA的SIMEX估计误差相比,偏置网络还显示出统计上显着的改进(RMSE 0.0071,0.01,P <.001)。

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