论文标题

用于磁共振光谱的神经网络

Denoising neural networks for magnetic resonance spectroscopy

论文作者

Klein, Natalie, Day, Amber J., Mason, Harris, Malone, Michael W., Williamson, Sinead A.

论文摘要

在许多科学应用中,测得的时间序列被噪声或扭曲损坏。传统的剥离技术通常无法恢复感兴趣的信号,尤其是当信噪比较低或违反信号和噪声的某些假设时。在这项工作中,我们证明了基于深度学习的denoising方法可以胜过传统技术,同时表现出更大的噪声和信号特征变化的鲁棒性。我们激励的例子是磁共振光谱,其中主要目标是检测出短时,低振幅射频信号的存在,这些射频信号通常被强大的干扰掩盖,这种干扰可能很难使用传统方法与信号分离。我们探索各种深度学习体系结构的选择,以捕获磁共振信号的固有复杂值。在综合数据和实验数据上,我们表明我们的基于深度学习的方法可以超过传统技术的性能,从而为分析科学时间序列数据提供了强大的新方法。

In many scientific applications, measured time series are corrupted by noise or distortions. Traditional denoising techniques often fail to recover the signal of interest, particularly when the signal-to-noise ratio is low or when certain assumptions on the signal and noise are violated. In this work, we demonstrate that deep learning-based denoising methods can outperform traditional techniques while exhibiting greater robustness to variation in noise and signal characteristics. Our motivating example is magnetic resonance spectroscopy, in which a primary goal is to detect the presence of short-duration, low-amplitude radio frequency signals that are often obscured by strong interference that can be difficult to separate from the signal using traditional methods. We explore various deep learning architecture choices to capture the inherently complex-valued nature of magnetic resonance signals. On both synthetic and experimental data, we show that our deep learning-based approaches can exceed performance of traditional techniques, providing a powerful new class of methods for analysis of scientific time series data.

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