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首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >A convolutional neural network to filter artifacts in spectroscopic MRI MRI
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A convolutional neural network to filter artifacts in spectroscopic MRI MRI

机译:一种卷积神经网络,以滤除光谱MRI MRI中的伪影

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Purpose Proton MRSI is a noninvasive modality capable of generating volumetric maps of in vivo tissue metabolism without the need for ionizing radiation or injected contrast agent. Magnetic resonance spectroscopic imaging has been shown to be a viable imaging modality for studying several neuropathologies. However, a key hurdle in the routine clinical adoption of MRSI is the presence of spectral artifacts that can arise from a number of sources, possibly leading to false information. Methods A deep learning model was developed that was capable of identifying and filtering out poor quality spectra. The core of the model used a tiled convolutional neural network that analyzed frequency‐domain spectra to detect artifacts. Results When compared with a panel of MRS experts, our convolutional neural network achieved high sensitivity and specificity with an area under the curve of 0.95. A visualization scheme was implemented to better understand how the convolutional neural network made its judgement on single‐voxel or multivoxel MRSI, and the convolutional neural network was embedded into a pipeline capable of producing whole‐brain spectroscopic MRI volumes in real time. Conclusion The fully automated method for assessment of spectral quality provides a valuable tool to support clinical MRSI or spectroscopic MRI studies for use in fields such as adaptive radiation therapy planning.
机译:目的,Proton MRSI是一种非侵入式模态,其能够产生体内组织代谢的体积图,而不需要电离辐射或注射的造影剂。磁共振光谱成像已被证明是用于研究几种神经病理学的可行成像模态。然而,常规临床采用MRSI中的关键障碍是存在可能从许多来源产生的光谱伪影,可能导致虚假信息。方法开发了深度学习模型,能够识别和过滤差的质量光谱。该模型的核心使用了瓷砖卷积神经网络,分析了频域光谱来检测伪影。结果与MRS专家小组相比,我们的卷积神经网络在0.95的曲线下实现了高灵敏度和特异性。实施了一种可视化方案以更好地了解卷积神经网络如何对单voxel或多种素线MRSI进行判断,并且将卷积神经网络嵌入到能够实时产生全脑光谱MRI体积的管道中。结论用于评估光谱质量的全自动方法提供了一种有价值的工具,以支持临床MRSI或光谱MRI研究,以用于适应性放射治疗计划等领域。

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