论文标题
DeepResp:多板gre中的呼吸引起的B0波动伪像的深度学习解决方案
DeepResp: Deep learning solution for respiration-induced B0 fluctuation artifacts in multi-slice GRE
论文作者
论文摘要
呼吸引起的B $ _0 $波动通过在K空间中诱导相错误损坏MRI图像。已经提出了一些方法,例如以序列修改为代价来纠正工件。在这项研究中,提出了一种新的深度学习方法,称为DeepResp,用于减少多层梯度回声(GRE)图像中的呼吸 - 艺术。 DEEPRESP旨在使用深层神经网络从复杂图像中提取呼吸引起的相误差。然后,将网络生成的相误差应用于K空间数据,从而创建了人工校正的图像。对于网络培训,使用无伪影图像和呼吸数据生成计算机模拟的图像。 When evaluated, both simulated images and in-vivo images of two different breathing conditions (deep breathing and natural breathing) show improvements (simulation: normalized root-mean-square error (NRMSE) from 7.8% to 1.3%; structural similarity (SSIM) from 0.88 to 0.99; ghost-to-signal-ratio (GSR) from 7.9% to 0.6%; deep breathing: NRMSE from 13.9%从0.86到0.95; SSIM; NRMSE从5.2%到4.0%我们的方法不需要对序列或其他硬件进行任何修改,因此可能会找到有用的应用程序。此外,深度神经网络提取了呼吸引起的相误差,这比端到端训练的网络的结果更容易解释和可靠。
Respiration-induced B$_0$ fluctuation corrupts MRI images by inducing phase errors in k-space. A few approaches such as navigator have been proposed to correct for the artifacts at the expense of sequence modification. In this study, a new deep learning method, which is referred to as DeepResp, is proposed for reducing the respiration-artifacts in multi-slice gradient echo (GRE) images. DeepResp is designed to extract the respiration-induced phase errors from a complex image using deep neural networks. Then, the network-generated phase errors are applied to the k-space data, creating an artifact-corrected image. For network training, the computer-simulated images were generated using artifact-free images and respiration data. When evaluated, both simulated images and in-vivo images of two different breathing conditions (deep breathing and natural breathing) show improvements (simulation: normalized root-mean-square error (NRMSE) from 7.8% to 1.3%; structural similarity (SSIM) from 0.88 to 0.99; ghost-to-signal-ratio (GSR) from 7.9% to 0.6%; deep breathing: NRMSE from 13.9% to 5.8%; SSIM from 0.86 to 0.95; GSR 20.2% to 5.7%; natural breathing: NRMSE from 5.2% to 4.0%; SSIM from 0.94 to 0.97; GSR 5.7% to 2.8%). Our approach does not require any modification of the sequence or additional hardware, and may therefore find useful applications. Furthermore, the deep neural networks extract respiration-induced phase errors, which is more interpretable and reliable than results of end-to-end trained networks.