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BOLD fMRI-Based Brain Perfusion Prediction Using Deep Dilated Wide Activation Networks

机译:基于大胆功能磁共振成像的脑灌注预测使用深度扩张的广泛激活网络

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Arterial spin labeling (ASL) perfusion MRI and blood-oxygen-level-dependent (BOLD) fMRI provide complementary information for assessing brain functions. ASL is quantitative, insensitive to low-frequency drift but has lower signal-to-noise-ratio (SNR) and lower temporal resolution than BOLD. However, there still lacks a way to fuse the benefits provided by both of them. When only one modality is available, it is also desirable to have a technique that can extract the other modality from the one being acquired. The purpose of this study was to develop such a technique that can combine the advantages of BOLD fMRI and ASL MRI, i.e., to quantify cerebral blood flow (CBF) like ASL MRI but with high SNR and temporal resolution as in BOLD fMRI. We pursued this goal using a new deep learning-based algorithm to extract CBF directly from BOLD fMRI. Using a relatively large dataset containing dual-echo ASL and BOLD images, we built a wide residual learning based convolutional neural network to predict CBF from BOLD fMRI. We dubbed this technique as a BOA-Net (BOLD to ASL networks). Our testing results demonstrated that ASL CBF can be reliably predicted from BOLD fMRI with comparable image quality and higher SNR. We also evaluated BOA-Net with different deep learning networks.
机译:动脉自旋标记(ASL)灌注MRI和血氧水平依赖性(BOLD)fMRI为评估脑功能提供了补充信息。 ASL具有定量功能,对低频漂移不敏感,但信噪比(SNR)和时间分辨率均低于BOLD。但是,仍然缺乏一种融合两者所提供好处的方法。当只有一种模态可用时,也期望具有一种可以从正在获取的模态中提取另一种模态的技术。这项研究的目的是开发一种能够结合BOLD fMRI和ASL MRI优点的技术,即像ASL MRI一样量化脑血流量(CBF),但具有与BOLD fMRI一样的高SNR和时间分辨率。我们使用新的基于深度学习的算法直接从BOLD fMRI中提取CBF,以实现这一目标。使用包含双回波ASL和BOLD图像的相对较大的数据集,我们建立了一个基于残差学习的广泛卷积神经网络,可以从BOLD fMRI预测CBF。我们将此技术称为BOA-Net(ASL网络中的BOLD)。我们的测试结果表明,可以通过BOLD fMRI可靠地预测ASL CBF,具有可比的图像质量和更高的SNR。我们还使用不同的深度学习网络评估了BOA-Net。

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