School of Information Technology and Electrical Engineering, The University of Queensland, Brisbane, Australia.
School of Information and Communication Technology, Griffith University, Brisbane, Australia.
NMR Biomed. 2021 Aug;34(8):e4540. doi: 10.1002/nbm.4540. Epub 2021 May 11.
This paper proposes a new method for optimizing feature sharing in deep neural network-based, rapid, multicontrast magnetic resonance imaging (MC-MRI). Using the shareable information of MC images for accelerated MC-MRI reconstruction, current algorithms stack the MC images or features without optimizing the sharing protocols, leading to suboptimal reconstruction results. In this paper, we propose a novel feature aggregation and selection scheme in a deep neural network to better leverage the MC features and improve the reconstruction results. First, we propose to extract and use the shareable information by mapping the MC images into multiresolution feature maps with multilevel layers of the neural network. In this way, the extracted features capture complementary image properties, including local patterns from the shallow layers and semantic information from the deep layers. Then, an explicit selection module is designed to compile the extracted features optimally. That is, larger weights are learned to incorporate the constructive, shareable features; and smaller weights are assigned to the unshareable information. We conduct comparative studies on publicly available T2-weighted and T2-weighted fluid attenuated inversion recovery brain images, and the results show that the proposed network consistently outperforms existing algorithms. In addition, the proposed method can recover the images with high fidelity under 16 times acceleration. The ablation studies are conducted to evaluate the effectiveness of the proposed feature aggregation and selection mechanism. The results and the visualization of the weighted features show that the proposed method does effectively improve the usage of the useful features and suppress useless information, leading to overall enhanced reconstruction results. Additionally, the selection module can zero-out repeated and redundant features and improve network efficiency.
本文提出了一种新的方法,用于优化基于深度神经网络的快速多对比度磁共振成像(MC-MRI)中的特征共享。利用 MC 图像的可共享信息进行加速 MC-MRI 重建,当前的算法在不优化共享协议的情况下堆叠 MC 图像或特征,导致重建结果不理想。在本文中,我们提出了一种新的深度神经网络中的特征聚合和选择方案,以更好地利用 MC 特征并改善重建结果。首先,我们通过将 MC 图像映射到具有神经网络多层的多分辨率特征图中来提取和利用可共享信息。通过这种方式,提取的特征捕获了互补的图像属性,包括浅层的局部模式和深层的语义信息。然后,设计了一个显式的选择模块来对提取的特征进行最优组合。也就是说,学习更大的权重来合并具有建设性的、可共享的特征;而分配较小的权重给不可共享的信息。我们在公开的 T2 加权和 T2 加权液体衰减反转恢复脑图像上进行了对比研究,结果表明,所提出的网络始终优于现有算法。此外,该方法可以在 16 倍加速下恢复高保真度的图像。通过消融研究来评估所提出的特征聚合和选择机制的有效性。结果和加权特征的可视化表明,所提出的方法确实有效地提高了有用特征的使用效率,并抑制了无用信息,从而整体上提高了重建结果。此外,选择模块可以将重复和冗余的特征置零,提高网络效率。