论文标题
多尺度的超分辨率磁共振光谱成像具有可调节的清晰度
Multi-scale Super-resolution Magnetic Resonance Spectroscopic Imaging with Adjustable Sharpness
论文作者
论文摘要
磁共振光谱成像(MRSI)是研究人体代谢活动的有价值工具,但目前的应用仅限于低空间分辨率。现有的基于深度学习的MRSI超分辨率方法需要培训一个单独的网络,为每个升级因素训练,这是耗时的,并且记忆力低下。我们使用过滤器缩放策略来解决这个多尺度的超级分辨率问题,该级别的缩放策略根据升级因素调节卷积过滤器,以便可以将单个网络用于各种升级因素。观察每个代谢物具有不同的空间特征,我们还基于特定的代谢产物来调节网络。此外,我们的网络基于对抗性损失的重量,因此可以在单个网络中调整超级分辨代谢图的知觉清晰度。我们使用新型的多条件模块结合了这些网络条件。实验是在15名高级神经胶质瘤患者的1H-MRSI数据集上进行的。结果表明,所提出的网络在几种多尺度超分辨率方法中实现了最佳性能,并且可以提供具有可调清晰度的超级分辨代谢图。
Magnetic Resonance Spectroscopic Imaging (MRSI) is a valuable tool for studying metabolic activities in the human body, but the current applications are limited to low spatial resolutions. The existing deep learning-based MRSI super-resolution methods require training a separate network for each upscaling factor, which is time-consuming and memory inefficient. We tackle this multi-scale super-resolution problem using a Filter Scaling strategy that modulates the convolution filters based on the upscaling factor, such that a single network can be used for various upscaling factors. Observing that each metabolite has distinct spatial characteristics, we also modulate the network based on the specific metabolite. Furthermore, our network is conditioned on the weight of adversarial loss so that the perceptual sharpness of the super-resolved metabolic maps can be adjusted within a single network. We incorporate these network conditionings using a novel Multi-Conditional Module. The experiments were carried out on a 1H-MRSI dataset from 15 high-grade glioma patients. Results indicate that the proposed network achieves the best performance among several multi-scale super-resolution methods and can provide super-resolved metabolic maps with adjustable sharpness.