计算机科学
卷积(计算机科学)
人工智能
图像分辨率
编码(集合论)
比例(比率)
磁共振光谱成像
模式识别(心理学)
磁共振成像
人工神经网络
物理
集合(抽象数据类型)
量子力学
程序设计语言
医学
放射科
作者
Siyuan Dong,Gilbert Hangel,Wolfgang Bogner,Georg Widhalm,Karl Rössler,Siegfried Trattnig,Chenyu You,Robin de Graaf,John A. Onofrey,James S. Duncan
标识
DOI:10.1007/978-3-031-16446-0_39
摘要
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. Our code is available at https://github.com/dsy199610/Multiscale-SR-MRSI-adjustable-sharpness .
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