2020
DOI: 10.1109/msp.2019.2950433
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Compressed Sensing: From Research to Clinical Practice With Deep Neural Networks: Shortening Scan Times for Magnetic Resonance Imaging

Abstract: Compressed sensing (CS) reconstruction methods leverage sparse structure in underlying signals to recover high-resolution images from highly undersampled measurements. When applied to magnetic resonance imaging (MRI), CS has the potential to dramatically shorten MRI scan times, increase diagnostic value, and improve overall patient experience. However, CS has several shortcomings which limit its clinical translation such as: 1) artifacts arising from inaccurate sparse modelling assumptions, 2) extensive parame… Show more

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Cited by 147 publications
(101 citation statements)
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References 30 publications
(60 reference statements)
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“…Each ResNet is composed of 3D convolutional layers with 3 × 3 × 3 kernels to leverage all spatial and temporal dimensions for de‐aliasing. Convolutional layers are implemented using circular padding along the phase encoding and temporal directions in order to enforce circular boundary conditions in the two dimensions 24 . There are five total convolutional layers for each DL‐ESPIRiT iteration which corresponds to a spatiotemporal receptive field of size 11 × 11 × 11.…”
Section: Methodsmentioning
confidence: 99%
See 4 more Smart Citations
“…Each ResNet is composed of 3D convolutional layers with 3 × 3 × 3 kernels to leverage all spatial and temporal dimensions for de‐aliasing. Convolutional layers are implemented using circular padding along the phase encoding and temporal directions in order to enforce circular boundary conditions in the two dimensions 24 . There are five total convolutional layers for each DL‐ESPIRiT iteration which corresponds to a spatiotemporal receptive field of size 11 × 11 × 11.…”
Section: Methodsmentioning
confidence: 99%
“…Convolutional layers are implemented using circular padding along the phase encoding and temporal directions in order to enforce circular boundary conditions in the two dimensions. 24 There are five total convolutional layers for each DL-ESPIRiT iteration which corresponds to a spatiotemporal receptive field of size 11 × 11 × 11. The first convolution of each ResNet expands the initial (2 or 4) images into 96 feature maps, which are propagated through the network until the final convolution where they are recombined into the original number of input images.…”
Section: Network Architecturementioning
confidence: 99%
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