Convolutional neural networks (CNNs) have proven to be valuable in the fields of image processing and computer vision. Our work applies complex-valued CNNs to magnetic resonance imaging (MRI) to reduce scan times. The reduction of scan times has widespread pediatric benefits. A typical scan requires that patients remain still for up to an hour to produce a clear image, which is difficult for children without inducing anesthesia, which carries risks. A need exists for greatly improved MRI scan times without the loss of diagnostic accuracy. This scan time can be reduced by subsampling in k-space. We use CNNs to reconstruct images from these undersampled acquisitions. Our work investigates complex-valued CNNs for image reconstruction in lieu of two-channel real-valued CNNs.
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Meeting name:
SPR 2019 Annual Meeting & Postgraduate Course
, 2019
Authors:
Cole Elizabeth,
Pauly John,
Vasanawala Shreyas,
Cheng Joseph
Keywords:
Magnetic Resonance Imaging,
deep learning,
Neural network