Accelerated magnetic resonance imaging by adversarial neural network
O Shitrit, T Riklin Raviv - Deep Learning in Medical Image Analysis and …, 2017 - Springer
O Shitrit, T Riklin Raviv
Deep Learning in Medical Image Analysis and Multimodal Learning for Clinical …, 2017•SpringerA main challenge in Magnetic Resonance Imaging (MRI) for clinical applications is speeding
up scan time. Beyond the improvement of patient experience and the reduction of
operational costs, faster scans are essential for time-sensitive imaging, where target
movement is unavoidable, yet must be significantly lessened, eg, fetal MRI, cardiac cine,
and lungs imaging. Moreover, short scan time can enhance temporal resolution in dynamic
scans, such as functional MRI or dynamic contrast enhanced MRI. Current imaging methods …
up scan time. Beyond the improvement of patient experience and the reduction of
operational costs, faster scans are essential for time-sensitive imaging, where target
movement is unavoidable, yet must be significantly lessened, eg, fetal MRI, cardiac cine,
and lungs imaging. Moreover, short scan time can enhance temporal resolution in dynamic
scans, such as functional MRI or dynamic contrast enhanced MRI. Current imaging methods …
Abstract
A main challenge in Magnetic Resonance Imaging (MRI) for clinical applications is speeding up scan time. Beyond the improvement of patient experience and the reduction of operational costs, faster scans are essential for time-sensitive imaging, where target movement is unavoidable, yet must be significantly lessened, e.g., fetal MRI, cardiac cine, and lungs imaging. Moreover, short scan time can enhance temporal resolution in dynamic scans, such as functional MRI or dynamic contrast enhanced MRI. Current imaging methods facilitate MRI acquisition at the price of lower spatial resolution and costly hardware solutions.
We introduce a practical, software-only framework, based on deep learning, for accelerating MRI scan time allows maintaining good quality imaging. This is accomplished by partial MRI sampling, while using an adversarial neural network to estimate the missing samples. The inter-play between the generator and the discriminator networks enables the introduction of an adversarial cost in addition to a fidelity loss used for optimizing the peak signal-to-noise ratio (PSNR). Promising image reconstruction results are obtained for 1.5T MRI where only 52% of the original data are used.
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