Benchmarking Deep Nets MRI Reconstruction Models on the FastMRI Publicly Available Dataset

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Benchmarking Deep Nets MRI Reconstruction Models on the FastMRI Publicly Available Dataset


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Benchmarking Deep Nets MRI Reconstruction Models on the FastMRI Publicly Available Dataset

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The MRI reconstruction field lacked a proper data set that allowed for reproducible results on real raw data (i.e. complex-valued), especially when it comes to deep learning methods as this kind of methods require much more data than classical Compressed Sensing reconstruction. This lack is now filled by the fastMRI data set, and it is needed to evaluate recent deep learning models on this benchmark. Besides, these networks are written in different frameworks, in different repositories (if publicly available), it is therefore needed to have a common tool, publicly available, allowing a reproducible benchmark of the different methods and ease of building new models. We provide such a tool that allows the benchmark of different reconstruction deep learning models.
The MRI reconstruction field lacked a proper data set that allowed for reproducible results on real raw data (i.e. complex-valued), especially when it comes to deep learning methods as this kind of methods require much more data than classical Compressed Sensing reconstruction. This lack is now filled by the fastMRI data set, and it is needed to evaluate recent deep learning models on this benchmark. Besides, these networks are written in different frameworks, in different repositories (if publicly available), it is therefore needed to have a common tool, publicly available, allowing a reproducible benchmark of the different methods and ease of building new models. We provide such a tool that allows the benchmark of different reconstruction deep learning models.