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Experimental design for MRI by greedy policy search

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In today's clinical practice, magnetic resonance imaging (MRI) is routinely accelerated through subsampling of the associated Fourier domain. Currently, the construction of these subsampling strategies - known as experimental design - relies primarily on heuristics. We propose to learn experimental design strategies for accelerated MRI with policy gradient methods. Unexpectedly, our experiments show that a simple greedy approximation of the objective leads to solutions nearly on-par with the more general non-greedy approach. We offer a partial explanation for this phenomenon rooted in greater variance in the non-greedy objective's gradient estimates, and experimentally verify that this variance hampers non-greedy models in adapting their policies to individual MR images. We empirically show that this adaptivity is key to improving subsampling designs.

Tim Bakker, Herke van Hoof, Max Welling• 2020

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Disease DiagnosisCartilage Thickness Loss (test)
Balanced Accuracy75.92
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Severity Degree DiagnosisACL Sprain Diagnosis
Balanced Accuracy54.64
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Image ClassificationfastMRI v1.0 (test)
AUC83.1
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