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The MRI Scanner as a Diagnostic: Image-less Active Sampling

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Despite the high diagnostic accuracy of Magnetic Resonance Imaging (MRI), using MRI as a Point-of-Care (POC) disease identification tool poses significant accessibility challenges due to the use of high magnetic field strength and lengthy acquisition times. We ask a simple question: Can we dynamically optimise acquired samples, at the patient level, according to an (automated) downstream decision task, while discounting image reconstruction? We propose an ML-based framework that learns an active sampling strategy, via reinforcement learning, at a patient-level to directly infer disease from undersampled k-space. We validate our approach by inferring Meniscus Tear in undersampled knee MRI data, where we achieve diagnostic performance comparable with ML-based diagnosis, using fully sampled k-space data. We analyse task-specific sampling policies, showcasing the adaptability of our active sampling approach. The introduced frugal sampling strategies have the potential to reduce high field strength requirements that in turn strengthen the viability of MRI-based POC disease identification and associated preliminary screening tools.

Yuning Du, Rohan Dharmakumar, Sotirios A.Tsaftaris• 2024

Related benchmarks

TaskDatasetResultRank
Disease DiagnosisCartilage Thickness Loss (test)
Balanced Accuracy75.98
42
Disease DiagnosisACL Sprain Diagnosis
Balanced Accuracy0.8294
42
Severity Degree DiagnosisCartilage Thickness Loss (test)
Balanced Accuracy63.84
26
Severity Degree DiagnosisACL Sprain Diagnosis
Balanced Accuracy78.58
26
Image ClassificationfastMRI v1.0 (test)
AUC79.4
22
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