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arxiv 2002.06588 v1 pith:AZW7DJIV submitted 2020-02-16 cs.CV

Automated Labelling using an Attention model for Radiology reports of MRI scans (ALARM)

classification cs.CV
keywords expertimagingradiologyapplicationsdatasetslabellingmedicalmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Labelling large datasets for training high-capacity neural networks is a major obstacle to the development of deep learning-based medical imaging applications. Here we present a transformer-based network for magnetic resonance imaging (MRI) radiology report classification which automates this task by assigning image labels on the basis of free-text expert radiology reports. Our model's performance is comparable to that of an expert radiologist, and better than that of an expert physician, demonstrating the feasibility of this approach. We make code available online for researchers to label their own MRI datasets for medical imaging applications.

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