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Evaluating semi-supervision methods for medical image segmentation: applications in cardiac magnetic resonance imaging.

Sarah M HooperSen WuRhodri H DaviesAnish N BhuvaErik B SchelbertJames C MoonPeter KellmanHui XueCurtis P LanglotzChristopher Ré
Published in: Journal of medical imaging (Bellingham, Wash.) (2023)
We evaluate semi-supervision for medical image segmentation using heterogeneous datasets and clinical metrics. As methods for training models with little labeled data become more common, knowledge about how they perform on clinical tasks, how they fail, and how they perform with different amounts of labeled data is useful to model developers and users.
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