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arxiv 1911.02121 v2 pith:K6ENKDDC submitted 2019-11-05 eess.IV cs.LGstat.ML

GAN-enhanced Conditional Echocardiogram Generation

classification eess.IV cs.LGstat.ML
keywords echocardiacgenerationsegmentationadversarialconditionalconditionsechocardiogram
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Echocardiography (echo) is a common means of evaluating cardiac conditions. Due to the label scarcity, semi-supervised paradigms in automated echo analysis are getting traction. One of the most sought-after problems in echo is the segmentation of cardiac structures (e.g. chambers). Accordingly, we propose an echocardiogram generation approach using generative adversarial networks with a conditional patch-based discriminator. In this work, we validate the feasibility of GAN-enhanced echo generation with different conditions (segmentation masks), namely, the left ventricle, ventricular myocardium, and atrium. Results show that the proposed adversarial algorithm can generate high-quality echo frames whose cardiac structures match the given segmentation masks. This method is expected to facilitate the training of other machine learning models in a semi-supervised fashion as suggested in similar researches.

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