It is essential to segment right
ventricle (RV) for evaluating cardiac functional parameters of cardiac diseases
in clinical diagnosis and prognosis. However, the complex structure of RV makes
traditional segmentation methods not so effective in right ventricular
segmentation. A new Dense and Multi-scale U-net deep learning method is
proposed to segment right ventricle in cine cardiac magnetic resonance (CMR) short-axis
images automatically, which shows high coincidence and small difference with
manual segmentation and is promising for diagnosis and analysis of clinical
cardiac diseases.
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