RLDS: An explainable residual learning diagnosis system for fetal congenital heart disease
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Shanchen Pang | Sibo Qiao | Zengchen Yu | Zhihan Lv | Taotao Chen | Gang Luo | Silin Pan | Zengchen Yu | Zhihan-han Lv | Shanchen Pang | Sibo Qiao | S. Pan | G. Luo | Taotao Chen
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