Automatic Measurements of Fetal Lateral Ventricles in 2D Ultrasound Images Using Deep Learning
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Tingting Dan | Miao He | Nan Wang | Jianbo Xian | Xijie Chen | Meifang Lin | Lihe Zhang | Hongmin Cai | Hongning Xie | Hongmin Cai | Hongning Xie | M. He | Lihe Zhang | J. Xian | Meifang Lin | Tingting Dan | Xijie Chen | Nan Wang
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