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Segmentation of uterus and placenta in MR images using a fully convolutional neural network

机译:使用全卷积神经网络分割MR图像中的子宫和胎盘

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Segmentation of the uterine cavity and placenta in fetal magnetic resonance (MR) imaging is useful for the detection of abnormalities that affect maternal and fetal health. In this study, we used a fully convolutional neural network for 3D segmentation of the uterine cavity and placenta while a minimal operator interaction was incorporated for training and testing the network. The user interaction guided the network to localize the placenta more accurately. We trained the network with 70 training and 10 validation MRI cases and evaluated the algorithm segmentation performance using 20 cases. The average Dice similarity coefficient was 92% and 82% for the uterine cavity and placenta, respectively. The algorithm could estimate the volume of the uterine cavity and placenta with average errors of 2% and 9%, respectively. The results demonstrate that the deep learning-based segmentation and volume estimation is possible and can potentially be useful for clinical applications of human placental imaging.
机译:胎儿磁共振(MR)成像中子宫腔和胎盘的分割可用于检测影响母婴健康的异常。在这项研究中,我们使用完全卷积神经网络对子宫腔和胎盘进行3D分割,同时引入了最少的操作员交互作用来训练和测试该网络。用户交互引导网络更精确地定位胎盘。我们用70个训练案例和10个验证MRI案例训练了网络,并使用20个案例评估了算法分割性能。子宫腔和胎盘的平均Dice相似系数分别为92%和82%。该算法可以估计子宫腔和胎盘的体积,平均误差分别为2%和9%。结果表明,基于深度学习的分割和体积估计是可能的,并且可能对人体胎盘成像的临床应用有用。

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