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Fully Automated 3-D Ultrasound Segmentation of the Placenta, Amniotic Fluid, and Fetus for Early Pregnancy Assessment

机译:胎盘,羊水和胎儿的全自动三维超声分段,用于早孕评估

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摘要

Volumetric placental measurement using 3-D ultrasound has proven clinical utility in predicting adverse pregnancy outcomes. However, this metric cannot currently be employed as part of a screening test due to a lack of robust and real-time segmentation tools. We present a multiclass (MC) convolutional neural network (CNN) developed to segment the placenta, amniotic fluid, and fetus. The ground-truth data set consisted of 2093 labeled placental volumes augmented by 300 volumes with placenta, amniotic fluid, and fetus annotated. A two-pathway, hybrid (HB) model using transfer learning, a modified loss function, and exponential average weighting was developed and demonstrated the best performance for placental segmentation (PS), achieving a Dice similarity coefficient (DSC) of 0.84- and 0.38-mm average Hausdorff distances (HDAV). The use of a dual-pathway architecture improved the PS by 0.03 DSC and reduced HDAV by 0.27 mm compared with a naive MC model. The incorporation of exponential weighting produced a further small improvement in DSC by 0.01 and a reduction of HDAV by 0.44 mm. Per volume inference using the FCNN took 7-8 s. This method should enable clinically relevant morphometric measurements (such as volume and total surface area) to be automatically generated for the placenta, amniotic fluid, and fetus. The ready availability of such metrics makes a population-based screening test for adverse pregnancy outcomes possible.
机译:使用3-D超声波的体积胎盘测量已经证明了预测不良妊娠结果的临床效用。然而,由于缺乏稳健和实时的分割工具,目前不能使用该度量作为筛选测试的一部分。我们提出了一种开发的多种子(MC)卷积神经网络(CNN),以分割胎盘,羊水和胎儿。地面真实数据集由2093个标记的胎盘体积组成,增强了300卷与胎盘,羊水和胎儿注释。开发了一种双途径,混合(HB)模型,使用转移学习,修改的损失函数和指数平均加权,并证明了胎盘分割(PS)的最佳性能,实现了0.84和0.38的骰子相似度系数(DSC) -mm平均Hausdorff距离(HDAV)。与天真MC型号相比,使用双路架构的使用改善了0.03dsc并减少了0.27mm的HDAV。指数加权的掺入产生了DSC的进一步改善0.01并将HDAV的减少0.44mm。使用FCNN的每体积推断花了7-8秒。该方法应在胎盘,羊水和胎儿产生临床相关的形态测量(例如体积和总表面积)。此类指标的随的可用性使得一种基于人群的筛查试验,用于不利妊娠结果。

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