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Combining Deep Learning and Multi-atlas Label Fusion for Automated Placenta Segmentation from 3DUS

机译:将深度学习和多图谱标签融合相结合,实现来自3DUS的胎盘自动分割

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摘要

In recent years there is growing interest in studying the placenta in vivo. However, 3D ultrasound images (3DUS) are typically very noisy, and the placenta shape and position are highly variable. As such, placental segmentation efforts to date have focused on interactive methods that require considerable user input, or automated methods with relatively low performance and various limitations. We propose a novel algorithm using a combination of deep learning and multi-atlas joint label fusion (JLF) methods for automated segmentation of the placenta in 3DUS images. We extract 2D cross-sections of the ultrasound cone beam with a variety of orientations from the 3DUS images and train a convolutional neural network (CNN) on these slices. We use the prediction by the CNN to initialize the multi-atlas JLF algorithm. The posteriors obtained by the CNN and JLF models are combined to enhance the overall segmentation performance. The method is evaluated on a dataset of 47 patients in the first trimester. We perform 4-fold cross-validation and achieve a mean Dice coefficient of 86.3± 5.3 for the test folds. This is a substantial increase in accuracy compared to existing automated methods and is comparable to the performance of semi-automated methods currently considered the bronze standard in placenta segmentation.
机译:近年来,对体内胎盘研究的兴趣日益浓厚。但是,3D超声图像(3DUS)通常非常嘈杂,胎盘的形状和位置变化很大。因此,迄今为止,胎盘分割的努力集中在需要大量用户输入的交互式方法,或者具有相对较低性能和各种限制的自动化方法。我们提出了一种结合深度学习和多图谱联合标签融合(JLF)方法的新颖算法,用于在3DUS图像中自动分割胎盘。我们从3DUS图像中提取具有各种方向的超声锥束的2D横截面,并在这些切片上训练卷积神经网络(CNN)。我们使用CNN的预测来初始化多图谱JLF算法。通过CNN和JLF模型获得的后验图像相结合以增强整体分割性能。在头三个月的47位患者的数据集上对该方法进行了评估。我们执行4倍交叉验证,并且测试折叠的平均Dice系数达到86.3±5.3。与现有的自动化方法相比,这大大提高了准确性,并且与目前被认为是胎盘分割的青铜标准的半自动化方法的性能相当。

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  • 会议地点 Granada(ES)
  • 作者单位

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

    Maternal and Child Health Research Program, Department of OBGYN, University of Pennsylvania, Philadelphia, PA, USA;

    Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, PA, USA;

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