P. Looney, G. Stevenson, K. Nicolaides, W. Plasencia, Malid Molloholli, S. Natsis, S. Collins
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引用次数: 48
摘要
在妊娠早期用三维超声测量胎盘体积已被证明与不良妊娠结局相关。这可能被用作预测“有风险”怀孕的筛查试验。然而,人工分割虽然以前被证明是准确和可重复的,但非常耗时,半自动方法仍然需要操作员的输入。为了生成筛选工具,需要完全自动化的胎盘分割。在这项工作中,深度卷积神经网络(cNN) DeepMedic使用半自动Random Walker方法的输出作为ground truth进行训练。使用300个早期妊娠胎盘的3D超声扫描来训练、验证和测试cNN。与半自动分割相比,得到的中位数(第1四分位,第3四分位)骰子相似系数为0.73(0.66,0.76)。Hausdorff距离中位数(第一、第三四分位数)为27 mm (18 mm、36 mm)。我们提出了使用深度cNN分割胎盘三维超声的第一次尝试。本文的工作表明,与地面真实情况相比,得到了可行的结果,可以构成全自动分割方法的基础。
Automatic 3D ultrasound segmentation of the first trimester placenta using deep learning
Placental volume measured with 3D ultrasound in the first trimester has been shown to be correlated to adverse pregnancy outcomes. This could potentially be used as a screening test to predict the “at risk” pregnancy. However, manual segmentation whilst previously shown to be accurate and repeatable is very time consuming and semi-automated methods still require operator input. To generate a screening tool, fully automated placental segmentation is required. In this work, a deep convolutional neural network (cNN), DeepMedic, was trained using the output of the semi-automated Random Walker method as ground truth. 300 3D ultrasound scans of first trimester placentas were used to train, validate and test the cNN. Compared against the semi-automated segmentation, resultant median (1st Quartile, 3rd Quartile) Dice Similarity Coefficient was 0.73 (0.66, 0.76). The median (1st Quartile, 3rd Quartile) Hausdorff distance was 27 mm (18 mm, 36 mm). We present the first attempt at using a deep cNN for segmentation of 3D ultrasound of the placenta. This work shows that feasible results compared to ground truth were obtained that could form the basis of a fully automatic segmentation method.