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Automatic kidney segmentation in 3D pediatric ultrasound images using deep neural networks and weighted fuzzy active shape model

机译:使用深度神经网络和加权模糊主动形状模型在3D儿科超声图像中自动进行肾脏分割

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Automatic kidney segmentation in 3D ultrasound (3DUS) images is clinically important to provide a fast and reliable diagnosis of diseased kidneys. US imaging is a challenging modality for organ evaluation, especially for pediatric kidneys with different shape, size, and texture characteristics. The aim of this study is to present an automatic kidney segmentation method in pediatric 3DUS images using the combination of deep neural networks and weighted fuzzy active shape model. We used deep neural networks to localize the kidney bounding box. The box was then used to initialize the weighted fuzzy active shape model and complete the fully automatic segmentation of the kidney capsule in 3DUS. The performance of the method was evaluated using a dataset of 45 kidneys, showing an average Dice similarity score of 0.82 ± 0.06 and average symmetric surface distance of 1.94 ± 0.74 mm.
机译:3D超声(3DUS)图像中的自动肾脏分割对提供快速可靠的患病肾脏诊断在临床上很重要。 US成像对于器官评估尤其是具有不同形状,大小和纹理特征的小儿肾脏的评估是一种具有挑战性的方式。这项研究的目的是提出一种结合深度神经网络和加权模糊活动形状模型的小儿3DUS图像自动肾脏分割方法。我们使用深层神经网络来定位肾脏边界框。然后使用该框初始化加权模糊活动形状模型,并完成3DUS中肾囊的全自动分割。使用45个肾脏的数据集评估了该方法的性能,结果显示平均Dice相似度得分为0.82±0.06,平均对称表面距离为1.94±0.74 mm。

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