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Globally optimal breast mass segmentation from DCE-MRI using deep semantic segmentation as shape prior

机译:DCE-MRI使用深度语义分割作为形状先验的全球最佳乳腺肿块分割

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We introduce a new fully automated breast mass segmentation method from dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI). The method is based on globally optimal inference in a continuous space (GOCS) using a shape prior computed from a semantic segmentation produced by a deep learning (DL) model. We propose this approach because the limited amount of annotated training samples does not allow the implementation of a robust DL model that could produce accurate segmentation results on its own. Furthermore, GOCS does not need precise initialisation compared to locally optimal methods on a continuous space (e.g., Mumford-Shah based level set methods); also, GOCS has smaller memory complexity compared to globally optimal inference on a discrete space (e.g., graph cuts). Experimental results show that the proposed method produces the current state-of-the-art mass segmentation (from DCEMRI) results, achieving a mean Dice coefficient of 0.77 for the test set.
机译:我们从动态对比增强磁共振成像(DCE-MRI)中引入了一种新型的全自动乳房质量分割方法。该方法基于使用从深度学习(DL)模型产生的语义分割中计算出的先验形状的连续空间(GOCS)中的全局最优推断。我们之所以提出这种方法,是因为有限数量的带注释的训练样本不允许实现能够自行产生准确的分割结果的健壮的DL模型。此外,与连续空间上的局部最优方法相比,GOCS不需要精确的初始化(例如,基于Mumford-Shah的水平集方法);同样,与在离散空间上进行全局最佳推理(例如,图切割)相比,GOCS具有较小的存储器复杂性。实验结果表明,该方法产生了最新的质量分割结果(来自DCEMRI),测试集的平均Dice系数为0.77。

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