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Children's Neuroblastoma Segmentation Using Morphological Features

机译:利用形态特征对儿童神经母细胞瘤进行细分

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Neuroblastoma (NB) is a common type of cancer in children that can develop in the neck, chest, or abdomen. It causes about 15% of cancer deaths in children. However, the automatic segmentation of NB on CT images has been addressed weakly, mostly because children's CT images have much lower contrast than adults, especially those aged less than one year. Furthermore, neuroblastomas can develop in different body parts and are usually in variable size and irregular shape, which also add to the difficulties of NB segmentation. In view of these issues, we propose a morphological constrained end-to-end NB segmentation approach by taking the sizes and shapes of tumors in consideration for more accurate boundaries. The morphological features of neuroblastomas are predicted as an auxiliary task while performing segmentation and used as additional supervision for the segmentation prediction. We collect 248 CT scans from distinct patients with manually-annotated labels to establish a dataset for NB segmentation. Our method is evaluated on this dataset as well as the public Brats2018, and experimental results shows that the morphological constraints can improve the performance of medical image segmentation networks.
机译:神经母细胞瘤(NB)是儿童的一种常见癌症,可在颈部,胸部或腹部发展。它导致儿童中约15%的癌症死亡。但是,在计算机断层扫描图像上自动分割NB的能力较弱,主要是因为儿童的计算机断层扫描图像的对比度比成人低得多,尤其是年龄小于一年的儿童。此外,神经母细胞瘤可在身体的不同部位发展,通常大小不等,形状不规则,这也增加了NB分割的难度。鉴于这些问题,我们通过考虑肿瘤的大小和形状以考虑更准确的边界,提出一种形态受限的端到端NB分割方法。神经母细胞瘤的形态特征在执行分割时作为辅助任务被预测,并被用作分割预测的附加监督。我们收集了来自不同患者的248张CT扫描图,并使用手动标注标签建立了NB分割的数据集。我们在此数据集以及公共Brats2018上对我们的方法进行了评估,实验结果表明形态学约束可以提高医学图像分割网络的性能。

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