Automatic 3D segmentation of MRI data for detection of head and neck cancerous lymph nodes

Baixiang Zhao, J. Soraghan, G. D. Caterina, L. Petropoulakis, D. Grose, T. Doshi
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引用次数: 2

Abstract

A novel algorithm for automatic 3D segmentation of magnetic resonance imaging (MRI) data for detection of head and neck cancerous lymph nodes (LN)) is presented in this paper. The proposed algorithm pre-processes the MRI data slices to enhance quality and reduce artefacts. A modified Fuzzy c-mean process is performed through all slices, followed by a probability map which refines the clustering results, to detect the approximate position of cancerous lymph nodes. Fourier interpolation is applied to create an isotropic 3D MRI volume. A new 3D level set method segments the tumour from the interpolated MRI volume. The proposed algorithm is tested on synthetic and real MRI data. The results show that the novel cancerous lymph nodes 3D volume extraction algorithm has over 0.9 Dice similarity score on synthetic data and 0.7 on real MRI data. The F-measure is 0.92 on synthetic data and 0.75 on real data.
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用于头颈部癌性淋巴结检测的MRI数据自动三维分割
提出了一种用于头颈部癌性淋巴结检测的磁共振成像(MRI)数据自动三维分割的新算法。该算法对MRI数据切片进行预处理,提高图像质量,减少伪影。对所有切片执行改进的模糊c均值处理,然后使用概率图对聚类结果进行细化,以检测癌性淋巴结的大致位置。傅里叶插值应用于创建各向同性的三维MRI体积。一种新的三维水平集方法从内插的MRI体积中分割肿瘤。在合成和真实的MRI数据上对该算法进行了测试。结果表明,新型癌性淋巴结三维体积提取算法在合成数据上的Dice相似度评分超过0.9,在真实MRI数据上的Dice相似度评分超过0.7。f值在合成数据上为0.92,在真实数据上为0.75。
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