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Modified spatial neutrosophic clustering technique for boundary extraction of tumours in B-mode BUS images

机译:改进的空间中智聚类技术用于B型BUS图像中肿瘤的边界提取

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摘要

Breast ultrasound (BUS) images are of poor quality, contain inherent noise and shadow regions. Consequently, the task of tumour segmentation from these images becomes more difficult. In this study, a modified spatial neutrosophic clustering technique has been proposed for automatic boundary extraction of tumours in B-mode BUS images. The contributions of the work are two-fold: (i) spatial information is incorporated in the neutrosophicnℓn-means (NLM) clustering method for better cluster formation and (ii) membership values are updated by using type-2 membership function, which helps in converging the cluster centres to more desirable locations than ordinary fuzzy membership functions. BUS images with manually marked lesions by an experienced radiologist have been used as gold standard/reference images for quantitative comparison. The proposed method has been applied to 60 BUS images and results are recorded in the form of area and boundary error metrics. The performance of the proposed method has been compared with the region growing, fuzzy c-means clustering, watershed segmentation, neutrosophic c-means clustering and NLM clustering methods. From the quantitative and visual results, it has been observed that the proposed method can extract the tumour boundaries more precisely as compared with the other state-of-the-art clustering techniques.
机译:乳房超声(BUS)图像质量较差,包含固有的噪声和阴影区域。因此,从这些图像进行肿瘤分割的任务变得更加困难。在这项研究中,提出了一种改进的空间中智聚类技术,用于在B型BUS图像中自动提取肿瘤边界。这项工作的贡献有两个方面:(i)将空间信息并入中性粒细胞ℓn-means(NLM)聚类方法,可更好地形成集群,并且(ii)使用类型2隶属度函数更新隶属度值,这有助于收敛与普通的模糊隶属度函数相比,聚类中心位于更理想的位置。由经验丰富的放射科医生手动标记病变的BUS图像已用作黄金标准/参考图像,用于定量比较。该方法已应用于60幅BUS图像,并以区域和边界误差度量的形式记录了结果。将该方法的性能与区域增长,模糊c均值聚类,分水岭分割,中智c均值聚类和NLM聚类方法进行了比较。从定量和视觉结果来看,与其他最新的聚类技术相比,该方法可以更精确地提取肿瘤边界。

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