Random Walker with Fuzzy Initialization Applied to Segment Masses in Mammography Images

F. Cordeiro, Kallebe Felipe Pereira Bezerra, W. Santos
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引用次数: 12

Abstract

Segmentation of masses in mammography images is an important task in early detection of breast cancer. Although the quality of segmentation is crucial to avoid misdiagnosis, the segmentation process is a challenging task even for specialists, due to the presence of ill-defined edges and low contrast images. In this work, we propose an improvement on Random Walker algorithm to segment masses, by applying a fuzzy approach in the initialization stage. We evaluated the new approach compared with classical Random Walker, using 57 images of Mini-MIAS database. The segmented images were compared with ground truth, using the metrics of sensitivity, specificity, balanced accuracy, Jaccard index and dice. Results showed that the proposed method obtained better segmentation results when compared with classical Random Walker, requiring lower user interaction.
模糊初始化随机漫步器在乳房x线影像块分割中的应用
乳房x线影像中肿块的分割是早期发现乳腺癌的重要任务。尽管分割的质量对于避免误诊至关重要,但由于存在不明确的边缘和低对比度的图像,分割过程即使对专家来说也是一项具有挑战性的任务。在这项工作中,我们提出了一种改进Random Walker算法,通过在初始化阶段应用模糊方法来分割质量。我们使用Mini-MIAS数据库的57张图像,将新方法与经典Random Walker进行了比较。使用灵敏度、特异性、平衡精度、Jaccard指数和dice等指标,将分割后的图像与ground truth进行比较。结果表明,与传统的Random Walker方法相比,该方法获得了更好的分割效果,对用户交互的要求更低。
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