Fraunhofer Institute for Integrated Circuits (IIS), Am Wolfsmantel 33, 91058 Erlangen, Germany.
Phys Med Biol. 2010 Sep 21;55(18):5299-315. doi: 10.1088/0031-9155/55/18/004. Epub 2010 Aug 24.
CADx systems have the potential to support radiologists in the difficult task of discriminating benign and malignant mammographic lesions. The segmentation of mammographic masses from the background tissue is an important module of CADx systems designed for the characterization of mass lesions. In this work, a novel approach to this task is presented. The segmentation is performed by automatically tracing the mass' contour in-between manually provided landmark points defined on the mass' margin. The performance of the proposed approach is compared to the performance of implementations of three state-of-the-art approaches based on region growing and dynamic programming. For an unbiased comparison of the different segmentation approaches, optimal parameters are selected for each approach by means of tenfold cross-validation and a genetic algorithm. Furthermore, segmentation performance is evaluated on a dataset of ROI and ground-truth pairs. The proposed method outperforms the three state-of-the-art methods. The benchmark dataset will be made available with publication of this paper and will be the first publicly available benchmark dataset for mass segmentation.
CADx 系统有可能帮助放射科医生完成鉴别乳腺良、恶性病变这一艰巨任务。从背景组织中对乳腺肿块进行分割是用于肿块特征描述的 CADx 系统的一个重要模块。在这项工作中,我们提出了一种新的分割方法。该分割方法通过自动追踪在手动提供的定义在肿块边界上的标志点之间的肿块轮廓来实现。通过十折交叉验证和遗传算法选择每个方法的最优参数,对所提出的方法的性能与基于区域生长和动态规划的三种最先进方法的性能进行了比较。此外,还在感兴趣区域和真实边界对数据集上评估了分割性能。所提出的方法优于三种最先进的方法。该基准数据集将随本文的发表而提供,它将成为第一个公开的用于肿块分割的基准数据集。