Division of Radiotherapy and Imaging, The Institute of Cancer Research, Cancer Research UK Cancer Imaging Centre, London, SM2 5NG, UK.
Department of Medical Physics and Bioengineering, UCL, Centre for Medical Image Computing (CMIC), London, WC1E 7JE, UK.
Med Phys. 2017 Sep;44(9):4573-4592. doi: 10.1002/mp.12320. Epub 2017 Jul 25.
To compare two methods of automatic breast segmentation with each other and with manual segmentation in a large subject cohort. To discuss the factors involved in selecting the most appropriate algorithm for automatic segmentation and, in particular, to investigate the appropriateness of overlap measures (e.g., Dice and Jaccard coefficients) as the primary determinant in algorithm selection.
Two methods of breast segmentation were applied to the task of calculating MRI breast density in 200 subjects drawn from the Avon Longitudinal Study of Parents and Children, a large cohort study with an MRI component. A semiautomated, bias-corrected, fuzzy C-means (BC-FCM) method was combined with morphological operations to segment the overall breast volume from in-phase Dixon images. The method makes use of novel, problem-specific insights. The resulting segmentation mask was then applied to the corresponding Dixon water and fat images, which were combined to give Dixon MRI density values. Contemporaneously acquired T - and T -weighted image datasets were analyzed using a novel and fully automated algorithm involving image filtering, landmark identification, and explicit location of the pectoral muscle boundary. Within the region found, fat-water discrimination was performed using an Expectation Maximization-Markov Random Field technique, yielding a second independent estimate of MRI density.
Images are presented for two individual women, demonstrating how the difficulty of the problem is highly subject-specific. Dice and Jaccard coefficients comparing the semiautomated BC-FCM method, operating on Dixon source data, with expert manual segmentation are presented. The corresponding results for the method based on T - and T -weighted data are slightly lower in the individual cases shown, but scatter plots and interclass correlations for the cohort as a whole show that both methods do an excellent job in segmenting and classifying breast tissue.
Epidemiological results demonstrate that both methods of automated segmentation are suitable for the chosen application and that it is important to consider a range of factors when choosing a segmentation algorithm, rather than focus narrowly on a single metric such as the Dice coefficient.
将两种自动乳房分割方法相互比较,并与大样本队列中的手动分割进行比较。讨论选择最合适的自动分割算法的相关因素,特别是研究重叠度量(例如,Dice 和 Jaccard 系数)作为算法选择的主要决定因素是否合适。
两种乳房分割方法应用于 200 名来自阿冯纵向研究父母和孩子(一项具有 MRI 成分的大型队列研究)的受试者的磁共振成像乳房密度计算任务中。一种半自动、偏置校正、模糊 C 均值(BC-FCM)方法与形态操作相结合,从同相位 Dixon 图像中分割整个乳房体积。该方法利用了新颖的、特定于问题的见解。然后将分割掩模应用于相应的 Dixon 水和脂肪图像,将它们组合以给出 Dixon MRI 密度值。同时获取的 T1 和 T2 加权图像数据集使用一种新颖的、全自动算法进行分析,该算法涉及图像滤波、地标识别和明确胸大肌边界的位置。在找到的区域内,使用期望最大化-马尔可夫随机场技术进行脂肪-水区分,得出 MRI 密度的第二个独立估计。
为两名女性个体提供图像,展示了问题的难度高度取决于个体。呈现了半自动 BC-FCM 方法(在 Dixon 源数据上运行)与专家手动分割之间的 Dice 和 Jaccard 系数比较结果。所示个体案例中基于 T1 和 T2 加权数据的方法的对应结果略低,但整个队列的散点图和组间相关系数表明,两种方法在分割和分类乳房组织方面都表现出色。
流行病学结果表明,两种自动分割方法都适用于所选应用,在选择分割算法时,重要的是要考虑一系列因素,而不是仅仅关注单一指标,如 Dice 系数。