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Automated fibroglandular tissue segmentation and volumetric density estimation in breast MRI using an atlas-aided fuzzy C-means method

机译:利用地图辅助模糊C-MERIC法自动化纤维群组织分割和体积密度估计乳房MRI

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Purpose: Breast magnetic resonance imaging (MRI) plays an important role in the clinical management of breast cancer. Studies suggest that the relative amount of fibroglandular (i.e., dense) tissue in the breast as quantified in MR images can be predictive of the risk for developing breast cancer, especially for high-risk women. Automated segmentation of the fibroglandular tissue and volumetric density estimation in breast MRI could therefore be useful for breast cancer risk assessment. Methods: In this work the authors develop and validate a fully automated segmentation algorithm, namely, an atlas-aided fuzzy C-means (FCM-Atlas) method, to estimate the volumetric amount of fibroglandular tissue in breast MRI. The FCM-Atlas is a 2D segmentation method working on a slice-by-slice basis. FCM clustering is first applied to the intensity space of each 2D MR slice to produce an initial voxelwise likelihood map of fibroglandular tissue. Then a prior learned fibroglandular tissue likelihood atlas is incorporated to refine the initial FCM likelihood map to achieve enhanced segmentation, from which the absolute volume of the fibroglandular tissue (|FGT|) and the relative amount (i.e., percentage) of the |FGT| relative to the whole breast volume (FGT%) are computed. The authors' method is evaluated by a representative dataset of 60 3D bilateral breast MRI scans (120 breasts) that span the full breast density range of the American College of Radiology Breast Imaging Reporting and Data System. The automated segmentation is compared to manual segmentation obtained by two experienced breast imaging radiologists. Segmentation performance is assessed by linear regression, Pearson's correlation coefficients, Student's paired t-test, and Dice's similarity coefficients (DSC). Results: The inter-reader correlation is 0.97 for FGT% and 0.95 for |FGT|. When compared to the average of the two readers' manual segmentation, the proposed FCM-Atlas method achieves a correlation of r = 0.92 for FGT% and r = 0.93 for |FGT|, and the automated segmentation is not statistically significantly different (p = 0.46 for FGT% and p = 0.55 for |FGT|). The bilateral correlation between left breasts and right breasts for the FGT% is 0.94, 0.92, and 0.95 for reader 1, reader 2, and the FCM-Atlas, respectively; likewise, for the |FGT|, it is 0.92, 0.92, and 0.93, respectively. For the spatial segmentation agreement, the automated algorithm achieves a DSC of 0.69 ± 0.1 when compared to reader 1 and 0.61 ± 0.1 for reader 2, respectively, while the DSC between the two readers' manual segmentation is 0.67 ± 0.15. Additional robustness analysis shows that the segmentation performance of the authors' method is stable both with respect to selecting different cases and to varying the number of cases needed to construct the prior probability atlas. The authors' results also show that the proposed FCM-Atlas method outperforms the commonly used two-cluster FCM-alone method. The authors' method runs at ~5 min for each 3D bilateral MR scan (56 slices) for computing the FGT% and |FGT|, compared to ~55 min needed for manual segmentation for the same purpose. Conclusions: The authors' method achieves robust segmentation and can serve as an efficient tool for processing large clinical datasets for quantifying the fibroglandular tissue content in breast MRI. It holds a great potential to support clinical applications in the future including breast cancer risk assessment.
机译:用途:乳腺磁共振成像(MRI)在乳腺癌的临床管理具有重要作用。研究表明,纤维腺的相对量在乳房(即,致密的)组织如在MR图像定量可以预测发展为乳腺癌的风险,尤其是对于高风险妇女。因此,乳腺MRI的纤维腺体组织和体积密度估计的自动分割可能是患乳腺癌的风险评估是有用的。方法:在这项工作中,作者开发和验证了完全自动化的分割算法,即,图册辅助模糊C均值(FCM-阿特拉斯)方法,来估计在乳腺MRI纤维腺体组织的体积量。的FCM-Atlas是一个2D分割方法对切片逐片的基础工作。 FCM聚类首先施加到每个2D MR切片的强度空间以产生纤维腺组织的初始voxelwise似然图。然后现有了解到纤维腺组织似然图谱被结合到细化初始FCM似然图,以实现增强的分割,从该纤维腺组织的绝对体积(| FGT |)和相对量(即,百分比)的| FGT |相对于整个乳房体积(FGT%)被计算。作者的方法由60层3D跨越美国放射学院乳腺成像报告和数据系统的整个乳房密度范围双侧乳房MRI扫描(120个乳房)的代表性数据集进行评估。的自动分割与由两位有经验的乳房成像的放射科医师获得的手工分割。分割性能是通过线性回归,Pearson相关系数,学生配对t检验,与骰子的相似系数(DSC)评价。结果:阅读器间相关性是0.97 FGT%和0.95 | FGT |。当相比,平均两个读者手动分割的,所提出的FCM-阿特拉斯方法实现R = 0.92的对FGT%和r = 0.93的相关性| FGT |,并且自动分割在统计上并不显著差异(p =为0.46%FGT和p = 0.55 | FGT |)。为FGT%左乳房和乳房右之间的双边相关性为0.94,0.92,和0.95分别读取器1,读取器2,和FCM-阿特拉斯,;同样,对于| FGT |,这是0.92,0.92,和0.93,分别。对于空间分割协议,相对于读取器1和用于分别读取器2,0.61±0.1当自动算法实现的0.69±0.1的DSC,而两个读者的手动分割之间的DSC是0.67±0.15。额外的鲁棒分析表明,该作者的方法的分割性能稳定既相对于选择不同的情况和不同构造的先验概率图谱所需的病例数。作者的研究结果还表明,该FCM-阿特拉斯方法优于常用的双集群FCM-单独方法。 FGT | |提交人在约5分钟,使每个3D双边MR扫描(56片),用于计算所述FGT%和方法的运行相比,所需的用于相同目的的手动分割〜55分钟。结论:作者的方法实现了鲁棒分割,并且可以充当用于处理大的数据集的临床用于量化在乳腺MRI的纤维腺组织含量的有效工具。它拥有巨大的潜力,以支持未来的临床应用,包括乳腺癌的风险评估。

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