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本文引用的文献

1
Cancer statistics, 2018.癌症统计数据,2018 年。
CA Cancer J Clin. 2018 Jan;68(1):7-30. doi: 10.3322/caac.21442. Epub 2018 Jan 4.
2
Supplemental Breast MR Imaging Screening of Women with Average Risk of Breast Cancer.补充乳腺磁共振成像筛查对乳腺癌平均风险女性。
Radiology. 2017 May;283(2):361-370. doi: 10.1148/radiol.2016161444. Epub 2017 Feb 21.
3
Using deep learning to segment breast and fibroglandular tissue in MRI volumes.利用深度学习对磁共振成像(MRI)容积中的乳腺和纤维腺组织进行分割。
Med Phys. 2017 Feb;44(2):533-546. doi: 10.1002/mp.12079.
4
Breast MRI background parenchymal enhancement (BPE) correlates with the risk of breast cancer.乳腺磁共振成像背景实质强化(BPE)与乳腺癌风险相关。
Magn Reson Imaging. 2016 Feb;34(2):173-6. doi: 10.1016/j.mri.2015.10.014. Epub 2015 Oct 24.
5
Quantitative assessment of background parenchymal enhancement in breast MRI predicts response to risk-reducing salpingo-oophorectomy: preliminary evaluation in a cohort of BRCA1/2 mutation carriers.乳腺MRI中背景实质强化的定量评估可预测降低风险的输卵管卵巢切除术的反应:BRCA1/2突变携带者队列的初步评估
Breast Cancer Res. 2015 May 19;17:67. doi: 10.1186/s13058-015-0577-0.
6
Automated breast-region segmentation in the axial breast MR images.轴向乳腺磁共振图像中的乳腺区域自动分割
Comput Biol Med. 2015 Jul;62:55-64. doi: 10.1016/j.compbiomed.2015.04.001. Epub 2015 Apr 11.
7
Automated breast segmentation of fat and water MR images using dynamic programming.使用动态规划对脂肪和水磁共振图像进行自动乳腺分割。
Acad Radiol. 2015 Feb;22(2):139-48. doi: 10.1016/j.acra.2014.09.015.
8
Breast segmentation and density estimation in breast MRI: a fully automatic framework.乳腺MRI中的乳腺分割与密度估计:一个全自动框架。
IEEE J Biomed Health Inform. 2015 Jan;19(1):349-57. doi: 10.1109/JBHI.2014.2311163.
9
Automated fibroglandular tissue segmentation and volumetric density estimation in breast MRI using an atlas-aided fuzzy C-means method.基于图谱辅助模糊 C 均值法的乳腺 MRI 中纤维腺体组织自动分割及容积密度估测
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Template-based automatic breast segmentation on MRI by excluding the chest region.基于模板的自动 MRI 乳房分割,排除胸部区域。
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基于密集深度场建模和局部自适应的矢状位与轴位乳腺 MRI 中三维全乳分割用于检测胸壁线。

Three-Dimensional Whole Breast Segmentation in Sagittal and Axial Breast MRI With Dense Depth Field Modeling and Localized Self-Adaptation for Chest-Wall Line Detection.

出版信息

IEEE Trans Biomed Eng. 2019 Jun;66(6):1567-1579. doi: 10.1109/TBME.2018.2875955. Epub 2018 Oct 15.

DOI:10.1109/TBME.2018.2875955
PMID:30334748
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6684022/
Abstract

OBJECTIVE

Whole breast segmentation is an essential task in quantitative analysis of breast MRI for cancer risk assessment. It is challenging, mainly, because the chest-wall line (CWL) can be very difficult to locate due to its spatially varying appearance-caused by both nature and imaging artifacts-and neighboring distracting structures. This paper proposes an automatic three-dimensional (3-D) segmentation method, termed DeepSeA, of whole breast for breast MRI.

METHODS

DeepSeA distinguishes itself from previous methods in three aspects. First, it reformulates the challenging problem of CWL localization as an equivalent problem that optimizes a smooth depth field and so fully utilizes the CWL's 3-D continuity. Second, it employs a localized self-adapting algorithm to adjust to the CWL's spatial variation. Third, it applies to breast MRI data in both sagittal and axial orientations equally well without training.

RESULTS

A representative set of 99 breast MRI scans with varying imaging protocols is used for evaluation. Experimental results with expert-outlined reference standard show that DeepSeA can segment breasts accurately: the average Dice similarity coefficients, sensitivity, specificity, and CWL deviation error are 96.04%, 97.27%, 98.77%, and 1.63 mm, respectively. In addition, the configuration of DeepSeA is generalized based on experimental findings, for application to broad prospective data.

CONCLUSION

A fully automatic method-DeepSeA-for whole breast segmentation in sagittal and axial breast MRI is reported.

SIGNIFICANCE

DeepSeA can facilitate cancer risk assessment with breast MRI.

摘要

目的

全乳分割是乳腺癌磁共振成像定量分析中评估癌症风险的一项基本任务。主要挑战在于,由于胸部轮廓线(CWL)的空间变化,定位 CWL 非常困难,这是由自然和成像伪影以及相邻的干扰结构造成的。本文提出了一种自动三维(3-D)分割方法,称为 DeepSeA,用于磁共振成像的全乳分割。

方法

DeepSeA 在三个方面区别于以前的方法。首先,它将 CWL 定位的挑战性问题重新表述为优化平滑深度场的等效问题,从而充分利用 CWL 的 3-D 连续性。其次,它采用局部自适应算法来调整 CWL 的空间变化。第三,它适用于矢状和轴向方向的磁共振成像数据,无需训练。

结果

使用具有不同成像方案的 99 例乳腺磁共振成像扫描的代表性数据集进行评估。与专家勾画参考标准的实验结果表明,DeepSeA 可以准确地分割乳房:平均 Dice 相似系数、灵敏度、特异性和 CWL 偏差误差分别为 96.04%、97.27%、98.77%和 1.63mm。此外,根据实验结果对 DeepSeA 的配置进行了推广,以应用于广泛的前瞻性数据。

结论

本文报告了一种用于矢状位和轴向位乳腺磁共振成像的全乳自动分割方法 DeepSeA。

意义

DeepSeA 可以促进乳腺癌磁共振成像的癌症风险评估。