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基于机器学习的医学乳房超声图像分割。

Medical breast ultrasound image segmentation by machine learning.

机构信息

Department of Electronic Science and Engineering, Nanjing University, Nanjing 210093, China.

Department of Electronic Science and Engineering, Nanjing University, Nanjing 210093, China.

出版信息

Ultrasonics. 2019 Jan;91:1-9. doi: 10.1016/j.ultras.2018.07.006. Epub 2018 Jul 18.

DOI:10.1016/j.ultras.2018.07.006
PMID:30029074
Abstract

Breast cancer is the most commonly diagnosed cancer, which alone accounts for 30% all new cancer diagnoses for women, posing a threat to women's health. Segmentation of breast ultrasound images into functional tissues can aid tumor localization, breast density measurement, and assessment of treatment response, which is important to the clinical diagnosis of breast cancer. However, manually segmenting the ultrasound images, which is skill and experience dependent, would lead to a subjective diagnosis; in addition, it is time-consuming for radiologists to review hundreds of clinical images. Therefore, automatic segmentation of breast ultrasound images into functional tissues has received attention in recent years, amidst the more numerous studies of detection and segmentation of masses. In this paper, we propose to use convolutional neural networks (CNNs) for segmenting breast ultrasound images into four major tissues: skin, fibroglandular tissue, mass, and fatty tissue, on three-dimensional (3D) breast ultrasound images. Quantitative metrics for evaluation of segmentation results including Accuracy, Precision, Recall, and F1, all reached over 80%, which indicates that the method proposed has the capacity to distinguish functional tissues in breast ultrasound images. Another metric called the Jaccard similarity index (JSI) yields an 85.1% value, outperforming our previous study using the watershed algorithm with 74.54% JSI value. Thus, our proposed method might have the potential to provide the segmentations necessary to assist the clinical diagnosis of breast cancer and improve imaging in other modes in medical ultrasound.

摘要

乳腺癌是最常见的癌症,仅其单独诊断就占所有女性新癌症诊断的 30%,对女性健康构成威胁。将乳房超声图像分割为功能性组织可以辅助肿瘤定位、乳房密度测量和治疗反应评估,这对乳腺癌的临床诊断很重要。然而,手动分割超声图像依赖于技能和经验,可能会导致主观诊断;此外,放射科医生审查数百张临床图像非常耗时。因此,近年来,在对肿块进行更多的检测和分割研究中,自动分割乳房超声图像为功能性组织引起了关注。在本文中,我们提出使用卷积神经网络(CNN)对三维(3D)乳房超声图像中的皮肤、纤维腺体组织、肿块和脂肪组织这四种主要组织进行分割。评估分割结果的定量指标包括准确率、精确率、召回率和 F1,均达到 80%以上,表明所提出的方法有能力区分乳房超声图像中的功能性组织。另一个称为 Jaccard 相似性指数(JSI)的指标得分为 85.1%,优于我们之前使用分水岭算法的研究,其 JSI 值为 74.54%。因此,我们提出的方法可能有潜力提供必要的分割,以辅助乳腺癌的临床诊断,并改善医学超声中的其他模式的成像。

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