用于乳腺癌辅助诊断的自动三维超声图像分割

Yuxin Wang, Peng Gu, Won-Mean Lee, M. Roubidoux, S. Du, J. Yuan, Xueding Wang, P. Carson
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引用次数: 0

摘要

超声图像的功能组织分割对乳腺癌的临床诊断具有重要意义。然而,许多研究发现只分割感兴趣的肿块,而不是所有的主要组织。超声判读中的差异和不一致需要一种自动分割方法,使结果与操作员无关。此外,人工分割整个三维(3D)超声体积耗时,资源密集,临床上不切实际。在这里,我们提出了一种自动算法,将3D超声体积分割为三种主要的组织类型:囊肿/肿块、脂肪组织和纤维腺组织。为了验证该方法的有效性和一致性,将该方法应用于21例全乳超声数据库。实验结果表明,该方法不仅能正确区分脂肪和非脂肪组织,而且对囊肿/肿块的分类也有较好的效果。将自动分割方法与人工分割方法的密度评估结果进行对比,结果一致性较好,准确率为85.7%。使用重叠比对相应的组织体积进行定量比较,得出的平均相似度为74.54%,与MRI脑分割结果一致。因此,我们提出的方法作为一种自动化方法显示出巨大的潜力,可以将3D整个乳房超声体积分割成功能不同的组织,这可能有助于纠正超声速度的声音畸变,并有助于基于密度的乳腺癌预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated 3D ultrasound image segmentation for assistant diagnosis of breast cancer
Segmentation of an ultrasound image into functional tissues is of great importance to clinical diagnosis of breast cancer. However, many studies are found to segment only the mass of interest and not all major tissues. Differences and inconsistencies in ultrasound interpretation call for an automated segmentation method to make results operator-independent. Furthermore, manual segmentation of entire three-dimensional (3D) ultrasound volumes is time-consuming, resource-intensive, and clinically impractical. Here, we propose an automated algorithm to segment 3D ultrasound volumes into three major tissue types: cyst/mass, fatty tissue, and fibro-glandular tissue. To test its efficacy and consistency, the proposed automated method was employed on a database of 21 cases of whole breast ultrasound. Experimental results show that our proposed method not only distinguishes fat and non-fat tissues correctly, but performs well in classifying cyst/mass. Comparison of density assessment between the automated method and manual segmentation demonstrates good consistency with an accuracy of 85.7%. Quantitative comparison of corresponding tissue volumes, which uses overlap ratio, gives an average similarity of 74.54%, consistent with values seen in MRI brain segmentations. Thus, our proposed method exhibits great potential as an automated approach to segment 3D whole breast ultrasound volumes into functionally distinct tissues that may help to correct ultrasound speed of sound aberrations and assist in density based prognosis of breast cancer.
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