Sayed Ahmed, Layne Ginger, Abraham Jame, Mukdadi Osama M
Biomedical Engineering Department, Misr University for Science &Technology, 6th of October City, Egypt.
Department of Radiology, West Virginia University Health Sciences Center, Morgantown, West Virginia, USA.
Ultrasound Med Biol. 2014 Jul;40(7):1490-502. doi: 10.1016/j.ultrasmedbio.2014.02.002. Epub 2014 Apr 24.
The goal of the study described here was to introduce new methods for the classification and visualization of human breast tumors using 3-D ultrasound elastography. A tumor's type, shape and size are key features that can help the physician to decide the sort and extent of necessary treatment. In this work, tumor type, being either benign or malignant, was classified non-invasively for nine volunteer patients. The classification was based on estimating four parameters that reflect the tumor's non-linear biomechanical behavior, under multi-compression levels. Tumor prognosis using non-linear elastography was confirmed with biopsy as a gold standard. Three tissue classification parameters were found to be statistically significant with a p-value < 0.05, whereas the fourth non-linear parameter was highly significant, having a p-value < 0.001. Furthermore, each breast tumor's shape and size were estimated in vivo using 3-D elastography, and were enhanced using interactive segmentation. Segmentation with level sets was used to isolate the stiff tumor from the surrounding soft tissue. Segmentation also provided a reliable means to estimate tumors volumes. Four volumetric strains were investigated: the traditional normal axial strain, the first principal strain, von Mises strain and maximum shear strain. It was noted that these strains can provide varying degrees of boundary enhancement to the stiff tumor in the constructed elastograms. The enhanced boundary improved the performance of the segmentation process. In summary, the proposed methods can be employed as a 3-D non-invasive tool for characterization of breast tumors, and may provide early prognosis with minimal pain, as well as diminish the risk of late-stage breast cancer.
本文所述研究的目标是引入使用三维超声弹性成像对人类乳腺肿瘤进行分类和可视化的新方法。肿瘤的类型、形状和大小是关键特征,可帮助医生确定必要治疗的种类和范围。在这项工作中,对九名志愿者患者的肿瘤类型(良性或恶性)进行了非侵入性分类。该分类基于在多压缩水平下估计反映肿瘤非线性生物力学行为的四个参数。以活检作为金标准,证实了使用非线性弹性成像进行肿瘤预后评估。发现三个组织分类参数具有统计学意义,p值<0.05,而第四个非线性参数具有高度统计学意义,p值<0.001。此外,使用三维弹性成像在体内估计每个乳腺肿瘤的形状和大小,并通过交互式分割进行增强。使用水平集分割将坚硬的肿瘤与周围的软组织分离。分割还提供了一种可靠的方法来估计肿瘤体积。研究了四种体积应变:传统的正常轴向应变、第一主应变、冯·米塞斯应变和最大剪应变。值得注意的是,这些应变可以在构建的弹性图中为坚硬的肿瘤提供不同程度的边界增强。增强的边界提高了分割过程的性能。总之,所提出的方法可作为一种三维非侵入性工具用于乳腺肿瘤的特征描述,并可能以最小的疼痛提供早期预后,以及降低晚期乳腺癌的风险。