Sutphin Corey, Olson Eric, Motai Yuichi, Lee Suk Jin, Kim Jae G, Takabe Kazuaki
1Department of Electrical and Computer EngineeringVirginia Commonwealth UniversityRichmondVA23284USA.
2TSYS School of Computer ScienceColumbus State UniversityColumbusGA31907USA.
IEEE J Transl Eng Health Med. 2019 Aug 19;7:4300312. doi: 10.1109/JTEHM.2019.2935721. eCollection 2019.
Noncancerous breast tissue and cancerous breast tissue have different elastic properties. In particular, cancerous breast tumors are stiff when compared to the noncancerous surrounding tissue. This difference in elasticity can be used as a means for detection through the method of elastographic tomosynthesis by means of physical modulation. This paper deals with a method to visualize elasticity of soft tissues, particularly breast tissues, via x-ray tomosynthesis. X-ray tomosynthesis is now used to visualize breast tissues with better resolution than the conventional single-shot mammography. The advantage of X-ray tomosynthesis over X-ray CT is that fewer projections are needed than CT to perform the reconstruction, thus radiation exposure and cost are both reduced. Two phantoms were used for the testing of this method, a physical phantom and an in silico phantom. The standard root mean square error in the tomosynthesis for the physical phantom was 2.093 and the error in the in silico phantom was negligible. The elastographs were created through the use of displacement and strain graphing. A Gaussian Mixture Model with an expectation-maximization clustering algorithm was applied in three dimensions with an error of 16.667%. The results of this paper have been substantial when using phantom data. There are no equivalent comparisons yet in 3D x-ray elastographic tomosynthesis. Tomosynthesis with and without physical modulation in the 3D elastograph can identify feature groupings used for biopsy. The studies have potential to be applied to human test data used as a guide for biopsy to improve accuracy of diagnosis results. Further research on this topic could prove to yield new techniques for human patient diagnosis purposes.
非癌性乳腺组织和癌性乳腺组织具有不同的弹性特性。特别是,与周围的非癌性组织相比,癌性乳腺肿瘤质地坚硬。这种弹性差异可通过物理调制的弹性断层合成方法用作检测手段。本文探讨了一种通过X射线断层合成来可视化软组织(特别是乳腺组织)弹性的方法。现在,X射线断层合成用于可视化乳腺组织,其分辨率比传统的单次乳腺X线摄影更好。X射线断层合成相对于X射线CT的优势在于,与CT相比,进行重建所需的投影更少,从而降低了辐射暴露和成本。使用了两个模型来测试该方法,一个物理模型和一个计算机模拟模型。物理模型在断层合成中的标准均方根误差为2.093,计算机模拟模型中的误差可忽略不计。通过使用位移和应变绘图创建了弹性成像图。应用了具有期望最大化聚类算法的高斯混合模型,在三维中误差为16.667%。使用模型数据时,本文的结果相当可观。在三维X射线弹性断层合成中尚无等效的比较。三维弹性成像图中有无物理调制的断层合成可以识别用于活检的特征分组。这些研究有可能应用于作为活检指南的人体测试数据,以提高诊断结果的准确性。对该主题的进一步研究可能会产生用于人类患者诊断目的的新技术。