Vohra Nagma, Chavez Tanny, Troncoso Joel R, Rajaram Narasimhan, Wu Jingxian, Coan Patricia N, Jackson Todd A, Bailey Keith, El-Shenawee Magda
University of Arkansas, Bell Engineering Center, Department of Electrical Engineering, Fayetteville, Arkansas, United States.
University of Arkansas, Bell Engineering Center, Department of Biomedical Engineering, Fayetteville, Arkansas, United States.
J Med Imaging (Bellingham). 2021 Mar;8(2):023504. doi: 10.1117/1.JMI.8.2.023504. Epub 2021 Apr 26.
The objective of this study is to quantitatively evaluate terahertz (THz) imaging for differentiating cancerous from non-cancerous tissues in mammary tumors developed in response to injection of N-ethyl-N-nitrosourea (ENU) in Sprague Dawley rats. While previous studies have investigated the biology of mammary tumors of this model, the current work is the first study to employ an imaging modality to visualize these tumors. A pulsed THz imaging system is utilized to experimentally collect the time-domain reflection signals from each pixel of the rat's excised tumor. A statistical segmentation algorithm based on the expectation-maximization (EM) classification method is implemented to quantitatively assess the obtained THz images. The model classification of cancer is reported in terms of the receiver operating characteristic (ROC) curves and the areas under the curves. The obtained low-power microscopic images of 17 ENU-rat tumor sections exhibited the presence of healthy connective tissue adjacent to cancerous tissue. The results also demonstrated that high reflection THz signals were received from cancerous compared with non-cancerous tissues. Decent tumor classification was achieved using the EM method with values ranging from 83% to 96% in fresh tissues and 89% to 96% in formalin-fixed paraffin-embedded tissues. The proposed ENU breast tumor model of Sprague Dawley rats showed a potential to obtain cancerous tissues, such as human breast tumors, adjacent to healthy tissues. The implemented EM classification algorithm quantitatively demonstrated the ability of THz imaging in differentiating cancerous from non-cancerous tissues.
本研究的目的是定量评估太赫兹(THz)成像技术,以区分经注射N-乙基-N-亚硝基脲(ENU)的斯普拉格-道利大鼠所产生乳腺肿瘤中的癌组织与非癌组织。虽然之前的研究已对该模型乳腺肿瘤的生物学特性进行了调查,但目前的工作是首次采用成像方式来可视化这些肿瘤。利用脉冲太赫兹成像系统,通过实验收集大鼠切除肿瘤每个像素的时域反射信号。实施基于期望最大化(EM)分类方法的统计分割算法,以定量评估所获得的太赫兹图像。根据接收器操作特性(ROC)曲线及曲线下面积报告癌症的模型分类情况。所获得的17个ENU大鼠肿瘤切片的低倍显微镜图像显示,癌组织附近存在健康结缔组织。结果还表明,与非癌组织相比,癌组织接收到的太赫兹高反射信号更多。使用EM方法实现了良好的肿瘤分类,新鲜组织中的分类值范围为83%至96%,福尔马林固定石蜡包埋组织中的分类值范围为89%至96%。所提出的斯普拉格-道利大鼠ENU乳腺肿瘤模型显示出获取与健康组织相邻的癌组织(如人类乳腺肿瘤)的潜力。所实施的EM分类算法定量证明了太赫兹成像技术区分癌组织与非癌组织的能力。