Lakshmanan Manu N, Greenberg Joel A, Samei Ehsan, Kapadia Anuj J
National Institutes of Health Clinical Center , Department of Radiology and Imaging Sciences, Bethesda, Maryland, United States.
Duke University , Department of Electrical and Computer Engineering, Durham, North Carolina, United States.
J Med Imaging (Bellingham). 2017 Jan;4(1):013505. doi: 10.1117/1.JMI.4.1.013505. Epub 2017 Mar 7.
Although transmission-based x-ray imaging is the most commonly used imaging approach for breast cancer detection, it exhibits false negative rates higher than 15%. To improve cancer detection accuracy, x-ray coherent scatter computed tomography (CSCT) has been explored to potentially detect cancer with greater consistency. However, the 10-min scan duration of CSCT limits its possible clinical applications. The coded aperture coherent scatter spectral imaging (CACSSI) technique has been shown to reduce scan time through enabling single-angle imaging while providing high detection accuracy. Here, we use Monte Carlo simulations to test analytical optimization studies of the CACSSI technique, specifically for detecting cancer in breast samples. An anthropomorphic breast tissue phantom was modeled, a CACSSI imaging system was virtually simulated to image the phantom, a diagnostic voxel classification algorithm was applied to all reconstructed voxels in the phantom, and receiver-operator characteristics analysis of the voxel classification was used to evaluate and characterize the imaging system for a range of parameters that have been optimized in a prior analytical study. The results indicate that CACSSI is able to identify the distribution of cancerous and healthy tissues (i.e., fibroglandular, adipose, or a mix of the two) in tissue samples with a cancerous voxel identification area-under-the-curve of 0.94 through a scan lasting less than 10 s per slice. These results show that coded aperture scatter imaging has the potential to provide scatter images that automatically differentiate cancerous and healthy tissue within samples. Furthermore, the results indicate potential CACSSI imaging system configurations for implementation in subsequent imaging development studies.
尽管基于透射的X射线成像仍是乳腺癌检测中最常用的成像方法,但其假阴性率高于15%。为提高癌症检测的准确性,人们探索了X射线相干散射计算机断层扫描(CSCT),以期能更稳定地检测出癌症。然而,CSCT长达10分钟的扫描时间限制了其临床应用的可能性。编码孔径相干散射光谱成像(CACSSI)技术已被证明能够通过单角度成像缩短扫描时间,同时保持较高的检测精度。在此,我们利用蒙特卡洛模拟对CACSSI技术的分析优化研究进行测试,特别是针对乳腺样本中的癌症检测。构建了一个仿人乳腺组织体模,虚拟模拟了一个CACSSI成像系统对该体模进行成像,将一种诊断体素分类算法应用于体模中所有重建的体素,并利用体素分类的接收者操作特征分析,针对先前分析研究中已优化的一系列参数评估和表征该成像系统。结果表明,通过每切片小于10秒的扫描,CACSSI能够识别组织样本中癌组织和健康组织(即纤维腺体组织、脂肪组织或两者混合)的分布情况,癌性体素识别曲线下面积为0.94。这些结果表明,编码孔径散射成像有潜力提供能自动区分样本中癌组织和健康组织的散射图像。此外,研究结果还指出了后续成像开发研究中可能采用的CACSSI成像系统配置。