Wang James Z, Liang Xiaoping, Zhang Qizhi, Fajardo Laurie L, Jiang Huabei
Clemson University, School of Computing, Clemson, South Carolina 29634, USA.
J Biomed Opt. 2008 Jul-Aug;13(4):044001. doi: 10.1117/1.2956662.
An automated procedure for detecting breast cancer using near-infrared (NIR) tomographic images is presented. This classification procedure automatically extracts attributes from three imaging parameters obtained by an NIR imaging system. These parameters include tissue absorption and reduced scattering coefficients, as well as a tissue refractive index obtained by a phase-contrast-based reconstruction approach. A support vector machine (SVM) classifier is utilized to distinguish the malignant from the benign lesions using the automatically extracted attributes. The classification results of in vivo tomographic images from 35 breast masses using absorption, scattering, and refractive index attributes demonstrate high sensitivity, specificity, and overall accuracy of 81.8%, 91.7%, and 88.6% respectively, while the classification sensitivity, specificity, and overall accuracy are 63.6%, 83.3%, and 77.1%, respectively, when only the absorption and scattering attributes are used. Furthermore, the automated classification procedure provides significantly improved specificity and overall accuracy for breast cancer detection compared to those by an experienced technician through visual examination.
本文提出了一种使用近红外(NIR)断层图像检测乳腺癌的自动化程序。该分类程序会自动从NIR成像系统获得的三个成像参数中提取属性。这些参数包括组织吸收系数和约化散射系数,以及通过基于相衬的重建方法获得的组织折射率。利用支持向量机(SVM)分类器,通过自动提取的属性来区分恶性病变和良性病变。使用吸收、散射和折射率属性对35个乳腺肿块的体内断层图像进行分类的结果表明,其灵敏度、特异性和总体准确率分别为81.8%、91.7%和88.6%,而仅使用吸收和散射属性时,分类的灵敏度、特异性和总体准确率分别为63.6%、83.3%和77.1%。此外,与经验丰富的技术人员通过目视检查进行乳腺癌检测相比,该自动分类程序在特异性和总体准确率方面有显著提高。