Yang Yaliang, Li Fuhai, Gao Liang, Wang Zhiyong, Thrall Michael J, Shen Steven S, Wong Kelvin K, Wong Stephen T C
Biomed Opt Express. 2011 Aug 1;2(8):2160-74. doi: 10.1364/BOE.2.002160. Epub 2011 Jul 5.
We present a label-free, chemically-selective, quantitative imaging strategy to identify breast cancer and differentiate its subtypes using coherent anti-Stokes Raman scattering (CARS) microscopy. Human normal breast tissue, benign proliferative, as well as in situ and invasive carcinomas, were imaged ex vivo. Simply by visualizing cellular and tissue features appearing on CARS images, cancerous lesions can be readily separated from normal tissue and benign proliferative lesion. To further distinguish cancer subtypes, quantitative disease-related features, describing the geometry and distribution of cancer cell nuclei, were extracted and applied to a computerized classification system. The results show that in situ carcinoma was successfully distinguished from invasive carcinoma, while invasive ductal carcinoma (IDC) and invasive lobular carcinoma were also distinguished from each other. Furthermore, 80% of intermediate-grade IDC and 85% of high-grade IDC were correctly distinguished from each other. The proposed quantitative CARS imaging method has the potential to enable rapid diagnosis of breast cancer.
我们提出了一种无标记、化学选择性的定量成像策略,用于使用相干反斯托克斯拉曼散射(CARS)显微镜识别乳腺癌并区分其亚型。对人正常乳腺组织、良性增生以及原位癌和浸润性癌进行了离体成像。仅通过观察CARS图像上出现的细胞和组织特征,癌性病变就能很容易地与正常组织和良性增生性病变区分开来。为了进一步区分癌症亚型,提取了描述癌细胞核几何形状和分布的与疾病相关的定量特征,并将其应用于计算机分类系统。结果表明,原位癌成功地与浸润性癌区分开来,浸润性导管癌(IDC)和浸润性小叶癌也相互区分开来。此外,80%的中级别IDC和85%的高级别IDC也能正确区分。所提出的定量CARS成像方法有可能实现乳腺癌的快速诊断。