Institute of Photonics and Photon-Technology, Northwest University, Xi'an, Shaanxi 710069, China.
Institute of Photonics and Photon-Technology, Northwest University, Xi'an, Shaanxi 710069, China.
J Photochem Photobiol B. 2021 Sep;222:112280. doi: 10.1016/j.jphotobiol.2021.112280. Epub 2021 Aug 5.
Confocal Raman microspectral imaging (CRMI) has been used to detect the spectra-pathological features of ductal carcinoma in situ (DCIS) and lobular hyperplasia (LH) compared with the heathy (H) breast tissue. A total of 15-20 spectra were measured from healthy tissue, LH tissue, and DCIS tissue. One-way ANOVA and Tukey's honest significant difference (HSD) post hoc multiple tests were used to evaluate the peak intensity variations in all three tissue types. Besides that, linear discrimination analysis (LDA) algorithm was adopted in combination with principal component analysis (PCA) to classify the spectral features from tissues at different stages along the continuum to breast cancer. Moreover, by using the point-by-point scanning methodology, spectral datasets were obtained and reconstructed for further pathologic visualization by multivariate imaging methods, including K-mean clustering analysis (KCA) and PCA. Univariate imaging of individual Raman bands was also used to describe the differences in the distribution of specific molecular components in the scanning area. After a detailed spectral feature analysis from 800 to 1800 cm and 2800 to 3000 cm for all the three tissue types, the histopathological features were visualized based on the content and structural variations of lipids, proteins, phenylalanine, carotenoids and collagen, as well as the calcification phenomena. The results obtained not only allowed a detailed Raman spectroscopy-based understanding of the malignant transformation process of breast cancer, but also provided a solid spectral data support for developing Raman based breast cancer clinical diagnostic techniques.
共聚焦拉曼微光谱成像(CRMI)已被用于检测导管原位癌(DCIS)和小叶增生(LH)与健康(H)乳腺组织的光谱-病理特征。从健康组织、LH 组织和 DCIS 组织中测量了总共 15-20 个光谱。采用单因素方差分析(ANOVA)和 Tukey 的 HSD 事后多重检验来评估三种组织类型中峰强度的变化。除此之外,还采用线性判别分析(LDA)算法结合主成分分析(PCA)来对不同阶段的组织光谱特征进行分类,以沿着连续体向乳腺癌发展。此外,通过使用逐点扫描方法,获得了光谱数据集,并通过多元成像方法(包括 K-均值聚类分析(KCA)和 PCA)进行进一步的病理可视化。还使用了单个拉曼波段的单变量成像来描述扫描区域中特定分子成分分布的差异。对所有三种组织类型的 800 到 1800cm 和 2800 到 3000cm 范围进行了详细的光谱特征分析后,基于脂质、蛋白质、苯丙氨酸、类胡萝卜素和胶原蛋白的含量和结构变化以及钙化现象,对组织的组织病理学特征进行了可视化。所得到的结果不仅允许基于拉曼光谱的对乳腺癌恶性转化过程进行详细的理解,还为开发基于拉曼的乳腺癌临床诊断技术提供了可靠的光谱数据支持。