TY - JOUR
T1 - Raman spectroscopy and machine learning for the classification of breast cancers
AU - Zhang, Lihao
AU - Li, Chengjian
AU - Peng, Di
AU - Yi, Xiaofei
AU - He, Shuai
AU - Liu, Fengxiang
AU - Zheng, Xiangtai
AU - Huang, Wei E.
AU - Zhao, Liang
AU - Huang, Xia
N1 - Funding Information:
This work was supported by grant from the Chinese Academy of Sciences under Award Number ZDKYYQ20200004, Foundation of Shanghai Municipal Commission of Science and Technology (No.20ZR1441800, NO.21S21901700), Foundation of Shanghai Baoshan Commission of Science and Technology (No.19-E-2). Also acknowledges financial support from Jiangsu Shuangchuang Doctor Award.
Publisher Copyright:
© 2021 Elsevier B.V.
PY - 2021/8/21
Y1 - 2021/8/21
N2 - Breast cancer is a major health threat for women. The drug responses associated with different breast cancer subtypes have obvious effects on therapeutic outcomes; therefore, the accurate classification of breast cancer subtypes is critical. Breast cancer subtype classification has recently been examined using various methods, and Raman spectroscopy has emerged as an effective technique that can be used for noninvasive breast cancer analysis. However, the accurate and rapid classification of breast cancer subtypes currently requires a great deal of effort and experience with the processing and analysis of Raman spectra data. Here, we adopted Raman spectroscopy and machine learning techniques to simplify and accelerate the process used to distinguish normal from breast cancer cells and classify breast cancer subtypes. Raman spectra were obtained from cultured breast cancer cell lines, and the data were analyzed by two machine learning algorithms: principal component analysis (PCA)–discriminant function analysis (DFA) and PCA–support vector machine (SVM). The accuracies with which these two algorithms were able to distinguish normal breast cells from breast cancer cells were both greater than 97%, and the accuracies of breast cancer subtype classification for both algorithms were both greater than 92%. Moreover, our results showed evidence to support the use of characteristic Raman spectral features as cancer cell biomarkers, such as the intensity of intrinsic Raman bands, which increased in cancer cells. Raman spectroscopy combined with machine learning techniques provides a rapid method for breast cancer analysis able to reveal differences in intracellular compositions and molecular structures among subtypes.
AB - Breast cancer is a major health threat for women. The drug responses associated with different breast cancer subtypes have obvious effects on therapeutic outcomes; therefore, the accurate classification of breast cancer subtypes is critical. Breast cancer subtype classification has recently been examined using various methods, and Raman spectroscopy has emerged as an effective technique that can be used for noninvasive breast cancer analysis. However, the accurate and rapid classification of breast cancer subtypes currently requires a great deal of effort and experience with the processing and analysis of Raman spectra data. Here, we adopted Raman spectroscopy and machine learning techniques to simplify and accelerate the process used to distinguish normal from breast cancer cells and classify breast cancer subtypes. Raman spectra were obtained from cultured breast cancer cell lines, and the data were analyzed by two machine learning algorithms: principal component analysis (PCA)–discriminant function analysis (DFA) and PCA–support vector machine (SVM). The accuracies with which these two algorithms were able to distinguish normal breast cells from breast cancer cells were both greater than 97%, and the accuracies of breast cancer subtype classification for both algorithms were both greater than 92%. Moreover, our results showed evidence to support the use of characteristic Raman spectral features as cancer cell biomarkers, such as the intensity of intrinsic Raman bands, which increased in cancer cells. Raman spectroscopy combined with machine learning techniques provides a rapid method for breast cancer analysis able to reveal differences in intracellular compositions and molecular structures among subtypes.
KW - Breast cancer
KW - Cancer diagnosis
KW - Cancer subtype classification
KW - Machine learning
KW - Raman spectroscopy
UR - http://www.scopus.com/inward/record.url?scp=85113638355&partnerID=8YFLogxK
U2 - 10.1016/j.saa.2021.120300
DO - 10.1016/j.saa.2021.120300
M3 - Article
AN - SCOPUS:85113638355
SN - 1386-1425
VL - 264
JO - Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy
JF - Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy
M1 - 120300
ER -