4.7 Article

Raman spectroscopy and machine learning for the classification of esophageal squamous carcinoma

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.saa.2022.121654

Keywords

Esophageal squamous cell carcinoma; Raman spectroscopy; Classification; Machine learning; Diagnosis

Categories

Funding

  1. Service Industry Innovation Discipline Group Construction of Shanxi Province
  2. Key medical research project of science and technology innovation plan of Shanxi Provincial Health Commission-Key research projects [2020XM17 [2021], 2020TD1 [2021]]
  3. Medical Science and Technology Innovation Team of science and technology Innovation plan of Shanxi Provincial Health Commission [9]
  4. West China Hospital, Sichuan University [2018HXFH020]

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This study proposed a novel and effective noninvasive Raman spectroscopy technique for diagnosing and classifying esophageal squamous cell carcinoma (ESCC). By analyzing Raman spectral data using machine learning algorithms, different types of ESCC cells and tissues can be accurately differentiated. The study revealed the Raman spectral features related to clinical pathological diagnosis.
Early diagnosis of esophageal squamous cell carcinoma (ESCC), a common malignant tumor with a low overall survival rate due to metastasis and recurrence, is critical for effective treatment and improved prognosis. Raman spectroscopy, an advanced detection technology for esophageal cancer, was developed to improve diagnosis sensitivity, specificity, and accuracy. This study proposed a novel, effective, and noninvasive Raman spectros-copy technique to differentiate and classify ESCC cell lines. Seven ESCC cell lines and tissues of an ESCC patient with staging of T3N1M0 and T3N2M0 at low and high differentiation levels were investigated through Raman spectroscopy. Raman spectral data analysis was performed with four machine learning algorithms, namely principal components analysis (PCA)- linear discriminant analysis (LDA), PCA-eXtreme gradient boosting (XGB), PCA- support vector machine (SVM), and PCA- (LDA, XGB, SVM)-stacked Gradient Boosting Machine (GBM). Four machine learning algorithms were able to classifiy ESCC cell subtypes from normal esophageal cells. The PCA-XGB model achieved an overall predictive accuracy of 85% for classifying ESCC and adjacent tissues. Moreover, an overall predictive accuracy of 90.3% was achieved in distinguishing low differentiation and high differentiation ESCC tissues with the same stage when PCA-LDA, XGM, and SVM models were combined. This study illustrated the Raman spectral traits of ESCC cell lines and esophageal tissues related to clinical patho-logical diagnosis. Future studies should investigate the role of Raman spectral features in ESCC pathogenesis.

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