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  • Diagnosing the degree of di...
    Chen, Zishuo; Gong, Zengyun; Chang, Chenjie; Chen, Chen; Lv, Xiaoyi; Chen, Cheng

    Spectroscopy letters, 05/2024, Letnik: 57, Številka: 5
    Journal Article

    As a highly prevalent and recurrent cancer, detecting the degree of differentiation in oral cancer is crucial. Current methods rely on biopsies in the presence of significant lesions, which are time-consuming. This study introduces an efficient and rapid approach for mass determination of oral cancer differentiation levels. By leveraging serum Raman spectroscopy combined with deep neural networks and extreme gradient boosting, we performed feature selection and interaction on oral cancer samples of varying differentiation levels, achieving the most accurate and reliable classification of oral cancer differentiation stages.