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Inicio  /  Applied Sciences  /  Vol: 12 Par: 11 (2022)  /  Artículo
ARTÍCULO
TITULO

Machine-Learning Applications in Oral Cancer: A Systematic Review

Xaviera A. López-Cortés    
Felipe Matamala    
Bernardo Venegas and César Rivera    

Resumen

Over the years, several machine-learning applications have been suggested to assist in various clinical scenarios relevant to oral cancer. We offer a systematic review to identify, assess, and summarize the evidence for reported uses in the areas of oral cancer detection and prevention, prognosis, pre-cancer, treatment, and quality of life. The main algorithms applied in the context of oral cancer applications corresponded to SVM, ANN, and LR, comprising 87.71% of the total published articles in the field. Genomic, histopathological, image, medical/clinical, spectral, and speech data were used most often to predict the four areas of application found in this review. In conclusion, our study has shown that machine-learning applications are useful for prognosis, diagnosis, and prevention of potentially malignant oral lesions (pre-cancer) and therapy. Nevertheless, we strongly recommended the application of these methods in daily clinical practice.

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