BECAS
CHELALICHE Anibal Sebastian
congresos y reuniones científicas
Título:
Automatic prediction of cervical cancer from associated risk factors
Autor/es:
CHELALICHE ANIBAL SEBASTIAN; KAUFMAN CINTIA DANIELA; TAPIA ELIZABETH; SPETALE FLAVIO
Lugar:
Corrientes capital
Reunión:
Congreso; 12vo Congreso Argentino de Bioinformática y Biología Computacional; 2022
Institución organizadora:
Asociación Argentina de Bioinformática
Resumen:
Background: Cervical cancer is the fourth most common neoplasm in women worldwide. For sometime, a design has been pursued for a classification system that can be used in the diagnosis of this pathology using biochemical parameters, demographic data, environmental, genetic factors and images of the cervix.Results: In this work we present an Artificial Neural Network (ANN) to predict the risk factors of CC. In addition, the Support Vector Machine Recursive Feature Elimination (SVM-RFE) method was used to find the most important attributes for cervical cancer prediction. The dataset employed here contains missing values and is highly imbalanced. Therefore, the Tomek Links technique was employed to remove this data from the majority class (negative examples). The feature-selection method showed that the frequency of tobacco consumption, HVP and HIV infections, as well as the number of diagnosed sexually transmitted infections (STDs), could be useful for predicting cervical cancer. The ANN with the selected features from SVM-RFE and Tomek Links showed the best results with an accuracy of 78 %.Conclusions: The associations among certain oncogenic strains of HPV, others STDs and tobaccoconsumption, and the disease are well established. The development of this model applied to the clinic can become a useful tool for the first stages of patient screening, which helps health professionals to choose subsequent methodologies for disease control and treatment.