Compared to other genital cancers, cervical cancer is the most prevalent and the main cause of mortality in females in third-world countries, affected by different factors, including smoking, poor nutritional status, immune-deficiency, long-term use of contraceptives and so on.
Objective
The present study was conducted to predict cervical cancer and identify its important predictors using machine learning classification algorithms.
Material and Methods
In a cross-sectional study, the data of 145 patients with 23 attributes, which referred to Shohada Hospital Tehran, Iran during 2017-2018, were analyzed by machine learning classification algorithms which included SVM, QUEST, C&R tree, MLP and RBF. The criteria measurement used to evaluate these algorithms included accuracy, sensitivity, specificity and area under the curve (AUC).
Results
The accuracy, sensitivity, specificity and AUC of Quest and C&R tree were, respectively 95.55, 90.48, 100, and 95.20, 95.55, 90.48, 100, and 95.20, those of RBF 95.45, 90.00, 100 and 91.50, those of SVM 93.33, 90.48, 95.83 and 95.80 and those of MLP 90.90, 90.00, 91.67 and 91.50 percentage. The important predictors in all the algorithms were found to comprise personal health level, marital status, social status, the dose of contraceptives used, level of education and number of caesarean deliveries.
Conclusion
This investigation confirmed that ML can enhance the prediction of cervical cancer. The results of this study showed that Decision Tree algorithms can be applied to identify the most relevant predictors. Moreover, it seems that improving personal health and socio-cultural level of patients can be causing cervical cancer prevention.
cervical cancer prediction, machine learning gynecology, supervised algorithms, cervical neoplasm screening, contraceptive use cancer risk, risk factor classification, computational diagnosis, cervical cancer prevention, HPV screening, cancer predictive models
PMID 32802799 32802799 DOI 10.31661/jbpe.v0i0.1912-1027 10.31661/jbpe.v0i0.1912-1027
Cite this article
F, A., C, S., & L, A. (2020). Supervised Algorithms of Machine Learning for the Prediction of Cervical Cancer. *Journal of biomedical physics & engineering*, *10*(4), 513-522. https://doi.org/10.31661/jbpe.v0i0.1912-1027
F A, C S, L A. Supervised Algorithms of Machine Learning for the Prediction of Cervical Cancer. J Biomed Phys Eng. 2020;10(4):513-522. doi:10.31661/jbpe.v0i0.1912-1027
F, Asadi, et al. "Supervised Algorithms of Machine Learning for the Prediction of Cervical Cancer." *Journal of biomedical physics & engineering*, vol. 10, no. 4, 2020, pp. 513-522.
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