Journal ArticleUnknown
Early risk prediction of cervical cancer: A machine learning approach
Author Affiliations
Islamic University of Technology
Published In2022 19th International Conference on Electrical Engineering/Electronics, Computer, Telecommunications and Information Technology (ECTI-CON)
Year2022
Citations47
Abstract
Cervical cancer is a vital public health issue that affects women worldwide. As it is a fatal disease, early risk prediction of cervical cancer can play an important role in prevention by raising public awareness of this disease. Early prediction using a Machine Learning (ML) model can be a beneficial solution for both healthcare professionals and people at risk. In this study, eleven supervised ML algorithms are utilized to forecast early jeopardies of this disease using a dataset from UCI ML repository. The ML models are rummaged to prophesy the early threats, and performance parameters like accuracy, precision, F1-score, re-call, and ROC-AUC are estimated. Finally, a reasonable analysis is performed, revealing that this study achieved 93.33% prediction accuracy with Multi-Layer…
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