Journal of Computer and Communications

Volume 11, Issue 12 (December 2023)

ISSN Print: 2327-5219   ISSN Online: 2327-5227

Google-based Impact Factor: 1.98  Citations  

A Critical Analysis of Machine Learning and Deep Learning Methods for Cervical Cancer Screening

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DOI: 10.4236/jcc.2023.1112005    192 Downloads   1,210 Views  

ABSTRACT

Cervical cancer is a serious public health issue worldwide, and early identification is crucial for better patient outcomes. Recent study has investigated how ML and DL approaches may be used to increase the accuracy of vagina tests. In this piece, we conducted a thorough review of 50 research studies that applied these techniques. Our investigation compared the outcomes to well-known screening techniques and concentrated on the datasets used and performance measurements reported. According to the research, convolutional neural networks and other deep learning approaches have potential for lowering false positives and boosting screening precision. Although several research used small sample sizes or constrained datasets, this raises questions about how applicable the findings are. This paper discusses the advantages and disadvantages of the articles that were chosen, as well as prospective topics for future research, to further the application of ml and dl in cervical cancer screening. The development of cervical cancer screening technologies that are more precise, accessible, and can lead to better public health outcomes is significantly affected by these findings.

Share and Cite:

Muhtasim, Rahman, M., Khan, J., Mostafizur Rahman, A.S.M., Haque, R. and Ali, Md.S. (2023) A Critical Analysis of Machine Learning and Deep Learning Methods for Cervical Cancer Screening. Journal of Computer and Communications, 11, 64-85. doi: 10.4236/jcc.2023.1112005.

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