CerConvNet: Cervical Cancer Cells Prediction Using Convolutional Neural Networks
Abstract
Cervix cancer is a distinct form of cancer occurring in women, originating in the cells of the cervix, which is the region of the uterus connecting to the vagina. About 90% of cases of cervix cancer are related to human papillomavirus (HPV) infection. The mortality rate in developed nations has decreased because of routine HPV testing for women. The absence of reasonably priced healthcare facilities, however, continues to make it difficult for developing countries to offer inexpensive remedies. Therefore, developing an accurate algorithm for cervical cancer prediction is necessary to identify women who are at risk of developing this condition. Architectures of Deep Learning have been employed in recent years to construct accurate models for the prediction of cervical cancer. This study offers a unique, straightforward transfer learning frameworks ResNet50, DenseNet201, EfficientNetb1 and InceptionResNetV2, to classify cervical images using SIPaKMeD dataset and different performance measures are gathered and examined. Still, the recommended Densenet201 outperformed the most advanced methods.DOI:
https://doi.org/10.31449/inf.v48i3.5905Downloads
Published
How to Cite
Issue
Section
License
Authors retain copyright in their work. By submitting to and publishing with Informatica, authors grant the publisher (Slovene Society Informatika) the non-exclusive right to publish, reproduce, and distribute the article and to identify itself as the original publisher.
All articles are published under the Creative Commons Attribution license CC BY 3.0. Under this license, others may share and adapt the work for any purpose, provided appropriate credit is given and changes (if any) are indicated.
Authors may deposit and share the submitted version, accepted manuscript, and published version, provided the original publication in Informatica is properly cited.







