Cervical cancer identification using deep learning approaches
The presence of cervical cancer is not apparent as its incubation period is long. A pap smear screening is the only diagnostic method; examining the pap smear slides uses a microscope. However, problems happen where humans make mistakes during the diagnostic process, causing inaccurate results...
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my.iium.irep.1034362024-01-23T03:30:10Z http://irep.iium.edu.my/103436/ Cervical cancer identification using deep learning approaches Kong, Shien Nie Handayani, Dini Oktarina Dwi Mun, Hou Kit Chong, Pei Pei Mantoro, Teddy QA76 Computer software The presence of cervical cancer is not apparent as its incubation period is long. A pap smear screening is the only diagnostic method; examining the pap smear slides uses a microscope. However, problems happen where humans make mistakes during the diagnostic process, causing inaccurate results and delaying the individual who needs to receive comprehensive treatments. With hopes to improve the current situation, assisting cervical cancer diagnosis with artificial intelligence techniques is suggested. This paper will use ResNet101v2, an upgraded residual network from ResNet, to develop a cervical cancer detection model to predict the severity of cervical cells. The Herlev dataset distributed 70% into training and 30% into validation; remaining 98 unique images will be used during the testing stage. Transfer learning techniques were introduced to develop the model. Using the testing images, the model reached 71.4% accuracy contributing better accuracy compared to other research studies in predicting the cervical cells using 7 classification classes. The model shows potential for clinical cytotechnologists’ during the pap smear diagnosis. IEEE 2022 Proceeding Paper PeerReviewed application/pdf en http://irep.iium.edu.my/103436/1/103436_Cervical%20cancer%20identification%20using%20deep%20learning%20approaches.pdf application/pdf en http://irep.iium.edu.my/103436/7/103436_Cervical%20Cancer%20Identification%20using%20Deep%20Learning%20Approaches%20_Scopus.pdf Kong, Shien Nie and Handayani, Dini Oktarina Dwi and Mun, Hou Kit and Chong, Pei Pei and Mantoro, Teddy (2022) Cervical cancer identification using deep learning approaches. In: 8th International Conference on Computing, Engineering, and Design (ICCED 2022), Sukabumi, Indonesia (Virtual Conference). https://ieeexplore.ieee.org/document/10010544 10.1109/ICCED56140.2022.10010544 |
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QA76 Computer software Kong, Shien Nie Handayani, Dini Oktarina Dwi Mun, Hou Kit Chong, Pei Pei Mantoro, Teddy Cervical cancer identification using deep learning approaches |
description |
The presence of cervical cancer is not apparent as
its incubation period is long. A pap smear screening is the only
diagnostic method; examining the pap smear slides uses a
microscope. However, problems happen where humans make
mistakes during the diagnostic process, causing inaccurate
results and delaying the individual who needs to receive
comprehensive treatments. With hopes to improve the current
situation, assisting cervical cancer diagnosis with artificial
intelligence techniques is suggested. This paper will use
ResNet101v2, an upgraded residual network from ResNet, to
develop a cervical cancer detection model to predict the severity
of cervical cells. The Herlev dataset distributed 70% into
training and 30% into validation; remaining 98 unique images
will be used during the testing stage. Transfer learning
techniques were introduced to develop the model. Using the
testing images, the model reached 71.4% accuracy contributing
better accuracy compared to other research studies in
predicting the cervical cells using 7 classification classes. The
model shows potential for clinical cytotechnologists’ during the
pap smear diagnosis. |
format |
Proceeding Paper |
author |
Kong, Shien Nie Handayani, Dini Oktarina Dwi Mun, Hou Kit Chong, Pei Pei Mantoro, Teddy |
author_facet |
Kong, Shien Nie Handayani, Dini Oktarina Dwi Mun, Hou Kit Chong, Pei Pei Mantoro, Teddy |
author_sort |
Kong, Shien Nie |
title |
Cervical cancer identification using deep learning approaches |
title_short |
Cervical cancer identification using deep learning approaches |
title_full |
Cervical cancer identification using deep learning approaches |
title_fullStr |
Cervical cancer identification using deep learning approaches |
title_full_unstemmed |
Cervical cancer identification using deep learning approaches |
title_sort |
cervical cancer identification using deep learning approaches |
publisher |
IEEE |
publishDate |
2022 |
url |
http://irep.iium.edu.my/103436/1/103436_Cervical%20cancer%20identification%20using%20deep%20learning%20approaches.pdf http://irep.iium.edu.my/103436/7/103436_Cervical%20Cancer%20Identification%20using%20Deep%20Learning%20Approaches%20_Scopus.pdf http://irep.iium.edu.my/103436/ https://ieeexplore.ieee.org/document/10010544 |
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1789423992641159168 |