Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions

Deep learning (DL) is a branch of machine learning and artificial intelligence that has been applied to many areas in different domains such as health care and drug design. Cancer prognosis estimates the ultimate fate of a cancer subject and provides survival estimation of the subjects. An accurate...

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Main Authors: Tufail, Ahsan, Ma, Yong-Kui, Kaabar, Mohammed K. A., Martínez, Franscisco, Junejo, A.R., Ullah, Inam, Khan, Rahim
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Published: Hindawi Ltd 2021
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Online Access:http://eprints.um.edu.my/35583/
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spelling my.um.eprints.355832023-10-24T08:21:44Z http://eprints.um.edu.my/35583/ Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions Tufail, Ahsan Ma, Yong-Kui Kaabar, Mohammed K. A. Martínez, Franscisco Junejo, A.R. Ullah, Inam Khan, Rahim QA75 Electronic computers. Computer science RC Internal medicine Deep learning (DL) is a branch of machine learning and artificial intelligence that has been applied to many areas in different domains such as health care and drug design. Cancer prognosis estimates the ultimate fate of a cancer subject and provides survival estimation of the subjects. An accurate and timely diagnostic and prognostic decision will greatly benefit cancer subjects. DL has emerged as a technology of choice due to the availability of high computational resources. The main components in a standard computer-aided design (CAD) system are preprocessing, feature recognition, extraction and selection, categorization, and performance assessment. Reduction of costs associated with sequencing systems offers a myriad of opportunities for building precise models for cancer diagnosis and prognosis prediction. In this survey, we provided a summary of current works where DL has helped to determine the best models for the cancer diagnosis and prognosis prediction tasks. DL is a generic model requiring minimal data manipulations and achieves better results while working with enormous volumes of data. Aims are to scrutinize the influence of DL systems using histopathology images, present a summary of state-of-the-art DL methods, and give directions to future researchers to refine the existing methods. © 2021 Ahsan Bin Tufail et al. Hindawi Ltd 2021 Article PeerReviewed Tufail, Ahsan and Ma, Yong-Kui and Kaabar, Mohammed K. A. and Martínez, Franscisco and Junejo, A.R. and Ullah, Inam and Khan, Rahim (2021) Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions. Computational and Mathematical Methods in Medicine, 2021. ISSN 1748-670X, DOI https://doi.org/10.1155/2021/9025470 <https://doi.org/10.1155/2021/9025470>. 10.1155/2021/9025470
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
RC Internal medicine
spellingShingle QA75 Electronic computers. Computer science
RC Internal medicine
Tufail, Ahsan
Ma, Yong-Kui
Kaabar, Mohammed K. A.
Martínez, Franscisco
Junejo, A.R.
Ullah, Inam
Khan, Rahim
Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions
description Deep learning (DL) is a branch of machine learning and artificial intelligence that has been applied to many areas in different domains such as health care and drug design. Cancer prognosis estimates the ultimate fate of a cancer subject and provides survival estimation of the subjects. An accurate and timely diagnostic and prognostic decision will greatly benefit cancer subjects. DL has emerged as a technology of choice due to the availability of high computational resources. The main components in a standard computer-aided design (CAD) system are preprocessing, feature recognition, extraction and selection, categorization, and performance assessment. Reduction of costs associated with sequencing systems offers a myriad of opportunities for building precise models for cancer diagnosis and prognosis prediction. In this survey, we provided a summary of current works where DL has helped to determine the best models for the cancer diagnosis and prognosis prediction tasks. DL is a generic model requiring minimal data manipulations and achieves better results while working with enormous volumes of data. Aims are to scrutinize the influence of DL systems using histopathology images, present a summary of state-of-the-art DL methods, and give directions to future researchers to refine the existing methods. © 2021 Ahsan Bin Tufail et al.
format Article
author Tufail, Ahsan
Ma, Yong-Kui
Kaabar, Mohammed K. A.
Martínez, Franscisco
Junejo, A.R.
Ullah, Inam
Khan, Rahim
author_facet Tufail, Ahsan
Ma, Yong-Kui
Kaabar, Mohammed K. A.
Martínez, Franscisco
Junejo, A.R.
Ullah, Inam
Khan, Rahim
author_sort Tufail, Ahsan
title Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions
title_short Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions
title_full Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions
title_fullStr Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions
title_full_unstemmed Deep learning in cancer diagnosis and prognosis prediction: A minireview on challenges, recent trends, and future directions
title_sort deep learning in cancer diagnosis and prognosis prediction: a minireview on challenges, recent trends, and future directions
publisher Hindawi Ltd
publishDate 2021
url http://eprints.um.edu.my/35583/
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score 13.160551