Deep learning in cancer diagnosis, prognosis and treatment selection

, , , , , & (2021) Deep learning in cancer diagnosis, prognosis and treatment selection. Genome Medicine, 13, Article number: 152.

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Description

Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique called artificial neural networks to extract patterns and make predictions from large data sets. The increasing adoption of deep learning across healthcare domains together with the availability of highly characterised cancer datasets has accelerated research into the utility of deep learning in the analysis of the complex biology of cancer. While early results are promising, this is a rapidly evolving field with new knowledge emerging in both cancer biology and deep learning. In this review, we provide an overview of emerging deep learning techniques and how they are being applied to oncology. We focus on the deep learning applications for omics data types, including genomic, methylation and transcriptomic data, as well as histopathology-based genomic inference, and provide perspectives on how the different data types can be integrated to develop decision support tools. We provide specific examples of how deep learning may be applied in cancer diagnosis, prognosis and treatment management. We also assess the current limitations and challenges for the application of deep learning in precision oncology, including the lack of phenotypically rich data and the need for more explainable deep learning models. Finally, we conclude with a discussion of how current obstacles can be overcome to enable future clinical utilisation of deep learning.

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282 citations in Scopus
109 citations in Web of Science®
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ID Code: 213752
Item Type: Contribution to Journal (Review article)
Refereed: Yes
ORCID iD:
Bradley, Andreworcid.org/0000-0003-0109-6844
Williams, Elizabeth D.orcid.org/0000-0002-3364-6655
Additional Information: Funding Information: Nicola Waddell is supported by a National Health and Medical Research Council of Australia (NHMRC) Senior Research Fellowship (APP1139071).
Measurements or Duration: 17 pages
Additional URLs:
Keywords: Artificial intelligence, Cancer genomics, Cancer of unknown primary, Deep learning, Explainability, Molecular subtypes, Multi-modal learning, Pharmacogenomics, Precision oncology, Prognosis, Tumour microenvironment
DOI: 10.1186/s13073-021-00968-x
ISSN: 1756-994X
Pure ID: 99348793
Divisions: Current > Research Centres > Centre for Biomedical Technologies
Current > Research Centres > Centre for Genomics and Personalised Health
Current > QUT Faculties and Divisions > Faculty of Engineering
Current > QUT Faculties and Divisions > Faculty of Health
Current > Schools > School of Biomedical Sciences
Funding Information: Nicola Waddell is supported by a National Health and Medical Research Council of Australia (NHMRC) Senior Research Fellowship (APP1139071).
Copyright Owner: 2021 The Author(s)
Copyright Statement: This work is covered by copyright. Unless the document is being made available under a Creative Commons Licence, you must assume that re-use is limited to personal use and that permission from the copyright owner must be obtained for all other uses. If the document is available under a Creative Commons License (or other specified license) then refer to the Licence for details of permitted re-use. It is a condition of access that users recognise and abide by the legal requirements associated with these rights. If you believe that this work infringes copyright please provide details by email to qut.copyright@qut.edu.au
Deposited On: 08 Oct 2021 02:08
Last Modified: 03 Aug 2024 06:25