Artificial intelligence in cancer research, diagnosis and therapy Editorial


Authors: Elemento, O.; Leslie, C.; Lundin, J.; Tourassi, G.
Title: Artificial intelligence in cancer research, diagnosis and therapy
Abstract: In this Viewpoint article, we asked four experts to share their thoughts on the implementation of artificial intelligence and machine learning techniques into cancer research and care, and how to separate the hope from the hype to overcome the challenges ahead. Standfirst Artificial intelligence and machine learning techniques are breaking into biomedical research and health care, which importantly includes cancer research and oncology, where the potential applications are vast. These include detection and diagnosis of cancer, subtype classification, optimization of cancer treatment and identification of new therapeutic targets in drug discovery. While big data used to train machine learning models may already exist, leveraging this opportunity to realize the full promise of artificial intelligence in both the cancer research space and the clinical space will first require significant obstacles to be surmounted. In this Viewpoint article, we asked four experts for their opinions on how we can begin to implement artificial intelligence while ensuring standards are maintained so as transform cancer diagnosis and the prognosis and treatment of patients with cancer and to drive biological discovery.
Keywords: validation; performance; care; learning algorithm; deep; go; ai
Journal Title: Nature Reviews Cancer
Volume: 21
Issue: 12
ISSN: 1474-175X
Publisher: Nature Publishing Group  
Date Published: 2021-12-01
Start Page: 747
End Page: 752
Language: English
ACCESSION: WOS:000696755200001
DOI: 10.1038/s41568-021-00399-1
PROVIDER: wos
PUBMED: 34535775
Notes: Article -- Source: Wos
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  1. Christina Leslie
    187 Leslie