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Large Language Models in Oncology: Revolution or Cause for Concern?

Caglayan, Aydin, Slusarczyk, Wojciech, Rabbani, Rukhshana Dina, Ghose, Aruni, Papadopoulos, Vasileios, Boussios, Stergios (2024) Large Language Models in Oncology: Revolution or Cause for Concern? Current Oncology, 31 (4). pp. 1817-1830. E-ISSN 1718-7729. (doi:10.3390/curroncol31040137) (KAR id:105554)

Abstract

The technological capability of artificial intelligence (AI) continues to advance with great strength. Recently, the release of large language models has taken the world by storm with concurrent excitement and concern. As a consequence of their impressive ability and versatility, their provide a potential opportunity for implementation in oncology. Areas of possible application include supporting clinical decision making, education, and contributing to cancer research. Despite the promises that these novel systems can offer, several limitations and barriers challenge their implementation. It is imperative that concerns, such as accountability, data inaccuracy, and data protection, are addressed prior to their integration in oncology. As the progression of artificial intelligence systems continues, new ethical and practical dilemmas will also be approached; thus, the evaluation of these limitations and concerns will be dynamic in nature. This review offers a comprehensive overview of the potential application of large language models in oncology, as well as concerns surrounding their implementation in cancer care.

Item Type: Article
DOI/Identification number: 10.3390/curroncol31040137
Uncontrolled keywords: natural language processing, machine learning, artificial intelligence, oncology, deep learning
Subjects: R Medicine
Divisions: Divisions > Division of Natural Sciences > Kent and Medway Medical School
Funders: University of Kent (https://ror.org/00xkeyj56)
SWORD Depositor: JISC Publications Router
Depositing User: JISC Publications Router
Date Deposited: 17 Apr 2024 14:51 UTC
Last Modified: 17 Apr 2024 23:44 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/105554 (The current URI for this page, for reference purposes)

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