Background
Type:

Artificial intelligence for radiotherapy dose prediction: A comprehensive review[Utilisation de l'intelligence artificielle pour la prédiction de dose en radiothérapie : revue de la littérature]

Journal: Cancer/Radiotherapie (17696658)Year: July 2025Volume: 29Issue:
Rasti R.a Tavakoli M.B.
DOI:10.1016/j.canrad.2025.104630Language: English

Abstract

Patient outcomes are significantly impacted by the effectiveness and quality of radiation treatment planning. Deep learning, a branch of artificial intelligence, is a potent tool for enhancing and automating dose prediction processes. This article provides a comprehensive and critical analysis of deep learning-based dose prediction methods in radiotherapy, with a focus on convolutional neural networks. A comprehensive search throughout Elsevier Scopus®, Medline, and Web of Science™ literature databases was conducted to locate relevant papers published between 2018 and 2024. The use of deep learning methods for dose prediction is thoroughly examined in this paper. Analysis of these dose prediction approaches provides valuable insights into the potential of this technology to improve radiation treatment planning, particularly in the critical area of automating the dose prediction process. The findings aim to guide future research and facilitate the safe and effective integration of artificial intelligence in clinical workflows. © 2025