Artificial intelligence research in radiation oncology: a practical guide for the clinician on concepts and methods.

BJR open Pub Date : 2024-11-13 eCollection Date: 2024-01-01 DOI:10.1093/bjro/tzae039
Frank J P Hoebers, Leonard Wee, Jirapat Likitlersuang, Raymond H Mak, Danielle S Bitterman, Yanqi Huang, Andre Dekker, Hugo J W L Aerts, Benjamin H Kann
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Abstract

The use of artificial intelligence (AI) holds great promise for radiation oncology, with many applications being reported in the literature, including some of which are already in clinical use. These are mainly in areas where AI provides benefits in efficiency (such as automatic segmentation and treatment planning). Prediction models that directly impact patient decision-making are far less mature in terms of their application in clinical practice. Part of the limited clinical uptake of these models may be explained by the need for broader knowledge, among practising clinicians within the medical community, about the processes of AI development. This lack of understanding could lead to low commitment to AI research, widespread scepticism, and low levels of trust. This attitude towards AI may be further negatively impacted by the perception that deep learning is a "black box" with inherently low transparency. Thus, there is an unmet need to train current and future clinicians in the development and application of AI in medicine. Improving clinicians' AI-related knowledge and skills is necessary to enhance multidisciplinary collaboration between data scientists and physicians, that is, involving a clinician in the loop during AI development. Increased knowledge may also positively affect the acceptance and trust of AI. This paper describes the necessary steps involved in AI research and development, and thus identifies the possibilities, limitations, challenges, and opportunities, as seen from the perspective of a practising radiation oncologist. It offers the clinician with limited knowledge and experience in AI valuable tools to evaluate research papers related to an AI model application.

放射肿瘤学中的人工智能研究:临床医师概念和方法实用指南》。
人工智能(AI)的应用在放射肿瘤学领域大有可为,许多文献都报道了人工智能的应用,其中一些已经应用于临床。这些应用主要集中在人工智能能提高效率的领域(如自动分割和治疗规划)。而直接影响患者决策的预测模型在临床实践中的应用还远未成熟。这些模型在临床上的应用有限,部分原因可能是医疗界的执业临床医生需要更广泛地了解人工智能的发展过程。缺乏了解可能导致对人工智能研究的投入不足、普遍怀疑和信任度低。人们认为深度学习是一个 "黑盒子",本质上透明度很低,这可能会进一步影响人们对人工智能的态度。因此,对当前和未来的临床医生进行人工智能在医学中的发展和应用方面的培训的需求尚未得到满足。提高临床医生的人工智能相关知识和技能对于加强数据科学家和医生之间的多学科合作非常必要,也就是说,让临床医生参与到人工智能的开发过程中。增加知识也会对人工智能的接受度和信任度产生积极影响。本文描述了人工智能研究与开发所涉及的必要步骤,从而从一名放射肿瘤执业医师的角度出发,明确了人工智能的可能性、局限性、挑战和机遇。它为在人工智能方面知识和经验有限的临床医生提供了评估与人工智能模型应用相关的研究论文的宝贵工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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