Dercle Laurent, Henry Theophraste, Carré Alexandre, Paragios Nikos, Deutsch Eric, Robert Charlotte
Department of Radiology, New York Presbyterian Hospital, Columbia University Medical Center, New York, USA.
Molecular Radiotherapy and Innovative Therapeutics, INSERM UMR1030, Gustave Roussy Cancer Campus, Université Paris Saclay, Villejuif, France; Department of Nuclear Medicine and Endocrine Oncology, Gustave Roussy Cancer Campus, Villejuif, France.
Methods. 2021 Apr;188:44-60. doi: 10.1016/j.ymeth.2020.07.003. Epub 2020 Jul 19.
Radiation therapy is a pivotal cancer treatment that has significantly progressed over the last decade due to numerous technological breakthroughs. Imaging is now playing a critical role on deployment of the clinical workflow, both for treatment planning and treatment delivery. Machine-learning analysis of predefined features extracted from medical images, i.e. radiomics, has emerged as a promising clinical tool for a wide range of clinical problems addressing drug development, clinical diagnosis, treatment selection and implementation as well as prognosis. Radiomics denotes a paradigm shift redefining medical images as a quantitative asset for data-driven precision medicine. The adoption of machine-learning in a clinical setting and in particular of radiomics features requires the selection of robust, representative and clinically interpretable biomarkers that are properly evaluated on a representative clinical data set. To be clinically relevant, radiomics must not only improve patients' management with great accuracy but also be reproducible and generalizable. Hence, this review explores the existing literature and exposes its potential technical caveats, such as the lack of quality control, standardization, sufficient sample size, type of data collection, and external validation. Based upon the analysis of 165 original research studies based on PET, CT-scan, and MRI, this review provides an overview of new concepts, and hypotheses generating findings that should be validated. In particular, it describes evolving research trends to enhance several clinical tasks such as prognostication, treatment planning, response assessment, prediction of recurrence/relapse, and prediction of toxicity. Perspectives regarding the implementation of an AI-based radiotherapy workflow are presented.
放射治疗是一种关键的癌症治疗方法,在过去十年中,由于众多技术突破,该领域取得了显著进展。目前,成像在临床工作流程的部署中发挥着关键作用,无论是在治疗计划还是治疗实施方面。从医学图像中提取预定义特征的机器学习分析,即放射组学,已成为一种有前景的临床工具,可用于解决药物开发、临床诊断、治疗选择与实施以及预后等广泛的临床问题。放射组学标志着一种范式转变,将医学图像重新定义为数据驱动的精准医学的定量资产。在临床环境中采用机器学习,特别是放射组学特征,需要选择强大、具有代表性且临床可解释的生物标志物,并在具有代表性的临床数据集上进行适当评估。为了具有临床相关性,放射组学不仅必须以高度准确性改善患者管理,还必须具有可重复性和可推广性。因此,本综述探讨了现有文献,并揭示了其潜在的技术问题,如缺乏质量控制、标准化、足够的样本量、数据收集类型以及外部验证。基于对165项基于PET、CT扫描和MRI的原始研究的分析,本综述概述了新概念以及有待验证的假设性研究结果。特别是,它描述了不断发展的研究趋势,以加强多项临床任务,如预后评估、治疗计划、疗效评估、复发/转移预测以及毒性预测。本文还介绍了基于人工智能的放射治疗工作流程的实施前景。