Department of Radiation Oncology, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Clin Oncol (R Coll Radiol). 2022 Feb;34(2):128-134. doi: 10.1016/j.clon.2021.11.020. Epub 2021 Dec 11.
Artificial intelligence in healthcare refers to the use of complex algorithms designed to conduct certain tasks in an automated manner. Artificial intelligence has a transformative power in radiation oncology to improve the quality and efficiency of patient care, given the increase in volume and complexity of digital data, as well as the multi-faceted and highly technical nature of this field of medicine. However, artificial intelligence alone will not be able to fix healthcare's problem, because new technologies bring unexpected and potentially underappreciated obstacles. The inclusion of multicentre datasets, the incorporation of time-varying data, the assessment of missing data as well as informative censoring and the addition of clinical utility could significantly improve artificial intelligence models. Standardisation plays a crucial, supportive and leading role in artificial intelligence. Clinical trials are the most reliable method of demonstrating the efficacy and safety of a treatment or clinical approach, as well as providing high-level evidence to justify artificial intelligence. The National Surgical Adjuvant Breast and Bowel Project, the Radiation Therapy Oncology Group and the Gynecologic Oncology Group collaborated to form NRG Oncology (acronym NRG derived from the names of the parental groups). NRG Oncology is one of the adult cancer clinical trial groups containing radiotherapy specialty of the National Cancer Institute's Clinical Trials Network (NCTN). Standardisation from NRG/NCTN has the potential to reduce variation in clinical treatment and patient outcome by eliminating potential errors, enabling broader application of artificial intelligence tools. NCTN, NRG and Imaging and Radiation Oncology Core are in a unique position to help with standards development, advocacy and enforcement, all of which can benefit from artificial intelligence, as artificial intelligence has the ability to improve trial success rates by transforming crucial phases in clinical trial design, from study planning through to execution. Here we will examine: (i) how to conduct technical and clinical evaluations before adopting artificial intelligence technologies, (ii) how to obtain high-quality data for artificial intelligence, (iii) the NCTN infrastructure and standards, (iv) radiotherapy standardisation for clinical trials and (v) artificial intelligence applications in standardisation.
人工智能在医疗保健领域指的是使用复杂算法设计来自动执行某些任务。鉴于数字数据量和复杂性的增加,以及该医学领域的多方面和高度技术性,人工智能在放射肿瘤学中具有改善患者护理质量和效率的变革力量。然而,人工智能本身并不能解决医疗保健的问题,因为新技术带来了意想不到的、潜在的被低估的障碍。纳入多中心数据集、纳入时变数据、评估缺失数据以及信息性删失、增加临床效用,可以显著改善人工智能模型。标准化在人工智能中发挥着至关重要、支持和引领作用。临床试验是证明一种治疗或临床方法的疗效和安全性的最可靠方法,也是提供高级证据来证明人工智能合理性的方法。国家外科辅助乳腺和肠道项目、放射肿瘤学组和妇科肿瘤学组合作成立了 NRG 肿瘤学(缩写 NRG 来自于母体组的名称)。NRG 肿瘤学是国立癌症研究所临床试验网络(NCTN)成人癌症临床试验组之一,包含放射治疗专业。NRG/NCTN 的标准化有可能通过消除潜在错误来减少临床治疗和患者结果的差异,从而更广泛地应用人工智能工具。NCTN、NRG 和成像与放射肿瘤学核心处于独特的位置,可以帮助制定标准、宣传和执行标准,所有这些都可以受益于人工智能,因为人工智能有能力通过改变临床试验设计的关键阶段,从研究规划到执行,来提高试验成功率。在这里,我们将研究:(i)在采用人工智能技术之前如何进行技术和临床评估,(ii)如何获得人工智能的高质量数据,(iii)NCTN 基础设施和标准,(iv)临床试验中的放射治疗标准化,以及(v)人工智能在标准化中的应用。