Takeda, 300 Massachusetts Ave, Cambridge, MA, 02139, USA.
The Bracken Group, Newtown, PA, USA.
Ther Innov Regul Sci. 2021 Nov;55(6):1111-1121. doi: 10.1007/s43441-021-00316-6. Epub 2021 Jul 6.
The debate over human visual perception and how medical images should be interpreted have persisted since X-rays were the only imaging technique available. Concerns over rates of disagreement between expert image readers are associated with much of the clinical research and at times driven by the belief that any image endpoint variability is problematic. The deeper understanding of the reasons, value, and risk of disagreement are somewhat siloed, leading, at times, to costly and risky approaches, especially in clinical trials. Although artificial intelligence promises some relief from mistakes, its routine application for assessing tumors within cancer trials is still an aspiration. Our consortium of international experts in medical imaging for drug development research, the Pharma Imaging Network for Therapeutics and Diagnostics (PINTAD), tapped the collective knowledge of its members to ground expectations, summarize common reasons for reader discordance, identify what factors can be controlled and which actions are likely to be effective in reducing discordance. Reinforced by an exhaustive literature review, our work defines the forces that shape reader variability. This review article aims to produce a singular authoritative resource outlining reader performance's practical realities within cancer trials, whether they occur within a clinical or an independent central review.
自 X 光成为唯一可用的成像技术以来,关于人类视觉感知以及如何解释医学图像的争论就一直存在。专家图像阅读者之间的意见分歧率问题一直是许多临床研究关注的焦点,有时也是因为人们认为任何图像终点的变化都是有问题的。对分歧产生的原因、价值和风险的深入了解有些孤立,有时会导致代价高昂且风险大的方法,尤其是在临床试验中。尽管人工智能有望缓解一些错误,但在癌症试验中评估肿瘤的常规应用仍然是一种愿望。我们的药物开发研究医学成像国际专家联盟,即药物成像网络治疗学和诊断学(PINTAD),利用其成员的集体知识来降低预期,总结读者意见不一致的常见原因,确定哪些因素可以控制以及哪些行动可能有效减少分歧。在详尽的文献综述的支持下,我们的工作定义了影响读者变异性的因素。这篇综述文章旨在提供一个权威性的资源,概述癌症试验中读者表现的实际情况,无论是在临床还是独立的中心审查中。