Department of Radiology, NYU School of Medicine, New York, New York; Department of Population Health, NYU School of Medicine, New York, New York.
Department of Radiology, University of Alabama at Birmingham, Birmingham, Alabama.
J Am Coll Radiol. 2019 May;16(5):700-708. doi: 10.1016/j.jacr.2018.09.042. Epub 2018 Dec 12.
The lack of prospective outcomes studies for many types of incidental findings limits our understanding of both their natural history and the potential efficacy of treatment. To support decision making for the management of incidental findings, major sources of uncertainty in management pathways can be mapped and analyzed using mathematical models. This process yields important insights into how uncertainty influences the best treatment decision. Here, we consider a classification scheme, grounded in decision science, which exposes various levels and types of uncertainty in the management of incidental findings and addresses (1) disease-related risks, which are considered in context of a patient's competing causes of mortality; (2) potential degrees of intervention; (3) strength of evidence; and (4) patients' treatment-related preferences. Herein we describe how categorizing uncertainty by the sources, issues, and locus can build a framework from which to improve the management of incidental findings. Accurate and comprehensive handling of uncertainty will improve the quality of related decision making and will help guide future research priorities.
由于缺乏对许多类型偶然发现的前瞻性结局研究,我们对其自然病史和治疗效果的了解有限。为了支持偶然发现管理的决策制定,可以使用数学模型来映射和分析管理途径中的主要不确定性来源。该过程深入了解了不确定性如何影响最佳治疗决策。在这里,我们考虑了一种分类方案,该方案基于决策科学,揭示了偶然发现管理中不同层次和类型的不确定性,并解决了以下问题:(1)与疾病相关的风险,这些风险在考虑患者的其他死亡原因时需要考虑;(2)潜在的干预程度;(3)证据的强度;以及(4)患者的治疗相关偏好。在这里,我们描述了如何通过来源、问题和病灶对不确定性进行分类,从而构建一个框架,以改善偶然发现的管理。准确和全面地处理不确定性将提高相关决策的质量,并有助于指导未来的研究重点。