Department of Medicine, Stanford University School of Medicine, Stanford, CA.
Veterans Affairs Palo Alto Health Care System, Palo Alto, CA.
J Clin Oncol. 2023 Sep 20;41(27):4341-4347. doi: 10.1200/JCO.23.01060. Epub 2023 Aug 4.
Lung cancer screening has been demonstrated to reduce lung cancer mortality, but its benefits must be weighed against the potential harms of unnecessary procedures, false-positive radiological findings, and overdiagnosis. Individuals at highest risk of lung cancer are more likely to maximize benefits while minimizing harm from screening. Although current lung cancer screening guidelines recommended by the US Preventive Services Task Force (USPSTF) only consider age and smoking history for screening eligibility, National Comprehensive Cancer Network and other society guidelines recommend screening on the basis of individualized risk assessment including family history, environmental exposures, and presence of chronic lung disease. Risk prediction models have been developed to integrate various risk factors into an individualized risk prediction score. Previous evidence showed that risk prediction model-based screening eligibility could improve sensitivity for detecting lung cancer cases without reducing specificity. Furthermore, recent advances in lung cancer biomarkers have enhanced the performance of risk prediction in identifying lung cancer cases relative to the USPSTF criteria. These risk prediction models can be used to guide shared decision-making discussions before proceeding with lung cancer screening. This study aims to provide a concise overview of these prediction models and the emerging role of biomarker testing in risk prediction to facilitate conversations with patients. The goal was to assist clinicians in assessing individual patient risk, leading to more informed decision making.
肺癌筛查已被证明可以降低肺癌死亡率,但必须权衡其潜在危害,包括不必要的检查程序、假阳性影像学结果和过度诊断。高危肺癌患者更有可能通过筛查获得最大的益处,同时将危害降至最低。尽管美国预防服务工作组 (USPSTF) 推荐的现行肺癌筛查指南仅考虑年龄和吸烟史作为筛查资格的标准,但国家综合癌症网络和其他专业协会的指南建议根据个体风险评估进行筛查,包括家族史、环境暴露和慢性肺部疾病等因素。风险预测模型已被开发出来,将各种风险因素整合到一个个体化的风险预测评分中。先前的证据表明,基于风险预测模型的筛查资格可以提高检测肺癌病例的敏感性,而不会降低特异性。此外,肺癌生物标志物的最新进展提高了风险预测在识别肺癌病例方面的性能,优于 USPSTF 标准。这些风险预测模型可用于指导肺癌筛查前的共同决策讨论。本研究旨在简要概述这些预测模型和生物标志物检测在风险预测中的新作用,以促进与患者的对话。其目标是帮助临床医生评估个体患者的风险,从而做出更明智的决策。