Department of Biostatistics, University of Washington, Seattle, WA 98109, USA.
Public Health Sciences Division, Fred Hutchinson Cancer Center, Seattle, WA 98109, USA.
Biometrics. 2024 Jul 1;80(3). doi: 10.1093/biomtc/ujae097.
Before implementing a biomarker test for early cancer detection into routine clinical care, the test must demonstrate clinical utility, that is, the test results should lead to clinical actions that positively affect patient-relevant outcomes. Unlike therapeutical trials for patients diagnosed with cancer, designing a randomized controlled trial (RCT) to demonstrate the clinical utility of an early detection biomarker with mortality and related endpoints poses unique challenges. The hurdles stem from the prolonged natural progression of the disease and the lack of information regarding the time-varying screening effect on the target asymptomatic population. To facilitate the study design of screening trials, we propose using a generic multistate disease history model and derive model-based effect sizes. The model links key performance metrics of the test, such as sensitivity, to primary endpoints like the incidence of late-stage cancer. It also incorporates the practical implementation of the biomarker-testing program in real-world scenarios. Based on the chronological time scale aligned with RCT, our method allows the assessment of study powers based on key features of the new program, including the test sensitivity, the length of follow-up, and the number and frequency of repeated tests. The calculation tool from the proposed method will enable practitioners to perform realistic and quick evaluations when strategizing screening trials for specific diseases. We use numerical examples based on the National Lung Screening Trial to demonstrate the method.
在将生物标志物测试用于早期癌症检测常规临床护理之前,该测试必须证明具有临床实用性,也就是说,测试结果应该导致积极影响患者相关结果的临床行动。与针对已诊断癌症患者的治疗试验不同,设计随机对照试验 (RCT) 以证明具有死亡率和相关终点的早期检测生物标志物的临床实用性具有独特的挑战。这些障碍源于疾病的自然进展过程漫长,以及关于目标无症状人群的筛查效果随时间变化的信息缺乏。为了促进筛查试验的研究设计,我们建议使用通用的多状态疾病史模型,并推导出基于模型的效应大小。该模型将测试的关键性能指标(如敏感性)与晚期癌症发病率等主要终点联系起来。它还结合了实际情况中对生物标志物测试计划的实施。基于与 RCT 对齐的时间顺序尺度,我们的方法允许根据新计划的关键特征评估研究能力,包括测试敏感性、随访时间、重复测试的次数和频率。该方法的计算工具将使从业者能够在为特定疾病制定筛查试验策略时进行现实和快速的评估。我们使用基于全国肺癌筛查试验的数值示例来演示该方法。