Measures of Performance and Clinical Superiority Thresholds for 'Test-and-treat' Predictive Biomarkers.

IF 3.1 4区 医学 Q1 ECONOMICS
Neil Hawkins, Janet Bouttell, Dmitry Ponomarev
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Abstract

Background: Predictive biomarkers are intended to predict an individual's expected response to specific treatments. These are an important component of precision medicine. We explore measures of biomarker performance that are based on the expected probability of response to individual treatment conditional on biomarker status. We show how these measures can be used to establish thresholds at which testing strategies will be clinically superior.

Methods: We used a decision model to compare expected probabilities of response of treat-all and test-and-treat strategies. Based on this, R-Shiny-based apps were developed which produce plots of the threshold positive and negative predictive values or sensitivities and specificities above which a 'test-and-treat' strategy will outperform a 'treat-all' strategy. We present a case study using data on the use of RAS status to predict response to panitumumab in metastatic colorectal cancer.

Results: Where a companion diagnostic is predictive of response to one of the treatments being compared, it is possible to estimate threshold sensitivities and specificities above which a testing strategy will outperform a treat-all strategy, based only on the odds ratio of response. Where negative and positive predictive values were used, the threshold depended on the prevalence of the biomarker-positive patients.

Discussion: These intuitive performance measures for predictive biomarkers, based on expected response to individual treatments, can be used to identify promising candidate companion diagnostic tests and indicate the potential magnitude of the net benefit of testing.

Abstract Image

测试和治疗 "预测性生物标记物的性能和临床优越性阈值。
背景:预测性生物标志物旨在预测个体对特定治疗的预期反应。它们是精准医疗的重要组成部分。我们探讨了基于生物标记物状态的个体治疗反应预期概率的生物标记物性能测量方法。我们展示了如何利用这些指标来确定检测策略在临床上具有优势的阈值:方法:我们使用决策模型来比较 "全部治疗 "策略和 "先测后治 "策略的预期反应概率。在此基础上,我们开发了基于 R-Shiny 的应用程序,可生成阈值阳性预测值和阴性预测值或敏感性和特异性的曲线图,超过这些阈值时,"检测-治疗 "策略将优于 "全部治疗 "策略。我们利用 RAS 状态预测转移性结直肠癌患者对帕尼单抗反应的数据进行了案例研究:结果:如果辅助诊断能预测对其中一种治疗方法的反应,那么就有可能估算出敏感性和特异性的阈值,在此阈值之上,仅根据反应的几率比,检测策略就会优于 "全治疗 "策略。在使用阴性和阳性预测值时,阈值取决于生物标记物阳性患者的患病率:这些预测性生物标记物的直观性能指标基于对个体治疗的预期反应,可用于识别有前景的候选伴随诊断检测,并显示检测净效益的潜在规模。
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来源期刊
Applied Health Economics and Health Policy
Applied Health Economics and Health Policy Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
6.10
自引率
2.80%
发文量
64
期刊介绍: Applied Health Economics and Health Policy provides timely publication of cutting-edge research and expert opinion from this increasingly important field, making it a vital resource for payers, providers and researchers alike. The journal includes high quality economic research and reviews of all aspects of healthcare from various perspectives and countries, designed to communicate the latest applied information in health economics and health policy. While emphasis is placed on information with practical applications, a strong basis of underlying scientific rigor is maintained.
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