评估两种生物标志物的最佳临界值和二分类组合以改善患者选择。

IF 1.9 4区 医学 Q4 MEDICAL INFORMATICS
Gina D'Angelo, Di Ran, Binbing Yu
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引用次数: 0

摘要

在临床试验中确定连续生物标志物的正确临界值对于确定高风险或更有可能从治疗中获益的亚组至关重要。虽然文献通常侧重于单一生物标志物,但试验通常涉及多种生物标志物。我们的第一个目标是比较三种方法-约登指数,接收工作特征曲线(ER)上最接近-(0,1)角的点,以及一致性概率-使用经验和非经验方法找到两种生物标志物的最佳截止点。我们的第二个也是主要目标是使用我们提出的逻辑指标方法来扩展约登指数,并评估生物标志物的组合是否优于单一生物标志物。指标方法创造了两种或其中一种生物标志物阳性的组合。模拟研究表明,非经验方法优于经验方法,其中er广义加性模型(GAM)和一致性-GAM在偏差和均方误差方面表现最好。我们用一项前列腺癌研究和一项模拟的2期肺癌研究来说明这些方法。结果表明,不同方法的截断值相似,尽管非经验方法的截断值更高。在肺癌模拟中,截止值保持相对稳定。较高的临界值可能导致候选患者减少,从而影响研究招募或诊断工具。这些见解有助于评估单个或组合生物标志物是否更有效地识别更有可能对治疗有反应的患者,突出个性化医疗的重要性,其中许多治疗可能无法使“普通”患者受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Optimal Cut-Offs and Dichotomous Combinations for Two Biomarkers to Improve Patient Selection.

Identifying the right cut-off for continuous biomarkers in clinical trials is crucial for pinpointing subgroups at higher risk or more likely to benefit from treatments. Although the literature typically focuses on single biomarkers, trials often involve multiple biomarkers. Our first aim was to compare three methods-the Youden index, point closest-to-(0,1) corner on the receiving operating characteristic curve (ER) method, and concordance probability-for finding optimal cut-offs with two biomarkers, employing both empirical and non-empirical approaches. Our second and main objective was to use our proposed logic indicator approach to extend the Youden index and evaluate whether a combination of biomarkers is an improvement over a single biomarker. The indicator approach created combinations of both or either biomarker being positive. Simulation studies revealed that non-empirical methods outperformed empirical ones, where the ER-generalized additive model (GAM) and concordance-GAM performed the best overall in terms of bias and mean squared error. We illustrated these approaches with a prostate cancer study and a simulated phase 2 lung cancer study. Results indicated similar cut-offs across methods, albeit higher with non-empirical approaches. In the lung cancer simulation, cut-off values remained relatively stable. A higher cut-off could lead to fewer candidate patients, impacting study recruitment or a diagnostic tool. These insights assist in assessing whether single or combined biomarkers are more effective for identifying patients who are more likely to respond to treatment, highlighting the significance in personalized medicine, where many treatments may not benefit "average" patients.

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来源期刊
Therapeutic innovation & regulatory science
Therapeutic innovation & regulatory science MEDICAL INFORMATICS-PHARMACOLOGY & PHARMACY
CiteScore
3.40
自引率
13.30%
发文量
127
期刊介绍: Therapeutic Innovation & Regulatory Science (TIRS) is the official scientific journal of DIA that strives to advance medical product discovery, development, regulation, and use through the publication of peer-reviewed original and review articles, commentaries, and letters to the editor across the spectrum of converting biomedical science into practical solutions to advance human health. The focus areas of the journal are as follows: Biostatistics Clinical Trials Product Development and Innovation Global Perspectives Policy Regulatory Science Product Safety Special Populations
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