From the Epidemiology Branch, Division of Intramural Population Health Research, Eunice Kennedy Shriver National Institute of Child Health and Human Development, National Institutes of Health, Bethesda, MD.
Centers for Financing, Access and Cost Trends, Agency for Healthcare Research and Quality, Rockville, MD.
Epidemiology. 2019 Nov;30 Suppl 2(Suppl 2):S3-S9. doi: 10.1097/EDE.0000000000001094.
Biomarker assay measurement often consists of a two-stage process where laboratory equipment yields a relative measure which is subsequently transformed to the unit of interest using a calibration curve. The calibration curve establishes the relation between the measured relative units and sample biomarker concentrations using stepped samples of known biomarker concentrations. Samples from epidemiologic studies are often measured in multiple batches or plates, each with independent calibration experiments. Collapsing calibration information across batches before statistical analysis has been shown to reduce measurement error and improves estimation. Additionally, collapsing in practice can also create an additional layer of quality control (QC) and optimization in a part of the laboratory measurement process that is often highly automated. Principled recalibration is demonstrated via. a three-step process of identifying batches where recalibration might be beneficial, forming a collapsed calibration curve and recalibrating identified batches, and using QC data to assess the appropriateness of recalibration. Here, we use inhibin B measured in biospecimens from the BioCycle study using 50 enzyme-linked immunosorbent assay (ELISA) batches (3875 samples) to motivate and display the benefits of collapsing calibration experiments, such as detecting and overcoming faulty calibration experiments, and thus improving assay coefficients of variation from reducing unwanted measurement error variability. Differences in the analysis of inhibin B by testosterone quartile are also demonstrated before and after recalibration. These simple and practical procedures are minor adjustments implemented by study personnel without altering laboratory protocols which could have positive estimation and cost-saving implications especially for population-based studies.
生物标志物检测通常包括两阶段过程,实验室设备先产生相对测量值,然后使用校准曲线将其转换为感兴趣的单位。校准曲线使用已知生物标志物浓度的分步样本来建立测量的相对单位与样品生物标志物浓度之间的关系。来自流行病学研究的样本通常在多个批次或板中进行测量,每个批次都有独立的校准实验。在进行统计分析之前,将校准信息在批处理之间进行合并已被证明可以减少测量误差并提高估计值。此外,在实践中合并还可以在实验室测量过程的一个高度自动化的部分创建另外一层质量控制(QC)和优化。通过三步过程来证明有原则的重新校准,即确定可能需要重新校准的批次,形成合并的校准曲线并重新校准确定的批次,然后使用 QC 数据评估重新校准的适当性。在这里,我们使用来自 BioCycle 研究的生物样本中测量的抑制素 B 来激发和展示合并校准实验的好处,例如检测和克服有故障的校准实验,从而通过减少不必要的测量误差变异性来提高测定系数的变化。在重新校准前后还展示了按睾酮四分位数分析抑制素 B 的差异。这些简单实用的程序是研究人员进行的微小调整,不会改变实验室方案,这对特别是基于人群的研究具有积极的估计和节省成本的意义。