Wu Yujie, Gail Mitchell, Smith-Warner Stephanie, Ziegler Regina, Wang Molin
Department of Biostatistics, Harvard T. H. Chan School of Public Health, Boston, MA 02215, USA.
Division of Cancer Epidemiology and Genetics, National Cancer Institute, Bethesda, MD 20814, USA.
Cancers (Basel). 2022 Jun 3;14(11):2783. doi: 10.3390/cancers14112783.
Pooling biomarker data across multiple studies enables researchers to obtain precise estimates of the association between biomarker measurements and disease risks due to increased sample sizes. However, biomarker measurements often vary significantly across different assays and laboratories; therefore, calibration of the local laboratory measurements to a reference laboratory is necessary before pooling data. We propose two methods for estimating the dose-response curves that allow for a nonlinear association between the continuous biomarker measurements and log relative risk in pooling projects of matched/nested case-control studies. Our methods are based on full calibration and internalized calibration methods. The full calibration method uses calibrated biomarker measurements for all subjects, even for people with reference laboratory measurements, while the internalized calibration method uses the reference laboratory measurements when available and otherwise uses the calibrated biomarker measurements. We conducted simulation studies to compare these methods, as well as a naive method, where data are pooled without calibration. Our simulation and theoretical results suggest that, in estimating the dose-response curves for biomarker-disease relationships, the internalized and full calibration methods perform substantially better than the naive method, and the full calibration approach is the preferred method for calibrating biomarker measurements. We apply our methods in a pooling project of nested case-control studies to estimate the association of circulating Vitamin D levels with risk of colorectal cancer.
在多个研究中汇总生物标志物数据,能够使研究人员因样本量增加而获得生物标志物测量值与疾病风险之间关联的精确估计。然而,生物标志物测量值在不同检测方法和实验室之间往往差异很大;因此,在汇总数据之前,将本地实验室测量值校准至参考实验室是必要的。我们提出了两种估计剂量反应曲线的方法,这两种方法适用于匹配/巢式病例对照研究的汇总项目中连续生物标志物测量值与对数相对风险之间的非线性关联。我们的方法基于完全校准法和内部校准法。完全校准法对所有受试者使用校准后的生物标志物测量值,即使是那些有参考实验室测量值的人,而内部校准法在有可用的参考实验室测量值时使用它,否则使用校准后的生物标志物测量值。我们进行了模拟研究来比较这些方法,以及一种未经校准就汇总数据的简单方法。我们的模拟和理论结果表明,在估计生物标志物与疾病关系的剂量反应曲线时,内部校准法和完全校准法比简单方法表现得好得多,并且完全校准法是校准生物标志物测量值的首选方法。我们将我们的方法应用于巢式病例对照研究的汇总项目中,以估计循环维生素D水平与结直肠癌风险之间的关联。