Title of article :
Cost-efficient designs based on linearly associated biomarkers
Author/Authors :
Chang-Xing Ma، نويسنده , , Albert Vexler، نويسنده , , Enrique F. Schisterman&Lili Tian، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
A major limiting factor in much of the epidemiological and environmental researches is the cost of measuring
the biomarkers or analytes of interest. Often, the number of specimens available for analysis is greater
than the number of assays that is budgeted for. These assays are then performed on a random sample of
specimens. Regression calibration is then utilized to infer biomarker levels of expensive assays from other
correlated biomarkers that are relatively inexpensive to obtain and analyze. In other contexts, use of pooled
specimens has been shown to increase efficiency in estimation. In this article, we examine two types of
pooling in lieu of a random sample. The first is random (or traditional) pooling, and we characterize the
second as “optimal” pooling. The second, which we propose for regression analysis, is pooling based on
specimens ranked on the less expensive biomarker. The more expensive assay is then performed on the
pool of relatively similar measurements. The optimal nature of this technique is also exemplified via Monte
Carlo evaluations and real biomarker data. By displaying the considerable robustness of our method via
a Monte Carlo study, it is shown that the proposed pooling design is a viable option whenever expensive
assays are considered.
Keywords :
Sampling designs , D-optimality , Random sampling , cost-efficient sampling , biological samples , Linear regression , Grouping , pooling design
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS