Title of article :
Nonparametric-likelihood inference based on cost-effectively-sampled-data
Author/Authors :
Albert Vexler، نويسنده , , Shuling Liu&Enrique F. Schisterman، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Costs associated with the evaluation of biomarkers can restrict the number of relevant biological samples to
be measured. This common problem has been dealt with extensively in the epidemiologic and biostatistical
literature that proposes to apply different cost-efficient procedures, including pooling and random sampling
strategies. The pooling design has been widely addressed as a very efficient sampling method under
certain parametric assumptions regarding data distribution. When cost is not a main factor in the evaluation
of biomarkers but measurement is subject to a limit of detection, a common instrument limitation on the
measurement process, the pooling design can partially overcome this instrumental limitation. In certain
situations, the pooling design can provide data that is less informative than a simple random sample; however
this is not always the case. Pooled-data-based nonparametric inferences have not been well addressed
in the literature. In this article, a distribution-free method based on the empirical likelihood technique is
proposed to substitute the traditional parametric-likelihood approach, providing the true coverage, confidence
interval estimation and powerful tests based on data obtained after the cost-efficient designs.We also
consider several nonparametric tests to compare with the proposed procedure. We examine the proposed
methodology via a broad Monte Carlo study and a real data example.
Keywords :
Power , Random sampling , Student’s t -test , type-I error , cost-efficient design , Empirical likelihood , confidence interval , pooling design , Nonparametric method
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS