Epstein L D, Muñoz A, He D
Department of Biostatistics, Johns Hopkins School of Hygiene and Public Health, Baltimore, MD 21205, USA.
Stat Med. 1996 Mar 15;15(5):463-76. doi: 10.1002/(SICI)1097-0258(19960315)15:5<463::AID-SIM177>3.0.CO;2-0.
We suggest a conceptually simple Bayesian approach to inferences about the conditional probability of a specimen being infection-free given the outcome of a diagnostic test and covariate information. The approach assumes that the infection state of a specimen is not observable but uses the outcomes of a second test in conjunction with those of the first, that is, dual testing data. Dual testing procedures are often employed in clinical laboratories to assure that samples are not contaminated or to increase the likelihood of correct diagnoses. Using the CD4 count and a proxy for risk behavior as covariates, we apply the method to obtain inferences about the conditional probability of an individual being HIV-1 infection-free given the individual's covariates and a negative outcome with the standard enzyme-linked immunoad-sorbent assay/Western blotting test for HIV-1 detection. Inferences combine data from two studies where specimens were tested with the standard and with the more sensitive polymerase chain reaction test.
我们提出一种概念上简单的贝叶斯方法,用于根据诊断测试结果和协变量信息推断样本无感染的条件概率。该方法假定样本的感染状态不可观测,但结合第一次测试结果使用第二次测试的结果,即双重测试数据。临床实验室经常采用双重测试程序,以确保样本未被污染或提高正确诊断的可能性。我们将CD4细胞计数和风险行为指标作为协变量,应用该方法来推断个体在已知其协变量以及标准酶联免疫吸附试验/蛋白质印迹法检测HIV-1呈阴性结果的情况下无HIV-1感染的条件概率。推断结合了两项研究的数据,在这两项研究中,样本分别采用标准测试和更灵敏的聚合酶链反应测试进行检测。