Zhang Peng, Lagakos Stephen W
Department of Biostatistics, Harvard University, 655 Huntington Ave, Boston, MA 02115, USA.
Stat Med. 2008 Oct 15;27(23):4637-46. doi: 10.1002/sim.3125.
Inferences about the distribution of time to HIV infection in infants are complicated because infection is a silent event and imperfect diagnostic tests are used to detect its occurrence, leading to false-positive and false-negative results. Nonparametric likelihood approaches are computationally hampered by a large number of parameters and a possibly nonconcave likelihood function. To overcome these difficulties, we develop one-sample and regression methods based on profile likelihood and Markov chain Monte Carlo techniques. The methods also provide a useful diagnostic for assessing the infection status of individual subjects, and are illustrated using results from a recent clinical trial for the prevention of mother-to-child HIV transmission.
关于婴儿感染艾滋病毒时间分布的推断很复杂,因为感染是一个无声事件,且使用的诊断测试并不完美,会导致检测结果出现假阳性和假阴性。非参数似然方法因参数数量众多且似然函数可能非凹而在计算上受到阻碍。为克服这些困难,我们基于轮廓似然和马尔可夫链蒙特卡罗技术开发了单样本和回归方法。这些方法还为评估个体受试者的感染状况提供了有用的诊断,并通过近期一项预防母婴艾滋病毒传播临床试验的结果进行了说明。