Pang Zhen, Kuk Anthony Y C
Department of Statistics, National University of Singapore.
Biometrics. 2005 Dec;61(4):1076-84. doi: 10.1111/j.1541-0420.2005.00375.x.
Existing distributions for modeling fetal response data in developmental toxicology such as the beta-binomial distribution have a tendency of inflating the probability of no malformed fetuses, and hence understating the risk of having at least one malformed fetus within a litter. As opposed to a shared probability extra-binomial model, we advocate a shared response model that allows a random number of fetuses within the same litter to share a common response. An explicit formula is given for the probability function and graphical plots suggest that it does not suffer from the problem of assigning too much probability to the event of no malformed fetuses. The EM algorithm can be used to estimate the model parameters. Results of a simulation study show that the EM estimates are nearly unbiased and the associated confidence intervals based on the usual standard error estimates have coverage close to the nominal level. Simulation results also suggest that the shared response model estimates of the marginal malformation probabilities are robust to misspecification of the distributional form, but not so for the estimates of intralitter correlation and the litter-level probability of having at least one malformed fetus. The proposed model is fitted to a set of data from the U.S. National Toxicology Program. For the same dose-response relationship, the fit based on the shared response distribution is superior to that based on the beta-binomial, and comparable to that based on the recently proposed q-power distribution (Kuk, 2004, Applied Statistics53, 369-386). An advantage of the shared response model over the q-power distribution is that it is more interpretable and can be extended more easily to the multivariate case. To illustrate this, a bivariate shared response model is fitted to fetal response data involving visceral and skeletal malformation.
在发育毒理学中,用于对胎儿反应数据进行建模的现有分布,如贝塔二项分布,往往会夸大无畸形胎儿的概率,从而低估一窝中至少有一个畸形胎儿的风险。与共享概率超二项模型不同,我们提倡一种共享反应模型,该模型允许同一窝中的随机数量胎儿共享共同反应。给出了概率函数的显式公式,并且图形表明它不存在将过多概率赋予无畸形胎儿事件的问题。期望最大化(EM)算法可用于估计模型参数。模拟研究结果表明,EM估计几乎无偏,并且基于通常标准误差估计的相关置信区间的覆盖率接近名义水平。模拟结果还表明,边际畸形概率的共享反应模型估计对于分布形式的错误指定具有鲁棒性,但对于窝内相关性估计和至少有一个畸形胎儿的窝水平概率估计则不然。所提出的模型被应用于一组来自美国国家毒理学计划的数据。对于相同的剂量反应关系,基于共享反应分布的拟合优于基于贝塔二项分布的拟合,并且与基于最近提出的q幂分布(Kuk,2004,《应用统计学》53,369 - 386)的拟合相当。共享反应模型相对于q幂分布的一个优点是它更具可解释性,并且可以更轻松地扩展到多变量情况。为了说明这一点,将二元共享反应模型应用于涉及内脏和骨骼畸形的胎儿反应数据。