Department of Biostatistics, The University of Iowa, 200 Hawkins Drive, The University of Iowa, Iowa City, IA 52242-1009, USA.
Stat Methods Med Res. 2010 Dec;19(6):559-74. doi: 10.1177/0962280209349008. Epub 2010 Feb 24.
Practitioners are often asking if the treatment successfully improved performance. Many times this question is directed towards the outcome of a single individual. In this article, we develop a method to assess the improvement of a single individual who is administered a test of percent correct at pre-treatment and post-treatment. A Bayesian approach is taken where the number correct is modelled as a binomial random variable and the percent correct is set to a beta prior distribution. The first model assumes percent correct at pre-test is equal to the percent correct at post-test and the posterior predictive distribution is used to evaluate the change in the number correct. We subsequently model the proportions correct at pre-test and post-test as unequal. The second model then assumes independent proportions and the third assumes correlated beta distributions for the two proportions. 95% credible intervals are calculated for the various methods for number of correct at post-test given a particular level at pre-test. An example using data from a cochlear implant clinical trial is presented where clinicians recorded percent correct in a consonant-nucleus-consonant test.
从业者经常会询问治疗是否成功提高了表现。很多时候,这个问题是针对单个个体的结果提出的。在本文中,我们开发了一种方法来评估接受百分制正确测试的个体在治疗前后的改善情况。采用贝叶斯方法,将正确数量建模为二项式随机变量,并将百分制正确设置为贝塔先验分布。第一个模型假设预测试的百分制正确等于后测试的百分制正确,而后验预测分布用于评估正确数量的变化。随后,我们将预测试和后测试的正确比例建模为不相等。第二个模型然后假设两个比例是独立的,第三个模型假设两个比例的贝塔分布是相关的。对于给定特定预测试水平的后测试正确数量,计算了各种方法的 95%可信区间。使用来自人工耳蜗临床试验的数据展示了一个示例,其中临床医生记录了辅音-核-辅音测试中的百分制正确。