Rosner B
Biometrics. 1982 Mar;38(1):105-14.
For the cases of normally- and binomially-distributed outcome variables, methods are presented for analyzing ophthalmologic data to which a person may have contributed two eyes worth of information, the values from the two eyes being highly correlated. A frequently-used method of analysis, where each eye is treated as an independent random variable, is shown to be invalid in the presence of intraclass correlation: it yields true p-values two to six times as large as nominal p-values when realistic assumptions are made about the degree of correlation between eyes. These results may be applicable to other medical specialties, such as otolaryngology, where highly-correlated replicate observations are obtained from individuals.
对于服从正态分布和二项分布的结果变量的情况,本文介绍了一些分析眼科数据的方法。在这些数据中,一个人可能提供了双眼的信息,且双眼的值高度相关。一种常用的分析方法是将每只眼睛视为独立的随机变量,但在存在组内相关性的情况下,这种方法被证明是无效的:当对双眼之间的相关程度做出符合实际的假设时,它得出的真实p值是名义p值的两到六倍。这些结果可能适用于其他医学专业,如耳鼻喉科,在这些专业中,会从个体获得高度相关的重复观测值。