Zwinderman A H
Department of Medical Statistics, University of Leiden, The Netherlands.
Qual Life Res. 1992 Jun;1(3):219-24. doi: 10.1007/BF00635621.
The statistical analysis of longitudinal quality of life data in the presence of missing data is discussed. In cancer trials missing data are generated due to the fact that patients die, drop out, or are censored. These missing data are problematic in the monitoring of the quality of life during the trial. However, by means of assuming that the cause of the missing data lies in the observed history of the patients and not in their unobserved future, the missing data are ignorable. Consequently, all available data can be used to estimate quality of life change patterns with time. The computations that are required are illustrated with real quality of life data and three commonly used computer packages for statistical analysis.
讨论了存在缺失数据时纵向生活质量数据的统计分析。在癌症试验中,由于患者死亡、退出或被截尾,会产生缺失数据。这些缺失数据在试验期间生活质量的监测中存在问题。然而,通过假设缺失数据的原因在于患者的观察到的病史而非未观察到的未来,这些缺失数据是可忽略的。因此,所有可用数据都可用于估计生活质量随时间的变化模式。文中用实际生活质量数据和三个常用的统计分析计算机软件包说明了所需的计算。