Curran D, Molenberghs G, Fayers P M, Machin D
European Organization for Research and Treatment of Cancer (EORTC) Data Center, Brussels, Belgium.
Stat Med. 1998;17(5-7):697-709. doi: 10.1002/(sici)1097-0258(19980315/15)17:5/7<697::aid-sim815>3.0.co;2-y.
Analysing quality of life (QOL) data may be complicated for several reasons, such as: repeated measures are obtained; data may be collected on ordered categorical responses; the instrument may have multidimensional scales, and complete data may not be available for all patients. In addition, it may be necessary to integrate QOL with length of life. The major undesirable effects of missing data, in QOL research, are the introduction of biases due to inadequate modes of analysis and the loss of efficiency due to reduced sample sizes. Currently, there is no standard method for handling missing data in QOL studies. In fact, there are very few references to methods of handling missing data in this context. The aim of this paper is to provide an overview of methods for analysing incomplete longitudinal QOL data which have either been presented in the QOL literature or in the missing data literature. These methods of analysis include complete case, available case, summary measures, imputation and likelihood-based approaches. We also discuss the issue of bias and the need for sensitivity analyses.
分析生活质量(QOL)数据可能会因多种原因而变得复杂,例如:获取了重复测量数据;数据可能是针对有序分类反应收集的;测量工具可能具有多维量表,并且并非所有患者都能获得完整数据。此外,可能有必要将生活质量与寿命长度相结合。在生活质量研究中,缺失数据的主要不良影响是由于分析方式不当而引入偏差,以及由于样本量减少而导致效率损失。目前,在生活质量研究中尚无处理缺失数据的标准方法。实际上,在这种情况下,很少有关于处理缺失数据方法的参考文献。本文的目的是概述用于分析不完整纵向生活质量数据的方法,这些方法已在生活质量文献或缺失数据文献中有所介绍。这些分析方法包括完整病例法、可用病例法、汇总测量法、插补法和基于似然的方法。我们还将讨论偏差问题以及进行敏感性分析的必要性。