Andrade Chittaranjan
Dept. of Clinical Psychopharmacology and Neurotoxicology, National Institute of Mental Health and Neurosciences, Bangalore, Karnataka, India.
Indian J Psychol Med. 2025 Aug 10:02537176251364090. doi: 10.1177/02537176251364090.
Prevalent user bias, such as in the context of treatment with medication, occurs when a medication-using sample is attenuated by the experience of medication use, separating the original sample into former users and continuing users ("prevalent users"). Recruiting a sample after such a change has occurred results in a biased sample. This is problematic when the biasing influence is relevant to the outcome being studied. Three hypothetical studies are described to illustrate prevalent user bias: a cross-sectional study, a longitudinal observational study, and a randomized controlled trial (RCT). Concepts related to prevalent user bias are discussed. For example, this bias may help explain the well-known obesity paradox; and, performing completer analyses in RCTs is fallacious because it is an examination of outcomes in "prevalent users." Prevalent user bias can be avoided by recruiting only new users. If a study recruits "prevalent users," contamination by prevalent user bias should be considered. Finally, in longitudinal studies, reasons for drop out should be ascertained to determine whether the reasons influence outcomes through the prevalent user bias.
普遍使用者偏差,比如在药物治疗的背景下,当使用药物的样本因用药经历而被削弱时就会出现,将原始样本分为既往使用者和持续使用者(“普遍使用者”)。在这种变化发生后招募样本会导致样本有偏差。当这种偏差影响与所研究的结果相关时,这就会成为问题。描述了三项假设性研究以说明普遍使用者偏差:一项横断面研究、一项纵向观察性研究和一项随机对照试验(RCT)。讨论了与普遍使用者偏差相关的概念。例如,这种偏差可能有助于解释众所周知的肥胖悖论;而且,在随机对照试验中进行完成者分析是错误的,因为这是对“普遍使用者”的结果进行检查。通过只招募新使用者可以避免普遍使用者偏差。如果一项研究招募“普遍使用者”,则应考虑普遍使用者偏差造成的影响。最后,在纵向研究中,应确定退出的原因,以确定这些原因是否通过普遍使用者偏差影响结果。