Chin Taylor, Foxman Ellen F, Watkins Timothy A, Lipsitch Marc
Center for Communicable Disease Dynamics, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, USA.
Department of Epidemiology, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, USA.
mBio. 2024 Jul 17;15(7):e0065824. doi: 10.1128/mbio.00658-24. Epub 2024 Jun 7.
When respiratory viruses co-circulate in a population, individuals may be infected with multiple pathogens and experience possible virus-virus interactions, where concurrent or recent prior infection with one virus affects the infection process of another virus. While experimental studies have provided convincing evidence for within-host mechanisms of virus-virus interactions, evaluating evidence for viral interference or potentiation using population-level data has proven more difficult. Recent studies have quantified the prevalence of co-detections using populations drawn from clinical settings. Here, we focus on selection bias issues associated with this study design. We provide a quantitative account of the conditions under which selection bias arises in these studies, review previous attempts to address this bias, and propose unbiased study designs with sample size estimates needed to ascertain viral interference. We show that selection bias is expected in cross-sectional co-detection prevalence studies conducted in clinical settings, except under a strict set of assumptions regarding the relative probabilities of being included in a study limited to individuals with clinical disease under different viral states. Population-wide studies that collect samples from participants irrespective of their clinical status would meanwhile require large sample sizes to be sufficiently powered to detect viral interference, suggesting that a study's timing, inclusion criteria, and the expected magnitude of interference are instrumental in determining feasibility.
当呼吸道病毒在人群中共同传播时,个体可能会感染多种病原体,并经历可能的病毒 - 病毒相互作用,即同时感染或近期曾感染一种病毒会影响另一种病毒的感染过程。虽然实验研究已经为病毒 - 病毒相互作用的宿主内机制提供了令人信服的证据,但利用人群水平的数据评估病毒干扰或增强的证据却更加困难。最近的研究已经使用来自临床环境的人群对共同检测的患病率进行了量化。在这里,我们关注与这种研究设计相关的选择偏倚问题。我们定量说明了这些研究中出现选择偏倚的条件,回顾了以往解决这种偏倚的尝试,并提出了无偏倚的研究设计以及确定病毒干扰所需的样本量估计。我们表明,在临床环境中进行的横断面共同检测患病率研究中,预计会出现选择偏倚,除非在一组关于在不同病毒状态下被纳入仅限于患有临床疾病个体的研究中的相对概率的严格假设下。与此同时,无论参与者的临床状态如何都从他们那里收集样本的全人群研究将需要大量样本量才能有足够的能力检测病毒干扰,这表明研究的时间、纳入标准以及预期的干扰程度对于确定可行性至关重要。