Institute of Social and Preventive Medicine, University of Bern Faculty of Medicine, Bern, Switzerland.
Graduate School of Health Sciences, University of Bern, Bern, Switzerland.
BMJ Open. 2022 Oct 27;12(10):e061497. doi: 10.1136/bmjopen-2022-061497.
Prevalence measures the occurrence of any health condition, exposure or other factors related to health. The experience of COVID-19, a new disease caused by SARS-CoV-2, has highlighted the importance of prevalence studies, for which issues of reporting and methodology have traditionally been neglected.
This communication highlights key issues about risks of bias in the design and conduct of prevalence studies and in reporting them, using examples about SARS-CoV-2 and COVID-19.
The two main domains of bias in prevalence studies are those related to the study population (selection bias) and the condition or risk factor being assessed (information bias). Sources of selection bias should be considered both at the time of the invitation to take part in a study and when assessing who participates and provides valid data (respondents and non-respondents). Information bias appears when there are systematic errors affecting the accuracy and reproducibility of the measurement of the condition or risk factor. Types of information bias include misclassification, observer and recall bias. When reporting prevalence studies, clear descriptions of the target population, study population, study setting and context, and clear definitions of the condition or risk factor and its measurement are essential. Without clear reporting, the risks of bias cannot be assessed properly. Bias in the findings of prevalence studies can, however, impact decision-making and the spread of disease. The concepts discussed here can be applied to the assessment of prevalence for many other conditions.
Efforts to strengthen methodological research and improve assessment of the risk of bias and the quality of reporting of studies of prevalence in all fields of research should continue beyond this pandemic.
患病率衡量的是任何与健康相关的健康状况、暴露或其他因素的发生情况。由 SARS-CoV-2 引起的新型疾病 COVID-19 的出现,凸显了患病率研究的重要性,而这些研究在报告和方法学方面的问题传统上一直被忽视。
本通讯使用与 SARS-CoV-2 和 COVID-19 相关的示例,强调了在设计和进行患病率研究以及报告患病率研究时,与偏倚相关的关键问题。
患病率研究中的两个主要偏倚领域是与研究人群(选择偏倚)和所评估的疾病或风险因素(信息偏倚)有关的偏倚。选择偏倚的来源应在邀请参与研究时以及评估谁参与并提供有效数据(应答者和非应答者)时考虑。当影响疾病或风险因素的测量准确性和可重复性时,就会出现信息偏倚。信息偏倚的类型包括分类错误、观察者和回忆偏倚。在报告患病率研究时,必须清楚描述目标人群、研究人群、研究设置和背景,以及清楚定义疾病或风险因素及其测量方法。如果没有明确的报告,就无法正确评估偏倚的风险。患病率研究结果中的偏倚可能会影响决策和疾病的传播。这里讨论的概念可以应用于评估许多其他疾病的患病率。
在本次大流行之后,应继续努力加强方法学研究,改善对患病率研究的偏倚风险评估和研究报告质量的评估。