Institute of Population Health, University of Liverpool, Liverpool, UK.
School of Psychology, Liverpool John Moores University, Liverpool, UK.
Int J Obes (Lond). 2024 Sep;48(9):1342-1346. doi: 10.1038/s41366-024-01566-8. Epub 2024 Jun 15.
Ultra-processed food (UPF) consumption is associated prospectively with weight gain and obesity in observational studies of adults. Unaccounted for confounding is a risk when attempting to make causal inference from observational studies. Limited research has examined how feasible it is that unmeasured confounding may explain associations between UPF consumption and weight gain in observational research.
We introduce the E value to obesity researchers. The E value is defined as the minimum hypothetical strength of association that one or more unaccounted for confounding variables would need to have with an exposure (UPF consumption) and outcome (weight gain) to explain the association between the exposure and outcome of interest. We meta-analysed prospective studies on the association between UPF consumption and weight gain in adults to provide an effect estimation. Next, we applied the E value approach to this effect estimate and illustrated the potential role that unmeasured or hypothetical residual confounding variables could theoretically have in explaining associations.
Higher consumption of UPFs was associated with increased weight gain in meta-analysis (RR = 1.14). The corresponding E value = 1.55, indicating that unaccounted for confounding variables with small-to-moderate sized associations with UPF consumption and weight gain (e.g., depressive symptoms, trait overeating tendencies, access to healthy and nutritious food) could individually or collectively hypothetically account for observed associations between UPF consumption and weight gain.
Unaccounted for confounding could plausibly explain the prospective association between UPF consumption and weight gain in adults. High quality observational research controlling for potential confounders and evidence from study types devoid of confounding are now needed.
在对成年人的观察性研究中,超加工食品(UPF)的消费与体重增加和肥胖呈前瞻性相关。在尝试从观察性研究中得出因果推论时,未被考虑到的混杂因素是一个风险。有限的研究已经检验了不可测量的混杂因素可能在多大程度上可以解释观察性研究中 UPF 消费与体重增加之间的关联。
我们向肥胖研究人员介绍 E 值。E 值定义为一个或多个未被考虑到的混杂变量与暴露(UPF 消费)和结果(体重增加)之间需要具有的最小假设关联强度,以解释暴露与感兴趣的结果之间的关联。我们对成年人 UPF 消费与体重增加之间的关联进行了前瞻性研究的荟萃分析,以提供效应估计。接下来,我们将 E 值方法应用于该效应估计,并说明了未测量或假设的残余混杂变量在理论上可能在解释关联方面所起的潜在作用。
荟萃分析显示,较高的 UPF 消费与体重增加呈正相关(RR=1.14)。相应的 E 值=1.55,表明与 UPF 消费和体重增加具有小到中等关联的未被考虑到的混杂变量(例如,抑郁症状、特质暴食倾向、获得健康和营养食品的机会)可以单独或集体地假设性地解释 UPF 消费与体重增加之间观察到的关联。
未被考虑到的混杂因素可能合理地解释了成年人中 UPF 消费与体重增加之间的前瞻性关联。现在需要进行高质量的观察性研究,控制潜在混杂因素,并提供无混杂因素的研究类型的证据。