Genetic Epidemiology, Department of Psychiatry, Amsterdam UMC, University of Amsterdam, Amsterdam, the Netherlands.
Centre for Academic Mental Health, School of Social and Community Medicine, University of Bristol, Bristol, UK.
Epidemiol Psychiatr Sci. 2024 Nov 7;33:e61. doi: 10.1017/S2045796024000623.
At the basis of many important research questions is causality - does X causally impact Y? For behavioural and psychiatric traits, answering such questions can be particularly challenging, as they are highly complex and multifactorial. 'Triangulation' refers to prospectively choosing, conducting and integrating several methods to investigate a specific causal question. If different methods, with different sources of bias, all indicate a causal effect, the finding is much less likely to be spurious. While triangulation can be a powerful approach, its interpretation differs across (sub)fields and there are no formal guidelines. Here, we aim to provide clarity and guidance around the process of triangulation for behavioural and psychiatric epidemiology, so that results of existing triangulation studies can be better interpreted, and new triangulation studies better designed.
We first introduce the concept of triangulation and how it is applied in epidemiological investigations of behavioural and psychiatric traits. Next, we put forth a systematic step-by-step guide, that can be used to design a triangulation study (accompanied by a worked example). Finally, we provide important general recommendations for future studies.
While the literature contains varying interpretations, triangulation generally refers to an investigation that assesses the robustness of a potential causal finding by explicitly combining different approaches. This may include multiple types of statistical methods, the same method applied in multiple samples, or multiple different measurements of the variable(s) of interest. In behavioural and psychiatric epidemiology, triangulation commonly includes prospective cohort studies, natural experiments and/or genetically informative designs (including the increasingly popular method of Mendelian randomization). The guide that we propose aids the planning and interpreting of triangulation by prompting crucial considerations. Broadly, its steps are as follows: determine your causal question, draw a directed acyclic graph, identify available resources and samples, identify suitable methodological approaches, further specify the causal question for each method, explicate the effects of potential biases and, pre-specify expected results. We illustrated the guide's use by considering the question: 'Does maternal tobacco smoking during pregnancy cause offspring depression?'.
In the current era of big data, and with increasing (public) availability of large-scale datasets, triangulation will become increasingly relevant in identifying robust risk factors for adverse mental health outcomes. Our hope is that this review and guide will provide clarity and direction, as well as stimulate more researchers to apply triangulation to causal questions around behavioural and psychiatric traits.
许多重要研究问题的基础是因果关系——X 是否会对 Y 产生因果影响?对于行为和精神特征,回答这样的问题可能特别具有挑战性,因为它们非常复杂且多因素。“三角测量”是指前瞻性地选择、进行和整合多种方法来研究特定的因果问题。如果不同的方法,具有不同的偏倚来源,都表明存在因果效应,则该发现不太可能是虚假的。虽然三角测量可能是一种强大的方法,但它在不同领域的解释不同,也没有正式的准则。在这里,我们旨在为行为和精神流行病学中的三角测量过程提供清晰度和指导,以便更好地解释现有三角测量研究的结果,并更好地设计新的三角测量研究。
我们首先介绍三角测量的概念,以及它如何应用于行为和精神特征的流行病学研究。接下来,我们提出了一个系统的逐步指南,可用于设计三角测量研究(附有示例)。最后,我们为未来的研究提供了重要的一般建议。
虽然文献中存在不同的解释,但三角测量通常是指通过明确结合不同方法来评估潜在因果发现的稳健性的研究。这可能包括多种类型的统计方法、在多个样本中应用相同的方法,或对感兴趣的变量进行多种不同的测量。在行为和精神流行病学中,三角测量通常包括前瞻性队列研究、自然实验和/或遗传信息丰富的设计(包括越来越受欢迎的孟德尔随机化方法)。我们提出的指南通过提示关键考虑因素来帮助规划和解释三角测量。总体而言,其步骤如下:确定您的因果问题,绘制有向无环图,确定可用的资源和样本,确定合适的方法学方法,进一步为每种方法指定因果问题,说明潜在偏差的影响,并预先指定预期结果。我们通过考虑以下问题来说明指南的使用:“母亲在怀孕期间吸烟会导致子女抑郁吗?”。
在大数据时代,随着大规模数据集(越来越多地向公众开放)的可用性不断提高,三角测量将在确定不良心理健康结果的稳健风险因素方面变得越来越重要。我们希望本综述和指南能提供清晰度和方向,并激励更多研究人员将三角测量应用于行为和精神特征的因果问题。