Huth K B S, Luigjes J, Marsman M, Goudriaan A E, van Holst R J
Department of Psychology, University of Amsterdam, The Netherlands; Department of Psychiatry, Amsterdam University Medical Center, University of Amsterdam, The Netherlands; Centre for Urban Mental Health, University of Amsterdam, The Netherlands.
Department of Psychiatry, Amsterdam University Medical Center, University of Amsterdam, The Netherlands; Centre for Urban Mental Health, University of Amsterdam, The Netherlands.
Addict Behav. 2022 Feb;125:107128. doi: 10.1016/j.addbeh.2021.107128. Epub 2021 Sep 29.
Alcohol use disorder is argued to be a highly complex disorder influenced by a multitude of factors on different levels. Common research approaches fail to capture this breadth of interconnecting symptoms. To address this gap in theoretical assumptions and methodological approaches, we used a network analysis to assess the interplay of alcohol use disorder symptoms. We applied the exploratory analysis to two US-datasets, a population sample with 23,591 individuals and a clinical sample with 483 individuals seeking treatment for alcohol use disorder. Using a Bayesian framework, we first investigated differences between the clinical and population sample looking at the symptom interactions and underlying structure space. In the population sample the time spent drinking alcohol was most strongly connected, whereas in the clinical sample loss of control showed most connections. Furthermore, the clinical sample demonstrated less connections, however, estimates were too unstable to conclude the sparsity of the network. Second, for the population sample we assessed whether the network was measurement invariant across external factors like age, gender, ethnicity and income. The network differed across all factors, especially for age subgroups, indicating that subgroup specific networks should be considered when deriving implications for theory building or intervention planning. Our findings corroborate known theories of alcohol use disorder stating loss of control as a central symptom in alcohol dependent individuals.
酒精使用障碍被认为是一种高度复杂的疾病,受到不同层面众多因素的影响。常见的研究方法未能涵盖这种相互关联症状的广度。为了弥补理论假设和方法学方法上的这一差距,我们使用网络分析来评估酒精使用障碍症状之间的相互作用。我们将探索性分析应用于两个美国数据集,一个是有23591人的人群样本,另一个是有483名寻求酒精使用障碍治疗的个体的临床样本。使用贝叶斯框架,我们首先研究了临床样本和人群样本在症状相互作用和潜在结构空间方面的差异。在人群样本中,饮酒时间的关联性最强,而在临床样本中,失去控制的关联性最强。此外,临床样本的关联性较少,然而,估计值过于不稳定,无法得出网络稀疏性的结论。其次,对于人群样本而言,我们评估了该网络在年龄、性别、种族和收入等外部因素方面是否具有测量不变性。该网络在所有因素上都存在差异,尤其是在年龄亚组方面,这表明在推导理论构建或干预计划的启示时应考虑特定亚组的网络。我们的研究结果证实了关于酒精使用障碍的说,即失去控制是酒精依赖个体的核心症状。