Ingram Polly F, Bailey Allen J, Finn Peter R
Department of Psychological and Brain Sciences, Indiana University, 1101 E 10th St, Bloomington, IN 47405, United States.
Department of Psychological and Brain Sciences, Indiana University, 1101 E 10th St, Bloomington, IN 47405, United States.
Drug Alcohol Depend. 2022 May 1;234:109408. doi: 10.1016/j.drugalcdep.2022.109408. Epub 2022 Mar 15.
Drug overdose deaths have been increasing over the last several decades. While single substance classes, such as opioids, have been implicated in this rise, less is known about the contributions of polysubstance use (PSU) and other combinations of specific substances and symptoms that may be a risk factor for drug overdose.
Symptoms of alcohol, cannabis, and other drug use disorders, as well as co-substance use indicators, were assessed and then examined via network analysis in a sample of young adults (N = 1540). Features of the estimated symptom network were investigated, including topology and node centrality, as well as bridge centrality, which further examines node centrality while accounting for the nodes belonging to discrete communities.
Individual symptoms were more strongly associated with other symptoms within the same substance class than across substance classes. Tolerance and withdrawal symptoms were the most central items in the network. However, when accounting for symptoms belonging to discrete substance classes, drug overdose emerged as a strong bridge symptom, among others.
As a strong bridge symptom, drug overdose had many connections with a variety of substances and symptoms, which might suggest that risk for drug overdose may be a function of overall substance use severity. Altogether, examining alcohol and substance use symptoms using a network analytic framework provided novel insights into the role PSU might play in conferring risk for drug overdose.
在过去几十年中,药物过量致死人数一直在增加。虽然单一物质类别(如阿片类药物)被认为是导致这一增长的原因,但对于多物质使用(PSU)以及特定物质和症状的其他组合可能作为药物过量风险因素的贡献,人们了解较少。
对酒精、大麻和其他药物使用障碍的症状以及共同物质使用指标进行评估,然后通过网络分析在一组年轻成年人样本(N = 1540)中进行检查。研究了估计症状网络的特征,包括拓扑结构和节点中心性,以及桥接中心性,桥接中心性在考虑属于离散社区的节点时进一步检查节点中心性。
个体症状与同一物质类别内的其他症状的关联比不同物质类别之间的关联更强。耐受性和戒断症状是网络中最核心的项目。然而,在考虑属于离散物质类别的症状时,药物过量成为了一个强烈的桥接症状等。
作为一个强烈的桥接症状,药物过量与多种物质和症状有许多联系,这可能表明药物过量风险可能是总体物质使用严重程度的一个函数。总之,使用网络分析框架检查酒精和物质使用症状为PSU在赋予药物过量风险方面可能发挥的作用提供了新的见解。