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首页> 外文期刊>Journal of abnormal psychology >The Influence of Sample Selection on the Structure of Psychopathology Symptom Networks: An Example With Alcohol Use Disorder
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The Influence of Sample Selection on the Structure of Psychopathology Symptom Networks: An Example With Alcohol Use Disorder

机译:样品选择对精神病理学症状网络结构的影响:酒精使用障碍的一个例子

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Increasingly, the structure of mental disorders has been studied in the form of a network, characterizing how symptoms or criteria interact with and influence each other. Many studies of psychiatric symptoms and diagnostic criteria employ community or population-based surveys using co-occurrence of the symptoms/criteria to form the networks. However, given the overall low prevalence rates of mental disorders and their symptoms in the general population, most of those surveyed may not exhibit or endorse any symptoms and yet are often included in network analyses. Consequently, because network models are built on associations between symptoms/criteria, much of the observed variability is driven by individuals who are asymptomatic. Using data from the National Epidemiological Survey of Alcohol and Related Conditions (NESARC) Wave 2 and NESARC-III, we explore the effect of these "asymptomatic" observations on the estimated relations among diagnostic criteria of alcohol use disorder to determine the effects of such observations on estimated networks. We do so using the eLasso tool, as well as with traditional measures of correlation between binary variables (the Phi coefficient and odds ratio). We find that when the proportion of asymptomatic individuals are systematically culled from the sample, the estimated pairwise relations are often significantly affected, even changing signs in some cases. Our findings indicate that researchers should carefully consider the population(s) included in their sample and the implications it has on their interpretations of pairwise similarity estimates and resulting generalizability and reproducibility of estimates of network structures.
机译:越来越多地,精神障碍的结构已经以网络的形式研究,其特征表征症状或标准如何与彼此相互作用。许多对精神症状和诊断标准的研究采用社区或基于人群的调查,使用症状/标准形成网络。然而,鉴于一般人群中的精神障碍和症状的总体低流行率和普遍存产,大多数被调查的人可能没有表现出或全面地致力于任何症状,但尚未包含在网络分析中。因此,由于网络模型建立在症状/标准之间的关联上,因此大部分观察到的可变性由无症状的个体驱动。使用来自国家流行病学调查的数据(NESARC)波2和Nesarc-III,我们探讨了这些“无论是无症状”观察的效果,了解酒精使用障碍诊断标准的估计关系,以确定这些观察的影响关于估计网络。我们使用Elasso工具,以及与二进制变量(PHI系数和差距比)之间的传统相关性的传统相关性。我们发现,当从样品中系统地剔除无症状的个体的比例时,估计的成对关系通常会受到显着影响,即使在某些情况下也变化了迹象。我们的调查结果表明,研究人员应仔细考虑其样本中包含的人口以及它对其对成对相似性估计的解释的影响以及导致网络结构估计的普遍性和再现性。

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