Fried Eiko I
Research Group of Quantitative Psychology and Individual Differences, Faculty of Psychology and Educational Sciences, University of Leuven Leuven, Belgium.
Front Psychol. 2015 Mar 23;6:309. doi: 10.3389/fpsyg.2015.00309. eCollection 2015.
Major depression (MD) is a highly heterogeneous diagnostic category. Diverse symptoms such as sad mood, anhedonia, and fatigue are routinely added to an unweighted sum-score, and cutoffs are used to distinguish between depressed participants and healthy controls. Researchers then investigate outcome variables like MD risk factors, biomarkers, and treatment response in such samples. These practices presuppose that (1) depression is a discrete condition, and that (2) symptoms are interchangeable indicators of this latent disorder. Here I review these two assumptions, elucidate their historical roots, show how deeply engrained they are in psychological and psychiatric research, and document that they contrast with evidence. Depression is not a consistent syndrome with clearly demarcated boundaries, and depression symptoms are not interchangeable indicators of an underlying disorder. Current research practices lump individuals with very different problems into one category, which has contributed to the remarkably slow progress in key research domains such as the development of efficacious antidepressants or the identification of biomarkers for depression. The recently proposed network framework offers an alternative to the problematic assumptions. MD is not understood as a distinct condition, but as heterogeneous symptom cluster that substantially overlaps with other syndromes such as anxiety disorders. MD is not framed as an underlying disease with a number of equivalent indicators, but as a network of symptoms that have direct causal influence on each other: insomnia can cause fatigue which then triggers concentration and psychomotor problems. This approach offers new opportunities for constructing an empirically based classification system and has broad implications for future research.
重度抑郁症(MD)是一个高度异质性的诊断类别。诸如悲伤情绪、快感缺失和疲劳等各种症状通常被加总为一个未加权的总分,然后使用临界值来区分抑郁参与者和健康对照者。研究人员随后会在此类样本中研究诸如MD风险因素、生物标志物和治疗反应等结果变量。这些做法预先假定:(1)抑郁症是一种离散的病症;(2)症状是这种潜在疾病的可互换指标。在此,我将审视这两个假设,阐明它们的历史根源,展示它们在心理学和精神病学研究中是多么根深蒂固,并证明它们与证据相悖。抑郁症并非是一种界限分明的一致综合征,抑郁症症状也不是潜在疾病的可互换指标。当前的研究实践将存在非常不同问题的个体归为一类,这导致了诸如有效抗抑郁药的研发或抑郁症生物标志物的识别等关键研究领域进展极为缓慢。最近提出的网络框架为这些有问题的假设提供了一种替代方案。MD并非被理解为一种独特的病症,而是被视为一个与焦虑症等其他综合征有大量重叠的异质性症状群。MD并非被构建为一种具有许多等效指标的潜在疾病,而是被视为一个症状网络,这些症状相互之间具有直接的因果影响:失眠会导致疲劳,进而引发注意力不集中和精神运动问题。这种方法为构建一个基于实证的分类系统提供了新的机会,并对未来研究具有广泛的意义。