Department of Psychology, Psychological Methods, University of Amsterdam, Amsterdam, The Netherlands.
Department of Psychiatry and Neuropsychology, School of Mental Health and Neuroscience, Maastricht University Medical Center, Maastricht, The Netherlands.
Psychol Med. 2020 Mar;50(4):636-643. doi: 10.1017/S003329171900045X. Epub 2019 Mar 14.
Psychosis spectrum disorder is a heterogeneous, multifactorial clinical phenotype, known to have a high heritability, only a minor portion of which can be explained by molecular measures of genetic variation. This study proposes that the identification of genetic variation underlying psychotic disorder may have suffered due to issues in the psychometric conceptualization of the phenotype. Here we aim to open a new line of research into the genetics of mental disorders by explicitly incorporating genes into symptom networks. Specifically, we investigate whether links between a polygenic risk score (PRS) for schizophrenia and measures of psychosis proneness can be identified in a network model.
We analyzed data from n = 2180 subjects (controls, patients diagnosed with a non-affective psychotic disorder, and the first-degree relatives of the patients). A network structure was computed to examine associations between the 42 symptoms of the Community Assessment of Psychic Experiences (CAPE) and the PRS for schizophrenia.
The resulting network shows that the PRS is directly connected to the spectrum of positive and depressive symptoms, with the items conspiracy and no future being more often located on predictive pathways from PRS to other symptoms.
To our knowledge, the current exploratory study provides a first application of the network framework to the field of behavior genetics research. This allows for a novel outlook on the investigation of the relations between genome-wide association study-based PRSs and symptoms of mental disorders, by focusing on the dependencies among variables.
精神分裂症谱系障碍是一种异质的、多因素的临床表型,具有较高的遗传性,但仅有一小部分可以用遗传变异的分子测量来解释。本研究提出,精神障碍相关遗传变异的识别可能由于表型的心理测量概念化问题而受到影响。在这里,我们旨在通过明确将基因纳入症状网络,为精神障碍的遗传学研究开辟新的研究方向。具体来说,我们调查了精神分裂症多基因风险评分(PRS)与精神病倾向测量之间的联系是否可以在网络模型中确定。
我们分析了 n=2180 名受试者(对照组、被诊断为非情感性精神病的患者以及患者的一级亲属)的数据。计算了一个网络结构,以检查社区心理体验评估(CAPE)的 42 种症状与精神分裂症 PRS 之间的关联。
所得到的网络显示,PRS 与阳性和抑郁症状的频谱直接相关,阴谋和没有未来等项目更经常位于从 PRS 到其他症状的预测路径上。
据我们所知,这项探索性研究是网络框架在行为遗传学研究领域的首次应用。这为通过关注变量之间的依赖性,研究基于全基因组关联研究的 PRS 与精神障碍症状之间的关系提供了新的视角。