Developmental Imaging and Psychopathology Laboratory, University of Geneva School of Medicine, Geneva, Switzerland.
Institute of Bioengineering, Ecole Polytechnique Fédérale de Lausanne, Lausanne, Switzerland.
Elife. 2021 Sep 27;10:e59811. doi: 10.7554/eLife.59811.
Causal interactions between specific psychiatric symptoms could contribute to the heterogenous clinical trajectories observed in early psychopathology. Current diagnostic approaches merge clinical manifestations that co-occur across subjects and could significantly hinder our understanding of clinical pathways connecting individual symptoms. Network analysis techniques have emerged as alternative approaches that could help shed light on the complex dynamics of early psychopathology. The present study attempts to address the two main limitations that have in our opinion hindered the application of network approaches in the clinical setting. Firstly, we show that a multi-layer network analysis approach, can move beyond a static view of psychopathology, by providing an intuitive characterization of the role of specific symptoms in contributing to clinical trajectories over time. Secondly, we show that a Graph-Signal-Processing approach, can exploit knowledge of longitudinal interactions between symptoms, to predict clinical trajectories at the level of the individual. We test our approaches in two independent samples of individuals with genetic and clinical vulnerability for developing psychosis. Novel network approaches can allow to embrace the dynamic complexity of early psychopathology and help pave the way towards a more a personalized approach to clinical care.
特定精神症状之间的因果相互作用可能导致早期精神病理学中观察到的异质临床轨迹。目前的诊断方法融合了在不同受试者中共同出现的临床表现,这可能会严重阻碍我们对连接个体症状的临床途径的理解。网络分析技术已成为一种替代方法,可以帮助我们了解早期精神病理学的复杂动态。本研究试图解决我们认为阻碍网络方法在临床环境中应用的两个主要限制。首先,我们表明,多层网络分析方法可以通过直观地描述特定症状在随时间推移导致临床轨迹中的作用,超越精神病理学的静态观点。其次,我们表明,图形信号处理方法可以利用对症状之间的纵向相互作用的了解,来预测个体水平的临床轨迹。我们在两个具有遗传和临床易感性发展为精神病的个体的独立样本中测试了我们的方法。新颖的网络方法可以使我们能够接受早期精神病理学的动态复杂性,并为更个性化的临床护理方法铺平道路。