Felix Vogel, Tessa F Blanken, Julian Burger, Julian Reichert, Saskia Scholten, Lars Klintwall
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引用次数: 0
摘要
通过使用个性化症状网络对精神病理学进行个性化似乎是一种有希望的方法,可以更深入地了解精神障碍的发展和维持。创建这种网络的一种方法是使用感知因果网络(PECAN)方法。在这种方法中,受访者被系统地要求量化他们的症状是如何因果联系的。然后,作为一个定向网络,对个人或群体的答案进行可视化处理。PECAN可以表示因果关系,而不考虑它们的时间尺度,并且不需要数据饥渴的估计。以下指南旨在帮助临床医生和研究人员使用PECAN方法创建个性化网络。这些网络可以促进病例概念化和个体患者治疗的个性化以及对患者群体的描述,揭示反复出现的反馈循环和中心症状。此外,还提供了关于节点选择、边缘评估和数据可视化所采用的程序的建议。此外,本文还讨论了PECAN在评估信度、效度和临床用途方面的潜力,以及PECAN的优势、局限性和未来的挑战。最后,我们概述了PECAN面临的挑战,并提出了一个研究议程,强调了改进这种仍然非常年轻的方法并将其应用于临床研究和实践的机会。(PsycInfo Database Record (c) 2025 APA,版权所有)。
How perceived causal networks can complement case conceptualization, diagnostic classification, and data-based networks: An introduction to a method for constructing personalized networks.
The personalization of psychopathology through the use of personalized symptom networks appears to be a promising approach for gaining deeper insights into the development and maintenance of mental disorders. One way to create such networks is by using the perceived causal networks (PECAN) method. In this method, respondents are systematically asked to quantify how their symptoms are causally linked. Answers are then visualized, either for the individual or aggregated for a group, as a directed network. PECAN can represent causal relations irrespective of their timescales and requires no data-hungry estimations. The following guidelines are intended to assist clinicians and researchers in the creation of personalized networks using the PECAN method. These networks can facilitate case conceptualization and personalization of treatments for individual patients and the description of groups of patients, revealing recurring feedback loops and central symptoms. Additionally, recommendations are provided regarding the procedures to be employed in the selection of nodes, assessment of edges, and visualization of the data. Furthermore, the potential for evaluating the reliability, validity, and clinical usefulness, as well as strengths, limitations, and future challenges of PECAN, is discussed. We conclude with an overview of the challenges of PECAN and a research agenda that highlights opportunities to improve the still very young method and implement it in clinical research and practice. (PsycInfo Database Record (c) 2025 APA, all rights reserved).