Impacts of risk thresholds and age on clinical high risk for psychosis: a comparative network analysis.

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Christophe Gauld, Pierre Fourneret, Ben Alderson-Day, Emma Palmer-Cooper, Clément Dondé
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Abstract

One of the main goals for supporting people with a psychotic disorder is early detection and intervention, and the detection of Clinical High Risk (CHR) is a major challenge in this respect. This study sought to compare core symptoms of CHR for psychosis networks based on two CHR self-assessment tools, across different risk thresholds and age groups. This cross-sectional online investigation analyzed 936 individuals for CHR, in France and the UK, with the Prodromal Questionnaire-16 (PQ-16) and the Perceptual and Cognitive Aberrations (PCA). Twelve different symptom networks were constructed, assessing relationships, compactness, centrality, predictability, and comparisons between them, based on different thresholds and age groups. In the above-threshold PQ-16 network, the most central symptom was "Voices or whispers"; in the PCA network, the most central symptom was "Non-relevant thoughts distract or bother". They presented low overall predictability. No significant difference was found between them. This study makes three key contributions. First, this cross-network analyses highlight the relative importance of some central symptoms. Secondly, comparisons between networks demonstrate the unity of the CHR construct across scales, thresholds, and ages, affirming its phenotypic homogeneity, an essential issue for patient care pathways. Thirdly, the low average network predictability suggests the existence of unconsidered symptoms within these CHR networks. These results shed light on the organization of CHR symptoms using routine clinical questionnaires, offering insights for preventive targets in a logic of precision semiology.

Abstract Image

风险阈值和年龄对精神病临床高风险的影响:比较网络分析。
支持精神病患者的主要目标之一是早期发现和干预,而临床高风险(CHR)的发现是这方面的一大挑战。本研究试图根据两种临床高风险自我评估工具,比较不同风险阈值和年龄组的精神病网络的临床高风险核心症状。这项横断面在线调查分析了法国和英国的 936 名 CHR 患者,采用的是前驱症状问卷-16 (PQ-16) 和感知与认知异常 (PCA)。根据不同的阈值和年龄组,构建了 12 个不同的症状网络,评估了它们之间的关系、紧凑性、中心性、可预测性和可比性。在高于阈值的 PQ-16 网络中,最核心的症状是 "声音或耳语";在 PCA 网络中,最核心的症状是 "无关想法分散注意力或造成困扰"。它们的总体可预测性较低。它们之间没有发现明显的差异。本研究有三个主要贡献。首先,这种跨网络分析突出了一些中心症状的相对重要性。其次,不同网络之间的比较证明了 CHR 结构在量表、阈值和年龄上的统一性,肯定了其表型的同质性,这对于患者护理路径来说是一个至关重要的问题。第三,低平均网络可预测性表明,在这些 CHR 网络中存在未被考虑的症状。这些结果揭示了使用常规临床问卷调查 CHR 症状的组织结构,为精确符号学逻辑中的预防目标提供了启示。
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来源期刊
CiteScore
8.80
自引率
4.30%
发文量
154
审稿时长
6-12 weeks
期刊介绍: The original papers published in the European Archives of Psychiatry and Clinical Neuroscience deal with all aspects of psychiatry and related clinical neuroscience. Clinical psychiatry, psychopathology, epidemiology as well as brain imaging, neuropathological, neurophysiological, neurochemical and moleculargenetic studies of psychiatric disorders are among the topics covered. Thus both the clinician and the neuroscientist are provided with a handy source of information on important scientific developments.
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