严重精神障碍的跨诊断前驱症状的纵向演变:由自然语言处理和电子健康记录提供信息的动态时间网络分析

IF 9.6 1区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Maite Arribas, Joseph M. Barnby, Rashmi Patel, Robert A. McCutcheon, Daisy Kornblum, Hitesh Shetty, Kamil Krakowski, Daniel Stahl, Nikolaos Koutsouleris, Philip McGuire, Paolo Fusar-Poli, Dominic Oliver
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引用次数: 0

摘要

对包括单极情绪障碍(UMD)、双相情绪障碍(BMD)和精神障碍(PSY)在内的严重精神障碍(SMD)的前驱期进行建模,应考虑症状和物质使用(前驱期特征)随时间的演变和相互作用。时间网络分析可以通过将前驱特征表示为节点来检测前驱特征之间和内部的因果依赖性,它们的连接(边)表明一个特征先于另一个特征的可能性。在SMD中,节点中心性可以揭示重要的前驱特征和潜在的干预目标。社区分析可以识别常见的特征组,以定义SMD处于危险状态。这项回顾性(2年)队列研究旨在建立一个全球跨诊断的SMD网络,了解前驱特征之间的时间关系,并研究UMD、BMD和PSY特异性子网络的组内差异。来自南伦敦和莫兹利NHS基金会信托基金的电子健康记录(EHRs)来自6462名SMD诊断患者(UMD:2066;弹道导弹防御:740;小组:3656)。经过验证的自然语言处理算法在SMD发病前2 - 6个月每3个月提取61个前驱特征。前驱特征的时间网络使用广义向量自回归面板分析构建,调整协变量。边权(偏有向相关系数,z)具有自相关、单向和双向关系。中心性被计算为离开(外中心性,cout)或进入(中心性,cin)节点的(非自回归)连接的总和。采用排列分析比较3个子网络(UMD、BMD、PSY),并采用Spinglass进行群落分析。SMD网络表现出较强的自相关性(0.04≤z≤0.10),以正向连接为主,攻击性(cout = 0.103)和泪流满面(cin = 0.134)是最主要的特征。UMD、BMD和PSY的子网络差异很小,UMD和PSY之间的边缘差异为3.5%,UMD和BMD之间的边缘差异为0.8%,BMD和PSY之间的边缘差异为0.4%。社区分析确定了一个积极的精神病社区(妄想思维-幻觉-偏执)和两个行为社区(攻击-大麻使用-可卡因使用-敌意,攻击-激动-敌意)是最常见的。这项研究代表了对SMD前驱特征的纵向相互作用进行的最广泛的时间网络分析。研究结果为支持跨SMD的跨诊断早期检测服务提供了进一步的证据,改进了检测高危个体的评估,并确定了作为潜在干预目标的核心特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Longitudinal evolution of the transdiagnostic prodrome to severe mental disorders: a dynamic temporal network analysis informed by natural language processing and electronic health records

Longitudinal evolution of the transdiagnostic prodrome to severe mental disorders: a dynamic temporal network analysis informed by natural language processing and electronic health records

Modelling the prodrome to severe mental disorders (SMD), including unipolar mood disorders (UMD), bipolar mood disorders (BMD) and psychotic disorders (PSY), should consider both the evolution and interactions of symptoms and substance use (prodromal features) over time. Temporal network analysis can detect causal dependence between and within prodromal features by representing prodromal features as nodes, with their connections (edges) indicating the likelihood of one feature preceding the other. In SMD, node centrality could reveal insights into important prodromal features and potential intervention targets. Community analysis can identify commonly occurring feature groups to define SMD at-risk states. This retrospective (2-year) cohort study aimed to develop a global transdiagnostic SMD network of the temporal relationships between prodromal features and to examine within-group differences with sub-networks specific to UMD, BMD and PSY. Electronic health records (EHRs) from South London and Maudsley (SLaM) NHS Foundation Trust were included from 6462 individuals with SMD diagnoses (UMD:2066; BMD:740; PSY:3656). Validated natural language processing algorithms extracted the occurrence of 61 prodromal features every three months from two years to six months before SMD onset. Temporal networks of prodromal features were constructed using generalised vector autoregression panel analysis, adjusting for covariates. Edge weights (partial directed correlation coefficients, z) were reported in autocorrelative, unidirectional and bidirectional relationships. Centrality was calculated as the sum of (non-autoregressive) connections leaving (out-centrality, cout) or entering (in-centrality, cin) a node. The three sub-networks (UMD, BMD, PSY) were compared using permutation analysis, and community analysis was performed using Spinglass. The SMD network revealed strong autocorrelations (0.04 ≤ z ≤ 0.10), predominantly positive connections, and identified aggression (cout = 0.103) and tearfulness (cin = 0.134) as the most central features. Sub-networks for UMD, BMD, and PSY showed minimal differences, with 3.5% of edges differing between UMD and PSY, 0.8% between UMD and BMD, and 0.4% between BMD and PSY. Community analysis identified one positive psychotic community (delusional thinking-hallucinations-paranoia) and two behavioural communities (aggression-cannabis use-cocaine use-hostility, aggression-agitation-hostility) as the most common. This study represents the most extensive temporal network analysis conducted on the longitudinal interplay of SMD prodromal features. The findings provide further evidence to support transdiagnostic early detection services across SMD, refine assessments to detect individuals at risk and identify central features as potential intervention targets.

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来源期刊
Molecular Psychiatry
Molecular Psychiatry 医学-精神病学
CiteScore
20.50
自引率
4.50%
发文量
459
审稿时长
4-8 weeks
期刊介绍: Molecular Psychiatry focuses on publishing research that aims to uncover the biological mechanisms behind psychiatric disorders and their treatment. The journal emphasizes studies that bridge pre-clinical and clinical research, covering cellular, molecular, integrative, clinical, imaging, and psychopharmacology levels.
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