Identifying neurobiological heterogeneity in clinical high-risk psychosis: a data-driven biotyping approach using resting-state functional connectivity.

IF 3 Q2 PSYCHIATRY Schizophrenia (Heidelberg, Germany) Pub Date : 2025-02-04 DOI:10.1038/s41537-025-00565-6
Xiaochen Tang, Yanyan Wei, Jiaoyan Pang, Lihua Xu, Huiru Cui, Xu Liu, Yegang Hu, Mingliang Ju, Yingying Tang, Bin Long, Wei Liu, Min Su, Tianhong Zhang, Jijun Wang
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Abstract

To explore the neurobiological heterogeneity within the Clinical High-Risk (CHR) for psychosis population, this study aimed to identify and characterize distinct neurobiological biotypes within CHR using features from resting-state functional networks. A total of 239 participants from the Shanghai At Risk for Psychosis (SHARP) program were enrolled, consisting of 151 CHR individuals and 88 matched healthy controls (HCs). Functional connectivity (FC) features that were correlated with symptom severity were subjected to the single-cell interpretation through multikernel learning (SIMLR) algorithm in order to identify latent homogeneous subgroups. The cognitive function, clinical symptoms, FC patterns, and correlation with neurotransmitter systems of biotype profiles were compared. Three distinct CHR biotypes were identified based on 646 significant ROI-ROI connectivity features, comprising 29.8%, 19.2%, and 51.0% of the CHR sample, respectively. Despite the absence of overall FC differences between CHR and HC groups, each CHR biotype demonstrated unique FC abnormalities. Biotype 1 displayed augmented somatomotor connection, Biotype 2 shown compromised working memory with heightened subcortical and network-specific connectivity, and Biotype 3, characterized by significant negative symptoms, revealed extensive connectivity reductions along with increased limbic-subcortical connectivity. The neurotransmitter correlates differed across biotypes. Biotype 2 revealed an inverse trend to Biotype 3, as increased neurotransmitter concentrations improved functional connectivity in Biotype 2 but reduced it in Biotype 3. The identification of CHR biotypes provides compelling evidence for the early manifestation of heterogeneity within the psychosis spectrum, suggesting that distinct pathophysiological mechanisms may underlie these subgroups.

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为了探索精神病临床高危(CHR)人群的神经生物学异质性,本研究旨在利用静息态功能网络特征识别和描述CHR人群中不同的神经生物学生物类型。本研究共招募了 239 名上海精神病高危人群(SHARP),其中包括 151 名临床高危人群和 88 名匹配的健康对照(HCs)。通过多核学习(SIMLR)算法对与症状严重程度相关的功能连接(FC)特征进行单细胞解释,以识别潜在的同质亚组。比较了生物型特征的认知功能、临床症状、FC 模式以及与神经递质系统的相关性。根据646个显著的ROI-ROI连接特征,确定了三种不同的CHR生物型,分别占CHR样本的29.8%、19.2%和51.0%。尽管CHR和HC组之间没有整体FC差异,但每个CHR生物型都表现出独特的FC异常。生物类型 1 显示躯体运动连接增强,生物类型 2 显示工作记忆受损,皮层下和网络特异性连接增强,而生物类型 3 以显著的消极症状为特征,显示广泛的连接减少,边缘-皮层下连接增强。不同生物型的神经递质相关性也有所不同。生物类型 2 与生物类型 3 呈反向趋势,神经递质浓度的增加改善了生物类型 2 的功能连通性,但却降低了生物类型 3 的功能连通性。CHR生物型的确定为精神病谱系内异质性的早期表现提供了有力的证据,表明这些亚群可能具有不同的病理生理机制。
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