Wang Haley R, Liu Zhen-Qi, Nakua Hajer, Hegarty Catherine E, Thies Melanie Blair, Patel Pooja K, Schleifer Charles H, Boeck Thomas P, McKinney Rachel A, Currin Danielle, Leathem Logan, DeRosse Pamela, Bearden Carrie E, Misic Bratislav, Karlsgodt Katherine H
Department of Psychology, University of California, Los Angeles, Los Angeles, California; Department of Psychiatry and Biobehavioral Sciences, Semel Institute for Neuroscience and Human Behavior, University of California, Los Angeles, Los Angeles, California.
Montréal Neurological Institute, McGill University, Montréal, Québec, Canada.
Biol Psychiatry. 2025 Jan 15;97(2):167-177. doi: 10.1016/j.biopsych.2024.06.011. Epub 2024 Jun 21.
Patients with early psychosis (EP) (within 3 years after psychosis onset) show significant variability, which makes predicting outcomes challenging. Currently, little evidence exists for stable relationships between neural microstructural properties and symptom profiles across EP diagnoses, which limits the development of early interventions.
A data-driven approach, partial least squares correlation, was used across 2 independent datasets to examine multivariate relationships between white matter properties and symptomatology and to identify stable and generalizable signatures in EP. The primary cohort included patients with EP from the Human Connectome Project for Early Psychosis (n = 124). The replication cohort included patients with EP from the Feinstein Institute for Medical Research (n = 78) as part of the MEND (Multimodal Evaluation of Neural Disorders) Project. Both samples included individuals with schizophrenia, schizoaffective disorder, and psychotic mood disorders.
In both cohorts, a significant latent component corresponded to a symptom profile that combined negative symptoms, primarily diminished expression, with specific somatic symptoms. Both latent components captured comprehensive features of white matter disruption, primarily a combination of subcortical and frontal association fibers. Strikingly, the partial least squares model trained on the primary cohort accurately predicted microstructural features and symptoms in the replication cohort. Findings were not driven by diagnosis, medication, or substance use.
This data-driven transdiagnostic approach revealed a stable and replicable neurobiological signature of microstructural white matter alterations in EP across diagnoses and datasets, showing strong covariance of these alterations with a unique profile of negative and somatic symptoms. These findings suggest the clinical utility of applying data-driven approaches to reveal symptom domains that share neurobiological underpinnings.
早期精神病(EP)患者(精神病发作后3年内)表现出显著的变异性,这使得预测结果具有挑战性。目前,关于EP诊断中神经微结构特性与症状特征之间稳定关系的证据很少,这限制了早期干预措施的发展。
采用数据驱动方法——偏最小二乘相关分析,对2个独立数据集进行分析,以研究白质特性与症状学之间的多变量关系,并确定EP中稳定且可推广的特征。主要队列包括来自人类早期精神病连接组项目的EP患者(n = 124)。复制队列包括来自费恩斯坦医学研究所的EP患者(n = 78),作为神经疾病多模态评估(MEND)项目的一部分。两个样本均包括精神分裂症、分裂情感性障碍和伴有精神病性症状的心境障碍患者。
在两个队列中,一个显著的潜在成分对应于一种症状特征,该特征将阴性症状(主要是表达减少)与特定的躯体症状相结合。两个潜在成分均捕捉到了白质破坏的综合特征,主要是皮质下和额叶联合纤维的组合。引人注目的是,在主要队列上训练的偏最小二乘模型准确地预测了复制队列中的微结构特征和症状。研究结果不受诊断、药物或物质使用的影响。
这种数据驱动的跨诊断方法揭示了EP中白质微结构改变的一种稳定且可重复的神经生物学特征,跨越诊断和数据集,显示出这些改变与独特的阴性和躯体症状特征之间存在强协方差。这些发现表明应用数据驱动方法揭示具有神经生物学基础的症状领域具有临床实用性。