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Multi-scale analysis of schizophrenia risk genes brain structure and clinical symptoms reveals integrative clues for subtyping schizophrenia patients

机译:精神分裂症风险基因脑结构和临床症状的多尺度分析揭示了精神分裂症患者亚型的综合线索

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摘要

Analysis linking directly genomics, neuroimaging phenotypes and clinical measurements is crucial for understanding psychiatric disorders, but remains rare. Here, we describe a multi-scale analysis using genome-wide SNPs, gene expression, grey matter volume (GMV), and the positive and negative syndrome scale scores (PANSS) to explore the etiology of schizophrenia. With 72 drug-naive schizophrenic first episode patients (FEPs) and 73 matched heathy controls, we identified 108 genes, from schizophrenia risk genes, that correlated significantly with GMV, which are highly co-expressed in the brain during development. Among these 108 candidates, 19 distinct genes were found associated with 16 brain regions referred to as hot clusters (HCs), primarily in the frontal cortex, sensory-motor regions and temporal and parietal regions. The patients were subtyped into three groups with distinguishable PANSS scores by the GMV of the identified HCs. Furthermore, we found that HCs with common GMV among patient groups are related to genes that mostly mapped to pathways relevant to neural signaling, which are associated with the risk for schizophrenia. Our results provide an integrated view of how genetic variants may affect brain structures that lead to distinct disease phenotypes. The method of multi-scale analysis that was described in this research, may help to advance the understanding of the etiology of schizophrenia.
机译:直接将基因组学,神经影像学表现型和临床测量联系起来的分析对于理解精神疾病至关重要,但仍然很少见。在这里,我们描述了使用全基因组SNP,基因表达,灰质体积(GMV)以及正负综合症量表评分(PANSS)进行的多尺度分析,以探讨精神分裂症的病因。我们对72名未接受过药物治疗的精神分裂症首发患者(FEP)和73个健康对照进行了匹配,我们从精神分裂症风险基因中鉴定了108个与GMV显着相关的基因,这些基因在发育过程中在大脑中高度共表达。在这108个候选基因中,发现19个不同的基因与16个被称为热簇(HC)的大脑区域相关,主要在额叶皮层,感觉运动区域以及颞叶和顶叶区域。通过所鉴定HC的GMV将患者分为具有可区分的PANSS评分的三组。此外,我们发现患者组中具有常见GMV的HCs与大多数映射到与神经信号相关的途径相关的基因有关,这些基因与精神分裂症的风险有关。我们的研究结果提供了遗传变异如何影响大脑结构从而导致不同疾病表型的完整观点。在这项研究中描述的多尺度分析方法,可能有助于增进对精神分裂症病因的理解。

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