Spatial Multiomics Analysis in Psychiatric Disorders.

EC psychology and psychiatry Pub Date : 2023-06-01
Qiao Mao, Shiren Huang, Xinqun Luo, Ping Liu, Xiaoping Wang, Kesheng Wang, Yong Zhang, Bin Chen, Xingguang Luo
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Abstract

The aim of this study is to provide a comprehensive overview of spatial multiomics analysis, including its definition, processes, applications, significance and relevant research in psychiatric disorders. To achieve this, a literature search was conducted, focusing on three major spatial omics techniques and their application to three common psychiatric disorders: Alzheimer's disease (AD), schizophrenia, and autism spectrum disorders. Spatial genomics analysis has revealed specific genes associated with neuropsychiatric disorders in certain brain regions. Spatial transcriptomics analysis has identified genes related to AD in areas such as the hippocampus, olfactory bulb, and middle temporal gyrus. It has also provided insight into the response to AD in mouse models. Spatial proteogenomics has identified autism spectrum disorder (ASD)-risk genes in specific cell types, while schizophrenia risk loci have been linked to transcriptional signatures in the human hippocampus. In summary, spatial multiomics analysis offers a powerful approach to understand AD pathology and other psychiatric diseases, integrating multiple data modalities to identify risk genes for these disorders. It is valuable for studying psychiatric disorders with high or low cellular heterogeneity and provides new insights into the brain nucleome to predict disease progression and aid diagnosis and treatment.

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精神疾病的空间多组学分析。
本文就空间多组学分析的定义、过程、应用、意义及其在精神疾病中的相关研究等方面进行综述。为此,我们进行了文献检索,重点研究了三种主要的空间组学技术及其在三种常见精神疾病中的应用:阿尔茨海默病(AD)、精神分裂症和自闭症谱系障碍。空间基因组学分析揭示了与某些大脑区域的神经精神疾病相关的特定基因。空间转录组学分析已经在海马体、嗅球和中颞回等区域确定了与AD相关的基因。它还为小鼠模型对AD的反应提供了见解。空间蛋白质基因组学已经在特定的细胞类型中发现了自闭症谱系障碍(ASD)的风险基因,而精神分裂症的风险位点则与人类海马体中的转录特征有关。综上所述,空间多组学分析为了解阿尔茨海默病和其他精神疾病提供了一种强有力的方法,通过整合多种数据模式来识别这些疾病的风险基因。这对于研究具有高或低细胞异质性的精神疾病具有重要价值,并为预测疾病进展和辅助诊断和治疗提供了新的见解。
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Evidence Based Clinical Analytics Supporting the Genetic Addiction Risk Severity (GARS) Assessment to Early Identify Probands in Preaddiction. Spatial Multiomics Analysis in Psychiatric Disorders. Association of lesion location with post-stroke depression in China: a systematic review and meta-analysis. Futuristic Thinking about Engineering "Geneospirituality" to Help Prevent Relapse of Reward Deficiency Syndrome (RDS) Behaviors. Applications of Polygenic Risk Scores in Psychiatric Genetics.
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