Mohammadnejad Afsaneh, Li Weilong, Lund Jesper Beltoft, Li Shuxia, Larsen Martin J, Mengel-From Jonas, Michel Tanja Maria, Christiansen Lene, Christensen Kaare, Hjelmborg Jacob, Baumbach Jan, Tan Qihua
Epidemiology, Biostatistics and Biodemography, Department of Public Health, University of Southern Denmark, Odense, Denmark.
Population Research Unit, Faculty of Social Sciences, University of Helsinki, Helsinki, Finland.
Front Genet. 2021 Jun 14;12:675587. doi: 10.3389/fgene.2021.675587. eCollection 2021.
Cognitive aging is one of the major problems worldwide, especially as people get older. This study aimed to perform global gene expression profiling of cognitive function to identify associated genes and pathways and a novel transcriptional regulatory network analysis to identify important regulons. We performed single transcript analysis on 400 monozygotic twins using an assumption-free generalized correlation coefficient (GCC), linear mixed-effect model (LME) and kinship model and identified six probes (one significant at the standard FDR < 0.05 while the other results were suggestive with 0.18 ≤ FDR ≤ 0.28). We combined the GCC and linear model results to cover diverse patterns of relationships, and meaningful and novel genes like , and were detected. Our exploratory study showed the downregulation of all these genes with increasing cognitive function or vice versa except the gene, which was upregulated with increasing cognitive function. Linear models found only and , the other genes were captured by GCC. Significant functional pathways (FDR < 3.95e-10) such as focal adhesion, ribosome, cysteine and methionine metabolism, Huntington's disease, eukaryotic translation elongation, nervous system development, influenza infection, metabolism of RNA, and cell cycle were identified. A total of five regulons (FDR< 1.3e-4) were enriched in a transcriptional regulatory analysis in which and were activated and , and were repressed regulons. The genome-wide transcription analysis using both assumption-free GCC and linear models identified important genes and biological pathways implicated in cognitive performance, cognitive aging, and neurological diseases. Also, the regulatory network analysis revealed significant activated and repressed regulons on cognitive function.
认知衰老尤其是随着人们年龄增长而出现的一个全球性主要问题。本研究旨在对认知功能进行全基因组基因表达谱分析,以识别相关基因和通路,并进行新型转录调控网络分析以识别重要的调控子。我们使用无假设广义相关系数(GCC)、线性混合效应模型(LME)和亲属关系模型对400对同卵双胞胎进行了单转录本分析,识别出6个探针(1个在标准错误发现率<0.05时具有显著性,而其他结果在0.18≤错误发现率≤0.28时具有提示性)。我们将GCC和线性模型结果相结合以涵盖不同的关系模式,并检测到了诸如 、 和 等有意义的新基因。我们的探索性研究表明,除了 基因随认知功能增强而上调外,所有这些基因均随认知功能增强而下调,反之亦然。线性模型仅发现了 和 ,其他基因则由GCC捕获。识别出了显著的功能通路(错误发现率<3.95e-10),如粘着斑、核糖体、半胱氨酸和甲硫氨酸代谢、亨廷顿病、真核生物翻译延伸、神经系统发育、流感感染、RNA代谢和细胞周期。在转录调控分析中总共富集了5个调控子(错误发现率<1.3e-4),其中 和 是激活的调控子,而 和 是抑制的调控子。使用无假设GCC和线性模型进行的全基因组转录分析识别出了与认知表现、认知衰老和神经疾病相关的重要基因和生物学通路。此外,调控网络分析揭示了认知功能上显著激活和抑制的调控子。