Department of Medical Research Center, Sun Yat-Sen Memorial Hospital, Sun Yat-Sen University, 107 Yan Jiang West Road, Guangzhou, 500001, People's Republic of China.
Guangdong Provincial Key Laboratory of Malignant Tumor Epigenetics and Gene Regulation, Guangzhou, 510220, People's Republic of China.
Hum Genet. 2021 Apr;140(4):609-623. doi: 10.1007/s00439-020-02230-7. Epub 2020 Nov 2.
Alzheimer's disease (AD) is one of the most common neurodegeneration diseases caused by multiple factors. The mechanistic insight of AD remains limited. To disclose molecular mechanisms of AD, many studies have been proposed from transcriptome analyses. However, no analysis across multiple levels of transcription has been conducted to discover co-expression networks of AD. We performed gene-level and isoform-level analyses of RNA sequencing (RNA-seq) data from 544 brain tissues of AD patients, mild cognitive impaired (MCI) patients, and healthy controls. Gene and isoform levels of co-expression modules were constructed by RNA-seq data. The associations of modules with AD were evaluated by integrating cognitive scores of patients, Genome-wide association studies (GWAS), alternative splicing analysis, and dementia-related genes expressed in brain tissues. Totally, 29 co-expression modules were found with expressions significantly correlated with the cognitive scores. Among them, two isoform modules were enriched with AD-associated SNPs and genes whose mRNA splicing displayed significant alteration in relation to AD disease. These two modules were further found enriched with dementia-related genes expressed in four brain regions of 125 AD patients. Analyzing expressions of these two modules revealed expressions of 39 isoforms (corresponding to 35 genes) significantly correlated with cognitive scores of AD patients, in which 38 isoforms were significantly up-regulated in AD patients comparing to controls, and 33 isoforms (corresponding to 29 genes) were not reported as AD-related previously. Employing the co-expression modules and the drug-induced gene expression data from Connectivity Map (CMAP), 12 drugs were predicted as significant in restoring the gene expression of AD patients towards health, which include nine drugs reported for relieving AD. In comparison, four of the top 12 significant drugs were known for relieving AD if the drug prediction was performed by the genes expressed significantly different in AD and healthy controls. Analysis of multiple levels of the transcriptomic organization is useful in suggesting AD-related co-expression networks and discovering drugs.
阿尔茨海默病(AD)是由多种因素引起的最常见的神经退行性疾病之一。AD 的发病机制仍不清楚。为了揭示 AD 的分子机制,已经有许多研究从转录组分析中提出。然而,尚未进行跨多个转录水平的分析以发现 AD 的共表达网络。我们对 544 名 AD 患者、轻度认知障碍(MCI)患者和健康对照者的大脑组织的 RNA 测序(RNA-seq)数据进行了基因和异构体水平的分析。通过 RNA-seq 数据构建基因和异构体水平的共表达模块。通过整合患者的认知评分、全基因组关联研究(GWAS)、选择性剪接分析和脑组织中表达的与痴呆相关的基因,评估模块与 AD 的相关性。总共发现了 29 个与认知评分显著相关的共表达模块。其中,两个异构体模块富含与 AD 相关的 SNP 和基因,其 mRNA 剪接与 AD 疾病相关有明显改变。这两个模块还进一步在 125 名 AD 患者的四个大脑区域中富集了表达与痴呆相关的基因。分析这两个模块的表达揭示了 39 个异构体(对应 35 个基因)的表达与 AD 患者的认知评分显著相关,其中 38 个异构体在 AD 患者中与对照组相比显著上调,33 个异构体(对应 29 个基因)之前未被报道与 AD 相关。利用共表达模块和来自 Connectivity Map(CMAP)的药物诱导基因表达数据,预测 12 种药物对恢复 AD 患者的健康基因表达具有显著作用,其中 9 种药物被报道可缓解 AD。相比之下,如果通过 AD 和健康对照者之间差异表达的基因进行药物预测,则前 12 种显著药物中有四种已知可缓解 AD。分析转录组组织的多个水平有助于提示 AD 相关的共表达网络和发现药物。