Institute of Chinese Materia Medica, Shanghai University of Traditional Chinese Medicine, Shanghai, 201203, China.
Montreal Neurological Institute and Hospital, McGill University, Montreal, QC, Canada.
Sci Rep. 2023 Feb 13;13(1):2488. doi: 10.1038/s41598-023-29101-1.
In recent years, postmortem brain studies have revealed that some molecular, cellular, and circuit changes associated with suicide, have an independent or additive effect on depression. The aim of the present study is to identify potential phenotypic, tissue, and sex-specific novel targets and pathways to distinguish depression or suicide from major depressive disorder (MDD) comorbid with suicide. The mRNA expression profiling datasets from two previous independent postmortem brain studies of suicide and depression (GSE102556 and GSE101521) were retrieved from the GEO database. Machine learning analysis was used to differentiate three regrouped gene expression profiles, i.e., MDD with suicide, MDD without suicide, and suicide without depression. Weighted correlation network analysis (WGCNA) was further conducted to identify the key modules and hub genes significantly associated with each of these three sub-phenotypes. TissueEnrich approaches were used to find the essential brain tissues and the difference of tissue enriched genes between depression with or without suicide. Dysregulated gene expression cross two variables, including phenotypes and tissues, were determined by global analysis with Vegan. RRHO analysis was applied to examine the difference in global expression pattern between male and female groups. Using the optimized machine learning model, several ncRNAs and mRNAs with higher AUC and MeanDecreaseGini, including GCNT1P1 and AC092745.1, etc., were identified as potential molecular targets to distinguish suicide with, or without MDD and depression without suicide. WGCNA analysis identified some key modules significantly associated with these three phenotypes, and the gene biological functions of the key modules mainly relate to ncRNA and miRNA processing, as well as oxidoreductase and dehydrogenase activity. Hub genes such as RP11-349A22.5, C20orf196, MAPK8IP3 and RP11-697N18.2 were found in these key modules. TissueEnrich analysis showed that nucleus accumbens and subiculum were significantly changed among the 6 brain regions studied. Global analysis with Vegan and RRHO identified PRS26, ARNT and SYN3 as the most significantly differentially expressed genes across phenotype and tissues, and there was little overlap between the male and female groups. In this study, we have identified novel gene targets, as well as annotated functions of co-expression patterns and hub genes that are significantly distinctive between depression with suicide, depression without suicide, and suicide without depression. Moreover, global analysis across three phenotypes and tissues confirmed the evidence of sex difference in mood disorders.
近年来,尸检大脑研究表明,一些与自杀相关的分子、细胞和回路变化具有独立或附加的作用,会影响抑郁。本研究的目的是确定潜在的表型、组织和性别特异性的新靶点和途径,以区分抑郁或自杀与伴有自杀的重度抑郁症(MDD)。从 GEO 数据库中检索了两个先前独立的自杀和抑郁尸检大脑研究的 mRNA 表达谱数据集(GSE102556 和 GSE101521)。使用机器学习分析来区分三个重新分组的基因表达谱,即伴有自杀的 MDD、不伴有自杀的 MDD 和没有抑郁的自杀。进一步进行加权相关网络分析(WGCNA)以识别与这三种亚表型中的每一种都显著相关的关键模块和枢纽基因。使用 TissueEnrich 方法来发现与抑郁伴有或不伴有自杀相关的关键脑组织和组织中富集基因的差异。通过 Vegan 进行全局分析确定了跨越两个变量(表型和组织)的失调基因表达。RRHO 分析用于检查男女两组之间整体表达模式的差异。使用优化的机器学习模型,确定了一些具有更高 AUC 和 MeanDecreaseGini 的 ncRNAs 和 mRNAs,包括 GCNT1P1 和 AC092745.1 等,作为区分伴有或不伴有 MDD 的自杀和没有自杀的抑郁的潜在分子靶标。WGCNA 分析确定了一些与这三种表型显著相关的关键模块,关键模块的基因生物学功能主要与 ncRNA 和 miRNA 处理以及氧化还原酶和脱氢酶活性有关。在这些关键模块中发现了枢纽基因,如 RP11-349A22.5、C20orf196、MAPK8IP3 和 RP11-697N18.2。TissueEnrich 分析表明,在研究的 6 个脑区中,伏隔核和下托明显改变。Vegan 和 RRHO 的全局分析确定了 PRS26、ARNT 和 SYN3 是表型和组织之间差异表达最显著的基因,男女两组之间几乎没有重叠。在这项研究中,我们已经确定了新的基因靶标,并注释了与伴有自杀的抑郁、不伴有自杀的抑郁和没有抑郁的自杀之间显著不同的共表达模式和枢纽基因的功能。此外,跨越三个表型和组织的全局分析证实了情绪障碍中存在性别的证据。