Identification of molecular signatures and pathways involved in Rett syndrome using a multi-omics approach

被引:5
|
作者
Pascual-Alonso, Ainhoa [1 ,2 ]
Xiol, Clara [1 ,2 ]
Smirnov, Dmitrii [3 ,4 ]
Kopajtich, Robert [3 ,4 ]
Prokisch, Holger [3 ,4 ]
Armstrong, Judith [2 ,5 ,6 ]
机构
[1] Fundacio Recerca St Joan Deu, Esplugas de Llobregat, Spain
[2] Inst Recerca St Joan Deu, Esplugas de Llobregat, Spain
[3] Tech Univ Munich, Inst Human Genet, Munich, Germany
[4] Helmholtz Zentrum Munchen, Inst Neurogenom, Munich, Germany
[5] Inst Salud Carlos III ISCIII, CIBER ER Biomed Network Res Ctr Rare Dis, Madrid, Spain
[6] Hosp St Joan Deu, Genom Unit, Mol & Genet Med Sect, Barcelona, Spain
关键词
Rett syndrome; MECP2 duplication syndrome; Rett-like phenotypes; Multi-omics; Transcriptomics; Proteomics; Differential expression; FINGER PROTEIN; EXPRESSION; EFFICIENT; RECEPTOR; GENES; BRAIN;
D O I
10.1186/s40246-023-00532-1
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
BackgroundRett syndrome (RTT) is a neurodevelopmental disorder mainly caused by mutations in the methyl-CpG-binding protein 2 gene (MECP2). MeCP2 is a multi-functional protein involved in many cellular processes, but the mechanisms by which its dysfunction causes disease are not fully understood. The duplication of the MECP2 gene causes a distinct disorder called MECP2 duplication syndrome (MDS), highlighting the importance of tightly regulating its dosage for proper cellular function. Additionally, some patients with mutations in genes other than MECP2 exhibit phenotypic similarities with RTT, indicating that these genes may also play a role in similar cellular functions. The purpose of this study was to characterise the molecular alterations in patients with RTT in order to identify potential biomarkers or therapeutic targets for this disorder.MethodsWe used a combination of transcriptomics (RNAseq) and proteomics (TMT mass spectrometry) to characterise the expression patterns in fibroblast cell lines from 22 patients with RTT and detected mutation in MECP2, 15 patients with MDS, 12 patients with RTT-like phenotypes and 13 healthy controls. Transcriptomics and proteomics data were used to identify differentially expressed genes at both RNA and protein levels, which were further inspected via enrichment and upstream regulator analyses and compared to find shared features in patients with RTT.ResultsWe identified molecular alterations in cellular functions and pathways that may contribute to the disease phenotype in patients with RTT, such as deregulated cytoskeletal components, vesicular transport elements, ribosomal subunits and mRNA processing machinery. We also compared RTT expression profiles with those of MDS seeking changes in opposite directions that could lead to the identification of MeCP2 direct targets. Some of the deregulated transcripts and proteins were consistently affected in patients with RTT-like phenotypes, revealing potentially relevant molecular processes in patients with overlapping traits and different genetic aetiology.ConclusionsThe integration of data in a multi-omics analysis has helped to interpret the molecular consequences of MECP2 dysfunction, contributing to the characterisation of the molecular landscape in patients with RTT. The comparison with MDS provides knowledge of MeCP2 direct targets, whilst the correlation with RTT-like phenotypes highlights processes potentially contributing to the pathomechanism leading these disorders.
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页数:15
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