Identifying causal genes for depression via integration of the proteome and transcriptome from brain and blood.
Yue-Ting DengYa-Nan OuBang-Sheng WuYu-Xiang YangYan JiangYu-Yuan HuangYi LiuLan TanQiang DongJohn SuckingFei LiJin-Tai YuPublished in: Molecular psychiatry (2022)
Genome-wide association studies (GWASs) have identified numerous risk genes for depression. Nevertheless, genes crucial for understanding the molecular mechanisms of depression and effective antidepressant drug targets are largely unknown. Addressing this, we aimed to highlight potentially causal genes by systematically integrating the brain and blood protein and expression quantitative trait loci (QTL) data with a depression GWAS dataset via a statistical framework including Mendelian randomization (MR), Bayesian colocalization, and Steiger filtering analysis. In summary, we identified three candidate genes (TMEM106B, RAB27B, and GMPPB) based on brain data and two genes (TMEM106B and NEGR1) based on blood data with consistent robust evidence at both the protein and transcriptional levels. Furthermore, the protein-protein interaction (PPI) network provided new insights into the interaction between brain and blood in depression. Collectively, four genes (TMEM106B, RAB27B, GMPPB, and NEGR1) affect depression by influencing protein and gene expression level, which could guide future researches on candidate genes investigations in animal studies as well as prioritize antidepressant drug targets.
Keyphrases
- genome wide
- protein protein
- gene expression
- depressive symptoms
- sleep quality
- bioinformatics analysis
- dna methylation
- small molecule
- genome wide identification
- resting state
- white matter
- big data
- binding protein
- major depressive disorder
- magnetic resonance imaging
- poor prognosis
- emergency department
- high resolution
- machine learning
- multiple sclerosis
- bipolar disorder
- blood brain barrier
- high density
- deep learning
- case control
- contrast enhanced
- genome wide association study