Prediction of Alzheimer's disease-specific phospholipase c gamma-1 SNV by deep learning-based approach for high-throughput screening.
Sung-Hyun KimSumin YangKey-Hwan LimEuiseng KoHyun-Jun JangMingon KangPann-Ghill SuhJae-Yeol JooPublished in: Proceedings of the National Academy of Sciences of the United States of America (2021)
Exon splicing triggered by unpredicted genetic mutation can cause translational variations in neurodegenerative disorders. In this study, we discover Alzheimer's disease (AD)-specific single-nucleotide variants (SNVs) and abnormal exon splicing of phospholipase c gamma-1 (PLCγ1) gene, using genome-wide association study (GWAS) and a deep learning-based exon splicing prediction tool. GWAS revealed that the identified single-nucleotide variations were mainly distributed in the H3K27ac-enriched region of PLCγ1 gene body during brain development in an AD mouse model. A deep learning analysis, trained with human genome sequences, predicted 14 splicing sites in human PLCγ1 gene, and one of these completely matched with an SNV in exon 27 of PLCγ1 gene in an AD mouse model. In particular, the SNV in exon 27 of PLCγ1 gene is associated with abnormal splicing during messenger RNA maturation. Taken together, our findings suggest that this approach, which combines in silico and deep learning-based analyses, has potential for identifying the clinical utility of critical SNVs in AD prediction.
Keyphrases
- deep learning
- copy number
- genome wide
- mouse model
- endothelial cells
- genome wide association study
- genome wide identification
- machine learning
- dna methylation
- cognitive decline
- gene expression
- multiple sclerosis
- brain injury
- single cell
- subarachnoid hemorrhage
- transcription factor
- white matter
- risk assessment
- genome wide analysis
- resting state
- body composition
- high intensity