Integrative analysis of rare copy number variants and gene expression data in alopecia areata implicates an aetiological role for autophagy.
Lynn PetukhovaAakash V PatelRachel K RigoLi BianMiguel VerbitskySimone Sanna-CherchiStephanie O ErjavecAlexa R AbdelazizJane E CeriseAli JabbariAngela M ChristianoPublished in: Experimental dermatology (2019)
Alopecia areata (AA) is a highly prevalent autoimmune disease that attacks the hair follicle and leads to hair loss that can range from small patches to complete loss of scalp and body hair. Our previous linkage and genome-wide association studies (GWAS) generated strong evidence for aetiological contributions from inherited genetic variants at different population frequencies, including both rare mutations and common polymorphisms. Additionally, we conducted gene expression (GE) studies on scalp biopsies of 96 patients and controls to establish signatures of active disease. In this study, we performed an integrative analysis on these two datasets to test the hypothesis that rare CNVs in patients with AA could be leveraged to identify drivers of disease in our AA GE signatures. We analysed copy number variants (CNVs) in a case-control cohort of 673 patients with AA and 16 311 controls independent of the case-control cohort of 96 research participants used in our GE study. Using an integrative computational analysis, we identified 14 genes whose expression levels were altered by CNVs in a consistent direction of effect, corresponding to gene expression changes in lesional skin of patients. Four of these genes were affected by CNVs in three or more unrelated patients with AA, including ATG4B and SMARCA2, which are involved in autophagy and chromatin remodelling, respectively. Our findings identified new classes of genes with potential contributions to AA pathogenesis.
Keyphrases
- copy number
- genome wide
- gene expression
- case control
- dna methylation
- mitochondrial dna
- end stage renal disease
- ejection fraction
- newly diagnosed
- cell death
- poor prognosis
- prognostic factors
- transcription factor
- machine learning
- peritoneal dialysis
- genome wide association
- oxidative stress
- multiple sclerosis
- dna damage
- risk assessment
- bioinformatics analysis
- network analysis
- big data
- hiv infected
- high density