Prioritizing Crohn's disease genes by integrating association signals with gene expression implicates monocyte subsets.
Kyle GettlerMamta GiriEphraim KenigsbergJerome MartinLing-Shiang ChuangNai-Yun HsuLee A DensonJeffrey S HyamsAnne GriffithsJoshua D NoeWallace V CrandallDavid R MackRichard KellermayerClara AbrahamGabriel E HoffmanSubra KugathasanJudy H ChoPublished in: Genes and immunity (2019)
Genome-wide association studies have identified ~170 loci associated with Crohn's disease (CD) and defining which genes drive these association signals is a major challenge. The primary aim of this study was to define which CD locus genes are most likely to be disease related. We developed a gene prioritization regression model (GPRM) by integrating complementary mRNA expression datasets, including bulk RNA-Seq from the terminal ileum of 302 newly diagnosed, untreated CD patients and controls, and in stimulated monocytes. Transcriptome-wide association and co-expression network analyses were performed on the ileal RNA-Seq datasets, identifying 40 genome-wide significant genes. Co-expression network analysis identified a single gene module, which was substantially enriched for CD locus genes and most highly expressed in monocytes. By including expression-based and epigenetic information, we refined likely CD genes to 2.5 prioritized genes per locus from an average of 7.8 total genes. We validated our model structure using cross-validation and our prioritization results by protein-association network analyses, which demonstrated significantly higher CD gene interactions for prioritized compared with non-prioritized genes. Although individual datasets cannot convey all of the information relevant to a disease, combining data from multiple relevant expression-based datasets improves prediction of disease genes and helps to further understanding of disease pathogenesis.
Keyphrases
- genome wide
- rna seq
- dna methylation
- genome wide identification
- gene expression
- single cell
- newly diagnosed
- bioinformatics analysis
- copy number
- poor prognosis
- genome wide analysis
- network analysis
- chronic kidney disease
- dendritic cells
- ejection fraction
- end stage renal disease
- peripheral blood
- nk cells
- small molecule
- machine learning
- social media
- genome wide association
- artificial intelligence
- health information
- protein protein