BaalChIP: Bayesian analysis of allele-specific transcription factor binding in cancer genomes.
Ines de SantiagoWei LiuKe YuanMartin O'ReillyChandra Sekhar Reddy ChilamakuriBruce A J PonderKerstin B MeyerFlorian MarkowetzPublished in: Genome biology (2017)
Allele-specific measurements of transcription factor binding from ChIP-seq data are key to dissecting the allelic effects of non-coding variants and their contribution to phenotypic diversity. However, most methods of detecting an allelic imbalance assume diploid genomes. This assumption severely limits their applicability to cancer samples with frequent DNA copy-number changes. Here we present a Bayesian statistical approach called BaalChIP to correct for the effect of background allele frequency on the observed ChIP-seq read counts. BaalChIP allows the joint analysis of multiple ChIP-seq samples across a single variant and outperforms competing approaches in simulations. Using 548 ENCODE ChIP-seq and six targeted FAIRE-seq samples, we show that BaalChIP effectively corrects allele-specific analysis for copy-number variation and increases the power to detect putative cis-acting regulatory variants in cancer genomes.
Keyphrases
- copy number
- genome wide
- mitochondrial dna
- transcription factor
- dna methylation
- rna seq
- papillary thyroid
- single cell
- high throughput
- squamous cell
- circulating tumor cells
- dna binding
- gene expression
- single molecule
- squamous cell carcinoma
- circulating tumor
- young adults
- electronic health record
- monte carlo
- deep learning