Hi all,
I want to quantitatively compare ChIP-seq data!
Experimental condition: - same background cell line but samples differ (WT, KO1) - same antibody was used to pull down transcription factor (not histone) - identical library preparation and sequencing parameters
My goal is to perform a differential binding analysis between the two samples (I have multiple biological replicates per condition). Considering I am looking at a transcription factor and have multiple biological replicates, which differential binding analysis is the most reliable for whole genome differential binding analysis?
I have checked out two review papers: 1. Shiqi Tu et al. An introduction to computational tools for differential binding analysis with ChIP-seq data 2. Sebastian Steinhauser et al. A comprehensive comparison of tools for differential ChIP-seq analysis
Based on their flow charts I have following options: -diffReps-nb -MultiGPS -PePr -ChIPDiff -ODIN -THOR
I am not sure if any of these are what I am looking for, so any help would be appreciated!
Thank you!
I can't tell you about the other tools, but ODIN doesn't take replicates into account, so you can cross this one from your list. THOR (from the same group) uses replicates and is a better option, especially if you have input controls.
Beside @Rory's suggestion, I would suggest you to pay attention to this paper (The Overlooked Fact: Fundamental Need for Spike-In Control for Virtually All Genome-Wide Analyses) about the wet procedure. Sebastian's work argued that there were few overlaps between different pipelines.