ChIP-R is a method for assessing the reproducibility of replicated ChIP-seq type experiments. It incorporates the rank product method, a novel thresholding methods, and the use of peak fragmentation return the most reproducible peaks.
Project description
ChIP-R ("chipper")
ChIP-R uses an adaptation of the rank product statistic to assess the reproducibility of ChIP-seq peaks by incorporating information from multiple ChIP-seq replicates and "fragmenting" peak locations to better combine the information present across the replicates.
Install
- Python3.x with the following packages:
- Numpy
- Scipy
To install ChIP-R:
pip install ChIP-R
OR if you want to install from source:
git clone https://github.com/rhysnewell/ChIP-R.git
cd ChIP-R
python3 setup.py install
Usage
ChIP-R requires only a single input type: A set of any number of BED file regions. Typically the output of peak calling from ChIP-seq peak calling on transcription factor or histone mark samples. Alternatively, ChIP-R can also be used on ATAC-seq peaks to retrieve reproducible peaks across ATAC-seq experiments.
Input
The input BED files must follow ENCODE narrowPeak or broadPeak format specifications. Typically, this format is the default for peak callers such as MACS2.
Peak calling
ChIP-R is compatible with the output peaks for any peak caller as long as the output is in the correct narrowPeak or broadPeak format. Additionally, there is no need to call peaks with relaxed thresholds when using your chosen peak caller as is the suggested by IDR.
Parameters
ChIP-R is fairly light on parameters that need to be chosen by the user. A couple of options that users may want to play with is
minentries
and size
.
minentries
determines the number of peak overlaps required to start calling a peak "reproducible".
The default of 2 typically provides the best results in our benchmarks but there may be a case where a user requires
ChIP-R to call peaks within a much stricter window.
size
determines the minimum peak size during peak output. Transcription factors generally want more punctate peaks, and
so the default value of 20 may be sufficient. However, histone marks may require a much larger value be set for this depending
on how broad you expect the histone mark to be. Generally, if you find ChIP-R produces too many small noisy peaks then this
value can be increased to filter them out.
Example
$ chipr -i sample1.bed sample2.bed sample3.bed sample4.bed -m 2 -o output_prefix
In the command line, type in 'chipr -h ' for detailed usage.
$ chipr -h
usage: chipr [-h] -i INPUT [INPUT ...] [-o OUTPUT] [-m MINENTRIES]
[--rankmethod RANKMETHOD] [--duphandling DUPHANDLING]
[--seed RANDOM_SEED] [-a ALPHA]
Combine multiple ChIP-seq files and return a union of all peak locations and a
set confident, reproducible peaks as determined by rank product analysis
optional arguments:
-h, --help show this help message and exit
-i INPUT [INPUT ...], --input INPUT [INPUT ...]
ChIP-seq input files. These files must be in either
narrowPeak, broadPeak, or regionPeak format. Multiple
inputs are separeted by a single space
-o OUTPUT, --output OUTPUT
ChIP-seq output filename prefix
-m MINENTRIES, --minentries MINENTRIES
The minimum peaks between replicates required to form
an intersection of the peaks Default: 1
--rankmethod RANKMETHOD
The ranking method used to rank peaks within
replicates. Options: 'signalvalue', 'pvalue',
'qvalue'. Default: pvalue
--duphandling DUPHANDLING
Specifies how to handle entries that are ranked
equally within a replicate Can either take the
'average' ranks or a 'random' rearrangement of the
ordinal ranks Options: 'average', 'random' Default:
'average'
--seed RANDOM_SEED Specify a seed to be used in conjunction with the
'random' option for -duphandling Must be between 0 and
1 Default: 0.5
-a ALPHA, --alpha ALPHA
Alpha specifies the user cut-off value for set of
reproducible peaks The analysis will still produce
results including peaks within the threshold
calculated using the binomial method Default: 0.05
-s SIZE, --size SIZE Sets the default minimum peak size when peaks are
reconnected after fragmentation. Usually the minimum
peak size is determined by the size of surrounding
peaks, but in the case that there are no surrounding
peaks this value will be used Default: 20
Output
Important result files:
- prefixname_ALL.bed: All intersected peaks, ordered from most significant to least (10 columns)
- prefixname_T2.bed: The tier 2 intersected peaks, the peaks that fall within the binomial threshold (10 columns)
- prefixname_T1.bed: The tier 1 intersected peaks, the peaks that fall within the user defined threshold (10 columns)
- prefixname_log.txt: A log containing the number of peaks appearing in each tier.
prefixname.bed file has 10 columns. The output follows the standard peak format for bed files, with the addition of a 10th column that specifies the ranks of the peaks that produced this possible peak. See the toy example below.
chr | start | end | name | score | strand | signalValue | p-value | q-value |
---|---|---|---|---|---|---|---|---|
chr1 | 9118 | 10409 | T3_peak_87823 | 491 | . | 15.000000 | 0.113938 | 0.712353 |
Citation
Preprint available on bioarxiv https://www.biorxiv.org/content/10.1101/2020.11.24.396960v1
Contact
Authors: Rhys Newell, Michael Piper, Mikael Boden, Alexandra Essebier
Contact: rhys.newell(AT)hdr.qut.edu.au
Project details
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