Genome-wide extraction of reproducible continuous-valued signals hidden in noisy multisample functional genomics data
Project description
Consenrich
Consenrich is a sequential genome-wide state estimator for extraction of reproducible, spatially-resolved, epigenomic signals hidden in noisy multisample HTS data. The corresponding manuscript preprint is available on $$\text{bio}\textcolor{#960018}{R}\chi \text{iv}$$.
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Input:
- $m \geq 1$ Sequence alignment files
-t/--bam_filescorresponding to each sample in a given HTS experiment - (Optional): $m_c = m$ control sample alignments,
-c/--control_files, for each 'control' sample (e.g., ChIP-seq)
- $m \geq 1$ Sequence alignment files
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Output:
- Genome-wide 'consensus' epigenomic state estimates and uncertainty metrics (BedGraph/BigWig)
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Refer to Examples for a variety of detailed usage instances.
Features
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Consenrich explicitly models dynamic signal trends and noise profiles for each sample with scale-invariance $\implies$ Multi-sample, multi-assay estimation of target molecular states from related functional genomics assays, e.g., ChIP-seq + CUT-N-RUN, ATAC-seq + DNase-seq.
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Consenrich yields uncertainty-moderated signal tracks that effectively encompass multiple samples' epigenomic profiles $\implies$ Insightful data representation for profiling condition-specific regulatory landscapes (e.g., via consensus peak calling, differential analyses, etc.)
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Consenrich preserves legitimate spectral content while attenuating noise $\implies$ Improved comparison and profiling of condition-specific structural signatures discarded by enrichment-focused measures for HTS data.
Download/Install
Consenrich is available via PyPI/pip:
python -m pip install consenrich
If lacking administrative privileges, running with flag --user may be necessary.
Consenrich can also be easily downloaded and installed from source:
git clone https://github.com/nolan-h-hamilton/Consenrich.gitcd Consenrichpython setup.py sdist bdist_wheelpython -m pip install .- Check installation:
consenrich --help
Manuscript Preprint and Citation
Genome-Wide Uncertainty-Moderated Extraction of Signal Annotations from Multi-Sample Functional Genomics Data
Nolan H Hamilton, Benjamin D McMichael, Michael I Love, Terrence S Furey; doi: 10.1101/2025.02.05.636702
BibTeX
@article {Hamilton2025
author = {Hamilton, Nolan H and McMichael, Benjamin D and Love, Michael I and Furey, Terrence S},
title = {Genome-Wide Uncertainty-Moderated Extraction of Signal Annotations from Multi-Sample Functional Genomics Data},
year = {2025},
doi = {10.1101/2025.02.05.636702},
url = {https://www.biorxiv.org/content/10.1101/2025.02.05.636702v1},
}
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