Published March 4, 2025
| Version v2
Dataset
Open
Results for "Efficient count-based models improve power and robustness for large-scale single-cell eQTL mapping"
Authors/Creators
Description
Results and datasets for jaxQTL paper: Efficient count-based models improve power and robustness for large-scale single-cell eQTL mapping. We provide all cis-SNP-gene pairs summary statistics by cell type and fine-mapping results by cell type. See details in preprint on medRxiv: https://www.medrxiv.org/content/10.1101/2025.01.18.25320755v1
Files
negbinom_sumstats.zip
Files
(21.5 GB)
| Name | Size | Download all |
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md5:e699fa50981eab15d61e1814db868d98
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20.9 GB | Preview Download |
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md5:fc8452af4db2420df8e1f7057fccd3c0
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1.7 kB | Download |
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md5:db62afd77a6795a8e6aa17d9598eebc7
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601.3 MB | Download |
Additional details
Funding
- National Institutes of Health
- P01CA196569
- National Institutes of Health
- Characterizing the evolutionary architecture of complex disease within and across diverse populations R01HG012133
- National Institutes of Health
- An integrative multi-omics approach to characterize prostate cancer risk in diverse populations R01CA258808
- National Institutes of Health
- Characterizing genetic signatures of natural selection to understand human diseases R35GM147789
- National Institutes of Health
- Haplotype-aware models of gene and isoform expression with application to genetic studies of disease in diverse populations R01GM140287
- National Institutes of Health
- From common to rare variant functional architectures of human diseases R00HG010160
Software
- Repository URL
- https://github.com/mancusolab/jaxqtl_analysis
- Development Status
- Active