Published March 4, 2025 | Version v2
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Results for "Efficient count-based models improve power and robustness for large-scale single-cell eQTL mapping"

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

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negbinom_sumstats.zip

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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