DAESC-GPU: A GPU-powered Scalable Software for Single-cell Allele-Specific Expression Analysis
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Abstract
Allele-specific expression (ASE) is a powerful signal to study cis-regulatory effects. We previously developed DAESC, a statistical method for single-cell differential ASE analysis across multiple individuals. Despite improved power, the lack of computational efficiency limits its utility on large-scale datasets. Here, we present DAESC-GPU, an accelerated version of DAESC powered by Graphics Processing Units (GPUs). DAESC-GPU is dozens of times faster than DAESC and scalable to datasets of over a million cells. Application of the software on single-cell ASE data from the OneK1K cohort identified novel genes with regulatory patterns specific to naïve and central memory CD4+ T cells.
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Thesis (Master's)--University of Washington, 2025
