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Displaying 11 results
Model trained on single cell atac-seq data using dsci-ATAC protocol using AtacWorks tool
Model
Model trained on single cell atac-seq data using dsci-ATAC protocol
Model
Model trained on single cell atac-seq data using dsc-ATAC protocol
Model
Model trained on single cell atac-seq data using dsc-ATAC protocol
Model
NVIDIA
NVIDIA
AtacWorks
Deep learning toolkit for coverage track denoising and peak calling from low-coverage or low-quality ATAC-Seq data
Resource
Model trained on bulk atac-seq data.
Model
De-noise 20 million read depth Atac-seq signal to resemble 50 million read depth Atac-seq signal.
Model
Model trained on bulk atac-seq data.
Model
Model trained on bulk atac-seq data.
Model
Model trained on low quality bulk atac-seq data.
Model
Model trained on bulk atac-seq data.
Model

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