The relationship between noncoding DNA sequence and gene expression is not well-understood. Massively parallel reporter assays (MPRAs), which quantify the regulatory activity of large libraries of DNA sequences in parallel, are a powerful approach to characterize this relationship. We present MPRA-DragoNN, a convolutional neural network (CNN)-based framework to predict and interpret the regulatory activity of DNA sequences as measured by MPRAs. While our method is generally applicable to a variety of MPRA designs, here we trained our model on the Sharpr-MPRA dataset that measures the activity of ∼500,000 constructs tiling 15,720 regulatory regions in human K562 and HepG2 cell lines. MPRA-DragoNN predictions were moderately correlated (Spear...
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
Transcription factors (TFs) bind DNA by recognizing specific sequence motifs, typically of length 6-...
Thesis (Ph.D.)--University of Washington, 2020Although it took roughly 13 years for the Human Genome...
Deciphering the potential of noncoding loci to influence gene regulation has been the subject of int...
Deciphering the potential of noncoding loci to influence gene regulation has been the subject of int...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
Enhancer elements arc regions of DNA which are able to recruit transcription factors that promote an...
Machine learning algorithms trained to predict the regulatory activity of nucleic acid sequences hav...
Massively parallel reporter assays (MPRAs) enable nucleotide-resolution dissection of transcriptiona...
Massively parallel reporter assays (MPRAs) enable nucleotide-resolution dissection of transcriptiona...
Functional genomics approaches to better model genotype-phenotype relationships have important appli...
The annotation and characterization of tissue-specific cis-regulatory elements (CREs) in non-coding ...
FactorNet: a deep learning framework for predicting cell type specific transcription factor binding ...
Sequential regulatory activity predictions with deep convolutional neural networks.Github link - htt...
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
Transcription factors (TFs) bind DNA by recognizing specific sequence motifs, typically of length 6-...
Thesis (Ph.D.)--University of Washington, 2020Although it took roughly 13 years for the Human Genome...
Deciphering the potential of noncoding loci to influence gene regulation has been the subject of int...
Deciphering the potential of noncoding loci to influence gene regulation has been the subject of int...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
In the era of genome sequencing, it has become clear that interpreting sequence variation in the non...
Enhancer elements arc regions of DNA which are able to recruit transcription factors that promote an...
Machine learning algorithms trained to predict the regulatory activity of nucleic acid sequences hav...
Massively parallel reporter assays (MPRAs) enable nucleotide-resolution dissection of transcriptiona...
Massively parallel reporter assays (MPRAs) enable nucleotide-resolution dissection of transcriptiona...
Functional genomics approaches to better model genotype-phenotype relationships have important appli...
The annotation and characterization of tissue-specific cis-regulatory elements (CREs) in non-coding ...
FactorNet: a deep learning framework for predicting cell type specific transcription factor binding ...
Sequential regulatory activity predictions with deep convolutional neural networks.Github link - htt...
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
Transcription factors (TFs) bind DNA by recognizing specific sequence motifs, typically of length 6-...
Thesis (Ph.D.)--University of Washington, 2020Although it took roughly 13 years for the Human Genome...