Background: In the human genome, 98% of DNA sequences are non-protein-coding regions that were previously disregarded as junk DNA. In fact, non-coding regions host a variety of cis-regulatory regions which precisely control the expression of genes. Thus, Identifying active cis-regulatory regions in the human genome is critical for understanding gene regulation and assessing the impact of genetic variation on phenotype. The developments of high-throughput sequencing and machine learning technologies make it possible to predict cis-regulatory regions genome wide. Results: Based on rich data resources such as the Encyclopedia of DNA Elements (ENCODE) and the Fun...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Gene expression is regulated at both transcriptional and post-transcriptional levels. DNA sequence a...
The cis-regulatory elements (CRE) in the human genome play a critical role in transcriptional regula...
Background: In the human genome, 98% of DNA sequences are non-protein-coding region...
Background: In the human genome, 98% of DNA sequences are non-protein-coding regions that were previ...
Abstract Background In the human genome, 98% of DNA sequences are non-protein-coding regions that we...
The majority of the human genome consists of non-coding regions that have been called junk DNA. Howe...
This file contains supplemental Tables S1-S7, and supplemental Figures S1-S30. (PDF 27600 kb
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
The annotation and characterization of tissue-specific cis-regulatory elements (CREs) in non-coding ...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Genome-wide predictions of cis-regulatory regions for all six cell types. (ZIP 20400 kb
Machine learning algorithms trained to predict the regulatory activity of nucleic acid sequences hav...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Gene expression is regulated at both transcriptional and post-transcriptional levels. DNA sequence a...
The cis-regulatory elements (CRE) in the human genome play a critical role in transcriptional regula...
Background: In the human genome, 98% of DNA sequences are non-protein-coding region...
Background: In the human genome, 98% of DNA sequences are non-protein-coding regions that were previ...
Abstract Background In the human genome, 98% of DNA sequences are non-protein-coding regions that we...
The majority of the human genome consists of non-coding regions that have been called junk DNA. Howe...
This file contains supplemental Tables S1-S7, and supplemental Figures S1-S30. (PDF 27600 kb
With advances in sequencing technology, a vast amount of genomic sequence information has become ava...
Thesis (Ph.D.)--University of Washington, 2021The vast majority of the 3.1 billion base-pairs in the...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
The annotation and characterization of tissue-specific cis-regulatory elements (CREs) in non-coding ...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Genome-wide predictions of cis-regulatory regions for all six cell types. (ZIP 20400 kb
Machine learning algorithms trained to predict the regulatory activity of nucleic acid sequences hav...
Data-driven machine learning is the method of choice for predicting molecular phenotypes from nucleo...
Gene expression is regulated at both transcriptional and post-transcriptional levels. DNA sequence a...
The cis-regulatory elements (CRE) in the human genome play a critical role in transcriptional regula...