Format

Send to

Choose Destination
BMC Biol. 2018 Jan 10;16(1):4. doi: 10.1186/s12915-017-0469-0.

Systematic target function annotation of human transcription factors.

Li YF1,2,3, Altman RB4,5.

Author information

1
Stanford Genome Technology Center, Stanford, CA, USA. yli3@illumina.com.
2
Department of Bioengineering, Stanford University, Stanford, CA, USA. yli3@illumina.com.
3
Present address: Department of Bioinformatics, Illumina Inc., San Diego, CA, USA. yli3@illumina.com.
4
Department of Bioengineering, Stanford University, Stanford, CA, USA. russ.altman@stanford.edu.
5
Department of Genetics, Stanford University, Stanford, CA, USA. russ.altman@stanford.edu.

Abstract

BACKGROUND:

Transcription factors (TFs), the key players in transcriptional regulation, have attracted great experimental attention, yet the functions of most human TFs remain poorly understood. Recent capabilities in genome-wide protein binding profiling have stimulated systematic studies of the hierarchical organization of human gene regulatory network and DNA-binding specificity of TFs, shedding light on combinatorial gene regulation. We show here that these data also enable a systematic annotation of the biological functions and functional diversity of TFs.

RESULT:

We compiled a human gene regulatory network for 384 TFs covering the 146,096 TF-target gene (TF-TG) relationships, extracted from over 850 ChIP-seq experiments as well as the literature. By integrating this network of TF-TF and TF-TG relationships with 3715 functional concepts from six sources of gene function annotations, we obtained over 9000 confident functional annotations for 279 TFs. We observe extensive connectivity between TFs and Mendelian diseases, GWAS phenotypes, and pharmacogenetic pathways. Further, we show that TFs link apparently unrelated functions, even when the two functions do not share common genes. Finally, we analyze the pleiotropic functions of TFs and suggest that the increased number of upstream regulators contributes to the functional pleiotropy of TFs.

CONCLUSION:

Our computational approach is complementary to focused experimental studies on TF functions, and the resulting knowledge can guide experimental design for the discovery of unknown roles of TFs in human disease and drug response.

KEYWORDS:

Co-regulation; Database; Function enrichment; Functional pleiotropy; Gene function annotation; Regulator diversity; Regulatory network; Target gene; Transcription factor

Supplemental Content

Full text links

Icon for BioMed Central Icon for PubMed Central
Loading ...
Support Center