Globally learning gene regulatory networks based on hidden atomic regulators from transcriptomic big data

Author:

Shi Ming,Tan Sheng,Xie Xin-Ping,Li Ao,Yang Wulin,Zhu Tao,Wang Hong-Qiang

Abstract

Abstract Background Genes are regulated by various types of regulators and most of them are still unknown or unobserved. Current gene regulatory networks (GRNs) reverse engineering methods often neglect the unknown regulators and infer regulatory relationships in a local and sub-optimal manner. Results This paper proposes a global GRNs inference framework based on dictionary learning, named dlGRN. The method intends to learn atomic regulators (ARs) from gene expression data using a modified dictionary learning (DL) algorithm, which reflects the whole gene regulatory system, and predicts the regulation between a known regulator and a target gene in a global regression way. The modified DL algorithm fits the scale-free property of biological network, rendering dlGRN intrinsically discern direct and indirect regulations. Conclusions Extensive experimental results on simulation and real-world data demonstrate the effectiveness and efficiency of dlGRN in reverse engineering GRNs. A novel predicted transcription regulation between a TF TFAP2C and an oncogene EGFR was experimentally verified in lung cancer cells. Furthermore, the real application reveals the prevalence of DNA methylation regulation in gene regulatory system. dlGRN can be a standalone tool for GRN inference for its globalization and robustness.

Funder

the Key Research and Development Program of China

National Natural Science Foundation of China

Anhui Province’s key Research and Development Project

Research Projects of Anhui Provincial Education Department

Publisher

Springer Science and Business Media LLC

Subject

Genetics,Biotechnology

Reference64 articles.

1. Gerstein MB, Kundaje A, Hariharan M, Landt SG, Yan KK, Cheng C, et al. Architecture of the human regulatory network derived from ENCODE data. Nature. 2012;489(7414):91–100.

2. Yang AP, Liu LG, Chen MM, Liu F, You H, Liu L, et al. Integrated analysis of 10 lymphoma datasets identifies E2F8 as a key regulator in Burkitt's lymphoma and mantle cell lymphoma. Am J Transl Res. 2019;11(7):4382–96.

3. Barabási A-L, Gulbahce N, Loscalzo J. Network medicine: a network-based approach to human disease. Nat Rev Genet. 2010;12:56.

4. Duan Y, Tan Z, Yang M, Li J, Liu C, Wang C, et al. PC-3-Derived Exosomes Inhibit Osteoclast Differentiation by Downregulating miR-214 and Blocking NF-κB Signaling Pathway. Biomed Res Int. 2019;2019:8650846.

5. Zhang D, Xia J. Somatic synonymous mutations in regulatory elements contribute to the genetic aetiology of melanoma. BMC Med Genet. 2020;13(Suppl 5):43.

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