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BTNET : boosted tree based gene regulatory network inference algorithm using time-course measurement data

Authors
Park, SungjoonKim, Jung MinShin, WonhoHan, Sung WonJeon, MinjiJang, Hyun JinJang, Ik-SoonKang, Jaewoo
Issue Date
19-3월-2018
Publisher
BMC
Keywords
Gene regulatory network inference; Time course; Boosted tree
Citation
BMC SYSTEMS BIOLOGY, v.12
Indexed
SCIE
SCOPUS
Journal Title
BMC SYSTEMS BIOLOGY
Volume
12
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/76706
DOI
10.1186/s12918-018-0547-0
ISSN
1752-0509
Abstract
Background: Identifying gene regulatory networks is an important task for understanding biological systems. Time-course measurement data became a valuable resource for inferring gene regulatory networks. Various methods have been presented for reconstructing the networks from time-course measurement data. However, existing methods have been validated on only a limited number of benchmark datasets, and rarely verified on real biological systems. Results: We first integrated benchmark time-course gene expression datasets from previous studies and reassessed the baseline methods. We observed that GENIE3-time, a tree-based ensemble method, achieved the best performance among the baselines. In this study, we introduce BTNET, a boosted tree based gene regulatory network inference algorithm which improves the state-of-the-art. We quantitatively validated BTNET on the integrated benchmark dataset. The AUROC and AUPR scores of BTNET were higher than those of the baselines. We also qualitatively validated the results of BTNET through an experiment on neuroblastoma cells treated with an antidepressant. The inferred regulatory network from BTNET showed that brachyury, a transcription factor, was regulated by fluoxetine, an antidepressant, which was verified by the expression of its downstream genes. Conclusions: We present BTENT that infers a GRN from time-course measurement data using boosting algorithms. Our model achieved the highest AUROC and AUPR scores on the integrated benchmark dataset. We further validated BTNET qualitatively through a wet-lab experiment and showed that BTNET can produce biologically meaningful results.
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Han, Sung Won
공과대학 (산업경영공학부)
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