標題: | GREMA: modelling of emulated gene regulatory networks with confidence levels based on evolutionary intelligence to cope with the underdetermined problem |
作者: | Tsai, Ming-Ju Wang, Jyun-Rong Hoe, Shinn-Jang Shu, Li-Sun Huang, Wen-Lin Ho, Shinn-Ying 交大名義發表 生物科技學系 生物資訊及系統生物研究所 National Chiao Tung University Department of Biological Science and Technology Institude of Bioinformatics and Systems Biology |
公開日期: | 15-Jun-2020 |
摘要: | Motivation: Non-linear ordinary differential equation (ODE) models that contain numerous parameters are suitable for inferring an emulated gene regulatory network (eGRN). However, the number of experimental measurements is usually far smaller than the number of parameters of the eGRN model that leads to an underdetermined problem. There is no unique solution to the inference problem for an eGRN using insufficient measurements. Results: This work proposes an evolutionary modelling algorithm (EMA) that is based on evolutionary intelligence to cope with the underdetermined problem. EMA uses an intelligent genetic algorithm to solve the large-scale parameter optimization problem. An EMA-based method, GREMA, infers a novel type of gene regulatory network with confidence levels for every inferred regulation. The higher the confidence level is, the more accurate the inferred regulation is. GREMA gradually determines the regulations of an eGRN with confidence levels in descending order using either an S-system or a Hill function-based ODE model. The experimental results showed that the regulations with high-confidence levels are more accurate and robust than regulations with low-confidence levels. Evolutionary intelligence enhanced the mean accuracy of GREMA by 19.2% when using the S-system model with benchmark datasets. An increase in the number of experimental measurements may increase the mean confidence level of the inferred regulations. GREMA performed well compared with existing methods that have been previously applied to the same S-system, DREAM4 challenge and SOS DNA repair benchmark datasets. |
URI: | http://dx.doi.org/10.1093/bioinformatics/btaa267 http://hdl.handle.net/11536/155076 |
ISSN: | 1367-4803 |
DOI: | 10.1093/bioinformatics/btaa267 |
期刊: | BIOINFORMATICS |
Volume: | 36 |
Issue: | 12 |
起始頁: | 3833 |
結束頁: | 3840 |
Appears in Collections: | Articles |