Ananda Ridho, Daud Kauthar Mohd, Zainudin Suhaila
Faculty of Information Science & Technology, Universiti Kebangsaan Malaysia, Kajang, Selangor, Malaysia.
Industrial Engineering, Telkom University, Purwokerto, Jawa Tengah, Indonesia.
PeerJ Comput Sci. 2025 May 27;11:e2880. doi: 10.7717/peerj-cs.2880. eCollection 2025.
Over the last 20 years, researchers have proposed regulatory-metabolic network models to integrate gene regulatory networks (GRNs) and metabolic networks in metabolic engineering, aiming to enhance the production rate of desired metabolites. However, the proposed models are unable to comprehensively include the Boolean rules in the empirical gene regulatory networks (GRNs) and gene-protein-reaction (GPR) interactions. Thus, the types of gene interactions, such as inhibition and activation, are disregarded from the analysis. This may result in sub-optimal model performance. Hence, this article presented a novel model using reliability theory to include Boolean rules in empirical GRNs and GPR rules in the integrating process. The proposed algorithm of this model is termed as a reliability-based integrating (RBI) algorithm. The suggested algorithm had three variants: RBI-T1, RBI-T2, and RBI-T3. The performance of the RBI algorithms was assessed by comparing them with the existing algorithms, using empirical results and validated transcription factors (TF) knockout schemes, and their complexity time was identified. Also, the RBI method was implemented in the design of optimal mutant strains of and . The simulation results indicated that the effectiveness and efficiency of the RBI algorithms are adequately strong and competitive relative to the existing algorithms. Furthermore, the RBI algorithm effectively identified eight schemes capable of enhancing succinate and ethanol production rates by maintaining the survival of microbial strains. Those results demonstrated that the RBI algorithms are recommended for the construction of optimum mutant strains in metabolic engineering.
在过去20年里,研究人员提出了调控代谢网络模型,以在代谢工程中整合基因调控网络(GRNs)和代谢网络,旨在提高目标代谢产物的生产率。然而,所提出的模型无法全面纳入经验性基因调控网络(GRNs)中的布尔规则以及基因-蛋白质-反应(GPR)相互作用。因此,基因相互作用的类型,如抑制和激活,在分析中被忽略了。这可能导致模型性能次优。因此,本文提出了一种新颖的模型,该模型在整合过程中使用可靠性理论将布尔规则纳入经验性GRNs,并纳入GPR规则。该模型提出的算法被称为基于可靠性的整合(RBI)算法。所建议的算法有三个变体:RBI-T1、RBI-T2和RBI-T3。通过将RBI算法与现有算法进行比较,利用经验结果和经过验证的转录因子(TF)敲除方案评估了RBI算法的性能,并确定了它们的复杂时间。此外,RBI方法在[具体微生物名称1]和[具体微生物名称2]的最优突变菌株设计中得到了应用。模拟结果表明,相对于现有算法,RBI算法的有效性和效率足够强大且具有竞争力。此外,RBI算法通过维持微生物菌株的存活有效地识别出了八种能够提高琥珀酸和乙醇生产率的方案。这些结果表明,在代谢工程中构建最优突变菌株时推荐使用RBI算法。