IEEE/ACM Trans Comput Biol Bioinform. 2024 Mar-Apr;21(2):215-226. doi: 10.1109/TCBB.2023.3339972. Epub 2024 Apr 3.
As the reconstruction of Genome-Scale Metabolic Models (GEMs) becomes standard practice in systems biology, the number of organisms having at least one metabolic model is peaking at an unprecedented scale. The automation of laborious tasks, such as gap-finding and gap-filling, allowed the development of GEMs for poorly described organisms. However, the quality of these models can be compromised by the automation of several steps, which may lead to erroneous phenotype simulations. Biological networks constraint-based In Silico Optimisation (BioISO) is a computational tool aimed at accelerating the reconstruction of GEMs. This tool facilitates manual curation steps by reducing the large search spaces often met when debugging in silico biological models. BioISO uses a recursive relation-like algorithm and Flux Balance Analysis (FBA) to evaluate and guide debugging of in silico phenotype simulations. The potential of BioISO to guide the debugging of model reconstructions was showcased and compared with the results of two other state-of-the-art gap-filling tools (Meneco and fastGapFill). In this assessment, BioISO is better suited to reducing the search space for errors and gaps in metabolic networks by identifying smaller ratios of dead-end metabolites. Furthermore, BioISO was used as Meneco's gap-finding algorithm to reduce the number of proposed solutions for filling the gaps.
随着基因组规模代谢模型 (GEM) 的重建成为系统生物学的标准实践,至少有一个代谢模型的生物体数量正在以前所未有的规模达到峰值。繁琐任务的自动化,如缺口发现和填补,使得对描述不佳的生物体的 GEM 得以开发。然而,这些模型的质量可能会因几个步骤的自动化而受到影响,这可能导致错误的表型模拟。基于生物网络约束的计算优化 (BioISO) 是一种旨在加速 GEM 重建的计算工具。该工具通过减少在调试计算生物模型时经常遇到的大型搜索空间,简化了手动编辑步骤。BioISO 使用递归关系样算法和通量平衡分析 (FBA) 来评估和指导计算表型模拟的调试。展示了 BioISO 引导模型重建调试的潜力,并将其与其他两种最先进的缺口填补工具 (Meneco 和 fastGapFill) 的结果进行了比较。在这种评估中,BioISO 通过识别更小比例的死端代谢物,更适合于减少代谢网络中的错误和缺口的搜索空间。此外,BioISO 被用作 Meneco 的缺口发现算法,以减少提出的填补缺口的解决方案数量。