微生物相互作用对群落代谢建模算法性能的影响:通量平衡分析(FBA)、群落通量平衡分析(cFBA)和 SteadyCom。

IF 3.5 3区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Bioprocess and Biosystems Engineering Pub Date : 2024-11-01 Epub Date: 2024-08-24 DOI:10.1007/s00449-024-03072-7
Maryam Afarin, Fereshteh Naeimpoor
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引用次数: 0

摘要

为了探索微生物相互作用对三种常用算法(通量平衡分析法(FBA)、群落通量平衡分析法(cFBA)和 SteadyCom)分析微生物群落代谢网络的结果的影响,我们设计了五个代表常见微生物相互作用的玩具群落模型。这些模型包括共生、互生、竞争、互生-竞争和共生-竞争。考虑到不同的生物量产量和底物限制,对每种类型的模型都进行了各种方案研究。在共生群落中,所有算法都得出了相似的结果。然而,生物量产量和基质限制的变化导致丰度(0.33-0.8)和群落增长率(2-5 1/h)在很大范围内变化。对于竞争性群落,所有算法都预测了生长最快的成员的生长。为了符合成员自然共存的原则,建议采用次优解而不是最优点。FBA 在模拟互生关系时面临挑战,始终只能预测一个成员的增长。虽然 cFBA 和 SteadyCom 导致了较低的群落增长率,但两个成员的共存都得到了满足。在具有双重交互作用的玩具模型中,与纯粹的竞争模型相反,由于依赖性促进了共存,因此实现了更现实的结果,而这是仅有竞争的情况下所缺少的。这些发现强调了基于特定微生物相互作用类型的算法选择对于可靠的群落行为预测的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Effect of microbial interactions on performance of community metabolic modeling algorithms: flux balance analysis (FBA), community FBA (cFBA) and SteadyCom.

Effect of microbial interactions on performance of community metabolic modeling algorithms: flux balance analysis (FBA), community FBA (cFBA) and SteadyCom.

To explore the impact of microbial interactions on outcomes from three prevalent algorithms (Flux Balance Analysis (FBA), community FBA (cFBA), and SteadyCom) analyzing microbial community metabolic networks, five toy community models representing common microbial interactions were designed. These include commensalism, mutualism, competition, mutualism-competition, and commensalism-competition. Various scenarios, considering different biomass yields and substrate constraints, were examined for each type. In commensal communities, all algorithms consistently produced similar results. However, changes in biomass yields and substrate constraints led to variable abundances (0.33-0.8) and community growth rates (2-5 1/h) within a broad range. For competitive communities, all algorithms predicted growth of fastest-growing member. To comply with the natural coexistence of members, suboptimal solutions over optimal point are recommended. FBA faced challenges in modeling mutualism, consistently predicting growth of only one member. Although cFBA and SteadyCom resulted in a lower community growth rate, coexistence of both members were satisfied. In toy models with dual interactions, more realistic outcomes were achieved contrary to purely competitive model as the dependency fosters the coexistence which was missing in the competitive only scenarios. These findings emphasize the importance of algorithm choice based on specific microbial interaction types for reliable community behavior predictions.​.

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来源期刊
Bioprocess and Biosystems Engineering
Bioprocess and Biosystems Engineering 工程技术-工程:化工
CiteScore
7.90
自引率
2.60%
发文量
147
审稿时长
2.6 months
期刊介绍: Bioprocess and Biosystems Engineering provides an international peer-reviewed forum to facilitate the discussion between engineering and biological science to find efficient solutions in the development and improvement of bioprocesses. The aim of the journal is to focus more attention on the multidisciplinary approaches for integrative bioprocess design. Of special interest are the rational manipulation of biosystems through metabolic engineering techniques to provide new biocatalysts as well as the model based design of bioprocesses (up-stream processing, bioreactor operation and downstream processing) that will lead to new and sustainable production processes. Contributions are targeted at new approaches for rational and evolutive design of cellular systems by taking into account the environment and constraints of technical production processes, integration of recombinant technology and process design, as well as new hybrid intersections such as bioinformatics and process systems engineering. Manuscripts concerning the design, simulation, experimental validation, control, and economic as well as ecological evaluation of novel processes using biosystems or parts thereof (e.g., enzymes, microorganisms, mammalian cells, plant cells, or tissue), their related products, or technical devices are also encouraged. The Editors will consider papers for publication based on novelty, their impact on biotechnological production and their contribution to the advancement of bioprocess and biosystems engineering science. Submission of papers dealing with routine aspects of bioprocess engineering (e.g., routine application of established methodologies, and description of established equipment) are discouraged.
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