高性能合成微生物群落的生态设计:从理论基础到功能优化。

IF 6.1 Q1 ECOLOGY
ISME communications Pub Date : 2025-08-21 eCollection Date: 2025-01-01 DOI:10.1093/ismeco/ycaf133
Zhihan Wang, Shang Wang, Qing He, Xingsheng Yang, Bo Zhao, Haihan Zhang, Ye Deng
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引用次数: 0

摘要

天然微生物群落的复杂性对预测操作提出了重大挑战,推动合成微生物群落(SynComs)作为环境,农业和生物医学应用中功能优化的可处理模型的出现。虽然syncom提供了增强的可控性,但其合理设计在实现功能精度和生态稳定性方面面临着持续的挑战。在这里,我们通过生态原理、进化理论和计算创新的战略整合,提出了工程syncom的理论和方法框架。通过(i)实现合作与竞争关系动态平衡的生态交互工程,(ii)通过关键物种治理、助手介导的适应和稀有分类群保护来确保结构完整性的分层物种协调,(iii)进化引导的人工选择克服了功能稳定性的权衡,以及(iv)实现有效资源分配的模块化代谢分层。我们演示了如何将syncom编程为可预测的功能。我们进一步确定了SynCom构建和应用的关键前沿,包括:微生物相互作用网络的机制解码,菌株发现的高通量培养组学,微生物暗物质的人工智能开发,自动化平台辅助的联盟组装,长期社区动态的预测建模,以及标准化框架和共享数据库的开发。理论-技术集成范例将SynComs建立为可编程的生态技术,能够通过工程生态恢复能力解决全球可持续性挑战。这种综合提供了从经验社区建设过渡到预测生态系统工程的概念路线图和实用工具包。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Ecological design of high-performance synthetic microbial communities: from theoretical foundations to functional optimization.

Ecological design of high-performance synthetic microbial communities: from theoretical foundations to functional optimization.

Ecological design of high-performance synthetic microbial communities: from theoretical foundations to functional optimization.

Ecological design of high-performance synthetic microbial communities: from theoretical foundations to functional optimization.

The complexity of natural microbial communities poses significant challenges for predictive manipulation, driving the emergence of Synthetic Microbial Communities (SynComs) as tractable models for functional optimization in environmental, agricultural, and biomedical applications. While SynComs provide enhanced controllability, their rational design faces persistent challenges in achieving both functional precision and ecological stability. Here, we present a theoretical and methodological framework for engineering SynComs through the strategic integration of ecological principles, evolutionary theory, and computational innovation. By (i) ecological interaction engineering for dynamic equilibrium of cooperative and competitive relationships, (ii) hierarchical species orchestration ensuring structural integrity through keystone species governance, helper-mediated adaptation, and rare taxa preservation, (iii) evolution-guided artificial selection overcoming functional-stability trade-offs, and (iv) modular metabolic stratification for efficient resource partitioning, we demonstrate how SynComs can be programmed for predictable functionality. We further identify critical frontiers for SynCom construction and application, including: mechanistic decoding of microbial interaction networks, high-throughput culturomics for strain discovery, artificial intelligence-enabled exploitation of microbial dark matter, automated platform-assisted consortium assembly, predictive modelling of long-term community dynamics, and the development of standardized frameworks and shared databases. The theory-technology integrated paradigm establishes SynComs as programmable ecotechnologies capable of addressing global sustainability challenges through engineered ecological resilience. This synthesis provides both a conceptual roadmap and a practical toolkit for transitioning from empirical community construction to predictive ecosystem engineering.

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