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1.
随着后基因时代的到来,微生物的定向菌种改造在生产中发挥着越来越重要的作用.基因组尺度代谢网络模型是微生物定向改造中一种不可缺少的指导性工具,可降低菌种改造的盲目性,增加目的性和成功率.随着研究的深入,基因组尺度代谢网络模型的构建方法也越来越多.究竟选择什么样的方法才能构建出全面准确的基因组尺度代谢网络模型,对于初学者来说是一个大难题.论文结合本课题组的研究,将近年文献报导中出现过的模型构建方法进行了分类和分析,并评述了各种方法的优、缺点,以期为初学者提供参考.具体介绍的方法有:基于基因组注释构建代谢网络模型,基于蛋白组构建代谢网络模型,基于文献挖掘构建代谢网络模型,通过软件和网络平台构建代谢网络模型,基于京都基因与基因组百科全书(KEGG)构建代谢网络模型.五种构建代谢网络模型方法都有其优点,但也有不可避免的缺点,要构建较为准确全面的基因组尺度代谢网络模型,需要将各种方法结合,弥补彼此的不足.图4表0参48  相似文献   

2.
基因组尺度集成细胞网络模型研究进展   总被引:1,自引:0,他引:1  
细胞网络研究是系统生物学的一个研究热点,通过结合计算机模型和实验技术,从系统角度分析复杂的生物系统,可以为生物实验提供指导和预测。近十年来,国内外许多研究团队致力于基因组规模代谢网络、基因调控网络和信号转导网络模型的构建和分析,并取得了一定成果。而不同类型网络的集成和分析是当前生物网络研究中一个新的方向,并带来了诸多新的挑战。在本文中,主要对基因组尺度集成细胞网络模型的研究进展,特别是对代谢网络和转录网络的集成进行了详细论述,着重于集成网络的构建和分析方法,最后对该领域研究前景进行了展望。  相似文献   

3.
基因组尺度代谢网络研究进展   总被引:2,自引:0,他引:2  
王晖  马红武  赵学明 《生物工程学报》2010,26(10):1340-1348
基因组尺度代谢网络从基因组序列出发,结合基因、蛋白质、代谢数据库和实验数据,从系统的角度定量研究生命体的代谢过程,了解各个组分之间的相互作用关系。这类网络模型对于生命活动理论研究和优良工程菌的构建都具有重要的理论和实践意义。以下结合作者的实际研究经验,对基因组尺度代谢网络从重构到模拟直至应用进行了较为详细的介绍,并讨论了一些目前存在的难题和未来的研究方向。  相似文献   

4.
最小生命体的合成是合成生物学研究的重要方向。最小化基因组的同时而又不对细胞生长产生影响是代谢工程研究的一个重要目标。文中提出了一种从基因组尺度代谢网络模型出发,通过零通量反应删除及对非必需基因组合删除计算获得基因组最小化代谢网络模型的方法,利用该方法简化了大肠杆菌经典代谢网络模型iAF1260,由起始的1 260个基因简化得到了312个基因,而最优生物质生成速率保持不变。基因组最小化代谢网络模型预测了在细胞正常生长的前提下包含最少基因的代谢途径,为大肠杆菌获得最小基因组的湿实验设计提供了重要参考。  相似文献   

5.
高产特定产品的人工细胞工厂的构建需要对野生菌株进行大量的基因工程改造,近年来随着大量基因组尺度代谢网络模型的构建,人们提出了多种基于代谢网络分析预测基因改造靶点以使某一目标化合物合成最优的方法。这些方法利用基因组尺度代谢网络模型中的反应计量关系约束和反应不可逆性约束等,通过约束优化的方法预测可使产物合成最大化的改造靶点,避免了传统的通过相关途径的直观分析确定靶点的方法的局限性和主观性,为细胞工厂的理性设计提供了新的思路。以下结合作者的实际研究经验,对这些菌种优化方法的原理、优缺点及适用性等进行详细介绍,并讨论了目前存在的主要问题和未来的研究方向,为人们针对不同目标产品选择合适的方法及预测结果的可靠性评估提供了指导。  相似文献   

6.
基因组尺度代谢网络模型是以菌株高通量测序数据和各种组学数据为基础,模拟生物体的代谢过程,该模型能够预测菌种改造位点并指导具体实验,使菌种改造更理性、更直接和更省时。基因组尺度代谢网络模型在生物质燃料产生菌的改造方面已取得一定进展,在提高目标产物产量方面已取得一定效果。本文综述了基因组尺度代谢网络模型在生物质燃料产生菌改造中的应用,展望了其应用前景。  相似文献   

7.
简星星  高琪  花强 《微生物学通报》2015,42(9):1752-1761
【目的】近十年来,基因组代谢网络模型迅速发展。通过构建基因组代谢网络模型进行计算机仿真模拟已成为研究生物体复杂的生理代谢不可或缺的工具。实现对仿真结果的可视化分析,可以直观地追踪模型中的代谢流向,从而更好地对仿真结果进行分析。【方法】在简要概述目前可视化方法的基础上,提出了一种基于Matlab实现基因组规模代谢网络模型仿真结果可视化的方法:通过CellDesigner预先绘制与模型相匹配的图,通过RAVEN toolbox中的函数于Matlab进行读图、并实现仿真结果的可视化。【结果】以解脂耶氏酵母基因组规模代谢网络模型iYL619_PCP v1.7为对象,实现并阐明其仿真结果的可视化。【结论】通过该方法可以清晰地监测模型中的流量和流向变化,提高仿真结果的分析效率。  相似文献   

8.
基于约束的基因组尺度代谢网络模型(genome-scale metabolic models,GEMs)分析已被广泛应用于代谢表型的预测.而实际细胞中代谢速率除计量学约束外,还受到酶资源可用性和反应热力学可行性等其他因素影响,在GEMs中整合酶资源约束或者热力学约束构建多约束代谢网络模型可以进一步缩小优化解空间,提升细...  相似文献   

9.
高通量测序技术的快速发展催生了涵盖各层次细胞生命活动的组学数据,如转录组学数据、蛋白质组学数据和互作组学数据等。同时,全基因组代谢网络模型在不断完善和增多。整合组学数据,对生物细胞的代谢网络进行更深入的模拟分析成为目前微生物系统生物学研究的热点。目前整合转录组学数据进行全基因组代谢网络分析的方法主要以流量平衡分析(FBA)为基础,通过辨识不同条件下基因表达的变化,进而优化目标函数以得到相应的流量分布或代谢模型。本文对整合转录组学数据的FBA分析方法进行总结和比较,并详细阐述了不同方法的优缺点,为分析特定问题选择合适的方法提供参考。  相似文献   

10.
为进一步深入理解低能离子注入对DOB的生理代谢产生的生物学意义,本研究基于DOB全基因组De novo测序数据,应用生物信息学方法对离子束重组菌DOB981及其原始菌株进行基因组结构和功能注释,构建基因尺度的代谢网络,并用Cytoscape对其进行可视化分析。研究表明,离子束重组菌株DOB981的基因组大小比原始菌株减少了223 268 bp,ORF减少了204个,功能基因减少了136个,生化反应的数量减少了10个,而生物反应的反应底物比原始菌株增加了3个;离子束重组菌株DOB981独有19个生化反应,比原始菌株减少了10个。Cytoscape可视化分析表明,离子束重组菌DOB981代谢网络中包含1 604个节点和3 733条连线,虽然比原始菌株减少了1个节点,但连线却增加了68条。基因尺度代谢网络拓扑属性分析表明,离子束重组菌DOB981与原始菌株的代谢网络均为无标度网络,具有小世界网络(SWN)特性,但重组菌DOB981的代谢网络的特征路径长度大于原始菌株,其总体结构相对松散,且密度低。本研究不仅对DOB的环境适应性机制的研究具有重要意义,也为DOB基因组代谢网络模拟构建提供了理论基础。  相似文献   

11.
房柯池  王晶 《生命科学》2011,(9):853-859
全基因组范围代谢网络(genome-scale metabolic network,GSMN)的构建是合成生物学研究的一个重要研究手段。通过整合各种组学数据和借助计算机进行模拟分析,将基因型与表型的关系进行定量关联,从而为从全局的角度探索和揭示生物代谢机制,进而对生物进行合理的重新设计和工程改造提供了有效的框架。该方法在最小基因组研究中也有着突出的优势,通过计算机辅助的基因组最小化模拟与分析,能够系统鉴定微生物基因组基因的必需性。迄今为止,已有近百个基因组范围的代谢网络发表,覆盖的生物包括原核生物、真核生物和古生生物,并广泛应用于医药、能源、环境、工业和农业等多个领域,展现出了广阔的应用前景。将对全基因组范围代谢网络构建的方法、应用,特别是其在最小基因组研究中的应用作简要的综述。  相似文献   

12.
In the past decade, over 50 genome-scale metabolic reconstructions have been built for a variety of single- and multi- cellular organisms. These reconstructions have enabled a host of computational methods to be leveraged for systems-analysis of metabolism, leading to greater understanding of observed phenotypes. These methods have been sparsely applied to comparisons between multiple organisms, however, due mainly to the existence of differences between reconstructions that are inherited from the respective reconstruction processes of the organisms to be compared. To circumvent this obstacle, we developed a novel process, termed metabolic network reconciliation, whereby non-biological differences are removed from genome-scale reconstructions while keeping the reconstructions as true as possible to the underlying biological data on which they are based. This process was applied to two organisms of great importance to disease and biotechnological applications, Pseudomonas aeruginosa and Pseudomonas putida, respectively. The result is a pair of revised genome-scale reconstructions for these organisms that can be analyzed at a systems level with confidence that differences are indicative of true biological differences (to the degree that is currently known), rather than artifacts of the reconstruction process. The reconstructions were re-validated with various experimental data after reconciliation. With the reconciled and validated reconstructions, we performed a genome-wide comparison of metabolic flexibility between P. aeruginosa and P. putida that generated significant new insight into the underlying biology of these important organisms. Through this work, we provide a novel methodology for reconciling models, present new genome-scale reconstructions of P. aeruginosa and P. putida that can be directly compared at a network level, and perform a network-wide comparison of the two species. These reconstructions provide fresh insights into the metabolic similarities and differences between these important Pseudomonads, and pave the way towards full comparative analysis of genome-scale metabolic reconstructions of multiple species.  相似文献   

13.
李宏 《生物信息学》2012,10(1):55-60
代谢工程是近年来发展起来的新技术,随着各种组学技术的发展,高通量数据整合方法用于分析细胞的代谢网络,改造代谢途径,以提高目标产物的产量。本文就代谢工程的发展状况,基因组尺度的分析技术,以及代谢工程策略进行了综述。分析了生物信息学和系统生物学方法在代谢途径构建和代谢网络分析中的作用,并就存在的问题和可能的解决途径进行了阐述。  相似文献   

14.
Pseudomonas aeruginosa is a major life-threatening opportunistic pathogen that commonly infects immunocompromised patients. This bacterium owes its success as a pathogen largely to its metabolic versatility and flexibility. A thorough understanding of P. aeruginosa's metabolism is thus pivotal for the design of effective intervention strategies. Here we aim to provide, through systems analysis, a basis for the characterization of the genome-scale properties of this pathogen's versatile metabolic network. To this end, we reconstructed a genome-scale metabolic network of Pseudomonas aeruginosa PAO1. This reconstruction accounts for 1,056 genes (19% of the genome), 1,030 proteins, and 883 reactions. Flux balance analysis was used to identify key features of P. aeruginosa metabolism, such as growth yield, under defined conditions and with defined knowledge gaps within the network. BIOLOG substrate oxidation data were used in model expansion, and a genome-scale transposon knockout set was compared against in silico knockout predictions to validate the model. Ultimately, this genome-scale model provides a basic modeling framework with which to explore the metabolism of P. aeruginosa in the context of its environmental and genetic constraints, thereby contributing to a more thorough understanding of the genotype-phenotype relationships in this resourceful and dangerous pathogen.  相似文献   

15.
16.

Background  

The genomic information of a species allows for the genome-scale reconstruction of its metabolic capacity. Such a metabolic reconstruction gives support to metabolic engineering, but also to integrative bioinformatics and visualization. Sequence-based automatic reconstructions require extensive manual curation, which can be very time-consuming. Therefore, we present a method to accelerate the time-consuming process of network reconstruction for a query species. The method exploits the availability of well-curated metabolic networks and uses high-resolution predictions of gene equivalency between species, allowing the transfer of gene-reaction associations from curated networks.  相似文献   

17.
In the last decade, reconstruction and applications of genome-scale metabolic models have greatly influenced the field of systems biology by providing a platform on which high-throughput computational analysis of metabolic networks can be performed. The last two years have seen an increase in volume of more than 33% in the number of published genome-scale metabolic models, signifying a high demand for these metabolic models in studying specific organisms. The diversity in modeling different types of cells, from photosynthetic microorganisms to human cell types, also demonstrates their growing influence in biology. Here we review the recent advances and current state of genome-scale metabolic models, the methods employed towards ensuring high quality models, their biotechnological applications, and the progress towards the automated reconstruction of genome-scale metabolic models.  相似文献   

18.
Genomic data allow the large-scale manual or semi-automated assembly of metabolic network reconstructions, which provide highly curated organism-specific knowledge bases. Although several genome-scale network reconstructions describe Saccharomyces cerevisiae metabolism, they differ in scope and content, and use different terminologies to describe the same chemical entities. This makes comparisons between them difficult and underscores the desirability of a consolidated metabolic network that collects and formalizes the 'community knowledge' of yeast metabolism. We describe how we have produced a consensus metabolic network reconstruction for S. cerevisiae. In drafting it, we placed special emphasis on referencing molecules to persistent databases or using database-independent forms, such as SMILES or InChI strings, as this permits their chemical structure to be represented unambiguously and in a manner that permits automated reasoning. The reconstruction is readily available via a publicly accessible database and in the Systems Biology Markup Language (http://www.comp-sys-bio.org/yeastnet). It can be maintained as a resource that serves as a common denominator for studying the systems biology of yeast. Similar strategies should benefit communities studying genome-scale metabolic networks of other organisms.  相似文献   

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