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Wheat genomics: present status and future prospects. 小麦基因组学:现状与展望
Pub Date : 2008-01-01 DOI: 10.1155/2008/896451
P K Gupta, R R Mir, A Mohan, J Kumar

Wheat (Triticum aestivum L.), with a large genome (16000 Mb) and high proportion ( approximately 80%) of repetitive sequences, has been a difficult crop for genomics research. However, the availability of extensive cytogenetics stocks has been an asset, which facilitated significant progress in wheat genomic research in recent years. For instance, fairly dense molecular maps (both genetic and physical maps) and a large set of ESTs allowed genome-wide identification of gene-rich and gene-poor regions as well as QTL including eQTL. The availability of markers associated with major economic traits also allowed development of major programs on marker-assisted selection (MAS) in some countries, and facilitated map-based cloning of a number of genes/QTL. Resources for functional genomics including TILLING and RNA interference (RNAi) along with some new approaches like epigenetics and association mapping are also being successfully used for wheat genomics research. BAC/BIBAC libraries for the subgenome D and some individual chromosomes have also been prepared to facilitate sequencing of gene space. In this brief review, we discuss all these advances in some detail, and also describe briefly the available resources, which can be used for future genomics research in this important crop.

小麦(Triticum aestivum L.)基因组大(16000 Mb),重复序列比例高(约80%),一直是基因组学研究的难点作物。然而,广泛的细胞遗传学库存的可用性是一项资产,这促进了近年来小麦基因组研究的重大进展。例如,相当密集的分子图谱(包括遗传图谱和物理图谱)和大量的ESTs允许对基因丰富和基因贫乏的区域以及包括eQTL在内的QTL进行全基因组鉴定。与主要经济性状相关的标记的可用性也使一些国家的标记辅助选择(MAS)计划得以发展,并促进了许多基因/QTL的基于图谱的克隆。包括TILLING和RNA干扰(RNAi)在内的功能基因组学资源以及表观遗传学和关联图谱等一些新方法也正在成功地用于小麦基因组学研究。此外,还建立了亚基因组D和部分染色体的BAC/BIBAC文库,以方便基因空间的测序。在这篇综述中,我们详细讨论了所有这些进展,并简要描述了现有的资源,可以用于未来对这种重要作物的基因组学研究。
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引用次数: 227
Recent advances in cotton genomics. 棉花基因组学的最新进展。
Pub Date : 2008-01-01 DOI: 10.1155/2008/742304
Hong-Bin Zhang, Yaning Li, Baohua Wang, Peng W Chee

Genome research promises to promote continued and enhanced plant genetic improvement. As a world's leading crop and a model system for studies of many biological processes, genomics research of cottons has advanced rapidly in the past few years. This article presents a comprehensive review on the recent advances of cotton genomics research. The reviewed areas include DNA markers, genetic maps, mapped genes and QTLs, ESTs, microarrays, gene expression profiling, BAC and BIBAC libraries, physical mapping, genome sequencing, and applications of genomic tools in cotton breeding. Analysis of the current status of each of the genome research areas suggests that the areas of physical mapping, QTL fine mapping, genome sequencing, nonfiber and nonovule EST development, gene expression profiling, and association studies between gene expression and fiber trait performance should be emphasized currently and in near future to accelerate utilization of the genomics research achievements for enhancing cotton genetic improvement.

基因组研究有望促进植物基因改良的持续和加强。作为一种世界领先的作物和研究多种生物过程的模型系统,棉花基因组学研究在过去几年中取得了快速发展。本文全面综述了棉花基因组学研究的最新进展。综述的领域包括 DNA 标记、遗传图谱、映射基因和 QTL、ESTs、芯片、基因表达谱分析、BAC 和 BIBAC 文库、物理图谱、基因组测序以及基因组工具在棉花育种中的应用。对各基因组研究领域现状的分析表明,当前和不久的将来应重视物理图谱、QTL 精细图谱、基因组测序、非纤维和非胚珠 EST 开发、基因表达谱分析以及基因表达与纤维性状表现之间的关联研究等领域,以加快利用基因组学研究成果促进棉花遗传改良。
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引用次数: 0
Brachypodium genomics. Brachypodium基因组学。
Pub Date : 2008-01-01 DOI: 10.1155/2008/536104
Bahar Sogutmaz Ozdemir, Pilar Hernandez, Ertugrul Filiz, Hikmet Budak

Brachypodium distachyon (L.) Beauv. is a temperate wild grass species; its morphological and genomic characteristics make it a model system when compared to many other grass species. It has a small genome, short growth cycle, self-fertility, many diploid accessions, and simple growth requirements. In addition, it is phylogenetically close to economically important crops, like wheat and barley, and several potential biofuel grasses. It exhibits agricultural traits similar to those of these target crops. For cereal genomes, it is a better model than Arabidopsis thaliana and Oryza sativa (rice), the former used as a model for all flowering plants and the latter hitherto used as model for genomes of all temperate grass species including major cereals like barley and wheat. Increasing interest in this species has resulted in the development of a series of genomics resources, including nuclear sequences and BAC/EST libraries, together with the collection and characterization of other genetic resources. It is expected that the use of this model will allow rapid advances in generation of genomics information for the improvement of all temperate crops, particularly the cereals.

长柄菊(L.)测定。属温带野生草种;它的形态和基因组特征使其成为许多其他草物种的典范系统。它有一个小的基因组,短的生长周期,自育性,许多二倍体的加入,和简单的生长要求。此外,它在系统发育上接近经济上重要的作物,如小麦和大麦,以及几种潜在的生物燃料草。它表现出与这些目标作物相似的农业性状。对于谷物基因组,它比拟南芥(Arabidopsis thaliana)和水稻(Oryza sativa)是一个更好的模型,前者被用作所有开花植物的模型,后者迄今被用作所有温带禾本科物种的基因组模型,包括大麦和小麦等主要谷物。对该物种的兴趣日益浓厚,导致了一系列基因组学资源的开发,包括核序列和BAC/EST文库,以及其他遗传资源的收集和表征。预计该模型的使用将使基因组学信息的产生取得快速进展,以改善所有温带作物,特别是谷物。
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引用次数: 25
SSR Locator: Tool for Simple Sequence Repeat Discovery Integrated with Primer Design and PCR Simulation. SSR定位器:简单序列重复发现与引物设计和PCR模拟集成的工具。
Pub Date : 2008-01-01 DOI: 10.1155/2008/412696
Luciano Carlos da Maia, Dario Abel Palmieri, Velci Queiroz de Souza, Mauricio Marini Kopp, Fernando Irajá Félix de Carvalho, Antonio Costa de Oliveira

Microsatellites or SSRs (simple sequence repeats) are ubiquitous short tandem duplications occurring in eukaryotic organisms. These sequences are among the best marker technologies applied in plant genetics and breeding. The abundant genomic, BAC, and EST sequences available in databases allow the survey regarding presence and location of SSR loci. Additional information concerning primer sequences is also the target of plant geneticists and breeders. In this paper, we describe a utility that integrates SSR searches, frequency of occurrence of motifs and arrangements, primer design, and PCR simulation against other databases. This simulation allows the performance of global alignments and identity and homology searches between different amplified sequences, that is, amplicons. In order to validate the tool functions, SSR discovery searches were performed in a database containing 28 469 nonredundant rice cDNA sequences.

微卫星或SSRs(简单序列重复)是真核生物中普遍存在的短串联复制。这些序列是植物遗传育种中应用最好的标记技术之一。数据库中丰富的基因组、BAC和EST序列允许对SSR位点的存在和位置进行调查。关于引物序列的其他信息也是植物遗传学家和育种家的目标。在本文中,我们描述了一个整合SSR搜索、基序出现频率和排列、引物设计和PCR模拟与其他数据库的实用程序。该模拟允许在不同扩增序列(即扩增子)之间进行全局比对和同一性和同源性搜索。为了验证该工具的功能,我们在包含28469个非冗余水稻cDNA序列的数据库中进行了SSR发现搜索。
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引用次数: 228
The generation challenge programme platform: semantic standards and workbench for crop science. 生成挑战程序平台:作物科学语义标准与工作台。
Pub Date : 2008-01-01 DOI: 10.1155/2008/369601
Richard Bruskiewich, Martin Senger, Guy Davenport, Manuel Ruiz, Mathieu Rouard, Tom Hazekamp, Masaru Takeya, Koji Doi, Kouji Satoh, Marcos Costa, Reinhard Simon, Jayashree Balaji, Akinnola Akintunde, Ramil Mauleon, Samart Wanchana, Trushar Shah, Mylah Anacleto, Arllet Portugal, Victor Jun Ulat, Supat Thongjuea, Kyle Braak, Sebastian Ritter, Alexis Dereeper, Milko Skofic, Edwin Rojas, Natalia Martins, Georgios Pappas, Ryan Alamban, Roque Almodiel, Lord Hendrix Barboza, Jeffrey Detras, Kevin Manansala, Michael Jonathan Mendoza, Jeffrey Morales, Barry Peralta, Rowena Valerio, Yi Zhang, Sergio Gregorio, Joseph Hermocilla, Michael Echavez, Jan Michael Yap, Andrew Farmer, Gary Schiltz, Jennifer Lee, Terry Casstevens, Pankaj Jaiswal, Ayton Meintjes, Mark Wilkinson, Benjamin Good, James Wagner, Jane Morris, David Marshall, Anthony Collins, Shoshi Kikuchi, Thomas Metz, Graham McLaren, Theo van Hintum

The Generation Challenge programme (GCP) is a global crop research consortium directed toward crop improvement through the application of comparative biology and genetic resources characterization to plant breeding. A key consortium research activity is the development of a GCP crop bioinformatics platform to support GCP research. This platform includes the following: (i) shared, public platform-independent domain models, ontology, and data formats to enable interoperability of data and analysis flows within the platform; (ii) web service and registry technologies to identify, share, and integrate information across diverse, globally dispersed data sources, as well as to access high-performance computational (HPC) facilities for computationally intensive, high-throughput analyses of project data; (iii) platform-specific middleware reference implementations of the domain model integrating a suite of public (largely open-access/-source) databases and software tools into a workbench to facilitate biodiversity analysis, comparative analysis of crop genomic data, and plant breeding decision making.

世代挑战计划(GCP)是一个全球性的作物研究联盟,旨在通过比较生物学和遗传资源特性在植物育种中的应用来改进作物。一个重要的联盟研究活动是开发一个GCP作物生物信息学平台来支持GCP研究。该平台包括以下内容:(i)共享的、与平台无关的公共领域模型、本体和数据格式,以实现平台内数据和分析流的互操作性;(ii)网络服务和注册技术,用于识别、共享和整合不同的、全球分散的数据源中的信息,以及访问高性能计算(HPC)设施,对项目数据进行计算密集型、高吞吐量的分析;(iii)领域模型的特定平台中间件参考实现,将一套公共(主要是开放访问/源代码)数据库和软件工具集成到一个工作平台中,以促进生物多样性分析、作物基因组数据的比较分析和植物育种决策。
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引用次数: 13
Phylogenetic analyses: A toolbox expanding towards Bayesian methods. 系统发育分析:向贝叶斯方法扩展的工具箱。
Pub Date : 2008-01-01 DOI: 10.1155/2008/683509
Stéphane Aris-Brosou, Xuhua Xia

The reconstruction of phylogenies is becoming an increasingly simple activity. This is mainly due to two reasons: the democratization of computing power and the increased availability of sophisticated yet user-friendly software. This review describes some of the latest additions to the phylogenetic toolbox, along with some of their theoretical and practical limitations. It is shown that Bayesian methods are under heavy development, as they offer the possibility to solve a number of long-standing issues and to integrate several steps of the phylogenetic analyses into a single framework. Specific topics include not only phylogenetic reconstruction, but also the comparison of phylogenies, the detection of adaptive evolution, and the estimation of divergence times between species.

系统发育的重建正成为一项日益简单的活动。这主要是由于两个原因:计算能力的民主化和复杂但用户友好的软件的可用性的增加。这篇综述描述了系统发育工具箱的一些最新添加,以及它们的一些理论和实践局限性。研究表明,贝叶斯方法正在大力发展,因为它们提供了解决许多长期存在的问题的可能性,并将系统发育分析的几个步骤集成到一个单一的框架中。具体的主题不仅包括系统发育重建,而且还包括系统发育的比较,适应进化的检测,以及物种之间分歧时间的估计。
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引用次数: 8
Coe1 in Beta vulgaris L. Has a Tnp2-Domain DNA Transposase Gene within Putative LTRs and Other Retroelement-Like Features. 甜菜Coe1具有tnp2结构域DNA转座酶基因和其他类似逆转录因子的特征。
Pub Date : 2008-01-01 DOI: 10.1155/2008/360874
David Kuykendall, Jonathan Shao, Kenneth Trimmer

We describe discovery in Beta vulgaris L. of Coe1, a DNA transposase gene within putative long terminal repeats (LTRs), and other retrotransposon-like features including both a retroviral-like hypothetical gene and an Rvt2-domain reverse transcriptase pseudogene. The central DNA transposase gene encodes, in eight exons, a predicted 160-KDa protein producing BLAST alignments with En/Spm-type transposons. Except for a stop signal, another ORF encodes a Ty1-copia-like reverse transcriptase with amino acid sequence domain YVDDIIL. Outside apparent LTRs, an 8-mer nucleotide sequence motif CACTATAA, near or within inverted repeat sequences, is hypothetical extreme termini. A genome scan of Arabidopsis thaliana found another example of a Tnp2-domain transposase gene within an apparent LTR-retrotransposon on chromosome 4.

我们描述了在Beta vulgaris L.中发现的Coe1,一个DNA转座子基因,在假定的长末端重复序列(LTRs)中,以及其他逆转录转座子样特征,包括逆转录病毒样假设基因和rvt2结构域逆转录酶假基因。中心DNA转座酶基因在8个外显子中编码一个预测的160 kda蛋白,产生与En/ spm型转座子相关的BLAST序列。除了一个停止信号外,另一个ORF编码一个具有氨基酸序列结构域YVDDIIL的ty1复制样逆转录酶。在表观ltr外,靠近或位于反向重复序列内的8聚核苷酸序列基序CACTATAA是假设的极端末端。对拟南芥的基因组扫描发现了另一个tnp2结构域转座酶基因的例子,该基因位于4号染色体上一个明显的ltr -反转录转座子内。
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引用次数: 6
Soybean genomics: Developments through the use of cultivar "Forrest". 大豆基因组学:利用“福雷斯特”品种的发展。
Pub Date : 2008-01-01 DOI: 10.1155/2008/793158
David A Lightfoot

Legume crops are particularly important due to their ability to support symbiotic nitrogen fixation, a key to sustainable crop production and reduced carbon emissions. Soybean (Glycine max) has a special position as a major source of increased protein and oil production in the common grass-legume rotation. The cultivar "Forrest" has saved US growers billions of dollars in crop losses due to resistances programmed into the genome. Moreover, since Forrest grows well in the north-south transition zone, breeders have used this cultivar as a bridge between the southern and northern US gene pools. Investment in Forrest genomics resulted in the development of the following research tools: (i) a genetic map, (ii) three RIL populations (96 > n > 975), (iii) approximately 200 NILs, (iv) 115 220 BACs and BIBACs, (v) a physical map, (vi) 4 different minimum tiling path (MTP) sets, (vii) 25 123 BAC end sequences (BESs) that encompass 18.5 Mbp spaced out from the MTPs, and 2 000 microsatellite markers within them (viii) a map of 2408 regions each found at a single position in the genome and 2104 regions found in 2 or 4 similar copies at different genomic locations (each of >150 kbp), (ix) a map of homoeologous regions among both sets of regions, (x) a set of transcript abundance measurements that address biotic stress resistance, (xi) methods for transformation, (xii) methods for RNAi, (xiii) a TILLING resource for directed mutant isolation, and (xiv) analyses of conserved synteny with other sequenced genomes. The SoyGD portal at sprovides access to the data. To date these resources assisted in the genomic analysis of soybean nodulation and disease resistance. This review summarizes the resources and their uses.

豆科作物尤其重要,因为它们具有支持共生固氮的能力,这是可持续作物生产和减少碳排放的关键。大豆(Glycine max)在普通的草豆科植物轮作中具有特殊的地位,是增加蛋白质和油脂产量的主要来源。“福雷斯特”这个品种已经为美国种植者节省了数十亿美元的作物损失,这是由于基因中植入了抗性。此外,由于阿甘在南北过渡区生长良好,育种者已将该品种用作连接美国南部和北部基因库的桥梁。对福雷斯特基因组学的投资导致了以下研究工具的发展:(我)一个遗传图谱,(ii)三个瑞来斯人口(96 > n > 975),(3)约200尼尔斯,(iv) 115 220•巴BIBACs, (v)物理地图,(vi) 4种不同的最低花砖路径(MTP)集,(七)25 123 BAC结束序列(贝丝),包括18.5 Mbp MTP飘飘然的,和2 000个微卫星标记(八)2408个地区的地图每发现一个在基因组中的位置和2104个地区2或4中发现类似的副本在不同基因组的位置(> 150 kbp),(ix)两组区域之间的同源区域图,(x)一组解决生物抗逆性的转录物丰度测量,(xi)转化方法,(xii) RNAi方法,(xiii)定向突变体分离的TILLING资源,以及(xiv)与其他测序基因组的保守性分析。SoyGD门户提供对数据的访问。迄今为止,这些资源有助于大豆结瘤和抗病的基因组分析。本文综述了相关资源及其用途。
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引用次数: 37
Rice molecular breeding laboratories in the genomics era: Current status and future considerations. 基因组学时代的水稻分子育种实验室:现状与展望
Pub Date : 2008-01-01 DOI: 10.1155/2008/524847
Bert C Y Collard, Casiana M Vera Cruz, Kenneth L McNally, Parminder S Virk, David J Mackill

Using DNA markers in plant breeding with marker-assisted selection (MAS) could greatly improve the precision and efficiency of selection, leading to the accelerated development of new crop varieties. The numerous examples of MAS in rice have prompted many breeding institutes to establish molecular breeding labs. The last decade has produced an enormous amount of genomics research in rice, including the identification of thousands of QTLs for agronomically important traits, the generation of large amounts of gene expression data, and cloning and characterization of new genes, including the detection of single nucleotide polymorphisms. The pinnacle of genomics research has been the completion and annotation of genome sequences for indica and japonica rice. This information-coupled with the development of new genotyping methodologies and platforms, and the development of bioinformatics databases and software tools-provides even more exciting opportunities for rice molecular breeding in the 21st century. However, the great challenge for molecular breeders is to apply genomics data in actual breeding programs. Here, we review the current status of MAS in rice, current genomics projects and promising new genotyping methodologies, and evaluate the probable impact of genomics research. We also identify critical research areas to "bridge the application gap" between QTL identification and applied breeding that need to be addressed to realize the full potential of MAS, and propose ideas and guidelines for establishing rice molecular breeding labs in the postgenome sequence era to integrate molecular breeding within the context of overall rice breeding and research programs.

利用DNA标记在植物育种中进行标记辅助选择(marker assisted selection, MAS),可以极大地提高选择的精度和效率,从而加快作物新品种的开发。水稻中MAS的大量实例促使许多育种机构建立了分子育种实验室。在过去的十年里,水稻基因组学研究取得了巨大的成就,包括鉴定了数千个重要农艺性状的qtl,产生了大量的基因表达数据,以及克隆和鉴定新基因,包括检测单核苷酸多态性。基因组学研究的巅峰是籼稻和粳稻基因组序列的完成和注释。这些信息,加上新的基因分型方法和平台的发展,以及生物信息学数据库和软件工具的发展,为21世纪的水稻分子育种提供了更多令人兴奋的机会。然而,分子育种家面临的巨大挑战是将基因组学数据应用于实际的育种计划。在此,我们回顾了水稻中MAS的现状,当前的基因组学项目和有前景的新基因分型方法,并评估了基因组学研究可能产生的影响。我们还确定了在QTL鉴定和应用育种之间“弥合应用差距”的关键研究领域,这些领域需要解决,以充分发挥MAS的潜力,并提出了在后基因组序列时代建立水稻分子育种实验室的想法和指导方针,以便将分子育种整合到整个水稻育种和研究计划的背景下。
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引用次数: 120
Bioinformatics tools for plant genomics. 植物基因组学的生物信息学工具。
Pub Date : 2008-01-01 Epub Date: 2009-06-11 DOI: 10.1155/2008/910474
Gary R Skuse, Chunguang Du
The articles in this special issue reflect a convergence of developments in the fields of bioinformatics and plant genomics. Bioinformatics has its roots vaguely seated in the early 1980s, a time when personal computers began appearing in research laboratories and researchers began recognizing that those computers could be used as tools to organize, analyze and visualize their data. In the ensuing years bioinformatics tools began appearing at various sites including the European Molecular Biology Laboratory, the Molecular Biology Research Resource at the Dana-Farber Cancer Institute in the mid 1980s, the National Center for Biotechnology Information (NCBI) in 1988, the Genome Database Project at Johns Hopkins University in early 1989, and in countless laboratories throughout the world. These last efforts resulted in the development of many of the tools described in this special issue. Progress and interest in plant genomics have been accelerating since the time in late 2000 when the genome of Arabidopsis thaliana was published. Since then many genome sequencing projects have been undertaken that include poplar (Populus), grape (Vitis), the moss Physcomitrella, the biflagellate algae Chlamydomonas and several globally crucial crop plants such as corn (Maize) and rice (Oryza). However, as we have witnessed on numerous occasions, determining the sequence of a genome is only the first step toward understanding genome organization, gene structure, gene expression patterns, disease pathogenesis and a host of other features of both scientific and commercial interests. Computational tools of genomic annotation and comparative genomics must be applied to gain a useful understanding of any genome. In this special issue we present a collection of papers that together describe a powerful and impactful toolbox of applications and resources for plant genomic analysis. Among those articles you will find a description of research performed by the Mexican headquartered Generation Challenge Programme (GCP) which led to the GCP Platform (Bruskiewich et al.). This research support tool supports a number of data formats and web services and provides access to high performance computing facilities and platform-specific middleware collectively designed to support crop science research. Probably one of the most promising empirical tools for investigating gene expression developed in the last 15 or so years is that of microarray technology. While the technology has become commonplace, with tools for generating and hybridizing arrays available to all, the analysis of microarray-derived data has been challenging. Many laboratories have struggled not only with this challenge but also with the task of sorting through the plethora of analytical tools available in an effort to find the ones that may be best suited to their own work. In this issue there are two reviews by Page and Coulibaly which examine and describe bioinformatics tools for inferring functional inform
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引用次数: 10
期刊
International journal of plant genomics
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