This special issue of Plant Genetic Resources has assembled 52 short articles selected among the over 350 oral and poster communications presented during the 2nd International Symposium on Genomics of Plant Genetic Resources (GPGR2; www.GPGR2.com) held in Bologna, Italy, from April 24 to 27, 2010. The second edition of GPGR2, co-organized by Bioversity International, the Leibniz Institute of Plant Genetics and Crop Plant Research and the University of Bologna, followed the first edition organized in 2005 by the Chinese Academy of Agricultural Science in Beijing, China.
The overall objective of GPGR2 was to critically evaluate how the latest advances in genomics platforms and resources have enhanced our capacity to investigate plant genetic resources and harness their potential for improving crop productivity and quality. The unifying picture that emerges from the articles collected in this issue shows the increasingly pivotal role of genomics for characterizing germplasm collections, best managing genebanks, elucidating plant functions and identifying superior alleles at key loci for the selection of improved genotypes. In this brief introduction, we present an overview of the main topics covered and have included additional references to provide some further reading opportunities to the interested reader who wishes for a more comprehensive overview of the merits and limitations of genomics-based approaches.
The first group of articles (from page 155–184) offers a glimpse of the tools, platforms and resources currently available to investigate the structural and functional diversity present in both the coding and non-coding regions of the plant genome. This complexity, largely inaccessible until recently, is now receiving increasing attention in view of its importance in the regulation of quantitative trait expression. Structural variability (e.g. copy number variations and/or indels) in what, as a reflection of our past ignorance, was often referred to as ‘junk DNA’ has instead been shown to be an important driver of phenotypic variability (Magalhaes et al., Reference Magalhaes, Liu, Guimaraes, Lana, Alves, Wang, Schaffert, Hoekenga, Pineros and Shaff2007; Salvi et al., Reference Salvi, Sponza, Morgante, Tomes, Niu, Fengler, Meeley, Ananiev, Svitashev, Bruggemann, Li, Hainey, Radovic, Zaina, Rafalski, Tingey, Miao, Phillips and Tuberosa2007). Operationally, the new paradigm has been set by next generation sequencing (NGS) and bioinformatics, quickly adopted as the gold standard required to deliver an exhaustive, accurate characterization of DNA variation, the discovery of single nucleotide polymorphisms (SNPs) in massive number (Akhunov et al., Reference Akhunov, Nicolet and Dvorak2009; Varshney et al., Reference Varshney, Nayak, May and Jackson2009) and the analysis of synteny (Bolot et al., Reference Bolot, Abrouk, Masood-Quraishi, Stein, Messing, Feuillet and Salse2009). The cost of sequencing has already fallen dramatically and keeps dropping, thus allowing for the direct analysis of large sets of accessions at a fraction of the cost of such an operation just a few short years ago. NGS is also becoming the preferred choice for transcriptome profiling (Forrest and Carninci, Reference Forrest and Carninci2009; Tamura and Yonemaru, Reference Tamura and Yonemaru2010). Unlike microarray platforms (Gupta et al., Reference Gupta, Rustgi and Mir2008; Pietsch et al., Reference Pietsch, Sreenivasulu, Wobus and Roder2009), NGS offers the distinct advantage of being able to report on changes across the entire transcriptome, including in rare transcripts. The power and benefits of NGS are particularly evident in species such as apple, potato or maize that suffer from low linkage disequilibrium while enjoying a high level of polymorphism, two features which require a highly detailed analysis at the DNA level to identify haplotype diversity in germplasm collections. A level of genetic resolution sufficient to validate candidate genes and, in some cases, even identify causal polymorphisms can be attained by association mapping, an approach increasingly adopted to dissect the genetic basis of target traits (Ersoz et al., Reference Ersoz, Yu, Buckler, Varshney and Tuberosa2007; Rafalski, Reference Rafalski2010). Genome-wide association mapping greatly benefits from the utilization of genome-wide SNP genotyping (Waugh et al., Reference Waugh, Jannink, Muehlbauer and Ramsay2009). Compared with other classes of molecular markers, SNPs are amenable to high-throughput automation at a relatively low cost (Edwards et al., Reference Edwards, Reid, Coghill, Berry and Barker2009). Although SNPs are already routinely utilized in a number of important crops (e.g. rice, barley and maize; McNally et al., Reference McNally, Childs, Bohnert, Davidson, Zhao, Ulat, Zeller, Clark, Hoen, Bureau, Stokowski, Ballinger, Frazer, Cox, Padhukasahasram, Bustamante, Detlef Weigel, Mackill, Bruskiewich, Rätsch, Buell, Leung and Leach2009; Hayden et al., Reference Hayden, Tabone, Nguyen, Coventry, Keiper, Fox, Chalmers, Mather and Eglinton2010; Yan et al., Reference Yan, Yang, Shah, Sanchez-Villeda, Li, Warburton, Zhou, Crouch and Xu2010), considerable work is still required to establish suitable platforms in polyploid species such as wheat, in view of the additional difficulties caused by the presence of homoeologous loci (Ganal and Röder, Reference Ganal, Röder, Varshney and Tuberosa2007; Berard et al., Reference Berard, Le Paslier, Dardevet, Exbrayat-Vinson, Bonnin, Cenci, Haudry, Brunel and Ravel2009; Trebbi et al., Reference Trebbi, Maccaferri, de Heer, Sørensen, van der Vossen, Andries, Giuliani, Salvi, Sanguineti, Massi and Tuberosa2011).
The second group of articles (from page 185–280) deals with one of the most difficult challenges faced by genebank managers, namely the characterization of germplasm collections. Over the past two decades, molecular profiling has greatly improved the accuracy of this characterization (Glaszmann et al., Reference Glaszmann, Kilian, Upadhyaya and Varshney2010), particularly in the so-called ‘orphan’ species, which have been largely neglected also due to the lack of the means to properly investigate their biodiversity (Varshney et al., 2010). An accurate characterization at the genomic level is a fundamental step required for (1) a more cost-efficient management of germplasm collections, both in situ and ex situ, (2) understanding phylogenetic relationships among species (Bolot et al., Reference Bolot, Abrouk, Masood-Quraishi, Stein, Messing, Feuillet and Salse2009), (3) the assembly of core collections suitable for association mapping studies (Maccaferri et al., Reference Maccaferri, Sanguineti, Demontis, El-Ahmed, Garcia del Moral, Maalouf, Nachit, Nserallah, Ouabbou, Rhouma, Royo, Villegas and Tuberosa2011) and (4) assessing genetic similarity among accessions sharing common ancestors (Maccaferri et al., Reference Maccaferri, Sanguineti, Xie, Smith and Tuberosa2007).
The third group of articles (from page 281–360) presents examples on how genomics-based approaches can provide information useful for crop improvement programmes by providing the breeder with effective indirect selection schemes. In particular, a number of articles (from page 324–351) deal with the improvement of crop quality and nutritional value, a topic of great interest in countries where malnutrition – the so-called ‘hidden hunger’ – is rampant as a consequence of an unbalanced diet. To address this problem, programmes such as HarvestPlus (www.harvestplus.org) are exploiting both natural and artificially induced variation to increase the iron, zinc and provitamin A content in crops. For the genomics-based improvement of crops for resistance to abiotic and biotic stresses, the generation challenge programme (GCP; www.generationcp.org) has developed a valuable molecular marker toolkit which provides easy access to existing information on molecular markers used in breeding programmes. Additionally, the GCP's genotyping support service offers cost-efficient genotyping services, both for fingerprinting and the analysis of genetic diversity, as well as for molecular breeding. The most significant results achieved by the GCP through the application of genomics approaches have been summarized in two recent articles (Glaszmann et al., Reference Glaszmann, Kilian, Upadhyaya and Varshney2010; Varshney et al., 2010) and some examples are also presented in this special issue. The adoption of genomics-assisted breeding has considerably enhanced the effectiveness of breeding programmes and the response to selection (Varshney et al., Reference Varshney, Graner and Sorrells2005; Varshney and Tuberosa, Reference Varshney and Tuberosa2007; Xu, Reference Xu2010). Marker-assisted selection (MAS) is now routinely included in many breeding programmes, particularly for traits controlled by major loci (Ejeta and Knoll, Reference Ejeta, Knoll, Varshney and Tuberosa2007; Gupta and Langridge, Reference Gupta and Langridge2010). This notwithstanding, MAS for complex quantitative traits (e.g. drought tolerance) remains a highly challenging undertaking, mainly because so much of the variation for these traits is under the control of many genes, where the contribution of each is too small to allow their ready identification and so justify the implementation of an MAS breeding strategy (Collins et al., Reference Collins, Tardieu and Tuberosa2008). Nonetheless, some major loci which affect yield per se (i.e. not linked to phenology) across a broad range of environments have been described (Maccaferri et al., Reference Maccaferri, Sanguineti, Corneti, Ortega, Ben Salem, Bort, DeAmbrogio, del Moral, Demontis and El-Ahmed2008; Yadav et al., Reference Yadav, Sehgal and Vadez2011). When major loci that affect organ growth (e.g. leaf size) and yield components (e.g. seed number and seed weight) are identified, modelling the effects of the relevant quantitative trait loci (QTLs) in response to environmental cues should provide a highly effective approach for predicting yield performance across different environmental conditions (Parent et al., Reference Parent, Suard, Serraj and Tardieu2010; Tardieu and Tuberosa, Reference Tardieu and Tuberosa2010). From a breeding standpoint, an interesting alternative to phenotypic selection for improving yield per se is provided by genome-wide selection, which is increasingly being adopted for the improvement of those major crops where SNP platforms allow for a cost-effective, high-throughput profiling of large populations (Bernardo, 2009).
Over the past decade, genomics has ushered in novel approaches which have produced a quantum leap in our ability to characterize and utilize plant genetic resources (Tuberosa et al., Reference Tuberosa, Gill and Quarrie2002; Varshney et al., Reference Varshney, Graner and Sorrells2005; Ribaut et al., Reference Ribaut, de Vicente and Delannay2010; Yano and Tuberosa, Reference Yano and Tuberosa2009; Langridge and Fleury, Reference Langridge and Fleury2011). Overall, molecular profiling suggests that the diversity stored in genebanks has been only marginally tapped into so far. Cloning of the key genes which underlie agronomically valuable traits will allow breeders to mine genebank collections much more effectively for novel alleles (Salvi and Tuberosa, Reference Salvi, Tuberosa, Varshney and Tuberosa2007). Cloning will also provide perfect MAS markers and the opportunity to identify novel alleles via TILLING in mutant collections (Talamè et al., Reference Talamè, Bovina, Sanguineti, Tuberosa, Lundqvist and Salvi2008; Sestili et al., Reference Sestili, Botticella, Bedo, Phillips and Lafiandra2010). Importantly, when access to genes is hampered by low recombination, genetic engineering will facilitate the transfer of these cloned genes, especially when sourced from wild relatives. In this regard, recent progress regarding site-specific recombination may open the door to further improve plant performance through the replacement of distinct alleles.
Meeting the challenges posed by climate change and the fast increasing demand for food, feed, fibre and fuel will require an acceleration of the rate of crop improvement, which in some key crops (e.g. wheat) has worriedly started to slow down (Tester and Langridge, Reference Tester and Langridge2010). Achieving higher gains from selection will require enlarging the pool of genetic resources and exploiting wild relatives of crops (Feuillet et al., Reference Feuillet, Langridge and Waugh2008; Kovach and McCouch, Reference Kovach and McCouch2008) to identify superior alleles not yet utilized in the cultivated gene pool. This brief introduction and the articles of this special issue clearly show that genomics of plant genetic resources is having a tangible impact on the way genebanks are being managed and how germplasm collections are being exploited to improve crop performance.
Acknowledgements
The GPGR2 organizers thank the sponsors (for a complete list, see the congress website at www.GPGR2.com/sponsors.html) for their generous financial support and all participants for their contributions to the scientific programme of the Congress.