The need for higher yielding and better-adapted crop plants for feeding the world's rapidly growing population has raised the question of how to systematically utilize large genebank collections with their wide range of largely untouched genetic diversity. Phenotypic data that has been recorded for decades during various rounds of seed multiplication provides a rich source of information. Their usefulness has remained limited though, due to various biases induced by conservation management over time or changing environmental conditions. Here, we present a powerful procedure that permits an unbiased trait-based selection of plant samples based on such phenotypic data. Applying this technique to the wheat collection of one of the largest genebanks worldwide, we identified groups of plant samples displaying contrasting phenotypes for selected traits. As a proof of concept for our discovery pipeline, we resequenced the entire major but conserved flowering time locus Ppd-D1 in just a few such selected wheat samples – and nearly doubled the number of hitherto known alleles.
Climate change and the rapidly growing human population trigger the demand for significantly improved crop plants1,2,3,4,5,6,7. At present, new plant varieties are mainly developed through the reshuffling of alleles present in the elite gene pool (crossing the best – hoping for the best) resulting in a more or less constant repertoire of alleles or even an erosion of genetic diversity. As a result, genetic gains have gradually slowed for most of the major crop species including wheat8,9. As a result, the relative increase in grain yield of wheat (Triticum aestivum L.), the most dominant crop species with a global acreage of 217 million ha (http://faostat.fao.org/), has fallen short of the global population growth rate in many parts of the world.
One of the most promising approaches to cope with this challenge is to valorize the rich genetic diversity conserved in large germplasm collections stored ex situ in genebanks for trait improvement by the introduction of novel alleles10,11,12,13. However, the identification of plant samples (plant samples commonly referred to as ‘accessions’ in a genebank context) with specific combinations of traits from genebank collections is inherently difficult, because of varying regeneration intervals (due to improved storage conditions) and owing to the fact that collections were not regenerated in a systematic scheme (i.e. individual regeneration cycles did not comprise the same set of accessions). Furthermore, changes in conservation management over time (evolution of agricultural practices, equipment, storage and regeneration strategies and genebank standards) impinge on the usefulness of phenotypic observations. Finally, environmental effects including inter-annual weather variability and long-term climate change affect plant phenology4,14,15,16,17,18. This is reflected by a shift of up to three weeks towards earlier flowering within the last 60 years, correlated with a significant increase of average spring temperatures over this period (Supplementary Fig. S1, Supplementary Fig. S2). As a result, technical and environmental effects lead to highly heterogeneous phenotypic data which makes valorization of genetic resources a daunting task.
Results and Discussion
The normalized rank product is less biased than other descriptive statistics
Against this backdrop, we aimed at exploiting long-term phenotypic data to enable systematic access to large genebank collections for upcoming genome resequencing and genome-wide association studies (Fig. 1). We propose a statistical approach, which allows for the consolidation of data sets that were collected over sixty years of seed multiplication. The approach aims at the comparison of accessions grown in different years using a standardized scale. This is achieved by calculating the Normalized Rank Product (NRP) to order accessions for a specific trait under consideration (Supplementary Table S1). Thus, accessions grown across multiple decades can be compared for particular traits using a common scale ranging from 0 to 1.
For validation, the NRP was compared against descriptive statistics like the mean, for ranking accessions based on historical data for flowering time. Analyzing this trait by using a 9-year sliding window for the annual median flowering time (Fig. 2A), it becomes obvious that the flowering time depends on the year of cultivation. More specifically, early flowering was observed predominantly in recent decades (after 1980), while late flowering was observed in early decades. Based on this observation, we compare a varying number of accessions with best mean and NRP values by examining the percentage of accessions that have been cultivated for the first time after 1980 (Fig. 2B). For the mean, the percentage initially is very high and converges with increasing number of selected accessions to the percentage of accessions entered into the collection after 1980, whereas the percentage fluctuates around the global value for the NRP. This observation indicates that the NRP is less influenced by the shift of flowering time.
To further validate the power of the NRP, two winter wheat accessions showing contradicting mean and NRP were scrutinized as an example. A direct comparison was facilitated because of data from 2 years of common cultivation (1998, 2000). In both years, the accession with smaller NRP flowered earlier than the one with smaller mean flowering time (Fig. 2C) again confirming the accuracy of the NRP. Finally, mean and NRP were assessed on all pairs of accessions that have been cultivated together in at least two years as described in the specific example above. Based on this evaluation, the NRP was shown to be less biased than the mean (Supplementary Fig. S3). Thus, the NRP is a robust trait characteristics and can be used for instance for clustering and principal component analysis. As an example, every accession in the collection can be described by more than one normalized trait.
Multi-trait optimization identifies promising accessions for further evaluation
In Fig. 1, the results are presented for three traits, namely, thousand grain weight, flowering time and plant height. In general if one is interested in n different traits, one might span an n-dimensional hypercube. For the identification of promising accessions for further evaluation, we used a multi-trait optimization (MTO) approach based on the NRP to overcome an intrinsic structure caused by correlations between normalized traits and dependencies on passport data (Supplementary Text A, Supplementary Text B).
This approach selects accessions which are located near the corners of the cube corresponding to the most extreme trait combinations (Fig. 1, Fig. 3A, Supplementary Fig. S4A). Hence, opposing corners represent contrasting phenotypes (Supplementary Fig. S4). For example, the corner (1,0,0) indicated by an asterisk in Fig. 1 refers to the combination of high thousand grain weight, early flowering and short plant height, whereas the corner (0,1,1) refers to the contrasting combination of low thousand grain weight, late flowering and tall plant height. Based on that, MTO allows for identifying accessions breaking the existing correlations between traits, i.e., having combinations of traits that only rarely occur in a given gene pool (cf. empty corners in Fig. 3A, Supplementary Fig. S5, Supplementary Fig. S6).
To validate this MTO, we used long-term phenotypic data that were available for nearly 7,000 winter wheat accessions. For further validation, four groups of contrasting phenotypes were selected for extreme plant height and extreme flowering time (Supplementary Table S2) and grown in a field experiment. In total, 60 accessions (15 accessions per contrasting group) were grown together, which allowed for the direct comparison of their phenotypes. Comparison with the legacy data revealed highly similar patterns demonstrating the efficacy of MTO (Fig. 3B, Fig. 3C, Supplementary Table S2).
Proof of concept: resequencing at Ppd-D1 locus nearly doubled the number of known alleles
To investigate the potential of trait-based selection for discovering new alleles, all 60 contrasting accessions obtained from MTO (Fig. 3A), represented by 96 individual plants, were resequenced at the major photoperiod response locus Ppd-D1 (Supplementary Table S4). For this, we utilized sequence information from the International Wheat Genome Sequencing Consortium (IWGSC)19,20,21. Despite the small sample size and the high degree of conservation at this locus, three novel alleles were identified, nearly doubling the number of haplotypes known for bread wheat at this locus22,23,24,25 (Supplementary Table S5, Supplementary Fig. S8). Two of the polymorphisms were located in coding regions upstream of the CCT domain leading to premature stop codons and thus most likely cause a loss of function (Supplementary Text C, Supplementary Dataset).
In conclusion, we proposed a procedure to compare results from “non orthogonal” field trials which are a hallmark of the continuous reproduction schemes of genebank collections. The solution, illustrated here for wheat, may be applied to other crops and their wild relatives, making this strategy a standard approach to select for ‘wanted’ phenotypic combinations and to ‘widen’ the breeding bottleneck. This study demonstrates that the enormous amount of phenotypic data, recorded in genebanks over decades, can indeed be used to select accessions with desired combinations of traits. Computational methods as the NRP can be applied immediately and at almost zero cost - harvesting the investment of time, energy and money made in genebanks over generations and proving their continued value.
Based on NRPs and MTO of long-term phenotypic data, it is feasible to accurately assess the genotypic diversity and identify divergent accessions from comprehensive collections of any size, thereby avoiding the limitations entailed by the use of “core collections”26. Additional information including genotypic and pedigree information, if available, might be used to even better assess the genotypic diversity. Identification of a small set of contrasting phenotypes for flowering time immediately allowed for tapping into a substantial amount of novel allelic diversity at a major flowering time locus in wheat, which can be characterized and validated in future studies. Upcoming genome sequences for major cereal crops and new techniques including whole genome exome capture19,20,21,27 will allow for a much more extensive association of phenotypic and allelic diversity and thus help to bridge the genotype to phenotype gap.
Federal genebank of Germany
The Federal ex situ Genebank for Agricultural and Horticultural Plant Species of Germany maintained at the Leibniz Institute of Plant Genetics and Crop Plant Research (IPK) in Gatersleben hosts one of the largest barley and wheat germplasm collections in the world28. The collection was established at its present location in 1945 and seed multiplication has been continuously performed since 1946.
The cultivation for seed multiplication has taken place every two to three years until 1976. After a cold storage facility was established in 1976, the average frequency of seed multiplication dropped drastically to every 10–30 years and accessions have been selected for seed multiplication if either the germination rate or the amount of available seeds dropped below a critical threshold29.
Characterization and evaluation data
For IPK's seed bank, Characterization and Evaluation (C & E) data comprises dates of various growth stages (e.g., sowing, emergence, heading, flowering, ripening, harvest), winter survival, lodging, infection scores for some of the most important fungal diseases, plant height and thousand-grain weight. In this paper, we focused the analysis on three key traits, namely, days to flowering (FTi), plant height (PH) and thousand-grain weight (TGW) for wheat (Triticum aestivum L.) and barley (Hordeum vulgare L.). Spring and winter types (growth habit) are distinguished for both cereals (Note: in Central and Northern Europe, winter types are sown in autumn - September until December -, while spring types are sown in spring - March until April.
Preprocessing of C & E data
Since 1946 the C & E data have been recorded in field books during the annual seed multiplication (Note: Since 2011, Personal Digital Assistants (PDA) are used for data recording in the field making the repeated transfer of these data unnecessary.) Subsequently, these data have been transferred to main card files. However, the data had to be digitized prior to computational analysis. Thus, the data had been manually transferred twice, namely from field books to main card files and then to the computer, increasing the potential of introducing errors.
Hence we checked for spurious values in the recorded traits and tested the temporal order of the recorded dates. The data was split into winter and spring types based on their classification of growth habit, commonly referred to as ‘annuality’ among genebanks, in IPK's Genebank Information System (GBIS, http://gbis.ipk-gatersleben.de).
For the identification of potential errors, we subsequently performed an extreme outlier detection using three times the interquartile range. These outliers were checked against the field books and corrected wherever possible. To ensure that any accession provided at most one record per year, we checked for accessions with more than one record in any year. In case of an accession that has been recorded more than once in a year, the records were replaced by a single record with the median of the observations for the subsequent analysis.
For further analysis, the values for plant height (recorded at growth stage Z70 in cm30,) and thousand grain weight (in g) were used directly, while we computed time periods in days for the flowering time. Thus flowering time is recorded as day of year, i.e., the difference between January 1st and date of flowering (Z6530,). In Tab. S6, we present the amount of data records for barley and wheat classified according to their annuality. After outlier detection, each collection comprised several thousand accessions and up to five times more records.
Normalized rank product on C & E data
Due to the heterogeneity of the data, descriptive statistics cannot easily be utilized for the data analysis. Instead the recorded values of each trait in each year were ranked to overcome the strong effects of annual differences, for instance inter-annual climate variability, climate change or agricultural practice. Subsequently, we introduced the normalized rank product (NRP) that is based on the idea of the popular rank product analysis, originally proposed for selecting differentially expressed genes from microarray experiment data31.
Here, we extend the rank product to maintain the relation to the geometric mean of the normalized ranks. The NRP of an accession a for a specific trait denoted by NRPa is defined as,
for a specific trait where Ya is the set of years in which accession a has been cultivated and its trait has been recorded, ry,a is the rank of the trait value of accession a in year y and ny is the number of accessions with this trait recorded in year y. The NRP ranges between zero (exclusive) and one (inclusive) allowing for comparison between accessions, independent of their number of years of cultivation. The NRPs were computed for the three important traits: flowering time, plant height and thousand grain weight.
In order to avoid overestimating the influence of accessions that have been infrequently cultivated and exhibiting interesting NRPs by chance, only accessions that have been cultivated and recorded in at least three different years were included in the present study. With this set of assumptions, we were able to compare large parts of the above mentioned collections comprising thousands of accessions.
As an illustrative example, a particular wheat accession has been cultivated in 1946, 1967 and 2009. This plant sample was the first to flower in 1946 and 2009 (rank 1) and the third in 1967 (rank 3). These ranks are divided by the number of all accessions of that species cultivated in each year. The geometric mean is taken over 1946, 1967 and 2009 yielding a NRP for flowering time of this accession ranging between 0 (early flowering) and 1 (late flowering).
Experimental validation under field conditions for winter wheat
Based on the NRP and multi-trait optimization (MTO), we were able to find plant samples with contrasting phenotypes, for example winter wheat with extreme flowering time and plant height (Fig. 3A). To validate the accuracy of this procedure, 60 winter wheat accessions (four groups with 15 accessions each) were selected and planted in a field experiment at Gatersleben (51° 49′N, 11° 16′E) during the growing season 2010/2011. We used plots of size 1.5 m × 2.5 m separated by equally sized plots of winter barley and followed local agricultural practice. In the field experiment, we performed three replicates arranged in three blocks. Each block consisted of one plot per selected accession in random order.
Each plot was planted at a density of 80 seeds per m2. Subsequently, 10 individuals per plot – in total 1,800 individuals – were randomly selected and genetically purified as genebank accessions are not expected to be homogenous and must be purified for genomic studies. Thus all 1800 individuals were covered with bags to prevent cross pollination and phenotyped. The development of single seed descends (SSDs) is a procedure widely used in plant breeding32. All individuals were phenotyped for flowering time (Z6030) as well as for plant height (Z7030) and were finally harvested. Leaf samples for DNA isolation were taken from every plant at Z3030.
Based on known geographical origin and pedigree information, a subset of 28 accessions (out of 60 accessions mentioned above) was then subselected (6–8 accessions per contrasting group) for an independent second field experiment in 2011/2012 – in order to validate the data from the experiment in 2010/2011. As in the year before, we used plots of size 1.5 m × 2.5 m separated by equally sized plots of winter barley and followed local agricultural practice. Three replicates were performed, arranged in three blocks. Each block consisted of one plot per selected accession in random order. Each plot was planted at a density of 80 seeds per m2. Full plots were phenotyped for flowering time (Z6030) as well as for plant height (Z7030, Fig. S7).
Extraction of genomic DNA
Genomic DNA was isolated from silica-dried single leaves of each line with the Qiagen DNeasy Plant Mini Kit (Qiagen, Hilden, Germany), according to the manufacturer's instructions.
Genotyping major vernalization genes for wheat
Wheat can be divided into spring and winter habit varieties along with a group of intermediate lines known as facultative varieties. The vernalization-sensitivity (winter habit) alleles, vrn-A1, vrn-B1 and vrn-D1 are located on chromosomes 5A, 5B and 5D, respectively33,34. Another vernalization gene, Vrn-3, located on chromosome 7B, was shown to encode a homolog of ArabidopsisFT and was named VRN335.
Aiming at reducing any bias for flowering time analysis based on growth habit, in total, 60 purified individuals (1 to 3 plants per accession) were randomly selected among the 28 contrasting accessions subselected for the second field experiment (see above) and genotyped at four major vernalization loci (Vrn-A1, Vrn-B1, Vrn-D1 and Vrn-B3) using allele-specific molecular assays. Following the experimental protocols22,23,24,35,36,37,38,39,40 (Tab. S3), all accessions were confirmed as true winter wheat harboring only vernalization-sensitive alleles providing strong support for the flowering time analysis.
Resequencing the major photoperiod response locus Ppd-D1
Sixty contrasting accessions (represented by 96 plants, 1 to 3 plants per accession) were resequenced at Ppd-D1. In order to develop wheat D genome specific primer combinations, sequence information was obtained from the International Wheat Genome Sequencing Consortium (IWGSC, http://www.wheatgenome.org/) and NCBI GenBank (DQ885766.1).
The Primer3 online software (Primer3 v. 0.4.0 (http://frodo.wi.mit.edu/primer3/) was used to design primers. Oligonucleotides were purchased from Eurofins MWG Operon, Ebersberg, Germany. One c. 5920 bp genomic region completely covering Ppd-D1 was amplified by locus-specific PCR primers from genomic DNAs (Tab. S4). 5′-UTR, exons, introns and 3′-UTR were analyzed, as start and stop codon of the reference (DQ885766.1) were located at alignment position 2150 and 5299, respectively. The exons were located at 2150 to 2321, 2439 to 2603, 2712 to 2845, 3041 to 3196, 3648 to 3825, 3932 to 4349, 4432 to 5089, 5200 to 5301. Specificity and chromosomal localization of PCR products were confirmed by Nulli-tetrasomic (NT) lines (N2A-T2B, N2B-T2D and N2D-T2B)41 (Fig. S8).
PCR amplification was performed in 20 μl reaction volume. Templates were purified and sequenced directly on both strands on an Applied Biosystems (Weiterstadt, Germany) ABI Prism 3730 xL sequencer using BigDye terminators as described in42. Their DNA sequences were determined using primers designed for amplification and internal primers (Tab. S4).
Single nucleotide polymorphism (SNP)-detection
DNA sequences were processed with AB DNA Sequencing Analysis Software 5.2 and later manually edited by Sequencher software v5.0 (Gene Codes Corp.). Sequence alignments were generated with MAFFT webserver (http://www.ebi.ac.uk/Tools/msa/mafft/) using default parameters except “perform ffts” which was set to “genafpair”. Subsequently, the multiple sequence alignment was manually modified. Filtering sequences with low quality regions, 67 sequences were contained in the final alignment comprising c. 5920 bp. The heterozygous state at the deletion in the promoter region was indicated by inserting poly-N. In close analogy, the heterozygote state for the transposable element in the first intron was indicated by inserting poly-N.
Accession codes. GenBank (http://www.ncbi.nlm.nih.gov/genbank/) accession numbers for Ppd-D1 alleles are: KJ47477 (Ppd-D1a), KJ47478 (Ppd-D1b), KJ47483 (Ppd-D1c), KJ47481 (Ppd-D1d), KJ47482 (Ppd-D1e), KJ47479 (Ppd-D1f) and KJ47480 (Ppd-D1g). The multiple sequence alignment containing sequence information from 67 individuals belonging to 44 accessions is provided.
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We thank M. Grau, M. Mildner, M. Oppermann, G. Schütze and R. Selbig for technical assistance with the C & E data. We thank P. Abraham, S. Dreiβig, B. Dubsky, H. Giraud, H. Harms, C. Kehler, U. Krajewsky, K. Neumann, M. Nix, P. Schreiber and K. Wolf for excellent assistance in the field experiments. We thank E. Andeden and K. Niedung for DNA analysis and S. Kilian for kindly preparing Figure 1. We are grateful to T. Altmann, B. Bauer, G. Coupland, M. Friedel, W. Gruissem, H. Riegler, M. Röder, R. Schnee, M. Seifert, R. Sharma, S. Singh, N. Stein, M. Strickert and N. von Wirén for discussions. The authors would like to acknowledge the support given by the Ministry of Culture of Saxony-Anhalt (grant XP3624HP/0606T) to JK and SF and the German Science Foundation Priority Programme SPP1530 to BK.
The authors declare no competing financial interests.
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Keilwagen, J., Kilian, B., Özkan, H. et al. Separating the wheat from the chaff – a strategy to utilize plant genetic resources from ex situ genebanks. Sci Rep 4, 5231 (2014). https://doi.org/10.1038/srep05231
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