| Literature DB >> 23471459 |
Joshua N Cobb1, Genevieve Declerck, Anthony Greenberg, Randy Clark, Susan McCouch.
Abstract
More accurate and precise phenotyping strategies are necessary to empower high-resolution linkage mapping and genome-wide association studies and for training genomic selection models in plant improvement. Within this framework, the objective of modern phenotyping is to increase the accuracy, precision and throughput of phenotypic estimation at all levels of biological organization while reducing costs and minimizing labor through automation, remote sensing, improved data integration and experimental design. Much like the efforts to optimize genotyping during the 1980s and 1990s, designing effective phenotyping initiatives today requires multi-faceted collaborations between biologists, computer scientists, statisticians and engineers. Robust phenotyping systems are needed to characterize the full suite of genetic factors that contribute to quantitative phenotypic variation across cells, organs and tissues, developmental stages, years, environments, species and research programs. Next-generation phenotyping generates significantly more data than previously and requires novel data management, access and storage systems, increased use of ontologies to facilitate data integration, and new statistical tools for enhancing experimental design and extracting biologically meaningful signal from environmental and experimental noise. To ensure relevance, the implementation of efficient and informative phenotyping experiments also requires familiarity with diverse germplasm resources, population structures, and target populations of environments. Today, phenotyping is quickly emerging as the major operational bottleneck limiting the power of genetic analysis and genomic prediction. The challenge for the next generation of quantitative geneticists and plant breeders is not only to understand the genetic basis of complex trait variation, but also to use that knowledge to efficiently synthesize twenty-first century crop varieties.Entities:
Mesh:
Year: 2013 PMID: 23471459 PMCID: PMC3607725 DOI: 10.1007/s00122-013-2066-0
Source DB: PubMed Journal: Theor Appl Genet ISSN: 0040-5752 Impact factor: 5.699
Factors to consider when evaluating if a field-based or environmentally controlled phenotyping platform is most appropriate
| Controlled conditions | Field conditions |
|---|---|
| Minimizes environmental variation and increases heritability | Maximizes relevance to breeders and farmers |
| Increased precision of critical measurements | Characterizes the range of environmental variation |
| Maximizes information from a minimum of replicates | Evaluates over time as well as space |
| Decreases cost through automation and standardization | Estimates genotype × environment interaction |
| Develop hypotheses to be tested on a targeted set of lines in the field | Refine hypothesis and develop new screening protocols |
Fig. 1The choice of phenotyping under controlled conditions vs. field environments depends greatly on the purpose of phenotyping, heritability of the trait, and logistical considerations of data collection. a High-clearance tractor measuring the height, temperature, and spectral reflectance of young cotton plants. Such a system is reasonably high-throughput and can measure canopy traits with high accuracy and precision. These traits typically have high heritability and are considered component phenotypes of yield under drought stress (reprinted from White et al. 2012, copyright 2012, with permission from Elsevier). b Ten-day time course of root system growth in three dimensions of two divergent varieties of rice from Clark et al. (2012). Roots are notoriously difficult to phenotype in the field and root architecture in particular. This phenotype lends itself well to controlled conditions as the logistics of evaluating roots are more tractable, and it permits the exploration of otherwise un-surveyable phenotypes such as center of mass and dynamic tracking of architecture development over time (copyright American Society of Plant Biologists)
Selected image analysis software programs and phenotyping platforms available for high-throughput phenotyping
| Tissue | Software | Purpose and design | Reference |
|---|---|---|---|
| Roots | WinRhizo Tron | Morphological descriptions of root area, volume, length, etc |
|
| KineRoot | 2D analysis of root growth and curvature | Basu et al. ( | |
| PlaRoM | Platform for measuring root extension and growth traits | Yazdanbakhsh and Fisahn ( | |
| EZ-Rhizo | 2D analysis of root system architecture | Armengaud et al. ( | |
| RootTrace | Counting and measuring root morphology | Naeem et al. ( | |
| DART | 2D analysis of root system architecture | Le Bot et al. ( | |
| SmartRoot | ImageJ plugin for the quantification of growth and architecture | Lobet et al. ( | |
| RootReader3D | 3D analysis of root system architecture | Clark et al. | |
| RootReader2D | 2D analysis of root system architecture | Clark et al. | |
| Gia-Roots | 2D analysis of root system architecture | Galkovskyi et al. ( | |
| Shoots/leaves | WinFolia | Morphological measurements of broad leaves |
|
| TraitMill | Platform for measuring various agronomic characteristics | Reuzeau et al. ( | |
| PHENOPSIS | Automated measurement of water deficit-related traits | Granier et al. ( | |
| LeafAnalyser | Rapid analysis of leaf shape variation | Weight et al. ( | |
| LAMINA | Quantification of leaf size and shape | Bylesjö et al. ( | |
| HYPOTrace | Analysis if hypocotyl growth and shape | Wang et al. ( | |
| LEAFPROCESSOR | Analysis of leaf shape | Backhaus et al. ( | |
| Lamina2Shape | Analysis of lamina shape | Dornbusch and Andrieu ( | |
| HTPheno | ImageJ plugin for morphological shoot measurements | Hartmann et al. ( | |
| LEAF-GUI | Analysis of leaf vein structure | Price et al. ( | |
| LemnaTec 3D Scanalyzer | Comprehensive platform for analysis of color, shape, size, and architecture | Golzarian et al. ( | |
| Seeds/grain | WinSEEDLE | Volume and surface area measurements of seeds and needles |
|
| SHAPE | Quantitative evaluation of shape parameters | Iwata and Ukai | |
| ImageJ | General image analysis software for area, size, and shape; applied to grain | Herridge et al. ( | |
| GROWSCREEN-Rhizo | Simultaneous analysis of growth rate, leaf area, and root growth | Nagel et al. ( | |
| SmartGrain | High-throughput measurement of seed shape | Tanabata et al. ( |
A selection of integrated storage and maintenance systems designed to enable query-based approaches to characterizing variation in phenotypic data and the relationship it shares with genotypic data
| Taxa | Database | Organism(s)/taxa | Website | References |
|---|---|---|---|---|
| Plant | MaizeGDB | Maize |
| Schaeffer et al. ( |
| Panzea | Maize; Teosinte |
| Canaran et al. ( | |
| PHENOPSIS DB |
|
| Juliette et al. ( | |
| Gramene Diversity Module |
|
| Chen et al. ( | |
| IonomicsHub | Arabidopsis; rice; yeast; soybean; maize |
| Baxter et al. ( | |
| Oryza Tag Line (OTL) | Rice |
| Larmande et al. ( | |
| Rice Mutant database (RMD) | Rice |
| Zhang et al. ( | |
| T3 Triticeae Toolbox | Wheat; barley |
| Blake et al. ( | |
| Tomato Mutant Database | Tomato |
| Menda et al. ( | |
| SGN | Solanaceae species |
| Bombarely et al. ( | |
| Non-plant | PhenomicDB | Human; mouse; fruit fly; yeast; zebrafish; slimemold; nematode |
| Kahraman et al. ( |
| MGI | Mouse |
| Eppig et al. ( | |
| The Phenoscape project | Numerous |
| Mabee et al. ( | |
| dbGAP | Human |
| Mailman et al. ( |
Fig. 2When combined with high-throughput genotyping on shared germplasm resources, and done in geographically distributed collaborative networks, next-generation phenotyping can empower both gene discovery and crop improvement. Central to that capacity is the careful and judicious use of modular technologies and managed environments. The use of standardized ontologies and Bayesian analysis then create a controlled vocabulary for describing the data and provide a way to integrate results across experiments by accounting for the unique signatures of biological noise generated by environmental covariates