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Next-Generation Genetic and Genomic Information for World Food Security Jack K. Okamuro National Program Leader for Plant Biology, Crop Productoin & Protection, USDA-ARS ARS Administrator’s Council Meeting December 5, 2012 Beltsville, MD
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Challenge o o Food Security & Sustainability o o Climate Change & Adaptability o o Renewable & Sustainable Energy Production o o Nutrition & Food Safety
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Revolution o o Unleash natural diversity for crop improvement using next generation genetic and genomic technologies o o Expanded “open access " to global genomic and genetic information, tools and data o o Globalization of genetic and genomic resources for global food security
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Model Maize represents 79% of US grain production and 34% of global grain production; 30% of calories for more than 4.5 billion people in 94 developing countries
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o o Over 10,000 years of adaptation to diverse environments o o Genetic manipulation of flowering allows rapid access to diversity evolved elsewhere Diversity
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Application Modified from Ed Buckler Utilize next generation genomic technologies to accelerate and engineer simple and complex traits
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USDA-NASS; Troyer 2006 Crop Sci. 46:528–543; Duvick 2005 Maydica 50:193-202 8-fold increase in yield over 80 years Progress
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Acceleration DNA sequencing drives the revolution o Next generation $15/$4,000 genotype/genome sequence o Genotyping by sequencing provides effective SNP coverage o o GBS reveals genome-wide variation in genome structure (RDV) Log2 ratios of RDV across Chr6
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A time machine Tripsacum dactyloides Teosinte (Zea Mays ssp. Mexicana) Teosinte (Zea Mays ssp. Parviglumis ) Maize Landraces Maize Improved Varieties 60 Inbred lines 23 Inbred lines 17 Inbred lines 2 Inbred lines 1 sample o o GBS provides researchers with a molecular time machine o 103 lines sequenced, over 1 trillion basepairs generated Modified from Jer-Ming Chia & Doreen Ware
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Map, analyze, model target traits Nested Association Mapping (NAM) o Crossed and sequenced 25 diverse maize lines to capture a substantial portion of world’s breeding diversity o Derived 5000 inbred lines from the crosses o Grew millions of plants, multiple locations/seasons o Largest genetic dissection system ever Tx303 Mo18W MS71Hp301 CML333CML247 P39 CML228 Ki11 M37W CML103 NC350 Oh43 Ky21 CML52 Oh7B M162W CML69 Tzi8 Ki3 NC358 CML322CML277 IL14HB97 CML52B73 F1 RIL 2 RIL 199 RIL 200 RIL 1 … B73 F1 RIL 2 RIL 199 RIL 200 RIL 1 … P39 McMullen et al 2009 Science Modified from Ed Buckler
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Trait models o NAM data enables researchers to predict traits based on genotype. o Develop new models that incorporate weighted loci 12h Significant QTL 24h36h Increase Flowering Time Decrease Flowering Time Number of Alleles Flowering is controlled by more than 50 genes, each with small effects Genotype-based trait prediction NAM based models enable
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Determine the genetic basis for complex traits Example: Altered leaf morphology allowed increased planting density. Newer hybrids have upright leaves (Duvick 2005) Applications
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Trait models Upper Leaf Angle Leaf Length Leaf Width 93% of significant alleles display <18mm effect 96% of significant alleles display <2.5 ° effect 95% of significant alleles:display <3mm effect Significant alleles R 2 =0.84 R 2 =0.81 R 2 =0.7 8 Models accurately predict complex traits if the right relatives are measured. Focus on high value traits. Pos alleles Neg alleles
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Hybrid vigor Practical use began in 1920s Competing models of hybrid vigor are almost 70 years old Jun Cao and Patrick S. Schnable Hybrid University of Nebraska-Lincoln, 2004 Index of Hybrid Vigor Index of Recombination Genomic Position o Bad mutations occur all the time o Genomic mixing (recombination) is necessary to remove these o Regions with low recombination benefit from being in a hybrid state (i.e. cover for each other)
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Conclusions o o Trait variation is predictable o o Common adaptive alleles selected by breeders are rare variants in wild populations; e o o Environment determines the frequency and fitness of polymorphisms. o o High impact of the adoption of genomic technologies for crop improvement
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One team of many www.panzea.org
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Important challenge o o IWGPG NPGI Workshop, PAG Saturday, 12 January 2013 What tools and resources are needed that are not currently available? What tools and resources are needed that will enable translation of basic research for agriculture? For basic research in plant genomics? What information and resource repository needs are not currently being met? What opportunities do you see for leveraging investments through international coordination? o o ARS Big Data Workshop, February 2013 o o G8 Open Data Research Collaboration Platform Workshop, April 2013 How to accelerate and expand the adoption of next generation genomic technologies for crop improvement? Target developing economy countries
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GRIN-GlobalGRIN-Global panzea ARS provides open access system for global crop information system crop researc Globalize open data access Collaborators ASPB CIMMYt Cold Spring Harbor Lab Cornell University Ensembl European Bioinf Inst Genome Institute iPlant Collaborative ICRISAT IRRI JCVI KEGG Knowledgebase MIPS Monsanto Oryzabase Phytozome Plant Ontology Consortium PLAZA Syngenta TAIR
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End Users Computational Users TeraGrid XSEDE Multi-level User Access From Eric Lyons Expand open access to community tools & services through the iPlant Collaborative
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Globalization 2012 New User Map
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Deliver G-8 countries agreed to share relevant agricultural data available from G-8 countries with African partners o WORKSHOP. To convene an international conference on Open Data for Agriculture o GLOBAL PLATFORMS. To develop options for the establishment of a global platform to make reliable agricultural and related information available to African farmers, researchers and policymakers, taking into account existing agricultural data systems. o PILOT. Explore options for establishing a pilot to make genetic and genomics data openly available; integrate genetics and genomics data with geo-spatial, agro-ecological, weather, and other relevant data to make practical and useful information available to African farmers, G8/G20 Alliance for Open Data for Agriculture
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Global partnerships CIMMYT
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Innovation SoyFACE Global Change Research Facility Three-dimensional root architecture phenotyping Field-Based Phenotyping New technologies needed A new generation of plant breeders, bioinformaticists, programmers, IT specialists Long term data storage & curation
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Challenge o o Food Security & Sustainability o o Climate Change & Adaptability o o Renewable & Sustainable Energy Production o o Nutrition & Food Safety
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Acknowledgements o Maize Diversity Project Team o ARS Database Teams (Albany, Ames, Ithaca, Cold Spring Harbor o IWGPG o ARS National Programs
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