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Combining Genomics and Natural Diversity to Design Genomes Edward Buckler USDA-ARS Cornell University http://www.maizegenetics.net Lessons from maize genome • • • • What is junk? What is useful? What do we want to get rid of? How do we use this knowledge? What happens when you change a base? Adaptive or GxE GS & GWAS Models Well Deleterious Neutral Approximate Distribution of Mutational Effects Only 40% of the maize genome is shared between two varieties Plant 1 Person 1 99% 40% Plant 2 Maize Plant 3 Person 2 Person 3 Humans Fu & Dooner 2002, Morgante et al. 2005, Brunner et al 2005 Numerous PAVs and CNVs - Springer, Lai, Schnable in 2010 WHERE ARE THE NEUTRAL CHANGES? (I.E. THE JUNK) Most DNA is tightly bound around proteins • DNA of one cell would be a 3 feet long if not wound up • Can empirically measure how tightly bound every base pair in the genome is. • 99% is tightly bound – 1% is making the difference Figure from Vera et al. 2014 5% of the genome may explain nearly all genetic variance for 42 traits. We are testing if this is true? Intergenic Coding Sequence 3’UTR 5’UTR MNase Hypersensitive The current model of DNA MNase 1-2% Ignore this part Coding + UTRs 2% HOW DO WE FIND THE ADAPTIVE CHANGES? Map on 2000-10,000 genotypes • Genetic mapping identifies causative nucleotides – Bi-parental crosses – NAM – 5000 lines • Mining variation from other Vitis – Breeding panels - 2000+ lines – Landrace panels – crossed to hybrids and evaluated – 4500 lines SeeD experimental design Top cross provides reasonable CIMMYT maize collection agronomics and ~30,000 accessions Restricting to adaptation30 SeeD two~5,000 gametes 25 accessions per accessions 20 makes the 15 115 survey tenable Alberto Romero, GBS & GWAS analysis o o o o o Hybrid Landrace: 2 gametes per accession Leaf sample 110o 105o 100o 95o 90o 85o Phenotypic evaluation according to accession’s adaptation zone GBS >20 Different Traits being Scored – development, yield, disease resistance, drought tolerance, nitrogen use efficiency Data analysis SEED (Landrace) GWAS directly hits known genes … Vgt1 ZCN8 Although still missing many probably missed as we have not sequenced the entire genome Plus candidate genes that have not been seen as QTL in maize inbred lines Vgt1 ZCN8 ZCN26 ZMM5 Key features of successful mapping studies to causative base pairs • >1000 genotypes • Complete knowledge of DNA sequence • Replication in across environments • High quality measurement – Future: Daily measurement by robotics (may reduce some environmental replication) HOW DO WE DEAL WITH DELETERIOUS MUTATIONS? Mutation happens • Every generation new 20-60 mutations per genome • 5 mutations change an amino acid sequence – Another 5 in highly conserved non-coding regions • Over the age of a clone – 100 to 5000 genes have novel mutations in their genome that interact with the 100,000s of existing polymorphisms 72% of Amino Acid Substitutions Are Highly Deleterious in Maize 0-1 22% Nes Proportion 1-10 6% >100 64% 10-100 8% Strength of selection (Ne*s) against new animo acid mutations Clonal species accumulate mutations Clones degrade Sex mixes things up Deleterious mutations are at the heart of inbreeding depression and heterosis • Heterosis P1 P2 F1 F2 F3 F4 F5 F6 F7 F8 Maize well known to show inbreeding depression (Jones 1924; Neale 1935) Deleterious mutations are enriched in low recombination regions (they are like clones) GERP Recombination Rate Eli RodgersMelnick Chromosome 5 Position Rodgers-Melnick 2015 PNAS How to spot deleterious mutations? • Mapping is NOT efficient for these rare allele • Compare genomes of target species to related species • Create biological models on what each base contribute to phenotype HOW IS THE VARIATION DEPLOYED? Genomics Assisted Breeding yi = µ + Σmzijujδj + ei (Re)train model Phenotype Training cycle (slower, expensive) Genotype Predict via model Make crosses Selection cycle (faster, less expensive) Biology Assisted Breeding yi = µ + Σmzijujδj + ei (Re)train model Phenotype Molecular biology Physiology Training cycle (slower, expensive) Biochemistry Genotype Predict via model Evolution Make crosses Selection cycle (faster, less expensive) CRISPR/CAS9 Environment CRISPR Future (Genome editing) CRISPR/CAS9 Editing • Opportunity to maintain clone quality profiles BUT fix the problems – Disease resistance – mapping – Off flavors – mapping – Low yield – deleterious mutations • Requires knowledge of causative nucleotides What does grape need to do? • Create mapping panel of >2000 varieties – Sequence their genomes – Map causative adaptive nucleotides – Measure phenotype with robotics • Score genome for the right molecular characteristics • Apply to DNA therapy to help repair the genome