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Molecular ecology, quantitative genetic and genomics Dave Coltman + Melissa Gunn, Andrew Leviston, Katie Hartnup & Jon Slate Past, present & future • Characterized microsatellites previously developed at U of A and new ones developed at Sheffield (NERC 2003-2004) • Genotyping and pedigree in progress (NERC Sheffield 2004-2005) • Quantitative genetic analyses next (NERC Sheffield 2005-2006) • Genomics (U of A 2005+ ?) Molecular ecology • Microsatellites developed in Sheffield & will/can be used for – Parentage (vertical pedigree) • paternity – Kinship (horizontal pedigree) • Full sib vs. half sib vs. unrelated – Relatedness • Pair-wise R network across population Molecular ecology • Mating system (Jeff) – Levels of multiple paternity and polygyny • Male mating success (Jeff) – Relationship between phenotype and paternity • Spatial relatedness structure (Jeff & Mark) – relationship to dispersal dynamics & resource abundance Quantitative genetics • Estimation of (co)variance components • Prediction of individual genetic values The animal model yi = + ai + ci + i Fixed effects (e.g. age, year) Additive genetic breeding value Other specific environmental effect VP = VA + VE + VR h2 = VA / VP Residual error NERC Objectives 1. Heritability of trait means and plasticities Phenotype (X[E]) X ( E ) c0 c1 E e h X2 ( E ) Environment (E) V A (c0 ) 2Cov A E V A (c1 ) E 2 VP NERC Objectives (2) 2. Identify constraints/accelerants through multivariate models (genetic correlations and maternal effects) 2 R X X hX Y hY hX rA 3. Characterize selection, predict response and compare to observed data & ebv 4. What happens under supplementation? Other QG ideas? • Other traits – Heritability and ebvs for physiological, metabolic, behavioural parameters? • Spatial QG structure – Spatial autocorrelation in ebvs, relationship with resource landscape, temporal stability Genomics *QG basis means we can focus on heritable traits using ebvs* • Targeted gene approach – Use bioinformatics to sequence specific genes & search for association with ebv • Sciurid genome map & QTL scan – map linkage groups & fish for association with ebv • Population genomics – Map QTL & genes onto broad scale environmental & biogeographic gradients