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Bottom Up and Top Down Perspectives on the Evolutionary Process: From Mutations to Phylogenetic Patterns

Bottom Up and Top Down Perspectives on the Evolutionary Process: From Mutations to Phylogenetic Patterns. Charles B. Fenster. Acknowledgements: NSF , NFR, NGS, UMD, UVA and many colleagues. Four Modes of EVOLUTIONARY PROCESS:. Natural Selection 1. Evolution & Diversification 5.

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Bottom Up and Top Down Perspectives on the Evolutionary Process: From Mutations to Phylogenetic Patterns

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  1. Bottom Up and Top Down Perspectives on the Evolutionary Process: From Mutations to Phylogenetic Patterns Charles B. Fenster Acknowledgements: NSF, NFR, NGS, UMD, UVA and many colleagues

  2. Four Modes of EVOLUTIONARY PROCESS: Natural Selection1 Evolution & Diversification5 Genetic Architecture Phenotypic variation Genetic variation Mutations2 GENETIC DRIFT3 GENE FLOW4 Population Genetic Structure

  3. Maad, Armbruster Ecological Context and Evolutionary Process Galloway Flower size variation along an altitudinal gradient (Alpine, Norway) Dudash, Biere, Castillo, Dotterl, Holland, Kula Reynolds, Zhou Silenestellata-Hadenaectypainteraction (mutualism evolution, food web approaches, sexual conflict) Erickson Epistasis for fitness (Prairie, Illinois) Huang, Ree, Hereford, Eaton Quantifying QTL effects (Prairie, Kansas) Rutter, Lenormand, Imbert, Agren, Weigel, Wright Marten-Rodriguez Reproductive isolation and community sorting in Tibetan Pedicularis Quantifying Mutations (Garrangue, France) Pollination and breeding system evolution in Gesnerieae (Caribbean)

  4. Outline 1) BOTTOM UP: Input of genetic variation Mutation parameters 2) TOP DOWN: Natural selection & species selection Quantifying role of natural selection in assembly of complex traits Consequences of trait evolution for phylogenetic patterns 3) CONSERVATION GENETICS (time permitting) Inbreeding, epistasis and outbreeding depression

  5. Quantifying mutation parameters using Arabidopsis thaliana mutation accumulation lines Matthew Rutter, Jon Agren, Jeff Conner, Eric Imbert, Thomas Lenormand, Angie Roles, Detlef Weigel, Stephen Wright & Charles Fenster Funding by NSF and Max Planck Society

  6. The values of mutation parameters for fitness determine many evolutionary processes Parameters: Rate, Effect & Size • Evolution of Adaptation (Fisher, Kimura, Orr) • Beneficial mutation rate, size of effect (s) • Evolution of Sex (Muller’s Ratchet) • Number of Asexual individuals without mutations • PROPORTIONAL to: 1/U (deleterious mutation rate); s • Inbreeding Depression & Mating System Evolution • PROPORTIONAL to: U; 1/s

  7. Mutation Rates at the Following Levels: Nucleotide or Locus ATGCATGCATGCATCCCAA 10-8 - 10-9 10-5 - 10-6 G T Whole Genome Sequence Level: U ~ 0.7-2 (haploid) (e.g. Keightleyet al. 2007, Ossowski et al. 2010) Traits (fitness): h2m ~ 10-4 - 10-3 , U ~ 0.05-0.12 (haploid) After mutation Before mutation Frequency Trait

  8. Mutations have a distribution of fitness effects all/mostly deleterious - + Frequency of mutation - + -1 -0.75 -0.5 -0.25 0 0.25 0.5 0.75 1 Selection coefficient

  9. Mutation accumulation lines (MA lines) (Produced by Ruth Shaw) Nearly homozygous progenitor Columbia Single seed descent in greenhouse MA lines Sequence: 5 MA lines Traits (Fitness): 100 MA lines 25thgeneration . . . 1 100 Sublines to control for maternal effects Test in natural environments: Any genetic difference between lines are due to mutation

  10. Blandy Farm (UVA) Blue Ridge of Virginia Total plants: 48,000 100 lines X 70/line X 7 Environments Total fruits: > 600,000 Kellog Biological Station (MSU), southern MI Fall field planting (2x) Fall seed field planting VA and MI Spring field planting (2 x) Greenhouse

  11. Results: 1. MA lines diverged in fitness 2. Founder performance near average MA performance Founder Total fruit produced = fruit # * survival 14 12 10 8 # of MA lines 6 4 2 0 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 Fruit number Block P<0.0001 MA line P<0.029 MA line vs. Founder P= 0.8650 Subline P<0.0051 Rutter et al. 2010

  12. 100 90 80 70 60 Rank fitness of MA lines 50 40 30 20 10 0 Spring Fall Season Reaction Norm of Fitness Rank Across Seasons 40 MA lines switch fitness relative to parent Founder Fitness

  13. Mixed Model Analytical Approach to Quantify G x E on Fitness 100 MA Lines & Founder Planted in 2 Spring & 2 Fall Experiments as Seedlings Large Effect of Environmental Variables (Block, Season, Experiment, Year) MA Line : (100) P = 0.053 MA Line x Experiment (4) P = 0.0006 MA Line x Year (2) P = 0.0015 MA Line x Season (2) P = 0.022

  14. MA LINE PERFORMANCE SUGGESTS GENE EXPLORATION 100 90 80 70 G X E Consistent beneficial 60 Fall Fitness Ranking 50 Consistent deleterious G X E 40 30 20 10 0 0 10 20 30 40 50 60 70 80 90 100 Spring Fitness Ranking

  15. Fitness Mutation Parameters in the FIELD:(Rutter et al. 2010, 2012 & unpublished)Whole genome mutation rate for fitness = 0.12 (haploid)Mutation effects relative to the environment are small: h2m for fitness ~ 1 x 10-4 (3/4 experiments)High frequency of beneficial mutationsG X E:variance G x E (MA line effects in 3/4 experiments)MA line x SeasonMA line x YearMA line x ExperimentMutations Contribute Substantially to Population Genetic Variation of Fitness

  16. Adaptive landscapes & mutation parameters “The vast majority of mutations are deleterious… [a] well-established principle of evolutionary genetics” Keightley and Lynch, 2003 Fisher, 1930 Beginning of a conceptual framework for the prediction of mutation effects NSF Arabidopsis 2010, Rutter and Fenster (with T. Lenormand, E. Imbert & J. Agren)

  17. Ongoing: New MA lines developed from French and Swedish genotypes NSF Arabidopsis 2010 (Rutter and Fenster with Lenormand, Imbert & Agren) Also EMS mutagenesis approaches (Frank Stearns, graduate student)

  18. “Mutation was the exchange of one kind of beans for another…Beanbag genetics do not explain the physiological interaction of genes and the interaction of genotype and environment…But what precisely has been the contribution of this mathematical school to evolutionary theory? Mayr, 1959, 1963 Wright and Andolfatto 2008 Distinguishing between true signatures of adaptive evolution and alternative non-adaptive models poses a challenge in future studies Nei 2013 Bean Bag Genetics: Fisher Wright Haldane have not explained the evolution of major adaptations We need a mechanistic understanding of the relationship between mutations and fitness

  19. Mutations Detected (Ossowski et al. 2010 ): Sequenced 5 MA lines vs. Founder Dark blue = nonsynonymous or indel in coding region Total =114 mutations detected

  20. Synthesizing Sequence and Phenotype Results(Rutter et al., 2012) • Sequence experiment: Mutation rate = 0.7/haploid Nonsynonymous mutations and indels in coding region = 0.1/haploid • Field experiment: 0.12/haploid affecting fitness

  21. Mean fruit production of 5 MA lines and the founder premutation line in 6 natural environments and their mutational profile Rutter et al., 2012 Fitnesses were estimated using an aster model including survival (binomial) and fruit number (Poisson). P-values (* P < 0.05, ** P < 0.01, *** P < 0.001) represent MA-founder comparisons. P-values were calculated by likelihood ratio tests, and validated using a parametric bootstrap. Means in bold represent a significant difference following within experiment sequential Bonferroni correction (P < 0.05). BEF = Blandy Experimental Farm; KBS = Kellogg Biological Station. Significant GxE (aster model, P<0.05) FYI: MA line 49: deletion includes DNA binding transcription factor MA line 119: large deletion in a gypsy class retrotransposon

  22. Conclusions • Congruence of estimates for mutation rates for fitness by the two methods • Beneficial mutations occur at high frequency • Initial understanding of relationship of specific mutations with fitness Funding from NSF and Max Planck Institute

  23. Current Funding to Fully Sequence Rutter, Weigel, Wright: 100 Columbia MA lines 320 Swedish and French MA lines >50 genotypes representing one multilocus genotype Sequence Fitness

  24. Mutation rates and spectrum and interface with natural selection • Precise estimates of mutation rate and spectrum (including genetic variation for mutation rate) • About 6500 natural mutations that can be related to fitness • Compare spectrum of mutations to standing genetic variation & to genetic differences between species (e.g., trend for genome size reduction) • M vs. G

  25. Natural Selection (top down) “From the observations of various botanists and my own I am sure that many other plants offer analogous adaptations of high perfection…” (Darwin, 1877) Fenster et al. 2004

  26. The Adaptive Landscape Simpson 1944 22 23 24 25 26 27 28 29 30 31 32 33 34 35 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 Trait Combination: Adaptations reflect adaptive trait combinations

  27. - Does natural selection act on trait combinations?

  28. Documenting Patterns of Natural Selection Responsible for SileneFloral Evolution S. caroliniana S. virginicaS. stellata M. Dudash, R. Reynolds, A. Kula, S. Konkel, J. Zhou & many NSF REU’s Funding: NSF, National Geographic Society, UVA Pratt Fund

  29. How to document the pattern of natural selection on a multivariate character (the flower)? Quantify Phenotypic Selection Experimental Manipulation Approaches Comparative Approaches

  30. Phenotypic Selection in the Field: Silenevirginica 8 year study (1992-95, 2002-06) Female Reproductive Success (Total Fruit & Seed) Attraction Petal Size (Length x Width) Display Height Display Size (# Flowers) Mechanics of Pollen Deposition Corolla Tube Length Stigma Exsertion Corolla Tube Diameter Covariates Flower Number Various Vegetative Traits 150-300 individuals/year (Reynolds et al., Evolution 2010) Mtn. Lake Biol. Station

  31. Phenotypic Selection: Analytical Approach (6 Traits) Female Reproductive SuccessLande-Arnold (1983), Phillips & Arnold (1989) Corolla tube length, nectar-stigma distance, corolla tube diameter, petal length, petal width, inflor. Ht. 1. 1st Approach 2. 3. 4. 2nd Approach (Canonical Analysis) 5. 6. (Reynolds et al., Evolution 2010)

  32. 3 4 2 1 Experimental Approach: Array Design *Trial = approx. 25 plant visits in a block or flowers were empty of nectar *30 minutes - 90 minutes (four observers) *Total of 28 Trials run 2072 Plant visits

  33. Response Variables: # of visits per plant = proxy of fitness S. virginica: Red, Tall, Diffuse, Horizontal, Narrow S. caroliniana: Pink, Short, Clump, Vertical, Narrow S. stellata: White, Tall, Clump, Horizontal, Wide + 45 other combinations

  34. Model Selection Approach: Best-subsets regression analysis of main and interactive effects . Response variable: Plant visits by hummingbirds AIC score comparisons Fenster, Reynolds, Markowski, & Dudash in prep

  35. Does selection act on trait combinations? Yes Contemporary selection on S. virginica is correlational (Reynolds et al. Evolution 2010) And Yes Experimental manipulation of floral traits demonstrate hummingbirds visit based on floral trait combinations

  36. 2 Can we use the phylogeny of the angiosperm to document multitrait selection? NESCent Working Group: “Floral Assembly: Quantifying the composition of a complex adaptation” Charlie Fenster (PI), Pam Diggle (coPI) Scott Armbruster (coPI) , Pam Diggle, Lawrence Harder, Stephen Smith, Amy Litt, Lena Heilman, Chris Hardy, Peter Stevens, Larry Hufford, Susanna Magallon AND…. Brian O’Meara Stacey Dewitt Smith

  37. The Angiosperm Flower is Highly Labile: Convergence through multiple developmental origins Attractive Features in the Core Caryophyllales Sepals Stamens Sepals, Bracts Leaves Stamens Sepals Sepals Sepals Sepals Stamens Sepals Sepals, bracts Brockington et al., 2009 Intl J Plt Sci.

  38. Stebbins 1951 in a nutshell: “A flower is … a harmonious unit.” For 8 floral traits examined two states. Expect 28 different combinations found in angiosperms. But observed only 86/256 possible combinations & 200 of the 400 families represented 12 different combinations! Uneven distribution. “The characteristic [combinations] of many genera and families [represent] peaks.”

  39. - Natural Selection: Is there a bias in trait transitions? Species Selection: Do some combinations lead to greater net diversification than others?

  40. Binary State Dependent Speciation & Extinction (Markov Models) Maddison et al. 2007 q01 1 r0 r1 0 q10 Ancestral (root) Derived • two states are 0 and 1 • ris the diversification rate for each (speciation minus extinction) • q01and q10 = transition rates between character states

  41. Extending BiSSE to Trait Combinations: Six Major Angiosperm Traits Scored (26 combinations = 64 combos) e.g.: Corolla present, Symmetry bilateral, Stamens few: 0*11**

  42. Tree construction methods and character mapping: • Generated branch lengths by randomly sampling 500 species from • GenBank based on clade size • 1.7 megabases of sequence data (7 genes) • Supermatrix constructed with PHLAWD • RAxML • Constrained tree (APG and group knowledge) • 40 fossils for calibration points • Determined trait states and trait state combinations • Mapped character states

  43. Binary State Dependent Speciation & Extinction (Markov Models) Maddison et al. 2007 q01 1 r0 r1 0 q10 Ancestral (root) Derived Series of bipartitions for 6 traits each with 2 character states: For any character the state could be: 0, 1, or * 36 bipartitions x 5 rate models x 6 transition models

  44. Focal Groups and Bi-partitions (developed by Brian O’Meara) Corolla present, bilateral symmetry, few stamens combined with 23 = 8 other character states Phenotypic Space Bi-partitioning Phenotypic Space

  45. Transition Rate models for Focal and Non-Focal States K is the number of free parameters in the model Each model contains up to four transition rates (qNF, qNN, qFF, qFN), where “N” denotes the non-focal state and “F” the focal state. The rate qNF is thus the rate of transitions from the non-focal to the focal state.

  46. Diversification rate models for focal and non-focal states K is the number of free parameters (rates) in the model Each model contains up to four rates (λF, λN, μF, μN) where λ is the speciation rate (units?), μ is the extinction rate (units?) and “N” and “F” denote the non-focal and focal states, respectively.

  47. 36 bipartitions x 5 rate models x 6 transition models = 729 bipartitions x 5 rate models x 6 transition models = = 19, 567 unique models Models were ranked with AIC

  48. Character evolution & diversification across the Angiosperms Trait combination space 0*11** High Diversification Focal state: Corolla present Symmetry bilateral Stamens few Frequency of Trait Combination in Sample of Angiosperm Null Distribution Observed Trait Combinations & Unordered Null Distribution O’Meara, Smith et al.

  49. Top ten models (ranked by AIC weight) from maximum likelihood focal combination analysis. A D A D A D A D D A D A D A A D A D A D … approximately 19,500 models evaluated No effect: petals separate/fused, carpels separate/fused, ovary superior/inferior Corolla Present, Bilateral Symmetry Stamens: Influence Diversification and Transition Rates O’Meara, Smith et al.

  50. Simulated time to first appearance of each combination of the three characters. O’Meara, Smith et al. • Tall bars and short bars indicate the median and 95% confidence interval, respectively, based on 50 simulations.

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