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Evolution and Phylogenetic Tools

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Evolution and Phylogenetic Tools. Representing Relationships Among Clades. Clades ... Different embryology. Highly modified pectoral fins. Complications (2) ... – PowerPoint PPT presentation

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Title: Evolution and Phylogenetic Tools


1
Evolution and Phylogenetic Tools
2
Representing Relationships Among Clades
  • Clades are organisms having common ancestor
  • Represent as cluster or nodes on a rooted or
    unrooted tree.
  • Characteristics of trees
  • Topology relationship of clades
  • Edge length time
  • Root ancestry
  • Probably requires an outgroup
  • May require additional assumptions, like
    molecular clock

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A
B
C
D
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A
B
C
D
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Characters for Constructing Phylograms
  • Heritable traits
  • Physical traits
  • Behaviors
  • Biological sequences
  • Proteins
  • DNA

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Traditional Characters
9
  • Four limbs
  • (Ray-finned fishes (Amphibians (Lizards Snakes)
    Birds Mammals))

Birds
Lizards
Snakes
Mammals
Amphibians
Ray-finned fishes
Four limbs
10
Complications (1)
  • Snakes?
  • Ancestors of snakes had limbs
  • Some snakes have rudimentary limbs
  • Walking fish?
  • Different embryology
  • Highly modified pectoral fins

11
Complications (2)
  • Selection may cause elimination or reduction of a
    character
  • Convergent evolution may impose similar
    characters on separate clades.
  • Horizontal gene transfer

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Ideal Phylogenetic Tools
  • Methods should be
  • Efficient
  • Time to compute answer
  • Powerful
  • Data should not be wasted
  • Consistent
  • Repeated tests generate the same answer
  • Robust
  • Tolerant of variability

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What are we looking for out of phylogenetics?
  • Find evidence to group organisms into less
    inclusive clades
  • Uncover evolutionary mechanism favoring and
    restricting diversity
  • Build true evolutionary tree
  • Look at sequence diversity for protein or set of
    proteins

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General Considerations
  • Compare orthologs among a set of clades
  • Different orthologs may generate different trees
  • Why
  • Common genetic targets for evolutionary biology
  • Myoglobin
  • 16S ribosomal RNA
  • Cytochrome Oxidase (subunit 1)
  • CytochromeB

15
Statistical Methods for Making Trees
  • Maximum parsimony
  • UPMGA Unweighted Pair Group Method with
    Arithmetic mean
  • Neighbor joining

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Maximum parsimony
  • Frequently used with morphological data
  • Non-parametric
  • Uses matrix of characters and a defined, explicit
    optimality criterion
  • Characters divided into states
  • Placenta present absent
  • Genome membrane-bound nucleus no nucleus
  • ProteinX,positionY (any of 20 amino acids)
  • Trees evaluated by calculating minimum steps to
    explain distributions of each character
  • Tends not to be consistent or effienent

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UPMGA
  • Bottom-up clustering pairwise distances
  • Often outputs as rooted tree from using
    assumptions like molecular clock

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Neighbor joining
  • Highly efficient can be used for larger datasets
    than maximum parsimony
  • Bottom-up clustering
  • Frequently used for molecular sequence
  • Decision at each step favoring least total branch
    length

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Phylogenetic Analysis
  • Basic Algorithm
  • Align all pairs of sequences to calculate
    distance matrix
  • Calculate phylogenetic tree from distance matrix
  • Calculate branch lengthsFor the case of
    ClustalW Perform progressive alignments based on
    the phylogenetic tree

20
Distance Matrix / Pairwise Alignments
  • Fast Approximate Method
  • Heuristic
  • Scores calculated as
  • of k-tuples matches between two sequences
    (gap penalty of gaps)
  • k1,2 for aa, 2-4 for dna
  • Slow Accurate Method
  • Dynamic Programming
  • Score
  • 1 (( of identities / length of sequences) /
    100))

21
Tree Construction
  • UPGMA
  • Unweighted Pair Group Method by Arithmetic Mean
  • Simplest method of tree construction
  • Assumes equal rates of mutation along the
    branches
  • UPGMA Algorithm
  • Definition Node in a tree is called an
    Operational Taxonomic Unit (OTU)
  • From distance matrix, cluster pair of OTUs with
    smallest distance, and calculate new distance
  • Repeat previous step until clusters converge

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UPGMA
  • Cluster pair with smallest distance
  • Recalculate distance matrix

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UPGMA
  • Calculate new distance using composite OTU(A,B)
  • Distance between a simple OTU and a composite OTU
    is the average of the distances between the
    simple OTU and the constituent simple OTUs of the
    composite OTU
  • dist (A,B),C (dist A,C dist B,C) / 2 (4
    4) / 2 4dist (A,B),D (dist A,D dist B,D) /
    2 (6 6) / 2 6dist (A,B),E (dist A,E
    dist B,E) / 2 (6 6) / 2 6 dist (A,B),F
    (dist A,F dist B,F) / 2 (8 8) / 2 8

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UPGMA
  • Calculate new distance using composite OTU(A,B)
  • Distance between a simple OTU and a composite OTU
    is the average of the distances between the
    simple OTU and the constituent simple OTUs of the
    composite OTU

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UPGMA
  • Second Iteration

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UPGMA
  • Third Iteration

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UPGMA
  • Fourth Iteration

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UPGMA
  • Fifth Iteration

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Tree Construction
  • Neighbor-Joining
  • Assumes unequal rates of mutation along each
    branch
  • Produces tree with branch lengths proportional to
    estimated divergence along each branch
  • Neighbor-Joining Algorithm
  • Find pairs of OTUs that minimize total branch
    length at each stage of clustering starting with
    a starlike tree (Minimum-Evolution Tree).

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Neighbor-Joining
  • Start with a star tree with N nodes
  • Combine the pair with the smallest branch lengths
  • Continue until all N-3 interior branches are
    found
  • Dij distance between OTUs i and j

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1
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X
6
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Definitions
  • Lab branch lengths between nodes a and b
  • Sum of branch lengths

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X
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Definitions
  • Assuming 1 2 are any pair of neighbors
  • Any pair of OTUs can take the position of 1
    2, N(N-1)/2 waysof choosing pairs
  • Choose the pair that gives the smallest branch
    lengths

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2
Y
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Definitions
  • Branch length between XY is now
  • Removing XY givestwo star-like trees,total
    branch lengths are

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Definitions
  • Sum of all branch lengths
  • If 12 are closestneighbors, join themto make
    new OTU and recalculate distance

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Definitions
  • To find the actual tree branch lengths, Z is OTU
    including all but 1 2

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L1X
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L2X
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Neighbor-Joining
  • Start with distance matrix below to calculate sum
    of branch lengths using

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Neighbor-Joining
  • Calculate sum of branch lengths

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Neighbor-Joining
  • Calculate sum of branch lengths

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Neighbor-Joining
  • Calculate sum of branch lengths
  • Combine OTUs,Estimate branch lengths

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Neighbor-Joining
  • Calculate sum of branch lengths
  • Recalculate distances

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Neighbor-Joining
  • Calculate sum of branch lengths
  • Recalculate distances

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Neighbor-Joining
  • Based on new distance matrix, recalculate sum of
    branch lengths

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Neighbor-Joining
  • Start next iteration, nodes 5 6

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Neighbor-Joining
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Neighbor-Joining
  • Next Iteration (1-2) 3

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Neighbor-Joining
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Neighbor-Joining
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Neighbor-Joining
  • Final tree

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