Presentation is loading. Please wait.

Presentation is loading. Please wait.

Based on lectures by C-B Stewart, and by Tal Pupko Phylogenetic Analysis based on two talks, by Caro-Beth Stewart, Ph.D. Department of Biological Sciences.

Similar presentations


Presentation on theme: "Based on lectures by C-B Stewart, and by Tal Pupko Phylogenetic Analysis based on two talks, by Caro-Beth Stewart, Ph.D. Department of Biological Sciences."— Presentation transcript:

1

2 Based on lectures by C-B Stewart, and by Tal Pupko Phylogenetic Analysis based on two talks, by Caro-Beth Stewart, Ph.D. Department of Biological Sciences University at Albany, SUNY c.stewart@albany.edu and Tal Pupko, Ph.D. Faculty of Life Science Tel-Aviv University talp@post.tau.ac.il

3 Based on lectures by C-B Stewart, and by Tal Pupko What is phylogenetic analysis and why should we perform it? Phylogenetic analysis has two major components: 1.Phylogeny inference or “tree building” — the inference of the branching orders, and ultimately the evolutionary relationships, between “taxa” (entities such as genes, populations, species, etc.) 2.Character and rate analysis — using phylogenies as analytical frameworks for rigorous understanding of the evolution of various traits or conditions of interest

4 Based on lectures by C-B Stewart, and by Tal Pupko Ancestral Node or ROOT of the Tree Internal Nodes or Divergence Points (represent hypothetical ancestors of the taxa) Branches or Lineages Terminal Nodes A B C D E Represent the TAXA (genes, populations, species, etc.) used to infer the phylogeny Common Phylogenetic Tree Terminology

5 Based on lectures by C-B Stewart, and by Tal Pupko Phylogenetic trees diagram the evolutionary relationships between the taxa ((A,(B,C)),(D,E)) = The above phylogeny as nested parentheses Taxon A Taxon B Taxon C Taxon E Taxon D No meaning to the spacing between the taxa, or to the order in which they appear from top to bottom. This dimension either can have no scale (for ‘cladograms’), can be proportional to genetic distance or amount of change (for ‘phylograms’ or ‘additive trees’), or can be proportional to time (for ‘ultrametric trees’ or true evolutionary trees). These say that B and C are more closely related to each other than either is to A, and that A, B, and C form a clade that is a sister group to the clade composed of D and E. If the tree has a time scale, then D and E are the most closely related.

6 Based on lectures by C-B Stewart, and by Tal Pupko A few examples of what can be inferred from phylogenetic trees built from DNA or protein sequence data: Which species are the closest living relatives of modern humans? Did the infamous Florida Dentist infect his patients with HIV? What were the origins of specific transposable elements? Plus countless others…..

7 Based on lectures by C-B Stewart, and by Tal Pupko Which species are the closest living relatives of modern humans? Mitochondrial DNA, most nuclear DNA- encoded genes, and DNA/DNA hybridization all show that bonobos and chimpanzees are related more closely to humans than either are to gorillas. The pre-molecular view was that the great apes (chimpanzees, gorillas and orangutans) formed a clade separate from humans, and that humans diverged from the apes at least 15-30 MYA. MYA Chimpanzees Orangutans Humans Bonobos Gorillas Humans Bonobos GorillasOrangutans Chimpanzees MYA 0 15-30 0 14

8 Based on lectures by C-B Stewart, and by Tal Pupko Did the Florida Dentist infect his patients with HIV? DENTIST Patient D Patient F Patient C Patient A Patient G Patient B Patient E Patient A Local control 2 Local control 3 Local control 9 Local control 35 Local control 3 Yes: The HIV sequences from these patients fall within the clade of HIV sequences found in the dentist. No From Ou et al. (1992) and Page & Holmes (1998) Phylogenetic tree of HIV sequences from the DENTIST, his Patients, & Local HIV-infected People:

9 Based on lectures by C-B Stewart, and by Tal Pupko A few examples of what can be learned from character analysis using phylogenies as analytical frameworks: When did specific episodes of positive Darwinian selection occur during evolutionary history? Which genetic changes are unique to the human lineage? What was the most likely geographical location of the common ancestor of the African apes and humans? Plus countless others…..

10 Based on lectures by C-B Stewart, and by Tal Pupko The number of unrooted trees increases in a greater than exponential manner with number of taxa (2N - 5)!! = # unrooted trees for N taxa C A B D A B C A D B E C A D B E C F

11 Based on lectures by C-B Stewart, and by Tal Pupko Inferring evolutionary relationships between the taxa requires rooting the tree: To root a tree mentally, imagine that the tree is made of string. Grab the string at the root and tug on it until the ends of the string (the taxa) fall opposite the root: A B C Root D A B C D Note that in this rooted tree, taxon A is no more closely related to taxon B than it is to C or D. Rooted tree Unrooted tree

12 Based on lectures by C-B Stewart, and by Tal Pupko Now, try it again with the root at another position: A B C Root D Unrooted tree Note that in this rooted tree, taxon A is most closely related to taxon B, and together they are equally distantly related to taxa C and D. C D Root Rooted tree A B

13 Based on lectures by C-B Stewart, and by Tal Pupko An unrooted, four-taxon tree theoretically can be rooted in five different places to produce five different rooted trees The unrooted tree 1: AC B D Rooted tree 1d C D A B 4 Rooted tree 1c A B C D 3 Rooted tree 1e D C A B 5 Rooted tree 1b A B C D 2 Rooted tree 1a B A C D 1 These trees show five different evolutionary relationships among the taxa!

14 Based on lectures by C-B Stewart, and by Tal Pupko By outgroup: Uses taxa (the “outgroup”) that are known to fall outside of the group of interest (the “ingroup”). Requires some prior knowledge about the relationships among the taxa. The outgroup can either be species (e.g., birds to root a mammalian tree) or previous gene duplicates (e.g.,  -globins to root  -globins). There are two major ways to root trees: A B C D 10 2 3 5 2 By midpoint or distance: Roots the tree at the midway point between the two most distant taxa in the tree, as determined by branch lengths. Assumes that the taxa are evolving in a clock-like manner. This assumption is built into some of the distance-based tree building methods. outgroup d (A,D) = 10 + 3 + 5 = 18 Midpoint = 18 / 2 = 9

15 Based on lectures by C-B Stewart, and by Tal Pupko x = C A B D AD B E C A D B E C F (2N - 3)!! = # unrooted trees for N taxa Each unrooted tree theoretically can be rooted anywhere along any of its branches

16 Based on lectures by C-B Stewart, and by Tal Pupko Molecular phylogenetic tree building methods: Are mathematical and/or statistical methods for inferring the divergence order of taxa, as well as the lengths of the branches that connect them. There are many phylogenetic methods available today, each having strengths and weaknesses. Most can be classified as follows: COMPUTATIONAL METHOD Clustering algorithmOptimality criterion DATA TYPE Characters Distances PARSIMONY MAXIMUM LIKELIHOOD UPGMA NEIGHBOR-JOINING MINIMUM EVOLUTION LEAST SQUARES

17 Based on lectures by C-B Stewart, and by Tal Pupko Types of data used in phylogenetic inference: Character-based methods: Use the aligned characters, such as DNA or protein sequences, directly during tree inference. Taxa Characters Species AATGGCTATTCTTATAGTACG Species BATCGCTAGTCTTATATTACA Species CTTCACTAGACCTGTGGTCCA Species DTTGACCAGACCTGTGGTCCG Species ETTGACCAGTTCTCTAGTTCG Distance-based methods: Transform the sequence data into pairwise distances (dissimilarities), and then use the matrix during tree building. A B C D E Species A---- 0.20 0.50 0.45 0.40 Species B0.23 ---- 0.40 0.55 0.50 Species C0.87 0.59 ---- 0.15 0.40 Species D0.73 1.12 0.17 ---- 0.25 Species E0.59 0.89 0.61 0.31 ---- Example 1: Uncorrected “p” distance (=observed percent sequence difference) Example 2: Kimura 2-parameter distance (estimate of the true number of substitutions between taxa)

18 Based on lectures by C-B Stewart, and by Tal Pupko Exact algorithms: "Guarantee" to find the optimal or "best" tree for the method of choice. Two types used in tree building: Exhaustive search: Evaluates all possible unrooted trees, choosing the one with the best score for the method. Branch-and-bound search: Eliminates the parts of the search tree that only contain suboptimal solutions. Heuristic algorithms: Approximate or “quick-and-dirty” methods that attempt to find the optimal tree for the method of choice, but cannot guarantee to do so. Heuristic searches often operate by “hill-climbing” methods. Computational methods for finding optimal trees:

19 Based on lectures by C-B Stewart, and by Tal Pupko Exact searches become increasingly difficult, and eventually impossible, as the number of taxa increases: (2N - 5)!! = # unrooted trees for N taxa A D B E C C A B D A B C A D B E C F

20 Based on lectures by C-B Stewart, and by Tal Pupko Heuristic search algorithms are input order dependent and can get stuck in local minima or maxima Rerunning heuristic searches using different input orders of taxa can help find global minima or maxima Search for global minimum GLOBAL MAXIMUM GLOBAL MINIMUM local minimum local maximum Search for global maximum GLOBAL MAXIMUM GLOBAL MINIMUM

21 Based on lectures by C-B Stewart, and by Tal Pupko COMPUTATIONAL METHOD Clustering algorithmOptimality criterion DATA TYPE Characters Distances PARSIMONY MAXIMUM LIKELIHOOD UPGMA NEIGHBOR-JOINING MINIMUM EVOLUTION LEAST SQUARES Classification of phylogenetic inference methods

22 Based on lectures by C-B Stewart, and by Tal Pupko Parsimony methods: Optimality criterion: The ‘most-parsimonious’ tree is the one that requires the fewest number of evolutionary events (e.g., nucleotide substitutions, amino acid replacements) to explain the sequences. Advantages: Are simple, intuitive, and logical (many possible by ‘pencil-and-paper’). Can be used on molecular and non-molecular (e.g., morphological) data. Can tease apart types of similarity (shared-derived, shared-ancestral, homoplasy) Can be used for character (can infer the exact substitutions) and rate analysis. Can be used to infer the sequences of the extinct (hypothetical) ancestors. Disadvantages: Are simple, intuitive, and logical (derived from “Medieval logic”, not statistics!) Can be fooled by high levels of homoplasy (‘same’ events). Can become positively misleading in the “Felsenstein Zone”: [See Stewart (1993) for a simple explanation of parsimony analysis, and Swofford et al. (1996) for a detailed explanation of various parsimony methods.]

23 Based on lectures by C-B Stewart, and by Tal Pupko Branch and Bound Tal Pupko, Tel-Aviv University

24 Based on lectures by C-B Stewart, and by Tal Pupko There are many trees.., We cannot go over all the trees. We will try to find a way to find the best tree. There are approximate solutions… But what if we want to make sure we find the global maximum. There is a way more efficient than just go over all possible tree. It is called BRANCH AND BOUND and is a general technique in computer science, that can be applied to phylogeny.

25 Based on lectures by C-B Stewart, and by Tal Pupko BRANCH AND BOUND To exemplify the BRANCH AND BOUND (BNB) method, we will use an example not connected to evolution. Later, when the general BNB method is understood, we will see how to apply this method to finding the MP tree. We will present the traveling salesperson path problem (TSP).

26 Based on lectures by C-B Stewart, and by Tal Pupko THE TSP PROBLEM (especially adapted to israel). A guard has to visit n check-points whose location on a map is known. The problem is to find the shortest path that goes through all points exactly once (no need to come back to starting point). Naïve approach: (say for 5 points). You have 5 starting points. For each such starting point you have 4 “next steps”. For each such combination of starting point and first step, you have 3 possible second steps, etc. All together we have 5*4*3*2*1 Possible solutions = 5!.

27 Based on lectures by C-B Stewart, and by Tal Pupko THE TSP TREE 12345 23451345124512351234 2 4 5 1 4 51 2 51 2 4 5 45 24 2 4 52 52 4

28 Based on lectures by C-B Stewart, and by Tal Pupko THE SHP NAÏVE APPROACH Each solution can be represented as a permutation: (1,2,3,4,5) (1,2,3,5,4) (1,2,4,3,5) (1,2,4,5,3) (1,2,5,3,4) … We can go over the list and find the one giving the highest score.

29 Based on lectures by C-B Stewart, and by Tal Pupko THE SHP NAÏVE APPROACH However, for 15 points, for example, there are 1,307,674,368,000 The rate of increase of the number of solutions is too fast for this to be practical.

30 Based on lectures by C-B Stewart, and by Tal Pupko A TSP GREEDY HEURISTIC Start from a random point. Go to the closest point. Go to its closest point, etc.etc. This approach doesn’t work so well… (but a reasonably close heuristic, based on simulated annealing, will be presented in a couple of lectures.)

31 Based on lectures by C-B Stewart, and by Tal Pupko BNB SOLUTION TO SHP 12345 23451345 1245 12351234 2 4 5 1 4 51 2 51 2 4 5 45 24 2 4 52 52 4 Shortest path found so far = 15 Score here already 16: no point in expanding the rest of the subtree

32 Based on lectures by C-B Stewart, and by Tal Pupko Back to finding the MP tree Finding the MP tree is NP-Hard (will see shortly)… BNB helps, though it is still exponential…

33 Based on lectures by C-B Stewart, and by Tal Pupko The MP search tree 1 2 3 4 is added to branch 1. 1 2 3 4 1 2 3 4 1 2 3 4 5 is added to branch 2. There are 5 branches

34 Based on lectures by C-B Stewart, and by Tal Pupko The MP search tree 4 is added to branch 1. 30 4339 5254525358615659616953514247 55

35 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 4 is added to branch 1. 30 4339 5254525358615659616953514247 55 Best (minimum) value = 52

36 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 4 is added to branch 1. 30 4339 5254525358615659616953514247 55 Best record = 52

37 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 4 is added to branch 1. 30 4339 5254525358615659616953514247 55 Best record = 52

38 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best record = 52

39 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best record = 52

40 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best record = 52 51 5358

41 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best record = 52 51 42

42 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best record = 52 51 42

43 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best record = 52 51 42

44 Based on lectures by C-B Stewart, and by Tal Pupko MP-BNB 30 4339 525452535853514247 55 Best TREE. MP score = 42 Total # trees visited: 14

45 Based on lectures by C-B Stewart, and by Tal Pupko Order of Evaluation Matters 30 4339 53514247 55 Evaluate all 3 first Total tree visited: 9 The bound after searching this subtree will be 42.

46 Based on lectures by C-B Stewart, and by Tal Pupko And Now Maximum Parsimony is Computationally Intractable Felsenstein’s Dynamic Programming Algorithm for tiny maximum likelihood and more, time permitting


Download ppt "Based on lectures by C-B Stewart, and by Tal Pupko Phylogenetic Analysis based on two talks, by Caro-Beth Stewart, Ph.D. Department of Biological Sciences."

Similar presentations


Ads by Google