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Summary of sixth lesson • Janzen-Connol hypothesis; explanation of why diseases lead to spatial heterogeneity • Diseases also lead to heterogeneity or changes through time – Driving succession – The Red Queen Hypothesis: selection pressure will increase number of resistant plant genotypes • Co-evolution: pathogen increase virulence in short term, but in long term balance between host and pathogen • Complexity of forest diseases: primary vs. secondaruy, modes of dispersal etc Summary of seventh lesson • SEX; the great homogenizing force, and also ability to create new alleles • INTERSTERILITY/ MATING> SOMATIC COMPATIBILITY • NEED TO USE MULTIPLE MARKERS; SC does that, otherwise go to molecular markers • PCR/ RAPDS How to get multiple loci? • Random genomic markers: – RAPDS – Total genome RFLPS (mostly dominant) – AFLPS • Microsatellites • SNPs • Multiple specific loci – SSCP – RFLP – Sequence information Watch out for linked alleles (basically you are looking at the same thing!) Sequence information • Codominant • Molecules have different rates of mutation, different molecules may be more appropriate for different questions • 3rd base mutation • Intron vs. exon • Secondary tertiary structure limits • Homoplasy Sequence information • Multiple gene genealogies=definitive phylogeny • Need to ensure gene histories are comparable” partition of homogeneity test • Need to use unlinked loci DNA template QuickTime™ and a TIFF (Uncompressed) decompressor are needed to see this picture. Forward primer Thermalcycler Reverse primer Gel electrophoresis to visualize PCR product Ladder (to size DNA product) From DNA to genetic information (alleles are distinct DNA sequences) • Presence or absence of a specific PCR amplicon (size based/ specificity of primers) • Differerentiate through: – Sequencing – Restriction endonuclease – Single strand conformation polymorphism Presence absence of amplicon • AAAGGGTTTCCCNNNNNNNNN • CCCGGGTTTAAANNNNNNNNN AAAGGGTTTCCC (primer) Presence absence of amplicon • AAAGGGTTTCCCNNNNNNNNN • CCCGGGTTTAAANNNNNNNNN AAAGGGTTTCCC (primer) Result: series of bands that are present or absent (1/0) Root disease center in true fir caused by H. annosum Ponderosa pine Incense cedar Yosemite Lodge 1975 Root disease centers outlined Yosemite Lodge 1997 Root disease centers outlined Are my haplotypes sensitive enough? • To validate power of tool used, one needs to be able to differentiate among closely related individual • Generate progeny • Make sure each meiospore has different haplotype • Calculate P RAPD combination 1 2 • 1010101010 • 1011101010 • 1010101010 • 1010111010 • 1010101010 • 1010001010 • 1010101010 • 1010000000 • 1011001010 • 1011110101 Conclusions • Only one RAPD combo is sensitive enough to differentiate 4 half-sibs (in white) • Mendelian inheritance? • By analysis of all haplotypes it is apparent that two markers are always cosegregating, one of the two should be removed AFLP • • • • Amplified Fragment Length Polymorphisms Dominant marker Scans the entire genome like RAPDs More reliable because it uses longer PCR primers less likely to mismatch • Priming sites are a construct of the sequence in the organism and a piece of synthesized DNA How are AFLPs generated? • AGGTCGCTAAAATTTT (restriction site in red) • AGGTCG CTAAATTT • Synthetic DNA piece ligated – NNNNNNNNNNNNNNCTAAATTTTT • Created a new PCR priming site – NNNNNNNNNNNNNNCTAAATTTTT • Every time two PCR priming sitea are within 4001600 bp you obtain amplification AFLPs are read like RAPDs (0/1) Dealing with dominant anonymous multilocus markers • • • • Need to use large numbers (linkage) Repeatability Graph distribution of distances Calculate distance using Jaccard’s similarity index Jaccard’s • Only 1-1 and 1-0 count, 0-0 do not count 1010011 1001011 1001000 Jaccard’s • Only 1-1 and 1-0 count, 0-0 do not count A: 1010011 AB= 0.6 B: 1001011 BC=0.5 C: 1001000 AC=0.2 0.4 (1-AB) 0.5 0.8 Now that we have distances…. • Plot their distribution (clonal vs. sexual) Now that we have distances…. • Plot their distribution (clonal vs. sexual) • Analysis: – Similarity (cluster analysis); a variety of algorithms. Most common are NJ and UPGMA Now that we have distances…. • Plot their distribution (clonal vs. sexual) • Analysis: – Similarity (cluster analysis); a variety of algorithms. Most common are NJ and UPGMA – AMOVA; requires a priori grouping AMOVA groupings • Individual • Population • Region AMOVA: partitions molecular variance amongst a priori defined groupings Now that we have distances…. • Plot their distribution (clonal vs. sexual) • Analysis: – Similarity (cluster analysis); a variety of algorithms. Most common are NJ and UPGMA – AMOVA; requires a priori grouping – Discriminant, canonical analysis Results: Jaccard similarity coefficients Frequency P. nemorosa 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 0.90 0.92 0.94 0.96 Coefficient 1.00 0.98 Frequency P. pseudosyringae: U.S. and E.U. 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 0.90 0.92 0.94 0.96 Coefficient 0.98 1.00 P. pseudosyringae genetic similarity patterns are different in U.S. and E.U. 0.7 Frequency 0.6 0.5 Pp U.S. 0.4 Pp E.U. 0.3 0.2 0.1 0.0 0.9 0.91 0.92 0.93 0.94 0.95 0.96 0.97 Jaccard coefficient of similarity 0.98 0.99 Results: P. nemorosa 4175A p72 p39 p91 1050 P. ilicis P. pseudosyringae p7 2502 p51 2055.2 2146.1 5104 4083.1 2512 2510 2501 2500 2204 2201 2162.1 2155.3 2140.2 2140.1 2134.1 2059.2 2052.2 HCT4 MWT5 p114 p113 p61 p59 p52 p44 p38 p37 p13 p16 2059.4 p115 2156.1 HCT7 p106 0.1 P. nemorosa Results: P. pseudosyringae P. ilicis P. nemorosa 4175A 2055.2 p44 = E.U. isolate 0.1 FC2D FC2E GEROR4 FC1B FCHHD FCHHC FC1A p80 FAGGIO 2 FAGGIO 1 FCHHB FCHHA FC2F FC2C FC1F FC1D FC1C p83 p40 BU9715 p50 p94 p92 p88 p90 p56B p45 p41 p72 p84 p85 p86 p87 p93 p96 p39 p118 p97 p81 p76 p73 p70 p69 p62 p55 p54 HELA2 HELA 1 P. pseudosyringae Now that we have distances…. • Plot their distribution (clonal vs. sexual) • Analysis: – Similarity (cluster analysis); a variety of algorithms. Most common are NJ and UPGMA – AMOVA; requires a priori grouping – Discriminant, canonical analysis – Frequency: does allele frequency match expected (hardy weinberg), F or Wright’s statistsis The “scale” of disease • Dispersal gradients dependent on propagule size, resilience, ability to dessicate, NOTE: not linear • Important interaction with environment, habitat, and niche availability. Examples: Heterobasidion in Western Alps, Matsutake mushrooms that offer example of habitat tracking • Scale of dispersal (implicitely correlated to metapopulation structure)--- Have we sampled enough? • Resampling approaches • Saturation curves – A total of 30 polymorphic alleles – Our sample is either 10 or 20 – Calculate whether each new sample is characterized by new alleles Saturation curves No Of New alleles 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 If we have codominant markers how many do I need • IDENTITY tests = probability calculation based on allele frequency… Multiplication of frequencies of alleles • 10 alleles at locus 1 P1=0.1 • 5 alleles at locus 2 P2=0,2 • Total P= P1*P2=0.02 White mangroves: Corioloposis caperata Coco Solo Mananti Ponsok David Coco Solo 0 237 273 307 Mananti Ponsok David 0 60 89 0 113 0 Distances between study sites White mangroves: Corioloposis caperata Forest fragmentation can lead to loss of gene flow among previously contiguous populations. The negative repercussions of such genetic isolation should most severely affect highly specialized organisms such as some plantparasitic fungi. AFLP study on single spores Coriolopsis caperata on Laguncularia racemosa Site # of isolates # of loci % fixed alleles Coco Solo 11 113 2.6 David 14 104 3.7 Bocas 18 92 15.04 Coco Solo Coco Solo Bocas David 0.000 0.000 0.000 Bocas 0.2083 0.000 0.000 David 0.1109 0.2533 0.000 Distances =PhiST between pairs of populations. Above diagonal is the Probability Random d istance > Observed distance (1000 iterations). Using DNA sequences • • • • • Obtain sequence Align sequences, number of parsimony informative sites Gap handling Picking sequences (order) Analyze sequences (similarity/parsimony/exhaustive/bayesian • Analyze output; CI, HI Bootstrap/decay indices Using DNA sequences • • • • Testing alternative trees: kashino hasegawa Molecular clock Outgroup Spatial correlation (Mantel) • Networks and coalescence approaches Pacifico QuickTime™ and a TIFF (LZW) decompressor are needed to see this picture. Caribe From Garbelotto and Chapela, Evolution and biogeography of matsutakes Biodiversity within species as significant as between species