Phylogenomics

Phylogenomics is the intersection of the fields of evolution and genomics.[1] The term has been used in multiple ways to refer to analysis that involves genome data and evolutionary reconstructions. It is a group of techniques within the larger fields of phylogenetics and genomics. Phylogenomics draws information by comparing entire genomes, or at least large portions of genomes.[2] Phylogenetics compares and analyzes the sequences of single genes, or a small number of genes, as well as many other types of data. Four major areas fall under phylogenomics:

Prediction of Gene Function

When Jonathan Eisen originally coined phylogenomics, it applied to prediction of gene function. Before the use of phylogenomic techniques, predicting gene function was done primarily by comparing the gene sequence with the sequences of genes with known functions. When several genes with similar sequences but differing functions are involved, this method alone is ineffective in determining function. A specific example is presented in the paper “Gastronomic Delights: A movable feast”.[3] Gene predictions based on sequence similarity alone had been used to predict that Helicobacter pylori can repair mismatched DNA.[4] This prediction was based on the fact that this organism has a gene for which the sequence is highly similar to genes from other species in the "MutS" gene family which included many known to be involved in mismatch repair. However, Eisen noted that H. pylori lacks other genes thought to be essential for this function (specifically, members of the MutL family). Eisen suggested a solution to this apparent discrepancy - phylogenetic trees of genes in the MutS family revealed that the gene found in H. pylori was not in the same subfamily as those known to be involved in mismatch repair.[3] Furthermore, he suggested that this "phylogenomic" approach could be used as a general method for prediction functions of genes. This approach was formally described in 1998.[5] For reviews of this aspect of phylogenomics see Brown D, Sjölander K. Functional classification using phylogenomic inference.[6][7]

Prediction and Retracing Lateral Gene Transfer

Traditional phylogenetic techniques have difficulty establishing differences between genes that are similar because of lateral gene transfer and those that are similar because the organisms shared an ancestor. By comparing large numbers of genes or entire genomes among many species, it is possible to identify transferred genes, since these sequences behave differently from what is expected given the taxonomy of the organism. Using these methods, researchers were able to identify over 2,000 metabolic enzymes obtained by various eukaryotic parasites from lateral gene transfer.[8]

Gene family evolution

The comparison of complete gene sets for a group of organisms allow the identification of events in gene evolution such as gene duplication or gene deletion. The evolutionary relevance of this events is really big. For example, multiple duplications of genes encoding degradative enzymes of certain families is a common adaptation in microbes to new nutrient sources. On the contrary, loss of genes is important in reductive evolution, such as in intracellular parasites or symbionts. Whole genome duplication events, which potentially duplicate all the genes in a genome at once, are drastic evolutive events with great relevance in the evolution of many clades, and whose signal can be traced with phylogenomic methods.

Establishment of Evolutionary Relationships

Traditional single-gene studies are effective in establishing phylogenetic trees among closely related organisms, but have drawbacks when comparing more distantly related organisms or microorganisms. This is because of lateral gene transfer, convergence, and varying rates of evolution for different genes. By using entire genomes in these comparisons, the anomalies created from these factors are overwhelmed by the pattern of evolution indicated by the majority of the data.[9][10][11] Through phylogenomics, it has been discovered that most of the photosynthetic eukaryotes are linked and possibly share a single ancestor. Researchers compared 135 genes from 65 different species of photosynthetic organisms. These included plants, chromalveolates, rhizarians, haptophytes and cryptomonads.[12] This has been referred to as the Plants+HC+SAR megagroup. Using this method, it is theoretically possible to create fully resolved phylogenetic trees, and timing constraints can be recovered more accurately.[13][14] However, in practice this is not always the case. Due to insufficient data, multiple trees can sometimes be supported by the same data when analyzed using different methods.[15]

Databases

  1. PhylomeDB

See also

References

  1. BioMed Central | Full text | Overview of the First Phylogenomics Conference
  2. Pennisi, Elizabeth (27 June 2008). "Building the Tree of Life, Genome by Genome". Science. 320 (5884): 1716–1717. doi:10.1126/science.320.5884.1716. PMID 18583591.
  3. 1 2 Eisen JA, Kaiser D, Myers RL (1997). "Gastrogenomic delights: a movable feast". Nat Med. 3 (10): 1076–8. doi:10.1038/nm1097-1076. PMC 3155951Freely accessible. PMID 9334711.
  4. Tomb JF, White O, Kerlavage AR, Clayton RA, Sutton GG, Fleischmann RD, Ketchum KA, Klenk HP, Gill S, Dougherty BA, Nelson K, Quackenbush J, Zhou L, Kirkness EF, Peterson S, Loftus B, Richardson D, Dodson R, Khalak HG, Glodek A, McKenney K, Fitzegerald LM, Lee N, Adams MD, Hickey EK, Berg DE, Gocayne JD, Utterback TR, Peterson JD, Kelley JM, Cotton MD, Weidman JM, Fujii C, Bowman C, Watthey L, Wallin E, Hayes WS, Borodovsky M, Karp PD, Smith HO, Fraser CM, Venter JC (1997). "The complete genome sequence of the gastric pathogen Helicobacter pylori". Nature. 388 (6642): 539–47.
  5. Eisen JA (1998). "Phylogenomics: improving functional predictions for uncharacterized genes by evolutionary analysis". Genome Res. 8 (3): 163–7. doi:10.1101/gr.8.3.163. PMID 9521918.
  6. Brown D, Sjölander K (Jun 2006). "Functional classification using phylogenomic inference". PLoS Comput. Biol. 2 (6): e77. doi:10.1371/journal.pcbi.0020077. PMC 1484587Freely accessible. PMID 16846248.
  7. Sjölander K (Jan 2004). "Phylogenomic inference of protein molecular function: advances and challenges". Bioinformatics. 20 (2): 170–9. doi:10.1093/bioinformatics/bth021. PMID 14734307.
  8. Whitaker JW, McConkey GA, Westhead DR (2009). "The transferome of metabolic genes explored: analysis of the horizontal transfer of enzyme encoding genes in unicellular eukaryotes". Genome Biology. 10 (4): R36. doi:10.1186/gb-2009-10-4-r36. PMC 2688927Freely accessible. PMID 19368726.
  9. Delsuc F, Brinkmann H, Philippe H (2005). "Phylogenomics and the reconstruction of the tree of life". Nat Rev Genet. 6 (5): 361–75. doi:10.1038/nrg1603. PMID 15861208.
  10. Philippe H, Snell EA, Bapteste E, Lopez P, Holland PW, Casane D "Phylogenomics of eukaryotes: impact of missing data on large alignments Mol Biol Evol 2004 Sep;21(9):1740-52. .
  11. Jeffroy O, Brinkmann H, Delsuc F, Philippe H (April 2006). "Phylogenomics: the beginning of incongruence?". Trends in Genetics. 22 (4): 225–31. doi:10.1016/j.tig.2006.02.003. PMID 16490279.
  12. Burki, Fabien; Shalchian-Tabrizi, Kamran; Pawlowski, Jan (23 August 2008). "Phylogenomics reveals a new 'megagroup' including most photosynthetic eukaryotes". Biology Letters. 4 (4): 366–369. doi:10.1098/rsbl.2008.0224. PMC 2610160Freely accessible. PMID 18522922.
  13. Dos Reis, M.; Inoue, J.; Hasegawa, M.; Asher, R. J.; Donoghue, P. C. J.; Yang, Z. (2012). "Phylogenomic datasets provide both precision and accuracy in estimating the timescale of placental mammal phylogeny". Proceedings of the Royal Society B: Biological Sciences. 279 (1742): 3491–3500. doi:10.1098/rspb.2012.0683.
  14. Kober, K. M.; Bernardi, G. (2013). "Phylogenomics of strongylocentrotid sea urchins". BMC Evolutionary Biology. 13: 88. doi:10.1186/1471-2148-13-88. PMC 3637829Freely accessible. PMID 23617542.
  15. Philippe, Herve'; Delsuc, Frederic; Brinkmann, Henner; Lartillot, Nicolas (2005). "Phylogenomics". Annual Review of Ecology, Evolution, and Systematics. 36: 541–562. doi:10.1146/annurev.ecolsys.35.112202.130205.
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