Infinite sites model

The Infinite sites model (ISM) is a mathematical model of molecular evolution first proposed by Motoo Kimura in 1969.[1] Like other mutation models, the ISM provides a basis for understanding how mutation develops new alleles in DNA sequences. Using allele frequencies, it allows for the calculation of heterozygosity, or genetic diversity, in a finite population and for the estimation of genetic distances between populations of interest.

The assumptions of the ISM are that (1) there are an infinite number of sites where mutations can occur, (2) every new mutation occurs at a novel site, and (3) there is no recombination.[1][2][3] The term ‘site’ refers to a single nucleotide base pair.[1] Because every new mutation has to occur at a novel site, there can be no homoplasy, or back-mutation to an allele that previously existed. All identical alleles are identical by descent. The four gamete rule can be applied to the data to ensure that they do not violate the model assumption of no recombination.[4]

The mutation rate () can be estimated as follows, where is the number of mutations found within a randomly selected DNA sequence (per generation), is the effective population size.[5] The coefficient is the product of twice the gene copies in individuals of the population; in the case of diploid, biparentally-inherited genes the appropriate coefficient is 4 whereas for uniparental, haploid genes, such as mitochondrial genes, the coefficient would be 2 but applied to the female effective population size which is, for most species, roughly half of .

When considering the length of a DNA sequence, the expected number of mutations is calculated as follows

Where k is the length of a DNA sequence and is the probability a mutation will occur at a site.[5]

Watterson developed an estimator for mutation rate that incorporates the number of segregating sites (Watterson's estimator).[6]

One way to think of the ISM is in how it applies to genome evolution. To understand the ISM as it applies to genome evolution, we must think of this model as it applies to chromosomes. Chromosomes are made up of sites, which are nucleotides represented by either A, C, G, or T. While individual chromosomes are not infinite, we must think of chromosomes as continuous intervals or continuous circles.[7]

Multiple assumptions are applied to understanding the ISM in terms of genome evolution:[7]

  • k breaks are made in these chromosomes, which leaves 2k free ends available. The 2k free ends will rejoin in a new manner rearranging the set of chromosomes (i.e. reciprocal translocation, fusion, fission, inversion, circularized incision, circularized excision).
  • No break point is ever used twice.
  • A set of chromosomes can be duplicated or lost.
  • DNA that never existed before can be observed in the chromosomes, such as horizontal gene transfer of DNA or viral integration.
  • If the chromosomes become different enough, evolution can form a new species.
  • Substitutions that alter a single base pair are individually invisible and substitutions occur at a finite rate per site.
  • The substitution rate is the same for all sites in a species, but is allowed to vary between species (i.e. no molecular clock is assumed).
  • Instead of thinking about substitutions themselves, think about the effect of the substitution at each point along the chromosome as a continuous increase in evolutionary distance between the previous version of the genome at that site and the next version of the genome at the corresponding site in the descendant.[7]

References

  1. Kimura, Motoo (1969-04-01). "The Number of Heterozygous Nucleotide Sites Maintained in a Finite Population Due to Steady Flux of Mutations". Genetics. 61 (4): 893–903. ISSN 0016-6731. PMC 1212250. PMID 5364968.
  2. Tajima, F (1996). "Infinite-allele model and infinite-site model in population genetics". Journal of Genetics. 75: 27–31. doi:10.1007/bf02931749.
  3. Watterson, GA (1975). "On the number of segregating sites in genetical models without recombination". Theoretical Population Biology. 7 (2): 256–276. doi:10.1016/0040-5809(75)90020-9. PMID 1145509.
  4. Hudson, Richard R.; Kaplan, Norman L. (1985-09-01). "Statistical Properties of the Number of Recombination Events in the History of a Sample of Dna Sequences". Genetics. 111 (1): 147–164. ISSN 0016-6731. PMC 1202594. PMID 4029609.
  5. Futschik, A; Gach, F (2008). "On the inadmissibility of Watterson's estimator". Theoretical Population Biology. 73 (2): 212–221. doi:10.1016/j.tpb.2007.11.009. PMID 18215409.
  6. Ramirez-Soriano, A; Nielsen, R (2009). "Correcting Estimators of Θ and Tajima's D for Ascertainment Biases Caused by the Single-Nucleotide Polymorphism Discovery Process". Genetics. 181 (2): 701–710. doi:10.1534/genetics.108.094060. PMC 2644958. PMID 19087964.
  7. Ma, Jian; Ratan, Aakrosh; Raney, Brian J.; Suh, Bernard B.; Miller, Webb; Haussler, David (2008-09-23). "The infinite sites model of genome evolution". Proceedings of the National Academy of Sciences. 105 (38): 14254–14261. doi:10.1073/pnas.0805217105. ISSN 0027-8424. PMC 2533685. PMID 18787111.

Further reading

This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.