2015
DOI: 10.1534/genetics.114.173807
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Can the Site-Frequency Spectrum Distinguish Exponential Population Growth from Multiple-Merger Coalescents?

Abstract: The ability of the site-frequency spectrum (SFS) to reflect the particularities of gene genealogies exhibiting multiple mergers of ancestral lines as opposed to those obtained in the presence of population growth is our focus. An excess of singletons is a wellknown characteristic of both population growth and multiple mergers. Other aspects of the SFS, in particular, the weight of the right tail, are, however, affected in specific ways by the two model classes. Using an approximate likelihood method and minimu… Show more

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Cited by 87 publications
(99 citation statements)
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References 82 publications
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“…If one has expressions for the expected SFS under some coalescent model, one can use the normalized expected SFS in an approximate-likelihood inference (see, e.g., Eldon et al 2015). The normalized spectrum is also appealing since it is quite robust to changes in the mutation rate (Eldon et al 2015).…”
Section: Number Of Singletonsmentioning
confidence: 99%
“…If one has expressions for the expected SFS under some coalescent model, one can use the normalized expected SFS in an approximate-likelihood inference (see, e.g., Eldon et al 2015). The normalized spectrum is also appealing since it is quite robust to changes in the mutation rate (Eldon et al 2015).…”
Section: Number Of Singletonsmentioning
confidence: 99%
“…Furthermore, the source code of the software is freely available to allow extensions to compute other summary statistics of interest (for example, the joint SFS of samples from multiple populations under It is also possible that other families of growth models may fit the pattern of human population size history. For instance, Eldon et al (2015) considered the algebraic-growth model in the form of NðTÞ ¼ T g : In reality, however, not all demographic models have numerically stable closed-form expressions for the expected time to the first coalescent event (c j ). In these cases, fast and accurate numerical integration methods, such as the Gauss-Legendre quadrature used in this work, can be applied to evaluate c j : This technique holds the promise of efficiently generating the expected value of population genetic summary statistics under arbitrary population size functions.…”
mentioning
confidence: 99%
“…This limitation has partially been overcome by Eldon et al (2015), who proposed an approximate likelihood method along with an approximate Bayesian computation approach based on the SFS to distinguish between the MMC and exponential population growth. Although both effects are expected to result in very similar SFSs, characterized by an excess of singletons as compared with the Kingman coalescent, the bulk and tail of the SFS (that is, the higher-order frequency classes) typically differ, which can be assessed by approximate likelihood-ratio tests and approximate Bayes factors see Box 1).…”
Section: Application To Virusesmentioning
confidence: 99%
“…Given that skewed offspring distributions and pervasive linked selection are likely important factors influencing the inference of virus population parameters, it is important to note that multiple backward and forward simulation programs have recently been developed that make the modeling of these processes feasible (Hernandez, 2008;Messer, 2013;Thornton, 2014;Eldon et al, 2015;Zhu et al, 2015). This will allow researchers to directly simulate from parameter ranges relevant for their population of interest, developing a better intuition for the importance of these processes in shaping the observed genomic diversity.…”
Section: Future Directionsmentioning
confidence: 99%