Asger Hobolth, Simon Boitard, Andreas Futschik, Raphael Leblois
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引用次数: 0
Abstract
In this paper we develop a general framework for calculating the probability of a genetic sample under a time-homogeneous coalescent process and the infinite sites mutation model. The evolutionary model that we consider can be characterized as a two-step procedure: A coalescent process that describes the ancestral relatedness of the samples and a sprinkling of mutations in separate sites on the ancestral tree according to a Poisson process. The coalescent process is defined using multivariate phase-type theory. The requirements are a rate matrix that determines the transition rates between the ancestral states, an initial state probability vector, and a reward matrix that informs about the characteristics of the ancestral states. For example, the reward matrix could contain information about the number of singleton, doubleton or higher-order lineages in the ancestral states. We analyse the probability generating function for the evolutionary model as a function of the initial state probability vector, the transition rate matrix, the reward matrix, and the mutation rate. The matrix-analytical expression of the probability generating function allows us to develop a general method for calculating the probability of a population genetic data set. We demonstrate that the method is computationally attractive for a small number of mutations and provide a simple and easy-to-implement algorithm for determining the probability of a sample from the evolutionary model. The method is computationally stable and only involves a single inverse matrix operation, matrix multiplications and matrix additions. We provide comprehensive understanding of the procedure by detailed calculations and discussions of several elementary examples. These examples include different sample representations (labelled samples and the site frequency spectrum) and different demographic and genetic models (the structured coalescent and the Beta-coalescent). We apply the sampling formula to calculate probabilities of spectra for the Kingman coalescent and the Beta-coalescent. Even for a small number of samples and mutations we find that the probabilities for spectra vary in huge orders of magnitudes. We compare the probabilities of the spectra to the values of Tajima's D-statistics, and find that the D-statistic is a poor predictor for the probability of a spectrum. Finally, we investigate how the probabilities of the spectra vary with the parametrization of the Beta-coalescent.
期刊介绍:
An interdisciplinary journal, Theoretical Population Biology presents articles on theoretical aspects of the biology of populations, particularly in the areas of demography, ecology, epidemiology, evolution, and genetics. Emphasis is on the development of mathematical theory and models that enhance the understanding of biological phenomena.
Articles highlight the motivation and significance of the work for advancing progress in biology, relying on a substantial mathematical effort to obtain biological insight. The journal also presents empirical results and computational and statistical methods directly impinging on theoretical problems in population biology.