| Literature DB >> 19583871 |
Abstract
BACKGROUND: In several biological contexts, parameter inference often relies on computationally-intensive techniques. "Approximate Bayesian Computation", or ABC, methods based on summary statistics have become increasingly popular. A particular flavor of ABC based on using a linear regression to approximate the posterior distribution of the parameters, conditional on the summary statistics, is computationally appealing, yet no standalone tool exists to automate the procedure. Here, I describe a program to implement the method.Entities:
Mesh:
Year: 2009 PMID: 19583871 PMCID: PMC2712468 DOI: 10.1186/1471-2156-10-35
Source DB: PubMed Journal: BMC Genet ISSN: 1471-2156 Impact factor: 2.797
Figure 1Estimation of bottleneck parameters for European populations of . The data analyzed are described in [11]. The regression ABC was performed with both tangent [24] and logarithmic transformations [12]. In each panel, the solid line is the approximate posterior distribution obtained using the regression-ABC algorithm and the natural-log transformation, the dotted line is the result of regression-ABC using the transformation from [24], and the dot-dashed line are the rejection sampling results from [11]. The parameters are (a), tthe recovery time from the bottleneck, in units of 4Ngenerations, (b) d, the duration of the bottleneck in units of 4Ngenerations, and (c) f, the severity of the bottleneck, which is the ratio of the bottlenecked population size to the pre-bottleneck population size.
Figure 2Performance of the regression ABC estimator of bottleneck parameters. Parameters were estimated from the modes of posterior distributions from one thousand random samples from the prior model used for inference in Figure 1. Because each data set is a random sample from a distribution of parameters, the distribution of each estimator is divided by the true value, such that the distribution of an unbiased estimator would have a mean of one. A vertical line is placed at the mean of each distribution. The parameters are the same as in Figure 1. As in Figure 1, the tolerance was set to accept 103 draws from the prior, and the tangent transformation was used prior to regression [24].