This thesis concerns probability model development and analysis for genetic data. There are two studies involved. One study focuses on inference and study design for applications where objects of different types are observed. We apply a Bayesian hierarchical model to estimate the total number of categories in a region, and then use a Monte Carlo simulation approach to design future sampling. Specifically, the Monte Carlo simulation method is used to determine how large an extra sample is needed to guarantee that a certain proportion of all categories can be collected with a specified confidence. We apply the method to DNA sequence data. Some important properties of the proposed model are investigated through simulations.;The second study us...
In this thesis I focus on the development and application of hidden Markov model (HMM) to solve pro...
Population genetics has enjoyed a long and rich tradition of applying mathematical, computational an...
In this chapter, we review basic concepts from probability theory and computational statistics that ...
Genotyping errors can cause difficulties in a variety of scientific analyses including genetic mappi...
Sequencing the human genome has made vast amounts of potentially useful genetic data accessible. An ...
This paper extends an approach for estimating the ancestry probability, the probability that an inbr...
© 2010 Dr. Klara VerbylaThe research reported in this thesis investigated aspects of statistical mo...
Inference of population history is a central problem of population genetics. The advent of large gen...
The gene genealogy is a tree describing the ancestral relationships among genes sampled from unrelat...
Genetics, the science of heredity and variation in living organisms, has a central role in medicine,...
The study of genetic variation in populations is of great interest for the study of the evolutionary...
Background Samples of molecular sequence data of a locus obtained from random indivi...
In genome-wide association studies (GWAS), single nucleotide polymorphism (SNP) is often used as a g...
Population genetics is a discipline within the biological sciences that is concerned with the change...
Markov chain–Monte Carlo (MCMC) techniques for multipoint mapping of quantitative trait loci have be...
In this thesis I focus on the development and application of hidden Markov model (HMM) to solve pro...
Population genetics has enjoyed a long and rich tradition of applying mathematical, computational an...
In this chapter, we review basic concepts from probability theory and computational statistics that ...
Genotyping errors can cause difficulties in a variety of scientific analyses including genetic mappi...
Sequencing the human genome has made vast amounts of potentially useful genetic data accessible. An ...
This paper extends an approach for estimating the ancestry probability, the probability that an inbr...
© 2010 Dr. Klara VerbylaThe research reported in this thesis investigated aspects of statistical mo...
Inference of population history is a central problem of population genetics. The advent of large gen...
The gene genealogy is a tree describing the ancestral relationships among genes sampled from unrelat...
Genetics, the science of heredity and variation in living organisms, has a central role in medicine,...
The study of genetic variation in populations is of great interest for the study of the evolutionary...
Background Samples of molecular sequence data of a locus obtained from random indivi...
In genome-wide association studies (GWAS), single nucleotide polymorphism (SNP) is often used as a g...
Population genetics is a discipline within the biological sciences that is concerned with the change...
Markov chain–Monte Carlo (MCMC) techniques for multipoint mapping of quantitative trait loci have be...
In this thesis I focus on the development and application of hidden Markov model (HMM) to solve pro...
Population genetics has enjoyed a long and rich tradition of applying mathematical, computational an...
In this chapter, we review basic concepts from probability theory and computational statistics that ...