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                                       Details van artikel 5 van 11 gevonden artikelen
 
 
  Modeling Host-Cancer Genetic Interactions with Multilocus Sequence Data
 
 
Titel: Modeling Host-Cancer Genetic Interactions with Multilocus Sequence Data
Auteur: Yao Li
Rongling Wu
Verschenen in: Journal of computer science and systems biology
Paginering: Jaargang 02 (2009) nr. 01 pagina's 024-043
Jaar: 2009
Inhoud: Cancer susceptibility may be controlled not only by host genes and mutated genes in cancer cells, but also by the epistatic interactions between genes from the host and cancer genomes. We derive a novel statistical model for cancer gene identification by integrating the gene mutation hypothesis of cancer formation into the mixturemodel framework. Within this framework, genetic interactions of DNA sequences (or haplotypes) between hostand cancer genes responsible for cancer risk are defined in terms of quantitative genetic principle. Our model was founded on a commonly used genetic association design in which a random sample of patients is drawn from a natural human population. Each patient is typed for single nucleotide polymorphisms (SNPs) on normal and cancer cells and measured for cancer susceptibility. The model is formulated within the maximum likelihood context and implemented with the EM algorithm, allowing the estimation of both population and quantitative genetic parameters. The model provides a general procedure for testing the distribution of haplotypes constructedby SNPs from host and cancer genes and the linkage disequilibria of different orders among the SNPs. The model also formulates a series of testable hypotheses about the effects of host genes, cancer genes, and their interactions on cancer susceptibility. We carried out simulation studies to examine the statistical propertiesof the model. The implications of this model for cancer gene identification are discussed.
Uitgever: OMICS Publishing Group (provided by DOAJ)
Bronbestand: Elektronische Wetenschappelijke Tijdschriften
 
 

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