| Literature DB >> 24014930 |
Ao Yuan1, Guanjie Chen, Juan Xiong, Wenqing He, Charles Rotimi.
Abstract
Gene copy number (GCN) changes are common characteristics of many genetic diseases. Comparative genomic hybridization (CGH) is a new technology widely used today to screen the GCN changes in mutant cells with high resolution genome-wide. Statistical methods for analyzing such CGH data have been evolving. Existing methods are either frequentist's, or full Bayesian. The former often has computational advantage, while the latter can incorporate prior information into the model, but could be misleading when one does not have sound prior information. In an attempt to take full advantages of both approaches, we develop a Bayesian-frequentist hybrid approach, in which a subset of the model parameters is inferred by the Bayesian method, while the rest parameters by the frequentist's. This new hybrid approach provides advantages over those of the Bayesian or frequentist's method used alone. This is especially the case when sound prior information is available on part of the parameters, and the sample size is relatively small. Spatial dependence and false discovery rate are also discussed, and the parameter estimation is efficient. As an illustration, we used the proposed hybrid approach to analyze a real CGH data.Entities:
Keywords: Bayesian; Frequentist; Gene copy number; Hybrid model; prior information
Year: 2011 PMID: 24014930 PMCID: PMC3762327 DOI: 10.1080/02664761003692449
Source DB: PubMed Journal: J Appl Stat ISSN: 0266-4763 Impact factor: 1.404