Title of article :
A Bayesian approach to inference about a change point model with application to DNA copy number experimental data
Author/Authors :
Jie Chen، نويسنده , , Ayten Yi?iter&Kuang-Chao Chang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
In this paper, we study the change-point inference problem motivated by the genomic data that were collected
for the purpose of monitoring DNA copy number changes. DNA copy number changes or copy
number variations (CNVs) correspond to chromosomal aberrations and signify abnormality of a cell.
Cancer development or other related diseases are usually relevant to DNA copy number changes on the
genome. There are inherited random noises in such data, therefore, there is a need to employ an appropriate
statistical model for identifying statistically significant DNA copy number changes. This type of statistical
inference is evidently crucial in cancer researches, clinical diagnostic applications, and other related
genomic researches. For the high-throughput genomic data resulting from DNA copy number experiments,
a mean and variance change point model (MVCM) for detecting the CNVs is appropriate.We propose to
use a Bayesian approach to study the MVCM for the cases of one change and propose to use a sliding
window to search for all CNVs on a given chromosome. We carry out simulation studies to evaluate the
estimate of the locus of the DNA copy number change using the derived posterior probability. These simulation
results show that the approach is suitable for identifying copy number changes. The approach is
also illustrated on several chromosomes from nine fibroblast cancer cell line data (array-based comparative
genomic hybridization data). All DNA copy number aberrations that have been identified and verified by
karyotyping are detected by our approach on these cell lines.
Keywords :
Bayesian inferences , Change point , non-informative priors , DNA copy numbers , CNVs
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS