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Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies.

Publication ,  Conference
Liu, J; Peissig, P; Zhang, C; Burnside, E; McCarty, C; Page, D
Published in: Uncertain Artif Intell
2012

Large-scale multiple testing tasks often exhibit dependence, and leveraging the dependence between individual tests is still one challenging and important problem in statistics. With recent advances in graphical models, it is feasible to use them to perform multiple testing under dependence. We propose a multiple testing procedure which is based on a Markov-random-field-coupled mixture model. The ground truth of hypotheses is represented by a latent binary Markov random-field, and the observed test statistics appear as the coupled mixture variables. The parameters in our model can be automatically learned by a novel EM algorithm. We use an MCMC algorithm to infer the posterior probability that each hypothesis is null (termed local index of significance), and the false discovery rate can be controlled accordingly. Simulations show that the numerical performance of multiple testing can be improved substantially by using our procedure. We apply the procedure to a real-world genome-wide association study on breast cancer, and we identify several SNPs with strong association evidence.

Duke Scholars

Published In

Uncertain Artif Intell

ISSN

1525-3384

Publication Date

2012

Volume

2012

Start / End Page

511 / 522

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
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Liu, J., Peissig, P., Zhang, C., Burnside, E., McCarty, C., & Page, D. (2012). Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies. In Uncertain Artif Intell (Vol. 2012, pp. 511–522). United States.
Liu, Jie, Peggy Peissig, Chunming Zhang, Elizabeth Burnside, Catherine McCarty, and David Page. “Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies.” In Uncertain Artif Intell, 2012:511–22, 2012.
Liu J, Peissig P, Zhang C, Burnside E, McCarty C, Page D. Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies. In: Uncertain Artif Intell. 2012. p. 511–22.
Liu, Jie, et al. “Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies.Uncertain Artif Intell, vol. 2012, 2012, pp. 511–22.
Liu J, Peissig P, Zhang C, Burnside E, McCarty C, Page D. Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies. Uncertain Artif Intell. 2012. p. 511–522.

Published In

Uncertain Artif Intell

ISSN

1525-3384

Publication Date

2012

Volume

2012

Start / End Page

511 / 522

Location

United States