edoc

Large-scale inference of conjunctive Bayesian networks

Montazeri, H. and Kuipers, J. and Kouyos, R. and Boni, J. and Yerly, S. and Klimkait, T. and Aubert, V. and Gunthard, H. F. and Beerenwinkel, N. and Swiss, H. I. V. Cohort Study. (2016) Large-scale inference of conjunctive Bayesian networks. Bioinformatics, 32 (17). i727-i735.

Full text not available from this repository.

Official URL: https://edoc.unibas.ch/62184/

Downloads: Statistics Overview

Abstract

UNLABELLED: The continuous time conjunctive Bayesian network (CT-CBN) is a graphical model for analyzing the waiting time process of the accumulation of genetic changes (mutations). CT-CBN models have been successfully used in several biological applications such as HIV drug resistance development and genetic progression of cancer. However, current approaches for parameter estimation and network structure learning of CBNs can only deal with a small number of mutations (>20). Here, we address this limitation by presenting an efficient and accurate approximate inference algorithm using a Monte Carlo expectation-maximization algorithm based on importance sampling. The new method can now be used for a large number of mutations, up to one thousand, an increase by two orders of magnitude. In simulation studies, we present the accuracy as well as the running time efficiency of the new inference method and compare it with a MLE method, expectation-maximization, and discrete time CBN model, i.e. a first-order approximation of the CT-CBN model. We also study the application of the new model on HIV drug resistance datasets for the combination therapy with zidovudine plus lamivudine (AZT + 3TC) as well as under no treatment, both extracted from the Swiss HIV Cohort Study database. AVAILABILITY AND IMPLEMENTATION: The proposed method is implemented as an R package available at https://github.com/cbg-ethz/MC-CBN CONTACT: niko.beerenwinkel@bsse.ethz.ch SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
Faculties and Departments:03 Faculty of Medicine > Departement Biomedizin > Division of Medical Microbiology > Molecular Virology (Klimkait)
UniBasel Contributors:Klimkait, Thomas
Item Type:Article, refereed
Article Subtype:Research Article
ISSN:1367-4811 (Electronic) 1367-4803 (Linking)
Note:Publication type according to Uni Basel Research Database: Journal article
Related URLs:
Identification Number:
Last Modified:25 May 2020 08:34
Deposited On:25 May 2020 08:34

Repository Staff Only: item control page