CausalTrail: Testing hypothesis using causal Bayesian networks

Abstract

Causal Bayesian Networks are a special class of Bayesian networks in which the hierarchy directly encodes the causal relationships between the variables. This allows to compute the effect of interventions, which are external changes to the system, caused by e.g. gene knockouts or an administered drug. Whereas numerous packages for constructing causal Bayesian networks are available, hardly any program targeted at downstream analysis exists. In this paper we present CausalTrail, a tool for performing reasoning on causal Bayesian networks using the do-calculus. CausalTrail’s features include multiple data import methods, a flexible query language for formulating hypotheses, as well as an intuitive graphical user interface. The program is able to account for missing data and thus can be readily applied in multi-omics settings where it is common that not all measurements are performed for all samples.

Citation

[SST+15] Stöckel, D., Schmidt, F., Trampert, P., and Lenhof, H.-P.: CausalTrail: Testing hypothesis using causal Bayesian networks. F1000Research 2015, 4(ISCB Comm J):1520, doi: 10.12688/f1000research.7647.1
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