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CausalTrail: Testing hypothesis using causal Bayesian networks

机译:CausalTrail:使用因果贝叶斯网络检验假设

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摘要

>Summary 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. >Availability and Implementation CausalTrail is implemented in C++ using the Boost and Qt5 libraries. It can be obtained from https://github.com/dstoeckel/causaltrail
机译:>摘要因果贝叶斯网络是贝叶斯网络的特殊类别,其中层次结构直接编码变量之间的因果关系。这允许计算干预的效果,这些干预是系统的外部变化,例如由基因敲除或所用药物。尽管有许多用于构建因果贝叶斯网络的软件包,但几乎没有针对下游分析的程序。在本文中,我们介绍了CausalTrail,这是一种使用do-演算对因果贝叶斯网络进行推理的工具。 CausalTrail的功能包括多种数据导入方法,用于制定假设的灵活查询语言以及直观的图形用户界面。该程序能够解决丢失的数据,因此可以轻松地在多组学设置中应用,在该设置中,并非对所有样本都执行全部测量。 >可用性和实现 CausalTrail是使用Boost和Qt5库在C ++中实现的。可以从https://github.com/dstoeckel/causaltrail获得

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