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Methods for causal inference from gene perturbation experiments and validation

机译:基因微扰实验和验证中的因果推断方法

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摘要

Inferring causal effects from observational and interventional data is a highly desirable but ambitious goal. Many of the computational and statistical methods are plagued by fundamental identifiability issues, instability, and unreliable performance, especially for large-scale systems with many measured variables. We present software and provide some validation of a recently developed methodology based on an invariance principle, called invariant causal prediction (ICP). The ICP method quantifies confidence probabilities for inferring causal structures and thus leads to more reliable and confirmatory statements for causal relations and predictions of external intervention effects. We validate the ICP method and some other procedures using large-scale genome-wide gene perturbation experiments in Saccharomyces cerevisiae. The results suggest that prediction and prioritization of future experimental interventions, such as gene deletions, can be improved by using our statistical inference techniques.
机译:从观察和干预数据推断因果关系是一个非常理想但雄心勃勃的目标。许多计算和统计方法都受到基本可识别性问题,不稳定和性能不可靠的困扰,尤其是对于具有许多测量变量的大规模系统而言。我们介绍了软件并提供了基于不变性原理(称为不变因果预测(ICP))的最新开发方法的一些验证。 ICP方法量化了推论因果结构的置信度,从而导致因果关系和外部干预效果的预测更加可靠和证实。我们使用酿酒酵母中的大规模全基因组基因扰动实验验证了ICP方法和其他一些程序。结果表明,通过使用我们的统计推断技术,可以改善对未来实验性干预措施(例如基因缺失)的预测和优先级。

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