scholarly journals Lower Bounds on Information Requirements for Causal Network Inference

Author(s):  
Xiaohan Kang ◽  
Bruce Hajek
2014 ◽  
Vol 30 (19) ◽  
pp. 2779-2786 ◽  
Author(s):  
Ying Wang ◽  
Christopher A. Penfold ◽  
David A. Hodgson ◽  
Miriam L. Gifford ◽  
Nigel J. Burroughs

2020 ◽  
Author(s):  
Meghamala Sinha ◽  
Prasad Tadepalli ◽  
Stephen A. Ramsey

AbstractIn order to increase statistical power for learning a causal network, data are often pooled from multiple observational and interventional experiments. However, if the direct effects of interventions are uncertain, multi-experiment data pooling can result in false causal discoveries. We present a new method, “Learn and Vote,” for inferring causal interactions from multi-experiment datasets. In our method, experiment-specific networks are learned from the data and then combined by weighted averaging to construct a consensus network. Through empirical studies on synthetic and real-world datasets, we found that for most of the larger-sized network datasets that we analyzed, our method is more accurate than state-of-the-art network inference approaches.


2011 ◽  
Vol 59 (6) ◽  
pp. 2628-2641 ◽  
Author(s):  
A Bolstad ◽  
B D Van Veen ◽  
R Nowak

PLoS ONE ◽  
2021 ◽  
Vol 16 (2) ◽  
pp. e0245776
Author(s):  
Meghamala Sinha ◽  
Prasad Tadepalli ◽  
Stephen A. Ramsey

In order to increase statistical power for learning a causal network, data are often pooled from multiple observational and interventional experiments. However, if the direct effects of interventions are uncertain, multi-experiment data pooling can result in false causal discoveries. We present a new method, “Learn and Vote,” for inferring causal interactions from multi-experiment datasets. In our method, experiment-specific networks are learned from the data and then combined by weighted averaging to construct a consensus network. Through empirical studies on synthetic and real-world datasets, we found that for most of the larger-sized network datasets that we analyzed, our method is more accurate than state-of-the-art network inference approaches.


2014 ◽  
Vol 30 (17) ◽  
pp. i468-i474 ◽  
Author(s):  
Chris J. Oates ◽  
Frank Dondelinger ◽  
Nora Bayani ◽  
James Korkola ◽  
Joe W. Gray ◽  
...  

2021 ◽  
Vol 17 (1) ◽  
pp. e1008223
Author(s):  
Jonathan Lu ◽  
Bianca Dumitrascu ◽  
Ian C. McDowell ◽  
Brian Jo ◽  
Alejandro Barrera ◽  
...  

Gene regulatory network inference is essential to uncover complex relationships among gene pathways and inform downstream experiments, ultimately enabling regulatory network re-engineering. Network inference from transcriptional time-series data requires accurate, interpretable, and efficient determination of causal relationships among thousands of genes. Here, we develop Bootstrap Elastic net regression from Time Series (BETS), a statistical framework based on Granger causality for the recovery of a directed gene network from transcriptional time-series data. BETS uses elastic net regression and stability selection from bootstrapped samples to infer causal relationships among genes. BETS is highly parallelized, enabling efficient analysis of large transcriptional data sets. We show competitive accuracy on a community benchmark, the DREAM4 100-gene network inference challenge, where BETS is one of the fastest among methods of similar performance and additionally infers whether causal effects are activating or inhibitory. We apply BETS to transcriptional time-series data of differentially-expressed genes from A549 cells exposed to glucocorticoids over a period of 12 hours. We identify a network of 2768 genes and 31,945 directed edges (FDR ≤ 0.2). We validate inferred causal network edges using two external data sources: Overexpression experiments on the same glucocorticoid system, and genetic variants associated with inferred edges in primary lung tissue in the Genotype-Tissue Expression (GTEx) v6 project. BETS is available as an open source software package at https://github.com/lujonathanh/BETS.


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