2023
DOI: 10.1002/qub2.26
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Gene regulatory network inference based on causal discovery integrating with graph neural network

Ke Feng,
Hongyang Jiang,
Chaoyi Yin
et al.

Abstract: Gene regulatory network (GRN) inference from gene expression data is a significant approach to understanding aspects of the biological system. Compared with generalized correlation‐based methods, causality‐inspired ones seem more rational to infer regulatory relationships. We propose GRINCD, a novel GRN inference framework empowered by graph representation learning and causal asymmetric learning, considering both linear and non‐linear regulatory relationships. First, high‐quality representation of each gene is… Show more

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Cited by 5 publications
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