Scientific Reports (Nov 2023)

SIGNET: transcriptome-wide causal inference for gene regulatory networks

  • Zhongli Jiang,
  • Chen Chen,
  • Zhenyu Xu,
  • Xiaojian Wang,
  • Min Zhang,
  • Dabao Zhang

DOI
https://doi.org/10.1038/s41598-023-46295-6
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 11

Abstract

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Abstract Gene regulation plays an important role in understanding the mechanisms of human biology and diseases. However, inferring causal relationships between all genes is challenging due to the large number of genes in the transcriptome. Here, we present SIGNET (Statistical Inference on Gene Regulatory Networks), a flexible software package that reveals networks of causal regulation between genes built upon large-scale transcriptomic and genotypic data at the population level. Like Mendelian randomization, SIGNET uses genotypic variants as natural instrumental variables to establish such causal relationships but constructs a transcriptome-wide gene regulatory network with high confidence. SIGNET makes such a computationally heavy task feasible by deploying a well-designed statistical algorithm over a parallel computing environment. It also provides a user-friendly interface allowing for parameter tuning, efficient parallel computing scheduling, interactive network visualization, and confirmatory results retrieval. The Open source SIGNET software is freely available ( https://www.zstats.org/signet/ ).