MetaSEM: Gene Regulatory Network Inference from Single-Cell RNA Data by Meta-Learning

Int J Mol Sci. 2023 Jan 30;24(3):2595. doi: 10.3390/ijms24032595.

Abstract

Regulators in gene regulatory networks (GRNs) are crucial for identifying cell states. However, GRN inference based on scRNA-seq data has several problems, including high dimensionality and sparsity, and requires more label data. Therefore, we propose a meta-learning GRN inference framework to identify regulatory factors. Specifically, meta-learning solves the parameter optimization problem caused by high-dimensional sparse data features. In addition, a few-shot solution was used to solve the problem of lack of label data. A structural equation model (SEM) was embedded in the model to identify important regulators. We integrated the parameter optimization strategy into the bi-level optimization to extract the feature consistent with GRN reasoning. This unique design makes our model robust to small-scale data. By studying the GRN inference task, we confirmed that the selected regulators were closely related to gene expression specificity. We further analyzed the GRN inferred to find the important regulators in cell type identification. Extensive experimental results showed that our model effectively captured the regulator in single-cell GRN inference. Finally, the visualization results verified the importance of the selected regulators for cell type recognition.

Keywords: bi-level optimization; gene regulator network inference; meta-learning; structural equation model.

MeSH terms

  • Algorithms*
  • Gene Regulatory Networks*

Grants and funding

This research was funded by the National Natural Science Foundation of China Grant Nos. 62272067, 62131004, 62250028; 2011 Collaborative Innovation Center for Image and Geospatial Information of Sichuan Province.