Gene knockout inference with variational graph autoencoder learning single-cell gene regulatory networks

Abstract

In this paper, we introduce Gene Knockout Inference (GenKI), a virtual knockout (KO) tool for gene function prediction using single-cell RNA sequencing (scRNA-seq) data in the absence of KO samples when only wild-type (WT) samples are available. Without using any information from real KO samples, GenKI is designed to capture shifting patterns in gene regulation caused by the KO perturbation in an unsupervised manner and provide a robust and scalable framework for gene function studies. To achieve this goal, GenKI adapts a variational graph autoencoder (VGAE) model to learn latent representations of genes and interactions between genes from the input WT scRNA-seq data and a derived single-cell gene regulatory network (scGRN). The virtual KO data is then generated by computationally removing all edges of the KO gene—the gene to be knocked out for functional study—from the scGRN. The differences between WT and virtual KO data are discerned by using their corresponding latent parameters derived from the trained VGAE model. Our simulations show that GenKI accurately approximates the perturbation profiles upon gene KO and outperforms the state-of-the-art under a series of evaluation conditions. Using publicly available scRNA-seq data sets, we demonstrate that GenKI recapitulates discoveries of real-animal KO experiments and accurately predicts cell type-specific functions of KO genes. Thus, GenKI provides an in-silico alternative to KO experiments that may partially replace the need for genetically modified animals or other genetically perturbed systems.

Document Details

Document Type
Pub Defense Publication
Publication Date
May 29, 2023
Source ID
10.1093/nar/gkad450

Entities

People

  • Bo-jia Chen
  • Guanxun Li
  • James J. Cai
  • Qian Xu
  • Robert S Chapkin
  • Yan Zhong
  • Yongjian Yang
  • Yu-te Lin

Organizations

  • East China Normal University
  • National Cancer Institute
  • National Chung Hsing University
  • National Institute of Environmental Health Sciences
  • Texas A&M University
  • United States Department of Defense

Tags

Fields of Study

  • Biology

Readers

  • Molecular Genetics
  • Molecular and Cellular Biology
  • Neural Network Machine Learning.

Technology Areas

  • AI & ML
  • AI & ML - Machine Learning Algorithms
  • AI & ML - Neural Networks
  • Biotechnology