From Single-Cell Data to Gene Networks: Evaluating Algorithms with STREAMLINE
As single-cell omic techniques continue to revolutionize our understanding of gene expression patterns, the need for robust tools to infer gene regulatory networks (GRNs) becomes increasingly urgent. In a new study, Dr. Scialdone and his team at Helmholtz Munich have developed STREAMLINE, a comprehensive benchmarking pipeline designed to evaluate algorithms' ability to capture the topological properties of GRNs from single-cell RNA-seq data.
As single-cell omic techniques continue to revolutionize our understanding of gene expression patterns, the need for robust tools to infer gene regulatory networks (GRNs) becomes increasingly urgent. In a new study, Dr. Scialdone and his team at Helmholtz Munich have developed STREAMLINE, a comprehensive benchmarking pipeline designed to evaluate algorithms' ability to capture the topological properties of GRNs from single-cell RNA-seq data.
GRNs orchestrate the intricate dance of gene expression within cells, dictating crucial functions and responses to external stimuli. However, accurately deciphering these networks from single-cell data presents significant computational challenges.
Existing benchmarking studies have primarily focused on algorithms' performance in predicting local features of GRNs, overlooking their structural properties crucial for understanding network robustness and identifying master regulators.
STREAMLINE addresses this gap with a three-step framework that assesses algorithms' proficiency in capturing topological properties and identifying hubs within GRNs. Leveraging simulated and experimental data from diverse organisms, including yeast, mouse, and human, STREAMLINE offers invaluable insights into algorithm performance under varying network conditions.
Dr. Scialdone, corresponding author of the study and group leader at the Institute of Epigenetics and Stem Cells, commented, "By considering structural properties alongside predictive accuracy with STREAMLINE, we empower researchers to make informed decisions on the algorithm to use for their analysis and advance our understanding of cellular regulatory mechanisms."
The study, published in Bioinformatics, provides guidance for researchers navigating the complex landscape of GRN inference algorithms.
Additionally, the team has made STREAMLINE openly accessible: https://github.com/ScialdoneLab/STREAMLINE
Read the publication here.