Inferring gene regulatory networks using transcriptional profiles as dynamical attractors.
Ruihao LiJordan C RozumMorgan M QuailMohammad N QasimSuzanne S SindiClarissa J NobileRéka AlbertAaron D HerndayPublished in: PLoS computational biology (2023)
Genetic regulatory networks (GRNs) regulate the flow of genetic information from the genome to expressed messenger RNAs (mRNAs) and thus are critical to controlling the phenotypic characteristics of cells. Numerous methods exist for profiling mRNA transcript levels and identifying protein-DNA binding interactions at the genome-wide scale. These enable researchers to determine the structure and output of transcriptional regulatory networks, but uncovering the complete structure and regulatory logic of GRNs remains a challenge. The field of GRN inference aims to meet this challenge using computational modeling to derive the structure and logic of GRNs from experimental data and to encode this knowledge in Boolean networks, Bayesian networks, ordinary differential equation (ODE) models, or other modeling frameworks. However, most existing models do not incorporate dynamic transcriptional data since it has historically been less widely available in comparison to "static" transcriptional data. We report the development of an evolutionary algorithm-based ODE modeling approach (named EA) that integrates kinetic transcription data and the theory of attractor matching to infer GRN architecture and regulatory logic. Our method outperformed six leading GRN inference methods, none of which incorporate kinetic transcriptional data, in predicting regulatory connections among TFs when applied to a small-scale engineered synthetic GRN in Saccharomyces cerevisiae. Moreover, we demonstrate the potential of our method to predict unknown transcriptional profiles that would be produced upon genetic perturbation of the GRN governing a two-state cellular phenotypic switch in Candida albicans. We established an iterative refinement strategy to facilitate candidate selection for experimentation; the experimental results in turn provide validation or improvement for the model. In this way, our GRN inference approach can expedite the development of a sophisticated mathematical model that can accurately describe the structure and dynamics of the in vivo GRN.
Keyphrases
- transcription factor
- genome wide
- dna binding
- electronic health record
- gene expression
- candida albicans
- big data
- single cell
- dna methylation
- heat shock
- saccharomyces cerevisiae
- copy number
- machine learning
- biofilm formation
- binding protein
- computed tomography
- magnetic resonance imaging
- magnetic resonance
- escherichia coli
- artificial intelligence
- rna seq
- signaling pathway
- climate change
- sensitive detection
- quantum dots
- health information
- heat shock protein