Litcius/Paper detail

Density physics-informed neural networks reveal sources of cell heterogeneity in signal transduction

Hyeontae Jo, Hyukpyo Hong, Hyung Ju Hwang, Won Seok Chang, Jae Kyoung Kim

2023Patterns17 citationsDOIOpen Access PDF

Abstract

The transduction time between signal initiation and final response provides valuable information on the underlying signaling pathway, including its speed and precision. Furthermore, multi-modality in a transduction-time distribution indicates that the response is regulated by multiple pathways with different transduction speeds. Here, we developed a method called density physics-informed neural networks (Density-PINNs) to infer the transduction-time distribution from measurable final stress response time traces. We applied Density-PINNs to single-cell gene expression data from sixteen promoters regulated by unknown pathways in response to antibiotic stresses. We found that promoters with slower signaling initiation and transduction exhibit larger cell-to-cell heterogeneity in response intensity. However, this heterogeneity was greatly reduced when the response was regulated by slow and fast pathways together. This suggests a strategy for identifying effective signaling pathways for consistent cellular responses to disease treatments. Density-PINNs can also be applied to understand other time delay systems, including infectious diseases.

Topics & Concepts

Transduction (biophysics)Signal transductionBiologySignaling proteinsCellComputational biologyCell biologyNeuroscienceGeneticsBiophysicsGene Regulatory Network AnalysisAdvanced Fluorescence Microscopy TechniquesCell Image Analysis Techniques