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


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.

SUBMITTER: Jo H 

PROVIDER: S-EPMC10873160 | biostudies-literature | 2024 Feb

REPOSITORIES: biostudies-literature

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

Jo Hyeontae H   Hong Hyukpyo H   Hwang Hyung Ju HJ   Chang Won W   Kim Jae Kyoung JK  

Patterns (New York, N.Y.) 20231226 2


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 resp  ...[more]

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