CODEX, a neural network approach to explore signaling dynamics landscapes.
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BORIS DOI
Publisher DOI
PubMed ID
33835701
Description
Current studies of cell signaling dynamics that use live cell fluorescent biosensors routinely yield thousands of single-cell, heterogeneous, multi-dimensional trajectories. Typically, the extraction of relevant information from time series data relies on predefined, human-interpretable features. Without a priori knowledge of the system, the predefined features may fail to cover the entire spectrum of dynamics. Here we present CODEX, a data-driven approach based on convolutional neural networks (CNNs) that identifies patterns in time series. It does not require a priori information about the biological system and the insights into the data are built through explanations of the CNNs' predictions. CODEX provides several views of the data: visualization of all the single-cell trajectories in a low-dimensional space, identification of prototypic trajectories, and extraction of distinctive motifs. We demonstrate how CODEX can provide new insights into ERK and Akt signaling in response to various growth factors, and we recapitulate findings in p53 and TGFβ-SMAD2 signaling.
Date of Publication
2021-04
Publication Type
Article
Subject(s)
500 - Science::570 - Life sciences; biology
600 - Technology::610 - Medicine & health
Keyword(s)
cell signaling convolutional neural network data exploration live biosensor imaging time series analysis
Language(s)
en
Additional Credits
Institut für Zellbiologie (IZB)
ARTORG Center for Biomedical Engineering Research
Series
Molecular systems biology
Publisher
EMBO Press
ISSN
1744-4292
Access(Rights)
open.access