1. Academic Validation
  2. A combined AI and cell biology approach surfaces targets and mechanistically distinct Inflammasome inhibitors

A combined AI and cell biology approach surfaces targets and mechanistically distinct Inflammasome inhibitors

  • iScience. 2024 Nov 16;27(12):111404. doi: 10.1016/j.isci.2024.111404.
Daniel Chen 1 Tempest Plott 1 Michael Wiest 1 Will Van Trump 1 Ben Komalo 1 Dat Nguyen 1 Charlie Marsh 1 Jarred Heinrich 1 Colin J Fuller 1 Lauren Nicolaisen 1 Elisa Cambronero 1 An Nguyen 1 Christian Elabd 1 Francesco Rubbo 1 Rachel DeVay Jacobson 1
Affiliations

Affiliation

  • 1 Spring Discovery, Inc., 1125 Industrial Road, San Carlos, CA 94070, USA.
Abstract

Inflammasomes are protein complexes that mediate innate immune responses whose dysregulation has been linked to a spectrum of acute and chronic human conditions, which dictates therapeutic development that is aligned with disease variability. We designed a scalable, physiologic high-content imaging assay in human PBMCs that we analyzed using a combination of machine-learning and Cell Biology methods. This resulted in a set of biologically interpretable readouts that can resolve a spectrum of cellular states associated with inflammasome activation and inhibition. These methods were applied to a phenotypic screen that surfaced mechanistically distinct inflammasome inhibitors from an annotated 12,000 compound library. A set of over 100 inhibitors, including an array of Raf-pathway inhibitors, were validated in downstream functional assays. This approach demonstrates how complementary machine learning-based methods can be used to generate profiles of cellular states associated with different stages of complex biological pathways and yield compound and target discovery.

Keywords

Cell biology; Data analysis; Machine learning.

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