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Molecule Talk - CellCLIP: When Cell Painting Meets AI and Natural Language

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Manage episode 508388258 series 3682464
Content provided by Carli Reyes and Araceli Biosciences. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Carli Reyes and Araceli Biosciences or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this Molecule Talk episode, host Carli Reyes explores CellCLIP, a provocative new approach at the intersection of high-content imaging and AI. Based on a June 2025 preprint, CellCLIP attempts to link Cell Painting images with natural language descriptions of perturbations, making cellular data more interpretable, searchable, and useful across disciplines. While still preliminary and not yet peer-reviewed, the idea has the potential to transform how scientists connect cell morphology with biological concepts.

What You’ll Hear:

  • Cell Painting 101 — how high-content imaging creates “morphological fingerprints” of cells, and why these fingerprints are powerful but hard to interpret.
  • The CellCLIP idea — adapting the CLIP model from computer vision to align cell images with text descriptions like drug names, pathways, or gene knockouts.
  • Proof-of-concept results — retrieval tests, mechanism-of-action classification, and generalization across genetic and chemical perturbations.
  • Why it matters — from improving interpretability to enabling cross-modal integration of biology, and even accelerating drug discovery.
  • Open questions — how well CellCLIP handles unseen drugs, whether it learns biology vs. memorization, and how it will scale to massive datasets like JUMP-Cell Painting.

Together, these insights highlight a shift toward bridging cell biology and natural language — creating tools that could help scientists move from abstract image features to intuitive, actionable biological concepts.

Got an idea for a topic or guest you’d love to hear on Molecule Talk? We’d love to hear from you!
Connect with us at our ScienceIRT Website or on LinkedIn: Araceli Biosciences.

If you enjoyed this episode, don’t forget to subscribe, leave us a review, and share it with a colleague who’s just as passionate about shaping the future of biotech as you are!

🔗 Explore & Connect

References:

  • Ramesh, B., Singh, A., Huang, Y., Thienpont, B., & Carpenter, A. E. (2025). CellCLIP: Learning perturbation effects in cell painting via text-guided contrastive learning. arXiv. https://arxiv.org/abs/2506.06290 (PREPRINT)
  continue reading

5 episodes

Artwork
iconShare
 
Manage episode 508388258 series 3682464
Content provided by Carli Reyes and Araceli Biosciences. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Carli Reyes and Araceli Biosciences or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this Molecule Talk episode, host Carli Reyes explores CellCLIP, a provocative new approach at the intersection of high-content imaging and AI. Based on a June 2025 preprint, CellCLIP attempts to link Cell Painting images with natural language descriptions of perturbations, making cellular data more interpretable, searchable, and useful across disciplines. While still preliminary and not yet peer-reviewed, the idea has the potential to transform how scientists connect cell morphology with biological concepts.

What You’ll Hear:

  • Cell Painting 101 — how high-content imaging creates “morphological fingerprints” of cells, and why these fingerprints are powerful but hard to interpret.
  • The CellCLIP idea — adapting the CLIP model from computer vision to align cell images with text descriptions like drug names, pathways, or gene knockouts.
  • Proof-of-concept results — retrieval tests, mechanism-of-action classification, and generalization across genetic and chemical perturbations.
  • Why it matters — from improving interpretability to enabling cross-modal integration of biology, and even accelerating drug discovery.
  • Open questions — how well CellCLIP handles unseen drugs, whether it learns biology vs. memorization, and how it will scale to massive datasets like JUMP-Cell Painting.

Together, these insights highlight a shift toward bridging cell biology and natural language — creating tools that could help scientists move from abstract image features to intuitive, actionable biological concepts.

Got an idea for a topic or guest you’d love to hear on Molecule Talk? We’d love to hear from you!
Connect with us at our ScienceIRT Website or on LinkedIn: Araceli Biosciences.

If you enjoyed this episode, don’t forget to subscribe, leave us a review, and share it with a colleague who’s just as passionate about shaping the future of biotech as you are!

🔗 Explore & Connect

References:

  • Ramesh, B., Singh, A., Huang, Y., Thienpont, B., & Carpenter, A. E. (2025). CellCLIP: Learning perturbation effects in cell painting via text-guided contrastive learning. arXiv. https://arxiv.org/abs/2506.06290 (PREPRINT)
  continue reading

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