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Integrating deep learning and unbiased automated high-content screening to identify complex disease signatures in human fibroblasts

Author

Listed:
  • Lauren Schiff

    (Google Research)

  • Bianca Migliori

    (The New York Stem Cell Foundation Research Institute)

  • Ye Chen

    (Google Research)

  • Deidre Carter

    (The New York Stem Cell Foundation Research Institute)

  • Caitlyn Bonilla

    (Google Research)

  • Jenna Hall

    (The New York Stem Cell Foundation Research Institute)

  • Minjie Fan

    (Google Research)

  • Edmund Tam

    (The New York Stem Cell Foundation Research Institute)

  • Sara Ahadi

    (Google Research)

  • Brodie Fischbacher

    (The New York Stem Cell Foundation Research Institute)

  • Anton Geraschenko

    (Google Research)

  • Christopher J. Hunter

    (The New York Stem Cell Foundation Research Institute)

  • Subhashini Venugopalan

    (Google Research)

  • Sean DesMarteau

    (The New York Stem Cell Foundation Research Institute)

  • Arunachalam Narayanaswamy

    (Google Research)

  • Selwyn Jacob

    (The New York Stem Cell Foundation Research Institute)

  • Zan Armstrong

    (Google Research)

  • Peter Ferrarotto

    (The New York Stem Cell Foundation Research Institute)

  • Brian Williams

    (Google Research)

  • Geoff Buckley-Herd

    (The New York Stem Cell Foundation Research Institute)

  • Jon Hazard

    (Google Research)

  • Jordan Goldberg

    (The New York Stem Cell Foundation Research Institute)

  • Marc Coram

    (Google Research)

  • Reid Otto

    (The New York Stem Cell Foundation Research Institute)

  • Edward A. Baltz

    (Google Research)

  • Laura Andres-Martin

    (The New York Stem Cell Foundation Research Institute)

  • Orion Pritchard

    (Google Research)

  • Alyssa Duren-Lubanski

    (The New York Stem Cell Foundation Research Institute)

  • Ameya Daigavane

    (Google Research)

  • Kathryn Reggio

    (The New York Stem Cell Foundation Research Institute)

  • Phillip C. Nelson

    (Google Research)

  • Michael Frumkin

    (Google Research)

  • Susan L. Solomon

    (The New York Stem Cell Foundation Research Institute)

  • Lauren Bauer

    (The New York Stem Cell Foundation Research Institute)

  • Raeka S. Aiyar

    (The New York Stem Cell Foundation Research Institute)

  • Elizabeth Schwarzbach

    (The New York Stem Cell Foundation Research Institute)

  • Scott A. Noggle

    (The New York Stem Cell Foundation Research Institute)

  • Frederick J. Monsma

    (The New York Stem Cell Foundation Research Institute)

  • Daniel Paull

    (The New York Stem Cell Foundation Research Institute)

  • Marc Berndl

    (Google Research)

  • Samuel J. Yang

    (Google Research)

  • Bjarki Johannesson

    (The New York Stem Cell Foundation Research Institute)

Abstract

Drug discovery for diseases such as Parkinson’s disease are impeded by the lack of screenable cellular phenotypes. We present an unbiased phenotypic profiling platform that combines automated cell culture, high-content imaging, Cell Painting, and deep learning. We applied this platform to primary fibroblasts from 91 Parkinson’s disease patients and matched healthy controls, creating the largest publicly available Cell Painting image dataset to date at 48 terabytes. We use fixed weights from a convolutional deep neural network trained on ImageNet to generate deep embeddings from each image and train machine learning models to detect morphological disease phenotypes. Our platform’s robustness and sensitivity allow the detection of individual-specific variation with high fidelity across batches and plate layouts. Lastly, our models confidently separate LRRK2 and sporadic Parkinson’s disease lines from healthy controls (receiver operating characteristic area under curve 0.79 (0.08 standard deviation)), supporting the capacity of this platform for complex disease modeling and drug screening applications.

Suggested Citation

  • Lauren Schiff & Bianca Migliori & Ye Chen & Deidre Carter & Caitlyn Bonilla & Jenna Hall & Minjie Fan & Edmund Tam & Sara Ahadi & Brodie Fischbacher & Anton Geraschenko & Christopher J. Hunter & Subha, 2022. "Integrating deep learning and unbiased automated high-content screening to identify complex disease signatures in human fibroblasts," Nature Communications, Nature, vol. 13(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-28423-4
    DOI: 10.1038/s41467-022-28423-4
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    Cited by:

    1. Nikita Moshkov & Michael Bornholdt & Santiago Benoit & Matthew Smith & Claire McQuin & Allen Goodman & Rebecca A. Senft & Yu Han & Mehrtash Babadi & Peter Horvath & Beth A. Cimini & Anne E. Carpenter , 2024. "Learning representations for image-based profiling of perturbations," Nature Communications, Nature, vol. 15(1), pages 1-17, December.
    2. Matthew Tegtmeyer & Jatin Arora & Samira Asgari & Beth A. Cimini & Ajay Nadig & Emily Peirent & Dhara Liyanage & Gregory P. Way & Erin Weisbart & Aparna Nathan & Tiffany Amariuta & Kevin Eggan & Marzi, 2024. "High-dimensional phenotyping to define the genetic basis of cellular morphology," Nature Communications, Nature, vol. 15(1), pages 1-12, December.

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