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Anti-senescent drug screening by deep learning-based morphology senescence scoring

Author

Listed:
  • Dai Kusumoto

    (Keio University School of Medicine
    Keio University School of Medicine)

  • Tomohisa Seki

    (The University of Tokyo Hospital)

  • Hiromune Sawada

    (Keio University School of Medicine)

  • Akira Kunitomi

    (Kyoto University)

  • Toshiomi Katsuki

    (Keio University School of Medicine)

  • Mai Kimura

    (Keio University School of Medicine)

  • Shogo Ito

    (Keio University School of Medicine)

  • Jin Komuro

    (Keio University School of Medicine)

  • Hisayuki Hashimoto

    (Keio University School of Medicine
    Keio University School of Medicine)

  • Keiichi Fukuda

    (Keio University School of Medicine)

  • Shinsuke Yuasa

    (Keio University School of Medicine)

Abstract

Advances in deep learning technology have enabled complex task solutions. The accuracy of image classification tasks has improved owing to the establishment of convolutional neural networks (CNN). Cellular senescence is a hallmark of ageing and is important for the pathogenesis of ageing-related diseases. Furthermore, it is a potential therapeutic target. Specific molecular markers are used to identify senescent cells. Moreover senescent cells show unique morphology, which can be identified. We develop a successful morphology-based CNN system to identify senescent cells and a quantitative scoring system to evaluate the state of endothelial cells by senescence probability output from pre-trained CNN optimised for the classification of cellular senescence, Deep Learning-Based Senescence Scoring System by Morphology (Deep-SeSMo). Deep-SeSMo correctly evaluates the effects of well-known anti-senescent reagents. We screen for drugs that control cellular senescence using a kinase inhibitor library by Deep-SeSMo-based drug screening and identify four anti-senescent drugs. RNA sequence analysis reveals that these compounds commonly suppress senescent phenotypes through inhibition of the inflammatory response pathway. Thus, morphology-based CNN system can be a powerful tool for anti-senescent drug screening.

Suggested Citation

  • Dai Kusumoto & Tomohisa Seki & Hiromune Sawada & Akira Kunitomi & Toshiomi Katsuki & Mai Kimura & Shogo Ito & Jin Komuro & Hisayuki Hashimoto & Keiichi Fukuda & Shinsuke Yuasa, 2021. "Anti-senescent drug screening by deep learning-based morphology senescence scoring," Nature Communications, Nature, vol. 12(1), pages 1-10, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-020-20213-0
    DOI: 10.1038/s41467-020-20213-0
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    Cited by:

    1. Imanol Duran & Joaquim Pombo & Bin Sun & Suchira Gallage & Hiromi Kudo & Domhnall McHugh & Laura Bousset & Jose Efren Barragan Avila & Roberta Forlano & Pinelopi Manousou & Mathias Heikenwalder & Domi, 2024. "Detection of senescence using machine learning algorithms based on nuclear features," Nature Communications, Nature, vol. 15(1), pages 1-20, December.
    2. Vanessa Smer-Barreto & Andrea Quintanilla & Richard J. R. Elliott & John C. Dawson & Jiugeng Sun & Víctor M. Campa & Álvaro Lorente-Macías & Asier Unciti-Broceta & Neil O. Carragher & Juan Carlos Acos, 2023. "Discovery of senolytics using machine learning," Nature Communications, Nature, vol. 14(1), pages 1-15, December.

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