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Democratized image analytics by visual programming through integration of deep models and small-scale machine learning

Author

Listed:
  • Primož Godec

    (University of Ljubljana)

  • Matjaž Pančur

    (University of Ljubljana)

  • Nejc Ilenič

    (University of Ljubljana)

  • Andrej Čopar

    (University of Ljubljana)

  • Martin Stražar

    (University of Ljubljana)

  • Aleš Erjavec

    (University of Ljubljana)

  • Ajda Pretnar

    (University of Ljubljana)

  • Janez Demšar

    (University of Ljubljana)

  • Anže Starič

    (University of Ljubljana)

  • Marko Toplak

    (University of Ljubljana)

  • Lan Žagar

    (University of Ljubljana)

  • Jan Hartman

    (University of Ljubljana)

  • Hamilton Wang

    (Baylor College of Medicine)

  • Riccardo Bellazzi

    (University of Pavia)

  • Uroš Petrovič

    (University of Ljubljana
    Jožef Stefan Institute)

  • Silvia Garagna

    (University of Pavia)

  • Maurizio Zuccotti

    (University of Pavia)

  • Dongsu Park

    (Baylor College of Medicine)

  • Gad Shaulsky

    (Baylor College of Medicine)

  • Blaž Zupan

    (University of Ljubljana
    Baylor College of Medicine)

Abstract

Analysis of biomedical images requires computational expertize that are uncommon among biomedical scientists. Deep learning approaches for image analysis provide an opportunity to develop user-friendly tools for exploratory data analysis. Here, we use the visual programming toolbox Orange ( http://orange.biolab.si ) to simplify image analysis by integrating deep-learning embedding, machine learning procedures, and data visualization. Orange supports the construction of data analysis workflows by assembling components for data preprocessing, visualization, and modeling. We equipped Orange with components that use pre-trained deep convolutional networks to profile images with vectors of features. These vectors are used in image clustering and classification in a framework that enables mining of image sets for both novel and experienced users. We demonstrate the utility of the tool in image analysis of progenitor cells in mouse bone healing, identification of developmental competence in mouse oocytes, subcellular protein localization in yeast, and developmental morphology of social amoebae.

Suggested Citation

  • Primož Godec & Matjaž Pančur & Nejc Ilenič & Andrej Čopar & Martin Stražar & Aleš Erjavec & Ajda Pretnar & Janez Demšar & Anže Starič & Marko Toplak & Lan Žagar & Jan Hartman & Hamilton Wang & Riccard, 2019. "Democratized image analytics by visual programming through integration of deep models and small-scale machine learning," Nature Communications, Nature, vol. 10(1), pages 1-7, December.
  • Handle: RePEc:nat:natcom:v:10:y:2019:i:1:d:10.1038_s41467-019-12397-x
    DOI: 10.1038/s41467-019-12397-x
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    Cited by:

    1. Pedro Cuesta-Valiño & Sergey Kazakov & Pablo Gutiérrez-Rodríguez & Orlando Lima Rua, 2023. "The effects of the aesthetics and composition of hotels’ digital photo images on online booking decisions," Palgrave Communications, Palgrave Macmillan, vol. 10(1), pages 1-11, December.

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