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TDAExplore: Quantitative analysis of fluorescence microscopy images through topology-based machine learning

  • Parker Edwardsc(Author)
    ,
  • ,
  • Nikola Milićevića(Author)
    ,
  • James B. Heidingsd(Author)
    ,
  • Tracy Ann Readf(Author)
    ,
  • Peter Bubenike(Author)
  • aPenn State University
    ,
  • bHoward Hughes Medical Institute
    ,
  • cUniversity of Notre Dame
    ,
  • dUniversity of Florida College of Medicine
    ,
  • eUniversity of Florida
    ,
  • fMedical College of Georgia
Research Output: Contribution to journal Article Peer-review

Open access

Abstract

Recent advances in machine learning have greatly enhanced automatic methods to extract information from fluorescence microscopy data. However, current machine-learning-based models can require hundreds to thousands of images to train, and the most readily accessible models classify images without describing which parts of an image contributed to classification. Here, we introduce TDAExplore, a machine learning image analysis pipeline based on topological data analysis. It can classify different types of cellular perturbations after training with only 20–30 high-resolution images and performs robustly on images from multiple subjects and microscopy modes. Using only images and whole-image labels for training, TDAExplore provides quantitative, spatial information, characterizing which image regions contribute to classification. Computational requirements to train TDAExplore models are modest and a standard PC can perform training with minimal user input. TDAExplore is therefore an accessible, powerful option for obtaining quantitative information about imaging data in a wide variety of applications.