GRANA: An AI-based tool for accelerating chloroplast grana nanomorphology analysis using hybrid intelligence.

Journal: Plant physiology
Published Date:

Abstract

Grana are fundamental structural units of the intricate chloroplast membrane network. Investigating their nanomorphology is essential for understanding photosynthetic efficiency regulation. Here, we present GRANA (Graphical Recognition and Analysis of Nanostructural Assemblies), an artificial intelligence-enhanced, user-friendly software tool that recognizes grana on thylakoid network electron micrographs and generates a complex set of their structural parameters. GRANA employs 3 artificial neural networks of different architectures and binds them in a 1-click workflow. Its output is designed to facilitate hybrid intelligence analysis, securing fast and reliable results from large datasets. The GRANA tool is over 100 times faster compared with currently used manual approaches. As a proof of concept, we have successfully applied GRANA software to diverse grana structures across different land plant species grown under various conditions, demonstrating the wide range of potential applications for our software. GRANA tool supports large-scale analysis of grana nanomorphological features, facilitating advancements in photosynthesis-oriented studies.

Authors

  • Alicja Bukat
    Department of Plant Anatomy and Cytology, Faculty of Biology, University of Warsaw, Miecznikowa 1, 02-096 Warsaw, Poland.
  • Marek Bukowicki
    Center for Machine Learning, Faculty of Physics, University of Warsaw, Pasteura 5, 02-093 Warsaw, Poland.
  • Michał Bykowski
    Department of Plant Anatomy and Cytology, Faculty of Biology, University of Warsaw, Miecznikowa 1, 02-096 Warsaw, Poland.
  • Karolina Kuczkowska
    Department of Ecology and Environmental Conservation, Faculty of Biology, University of Warsaw, Miecznikowa 1, 02-096 Warsaw, Poland.
  • Szymon Nowakowski
    Faculty of Mathematics, Informatics and Mechanics, University of Warsaw, Warsaw, Poland.
  • Anna Śliwińska
    Center for Machine Learning, Faculty of Physics, University of Warsaw, Pasteura 5, 02-093 Warsaw, Poland.
  • Łucja Kowalewska
    Department of Plant Anatomy and Cytology, Faculty of Biology, University of Warsaw, Miecznikowa 1, 02-096 Warsaw, Poland.