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Deep Learning to Decipher the Progression and Morphology of Axonal Degeneration

  • Alex Palumbo
  • , Philipp Gruening
  • , Svenja Kim Landt
  • , Lara Eleen Heckmann
  • , Luisa Bartram
  • , Alessa Pabst
  • , Charlotte Flory
  • , Maulana Ikhsan
  • , Sören Pietsch
  • , Reinhard Schulz
  • , Christopher Kren
  • , Norbert Koop
  • , Johannes Boltze
  • , Amir Madany Mamlouk
  • , Marietta Zille (Corresponding author)

Publications: Contribution to journalArticlePeer Reviewed

Abstract

Axonal degeneration (AxD) is a pathological hallmark of many neurodegenerative diseases. Deciphering the morphological patterns of AxD will help to understand the underlying mechanisms and develop effective therapies. Here, we evaluated the progression of AxD in cortical neurons using a novel microfluidic device together with a deep learning tool that we developed for the enhanced-throughput analysis of AxD on microscopic images. The trained convolutional neural network (CNN) sensitively and specifically segmented the features of AxD including axons, axonal swellings, and axonal fragments. Its performance exceeded that of the human evaluators. In an in vitro model of AxD in hemorrhagic stroke induced by the hemolysis product hemin, we detected a time-dependent degeneration of axons leading to a decrease in axon area, while axonal swelling and fragment areas increased. Axonal swellings preceded axon fragmentation, suggesting that swellings may be reliable predictors of AxD. Using a recurrent neural network (RNN), we identified four morphological patterns of AxD (granular, retraction, swelling, and transport degeneration). These findings indicate a morphological heterogeneity of AxD in hemorrhagic stroke. Our EntireAxon platform enables the systematic analysis of axons and AxD in time-lapse microscopy and unravels a so-far unknown intricacy in which AxD can occur in a disease context.
Original languageEnglish
Article number2539
Number of pages25
JournalCells
Volume10
Issue number10
DOIs
Publication statusPublished - 25 Sept 2021

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Austrian Fields of Science 2012

  • 301109 Pathophysiology
  • 301402 Neurobiology
  • 102018 Artificial neural networks
  • 106052 Cell biology

Keywords

  • DAMAGE
  • DEATH
  • DEFICITS
  • FEATURES
  • MECHANISMS
  • NEURONS
  • PLATFORM
  • QUANTIFICATION
  • axon
  • brain hemorrhage
  • cell culture
  • cortical neurons
  • machine learning
  • microfluidic
  • microscopy
  • stroke
  • time-lapse
  • Cell culture
  • Time-lapse
  • Brain hemorrhage
  • Cortical neurons
  • Stroke
  • Microfluidic
  • Axon
  • Microscopy
  • Machine learning

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