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Probing spermiogenesis: a digital strategy for mouse acrosome classification.

Alessandro TaloniFrancesc Font-ClosLuca GuidettiSimone MilanMiriam AscagniChiara VascoMaria Enrica PasiniMaria Rosa GioriaEmilio CiusaniStefano ZapperiCaterina Anna Maria La Porta
Published in: Scientific reports (2017)
Classification of morphological features in biological samples is usually performed by a trained eye but the increasing amount of available digital images calls for semi-automatic classification techniques. Here we explore this possibility in the context of acrosome morphological analysis during spermiogenesis. Our method combines feature extraction from three dimensional reconstruction of confocal images with principal component analysis and machine learning. The method could be particularly useful in cases where the amount of data does not allow for a direct inspection by trained eye.
Keyphrases
  • deep learning
  • machine learning
  • artificial intelligence
  • convolutional neural network
  • big data
  • optical coherence tomography
  • resistance training
  • electronic health record
  • body composition
  • high intensity