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Dev-ResNet: automated developmental event detection using deep learning.

Ziad IbbiniManuela TruebanoJohn I SpicerJames C S McCoyOliver Tills
Published in: The Journal of experimental biology (2024)
Delineating developmental events is central to experimental research using early life stages, permitting widespread identification of changes in event timing between species and environments. Yet, identifying developmental events is incredibly challenging, limiting the scale, reproducibility and throughput of using early life stages in experimental biology. We introduce Dev-ResNet, a small and efficient 3D convolutional neural network capable of detecting developmental events characterised by both spatial and temporal features, such as the onset of cardiac function and radula activity. We demonstrate the efficacy of Dev-ResNet using 10 diverse functional events throughout the embryonic development of the great pond snail, Lymnaea stagnalis. Dev-ResNet was highly effective in detecting the onset of all events, including the identification of thermally induced decoupling of event timings. Dev-ResNet has broad applicability given the ubiquity of bioimaging in developmental biology, and the transferability of deep learning, and so we provide comprehensive scripts and documentation for applying Dev-ResNet to different biological systems.
Keyphrases
  • deep learning
  • early life
  • convolutional neural network
  • artificial intelligence
  • machine learning
  • oxidative stress
  • signaling pathway
  • drug induced