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

Ziad Ibbini1, Manuela Truebano1, John I Spicer1

  • 1Marine Biology and Ecology Research Centre, School of Biological and Marine Sciences, University of Plymouth, Drake Circus, Plymouth PL4 8AA, UK.

The Journal of Experimental Biology
|May 28, 2024
PubMed
Summary
This summary is machine-generated.

We developed Dev-ResNet, a novel deep learning tool for precisely identifying developmental events in early life stages. This method enhances the scale and reproducibility of developmental biology research.

Keywords:
Bioimage analysisComputer visionConvolutional neural networksHeterochronyVideo classification

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Area of Science:

  • Developmental Biology
  • Machine Learning
  • Bioimaging

Background:

  • Identifying developmental events is crucial for understanding biological processes across species and environments.
  • Current methods for detecting developmental events are challenging, limiting experimental scale and reproducibility.
  • Bioimaging is widely used in developmental biology, but analyzing the data remains a bottleneck.

Purpose of the Study:

  • To introduce Dev-ResNet, an efficient 3D convolutional neural network for detecting developmental events.
  • To demonstrate Dev-ResNet's capability in identifying events with spatial and temporal features.
  • To provide a scalable and reproducible method for analyzing early life stage development.

Main Methods:

  • Development of Dev-ResNet, a small and efficient 3D convolutional neural network.
  • Application of Dev-ResNet to detect 10 diverse functional events during embryonic development in Lymnaea stagnalis.
  • Validation of Dev-ResNet's accuracy in identifying event onsets and thermally induced timing changes.

Main Results:

  • Dev-ResNet successfully detected the onset of all 10 tested developmental events.
  • The tool accurately identified thermally induced decoupling of developmental event timings.
  • Dev-ResNet demonstrated high efficacy in analyzing spatial and temporal features of developmental events.

Conclusions:

  • Dev-ResNet offers a powerful and efficient solution for delineating developmental events in early life stages.
  • The deep learning approach enhances the scale, reproducibility, and throughput of experimental biology.
  • Dev-ResNet has broad applicability in bioimaging and developmental biology research, with provided resources for implementation.