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Accurate staging of chick embryonic tissues via deep learning of salient features

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posted on 2024-10-01, 10:48 authored by I Groves, J Holmshaw, D Furley, E Manning, K Chinnaiya, M Towers, Benjamin EvansBenjamin Evans, M Placzek, AG Fletcher
Recent work shows that the developmental potential of progenitor cells in the HH10 chick brain changes rapidly, accompanied by subtle changes in morphology. This demands increased temporal resolution for studies of the brain at this stage, necessitating precise and unbiased staging. Here, we investigated whether we could train a deep convolutional neural network to sub-stage HH10 chick brains using a small dataset of 151 expertly labelled images. By augmenting our images with biologically informed transformations and data-driven preprocessing steps, we successfully trained a classifier to sub-stage HH10 brains to 87.1% test accuracy. To determine whether our classifier could be generally applied, we re-trained it using images (269) of randomised control and experimental chick wings, and obtained similarly high test accuracy (86.1%). Saliency analyses revealed that biologically relevant features are used for classification. Our strategy enables training of image classifiers for various applications in developmental biology with limited microscopy data.

History

Publication status

  • Published

File Version

  • Published version

Journal

Development (Cambridge)

ISSN

0950-1991

Publisher

The Company of Biologists

Issue

22

Volume

150

Page range

dev202068-

Department affiliated with

  • Informatics Publications

Institution

University of Sussex

Full text available

  • Yes

Peer reviewed?

  • Yes