Deep learning-based behavioral analysis reaches human accuracy and is capable of outperforming commercial solutions

Open access
Date
2020Type
- Journal Article
Citations
Cited 40 times in
Web of Science
Cited 43 times in
Scopus
ETH Bibliography
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Abstract
To study brain function, preclinical research heavily relies on animal monitoring and the subsequent analyses of behavior. Commercial platforms have enabled semi high-throughput behavioral analyses by automating animal tracking, yet they poorly recognize ethologically relevant behaviors and lack the flexibility to be employed in variable testing environments. Critical advances based on deep-learning and machine vision over the last couple of years now enable markerless tracking of individual body parts of freely moving rodents with high precision. Here, we compare the performance of commercially available platforms (EthoVision XT14, Noldus; TSE Multi-Conditioning System, TSE Systems) to cross-verified human annotation. We provide a set of videos—carefully annotated by several human raters—of three widely used behavioral tests (open field test, elevated plus maze, forced swim test). Using these data, we then deployed the pose estimation software DeepLabCut to extract skeletal mouse representations. Using simple post-analyses, we were able to track animals based on their skeletal representation in a range of classic behavioral tests at similar or greater accuracy than commercial behavioral tracking systems. We then developed supervised machine learning classifiers that integrate the skeletal representation with the manual annotations. This new combined approach allows us to score ethologically relevant behaviors with similar accuracy to humans, the current gold standard, while outperforming commercial solutions. Finally, we show that the resulting machine learning approach eliminates variation both within and between human annotators. In summary, our approach helps to improve the quality and accuracy of behavioral data, while outperforming commercial systems at a fraction of the cost. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000431266Publication status
publishedExternal links
Journal / series
NeuropsychopharmacologyVolume
Pages / Article No.
Publisher
Nature Publishing GroupOrganisational unit
03963 - Wenderoth, Nicole / Wenderoth, Nicole
09499 - Bohacek, Johannes / Bohacek, Johannes
09479 - Grewe, Benjamin F. / Grewe, Benjamin F.
Funding
172889 - Dissecting stress-induced molecular changes in circuits underlying anxiety (SNF)
173721 - Temporal Information Integration in Neural Networks (SNF)
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Show all metadata
Citations
Cited 40 times in
Web of Science
Cited 43 times in
Scopus
ETH Bibliography
yes
Altmetrics