| Literature DB >> 34473051 |
James P Bohnslav1, Nivanthika K Wimalasena1,2, Kelsey J Clausing3,4, Yu Y Dai3,4, David A Yarmolinsky1,2, Tomás Cruz5, Adam D Kashlan1,2, M Eugenia Chiappe5, Lauren L Orefice3,4, Clifford J Woolf1,2, Christopher D Harvey1.
Abstract
Videos of animal behavior are used to quantify researcher-defined behaviors of interest to study neural function, gene mutations, and pharmacological therapies. Behaviors of interest are often scored manually, which is time-consuming, limited to few behaviors, and variable across researchers. We created DeepEthogram: software that uses supervised machine learning to convert raw video pixels into an ethogram, the behaviors of interest present in each video frame. DeepEthogram is designed to be general-purpose and applicable across species, behaviors, and video-recording hardware. It uses convolutional neural networks to compute motion, extract features from motion and images, and classify features into behaviors. Behaviors are classified with above 90% accuracy on single frames in videos of mice and flies, matching expert-level human performance. DeepEthogram accurately predicts rare behaviors, requires little training data, and generalizes across subjects. A graphical interface allows beginning-to-end analysis without end-user programming. DeepEthogram's rapid, automatic, and reproducible labeling of researcher-defined behaviors of interest may accelerate and enhance supervised behavior analysis. Code is available at: https://github.com/jbohnslav/deepethogram.Entities:
Keywords: D. melanogaster; behavior analysis; computer vision; deep learning; mouse; neuroscience
Mesh:
Year: 2021 PMID: 34473051 PMCID: PMC8455138 DOI: 10.7554/eLife.63377
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140