Geometric Deep Learning Enables 3D Kinematic Profiling Across Species and Environments
Overview
Pathology
Authors
Affiliations
Comprehensive descriptions of animal behavior require precise three-dimensional (3D) measurements of whole-body movements. Although two-dimensional approaches can track visible landmarks in restrictive environments, performance drops in freely moving animals, due to occlusions and appearance changes. Therefore, we designed DANNCE to robustly track anatomical landmarks in 3D across species and behaviors. DANNCE uses projective geometry to construct inputs to a convolutional neural network that leverages learned 3D geometric reasoning. We trained and benchmarked DANNCE using a dataset of nearly seven million frames that relates color videos and rodent 3D poses. In rats and mice, DANNCE robustly tracked dozens of landmarks on the head, trunk, and limbs of freely moving animals in naturalistic settings. We extended DANNCE to datasets from rat pups, marmosets, and chickadees, and demonstrate quantitative profiling of behavioral lineage during development.
FlyVISTA, an integrated machine learning platform for deep phenotyping of sleep in .
Keles M, Sapci A, Brody C, Palmer I, Mehta A, Ahmadi S Sci Adv. 2025; 11(11):eadq8131.
PMID: 40073129 PMC: 11900856. DOI: 10.1126/sciadv.adq8131.
The utility of animal models to inform the next generation of human space exploration.
Duporge I, Pereira T, Castiello de Obeso S, Ross J, Lee S, G Hindle A NPJ Microgravity. 2025; 11(1):7.
PMID: 39984492 PMC: 11845785. DOI: 10.1038/s41526-025-00460-5.
Lancaster T, Leatherbury K, Shilova K, Streelman J, McGrath P Front Behav Neurosci. 2024; 18:1509369.
PMID: 39703614 PMC: 11655190. DOI: 10.3389/fnbeh.2024.1509369.
Biomarker discovery using machine learning in the psychosis spectrum.
Yassin W, Loedige K, Wannan C, Holton K, Chevinsky J, Torous J Biomark Neuropsychiatry. 2024; 11.
PMID: 39687745 PMC: 11649307. DOI: 10.1016/j.bionps.2024.100107.
Newman J, Zhang J, Cuevas-Lopez A, Miller N, Honda T, van der Goes M Nat Methods. 2024; 22(1):187-192.
PMID: 39528678 PMC: 11725498. DOI: 10.1038/s41592-024-02521-1.