Pose analysis data
Introduction
Methods
We perform markerless tracking using DeepLabCut (DLC), a deep learning pose estimation toolkit, to track geometric relationships between body parts. We identify putative clusters of postural configurations from twelve freely behaving zebrafish, using unsupervised multivariate time-series analysis (B-SOiD machine learning software) and of distances and angles between body segments extracted from DLC data.
Results
When applied to single individuals, DLC data reveal a best-fit for 36 to 50 clusters in contrast to 86 clusters for data pooled from all 12 animals. The centroids of each cluster obtained over 14,000 sequential frames represent an apriori classification into relatively stable “target body postures”. We use multidimensional scaling of mean parameter values for each cluster to map cluster-centroids within two dimensions of postural space. From a posteriori visual analysis, we condense neighboring postural variants into 15 superclusters or core body configurations. We develop a nomenclature specifying the antero-posterior level/s (upper, mid and lower) and degree of bending
Conclusion
Our results suggest that constraining bends to mainly three antero-posterior levels in fish paved the way for the evolution of a neck, fore- and hind-limb design for maneuverability in land vertebrates.