Mlost J, Dawli R, Liu X, Costa AR, Pollak Dorocic I
Patterns (N Y) 6 (5) 101237 [2025-05-09; online 2025-04-22]
Analyzing animal behavior is crucial for decoding brain function, modeling neurological disorders, and assessing therapeutics. Recent advances in pose-estimation tools like DeepLabCut and SLEAP have revolutionized behavioral analysis by enabling precise tracking of animal body movements. However, these tools do not automate behavioral classification. Unsupervised learning algorithms address this gap by identifying clusters of recurring behavioral motifs from pose-tracking data without requiring pre-labeled datasets, reducing observer bias and uncovering novel patterns. This study compares four recent unsupervised learning algorithms-B-SOiD, BFA, VAME, and Keypoint-MoSeq-analyzing their methodological approaches, clustering efficiency, and ability to produce meaningful behavioral classifications. By offering a qualitative and quantitative evaluation, this paper aims to aid researchers in selecting the most suitable tool for their specific research needs.
PubMed 40486967
DOI 10.1016/j.patter.2025.101237
Crossref 10.1016/j.patter.2025.101237
pmc: PMC12142628
pii: S2666-3899(25)00085-6