[Open House]Deep Learning-based Animal Behavior Analysis
- LecturerDr. Mark Liao (Institute of Information Science, Academia Sinica)
Host: Institute of Information Science - Time2025-10-19 (Sun.) 09:30 ~ 10:10
- LocationAuditorium 106 at IIS new Building
Abstract
Assessing chronic pain behavior in mice is critical for preclinical studies. However, existing methods mostly rely on manual labeling of behavioral features, and humans lack a clear understanding of which behaviors best represent chronic pain. For this reason, existing methods struggle to accurately capture the insidious and persistent behavioral changes in chronic pain. This study proposes a framework to automatically discover features related to chronic pain without relying on human-defined action labels. Our method uses universal action space projector to automatically extract mouse action features, and avoids the potential bias of human labeling by retaining the rich behavioral information in the original video. We also collected a mouse pain behavior dataset, which covers the disease process of mice with neuropathic pain and inflammatory pain on different days. Our method achieves 73.10% accuracy on the pain classification task, which is significantly better than human experts (48.00%) and the popular method B-SOiD (58.43%). Finally, our method revealed differences in drug efficacy for different types of pain on zero-shot Gabapentin drug testing, and the results were consistent with past drug efficacy literature. This study demonstrates the potential clinical application of our method, which can provide new insights into pain research and related drug development.