Scratch-AID, a deep learning-based system for automatic detection of mouse scratching behavior with high accuracy

Author:

Yu Huasheng1ORCID,Xiong Jingwei2,Ye Adam Yongxin3,Cranfill Suna Li1ORCID,Cannonier Tariq1,Gautam Mayank1ORCID,Zhang Marina4,Bilal Rayan1,Park Jong-Eun1,Xue Yuji1,Polam Vidhur1,Vujovic Zora1,Dai Daniel1,Ong William1,Ip Jasper1ORCID,Hsieh Amanda1,Mimouni Nour1,Lozada Alejandra1,Sosale Medhini1,Ahn Alex1,Ma Minghong1,Ding Long1ORCID,Arsuaga Javier56,Luo Wenqin1ORCID

Affiliation:

1. Department of Neuroscience, Perelman School of Medicine, University of Pennsylvania

2. Graduate Group in Biostatistics, University of California Davis

3. Howard Hughes Medical Institute, Program in Cellular and Molecular Medicine, Boston Children’s Hospital, Harvard Medical School

4. Department of Electrical Engineering and Computer Science, Massachusetts Institute of Technology

5. Department of Molecular and Cellular Biology, University of California Davis

6. Department of Mathematics, University of California Davis

Abstract

Mice are the most commonly used model animals for itch research and for development of anti-itch drugs. Most laboratories manually quantify mouse scratching behavior to assess itch intensity. This process is labor-intensive and limits large-scale genetic or drug screenings. In this study, we developed a new system, Scratch-AID (Automatic Itch Detection), which could automatically identify and quantify mouse scratching behavior with high accuracy. Our system included a custom-designed videotaping box to ensure high-quality and replicable mouse behavior recording and a convolutional recurrent neural network trained with frame-labeled mouse scratching behavior videos, induced by nape injection of chloroquine. The best trained network achieved 97.6% recall and 96.9% precision on previously unseen test videos. Remarkably, Scratch-AID could reliably identify scratching behavior in other major mouse itch models, including the acute cheek model, the histaminergic model, and a chronic itch model. Moreover, our system detected significant differences in scratching behavior between control and mice treated with an anti-itch drug. Taken together, we have established a novel deep learning-based system that could replace manual quantification for mouse scratching behavior in different itch models and for drug screening.

Funder

National Science Foundation

National Institutes of Health

Publisher

eLife Sciences Publications, Ltd

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

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