| Literature DB >> 33729153 |
Brian Q Geuther1, Asaf Peer1, Hao He1, Gautam Sabnis1, Vivek M Philip1, Vivek Kumar1.
Abstract
Automated detection of complex animal behaviors remains a challenging problem in neuroscience, particularly for behaviors that consist of disparate sequential motions. Grooming is a prototypical stereotyped behavior that is often used as an endophenotype in psychiatric genetics. Here, we used mouse grooming behavior as an example and developed a general purpose neural network architecture capable of dynamic action detection at human observer-level performance and operating across dozens of mouse strains with high visual diversity. We provide insights into the amount of human annotated training data that are needed to achieve such performance. We surveyed grooming behavior in the open field in 2457 mice across 62 strains, determined its heritable components, conducted GWAS to outline its genetic architecture, and performed PheWAS to link human psychiatric traits through shared underlying genetics. Our general machine learning solution that automatically classifies complex behaviors in large datasets will facilitate systematic studies of behavioral mechanisms.Entities:
Keywords: GWAS; action detection; computational biology; grooming; machine learning; mouse; neural network; neuroscience; systems biology
Mesh:
Year: 2021 PMID: 33729153 PMCID: PMC8043749 DOI: 10.7554/eLife.63207
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140