1. Towards a fully automated surveillance of well-being status in laboratory mice using deep learning: Starting with facial expression analysis
- Author
-
Vitaly Belik, Niek Andresen, Manuel Wöllhaf, Katharina Hohlbaum, Christa Thöne-Reineke, Olaf Hellwich, and Lars Lewejohann
- Subjects
Male ,Computer science ,General Anesthesia ,Datasets as Topic ,Social Sciences ,computer.software_genre ,Convolutional neural network ,Facial recognition system ,Field (computer science) ,0403 veterinary science ,Mice ,Cognition ,Learning and Memory ,Laboratory Animal Science ,Anesthesiology ,Medicine and Health Sciences ,Psychology ,nose ,Animal Anatomy ,Reproductive System Procedures ,0303 health sciences ,Pain, Postoperative ,Multidisciplinary ,Behavior, Animal ,vibrissae ,Pharmaceutics ,04 agricultural and veterinary sciences ,Facial Expression ,Fully automated ,general inhalational anesthesia ,Medicine ,Female ,Anatomy ,600 Technik, Medizin, angewandte Wissenschaften::610 Medizin und Gesundheit::610 Medizin und Gesundheit ,Research Article ,face recognition ,040301 veterinary sciences ,Science ,Surgical and Invasive Medical Procedures ,anesthesia ,Machine learning ,Animal Welfare ,03 medical and health sciences ,Deep Learning ,Drug Therapy ,Memory ,Animal welfare ,Animals, Laboratory ,Animals ,Animal Physiology ,030304 developmental biology ,Anesthetics ,Facial expression ,business.industry ,Deep learning ,Cognitive Psychology ,face ,ears ,Biology and Life Sciences ,500 Naturwissenschaften und Mathematik::590 Tiere (Zoologie)::590 Tiere (Zoologie) ,castration ,Pipeline (software) ,Cognitive Science ,Perception ,Artificial intelligence ,business ,computer ,Head ,Zoology ,Neuroscience - Abstract
Assessing the well-being of an animal is hindered by the limitations of efficient communication between humans and animals. Instead of direct communication, a variety of parameters are employed to evaluate the well-being of an animal. Especially in the field of biomedical research, scientifically sound tools to assess pain, suffering, and distress for experimental animals are highly demanded due to ethical and legal reasons. For mice, the most commonly used laboratory animals, a valuable tool is the Mouse Grimace Scale (MGS), a coding system for facial expressions of pain in mice. We aim to develop a fully automated system for the surveillance of post-surgical and post-anesthetic effects in mice. Our work introduces a semi-automated pipeline as a first step towards this goal. A new data set of images of black-furred laboratory mice that were moving freely is used and provided. Images were obtained after anesthesia (with isoflurane or ketamine/xylazine combination) and surgery (castration). We deploy two pre-trained state of the art deep convolutional neural network (CNN) architectures (ResNet50 and InceptionV3) and compare to a third CNN architecture without pre-training. Depending on the particular treatment, we achieve an accuracy of up to 99% for the recognition of the absence or presence of post-surgical and/or post-anesthetic effects on the facial expression.
- Published
- 2020