| Literature DB >> 35325370 |
Kang Huang1,2, Qin Yang1, Yaning Han1,2, Yulin Zhang1, Zhiyi Wang3, Liping Wang1,2, Pengfei Wei4,5.
Abstract
Measuring eye movement is a fundamental approach in cognitive science as it provides a variety of insightful parameters that reflect brain states such as visual attention and emotions. Combining eye-tracking with multimodal neural recordings or manipulation techniques is beneficial for understanding the neural substrates of cognitive function. Many commercially-available and custom-built systems have been widely applied to awake, head-fixed small animals. However, the existing eye-tracking systems used in freely-moving animals are still limited in terms of their compatibility with other devices and of the algorithm used to detect eye movements. Here, we report a novel system that integrates a general-purpose, easily compatible eye-tracking hardware with a robust eye feature-detection algorithm. With ultra-light hardware and a detachable design, the system allows for more implants to be added to the animal's exposed head and has a precise synchronization module to coordinate with other neural implants. Moreover, we systematically compared the performance of existing commonly-used pupil-detection approaches, and demonstrated that the proposed adaptive pupil feature-detection algorithm allows the analysis of more complex and dynamic eye-tracking data in free-moving animals. Synchronized eye-tracking and electroencephalogram recordings, as well as algorithm validation under five noise conditions, suggested that our system is flexibly adaptable and can be combined with a wide range of neural manipulation and recording technologies.Entities:
Keywords: Adaptive Kalman filter; Eye-tracking; Freely-moving; Head-mounted device; Pupil detection
Mesh:
Year: 2022 PMID: 35325370 PMCID: PMC9206064 DOI: 10.1007/s12264-022-00834-9
Source DB: PubMed Journal: Neurosci Bull ISSN: 1995-8218 Impact factor: 5.271