Noncontact Heart Rate Measurement in Walking Rats

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
YuKe He;Yong Lv;Jingjing Zhang
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引用次数: 0

Abstract

Animal research provides experimental models that recapitulate various physiological and pathophysiological processes in humans, which are crucial for scientific breakthroughs in medicine and biology. In order to adhere to the principles of the replacement, reduction, and refinement, this work proposed a noncontact heart rate measurement approach in walking rats, using a fusion method of deep learning and signal processing. The approach uses the movement of the rat's dorsal and ventral fur regions to extract the heart rate signals. The extracted signal removes rigid motion primarily based on the spinal signal, and then obtains a clean heart rate signal by removing nonrigid motion through canonical correlation analysis. The results were highly consistent with the reference method (semi-implantable electrocardiogram), with a mean absolute percentage error of 2.09% for rats. Current research suggests that camera-based technology has great potential for measuring the heart rate of walking animals, helping to develop new methods for continuous and objective assessment of animal welfare, thereby advancing modern biomedical and ethical research.
行走大鼠非接触心率测量
动物研究提供的实验模型概括了人类的各种生理和病理生理过程,这对医学和生物学的科学突破至关重要。为了坚持替换、还原和细化的原则,本工作提出了一种非接触式行走大鼠心率测量方法,采用深度学习和信号处理的融合方法。该方法利用大鼠背部和腹部皮毛区域的运动来提取心率信号。提取的信号主要基于脊髓信号去除刚性运动,然后通过典型相关分析去除非刚性运动,得到干净的心率信号。结果与参考方法(半植入式心电图)高度一致,大鼠平均绝对百分比误差为2.09%。目前的研究表明,基于相机的技术在测量行走动物的心率方面具有巨大的潜力,有助于开发持续客观评估动物福利的新方法,从而推进现代生物医学和伦理研究。
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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