工具箱
波形
呼吸
信号处理
信号(编程语言)
计算机科学
语音识别
医学
数字信号处理
麻醉
电信
计算机硬件
程序设计语言
雷达
作者
Torben Noto,Guangyu Zhou,Stephan Schuele,Jessica W. Templer,Christina Zelano
出处
期刊:Chemical Senses
[Oxford University Press]
日期:2018-07-04
卷期号:43 (8): 583-597
被引量:84
标识
DOI:10.1093/chemse/bjy045
摘要
Nasal inhalation is the basis of olfactory perception and drives neural activity in olfactory and limbic brain regions. Therefore, our ability to investigate the neural underpinnings of olfaction and respiration can only be as good as our ability to characterize features of respiratory behavior. However, recordings of natural breathing are inherently nonstationary, nonsinusoidal, and idiosyncratic making feature extraction difficult to automate. The absence of a freely available computational tool for characterizing respiratory behavior is a hindrance to many facets of olfactory and respiratory neuroscience. To solve this problem, we developed BreathMetrics, an open-source tool that automatically extracts the full set of features embedded in human nasal airflow recordings. Here, we rigorously validate BreathMetrics' feature estimation accuracy on multiple nasal airflow datasets, intracranial electrophysiological recordings of human olfactory cortex, and computational simulations of breathing signals. We hope this tool will allow researchers to ask new questions about how respiration relates to body, brain, and behavior.
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