Identification of eupneic breathing using machine learning.

IF 2.1 3区 医学 Q3 NEUROSCIENCES Journal of neurophysiology Pub Date : 2024-09-01 Epub Date: 2024-07-25 DOI:10.1152/jn.00230.2024
Obaid U Khurram, Carlos B Mantilla, Gary C Sieck
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Abstract

The diaphragm muscle (DIAm) is the primary inspiratory muscle in mammals. In awake animals, considerable heterogeneity in the electromyographic (EMG) activity of the DIAm reflects varied ventilatory and nonventilatory behaviors. Experiments in awake animals are an essential component to understanding the neuromotor control of breathing, which has especially begun to be appreciated within the last decade. However, insofar as the intent is to study the control of breathing, it is paramount to identify DIAm EMG activity that in fact reflects breathing. Current strategies for doing so in a reproducible, reliable, and efficient fashion are lacking. In the present article, we evaluated DIAm EMG from awake animals using hierarchical clustering across four-dimensional feature space to classify eupneic breathing. Our model, which can be implemented with automated threshold of the clustering dendrogram, successfully identified eupneic breathing with high F1 score (0.92), specificity (0.70), and accuracy (0.88), suggesting that it is a robust and reliable tool for investigating the neural control of breathing.NEW & NOTEWORTHY The heterogeneity of diaphragm muscle (DIAm) activity in awake animals reflects real motor behavior diversity but makes assessments of eupneic breathing challenging. The present article uses an unsupervised machine learning model to identify eupneic breathing amidst a deluge of different DIAm electromyography (EMG) burst patterns in awake rats. This technique offers a scalable and reliable tool that improves efficiency of DIAm EMG analysis and minimizes potential sources of bias.

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利用无监督机器学习识别呼吸暂停。
膈肌(DIAm)是哺乳动物特有的肌肉,也是参与呼吸的主要肌肉。在清醒的动物中,DIAm 肌电图(EMG)活动的相当大的异质性反映了不同的换气和非换气行为。清醒动物的实验是了解呼吸的神经运动控制的重要组成部分;因此,最重要的是明确识别实际上反映呼吸的 DIAm 肌电图活动。目前还缺乏以可重复、可靠和高效的方式实现这一目标的策略。本研究利用机器学习评估清醒大鼠的 DIAm EMG,使用四维特征空间的分层聚类来对舒张期呼吸进行分类。我们的模型可以通过聚类树枝图的自动阈值来实现,它以较高的 F1 分数(0.92)、特异性(0.70)和准确性(0.88)成功地识别出了通气呼吸,表明它是研究呼吸神经控制的一种稳健可靠的工具。
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来源期刊
Journal of neurophysiology
Journal of neurophysiology 医学-神经科学
CiteScore
4.80
自引率
8.00%
发文量
255
审稿时长
2-3 weeks
期刊介绍: The Journal of Neurophysiology publishes original articles on the function of the nervous system. All levels of function are included, from the membrane and cell to systems and behavior. Experimental approaches include molecular neurobiology, cell culture and slice preparations, membrane physiology, developmental neurobiology, functional neuroanatomy, neurochemistry, neuropharmacology, systems electrophysiology, imaging and mapping techniques, and behavioral analysis. Experimental preparations may be invertebrate or vertebrate species, including humans. Theoretical studies are acceptable if they are tied closely to the interpretation of experimental data and elucidate principles of broad interest.
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