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Recognition of human hypoxic state based on deep learning

Authors :
YU Lu
JIN Long-zhe
WANG Meng-fei
XU Ming-wei
Source :
工程科学学报, Vol 41, Iss 6, Pp 817-823 (2019)
Publication Year :
2019
Publisher :
Science Press, 2019.

Abstract

Due to the development of industrialization, low-oxygen environment has become common in the confined spaces of construction industries, chemical industries, military, urban underground spaces, and poorly ventilated crowed areas and caused a large number of hypoxic injuries. The traditional method of preventing hypoxic injuries is to monitor the oxygen concentration in the environment without considering the difference in oxygen tolerance limits when the human body is in different physiological states. Photoplethysmography (PPG) can comprehensively reflect physiological information, including heart rate, blood pressure, blood oxygen saturation, cardiovascular blood flow parameters, and respiratory rate. When the human body enters a hypoxic environment, the physiological parameters change rapidly, resulting in a change in the PPG signal. By measuring the PPG signal of the human body, the physiological state is considered to determine whether the human body reaches the oxygen tolerance limit. This study proposed a method for quickly identifying the hypoxic state of the human body using hypoxia experiment. According to the latest research on aviation medicine, mountain medicine and naval submarine medicine, 15.5% oxygen volume fraction can guarantee the basic life safety of personnel. Through the training experimental data of a constructed deep neural network, the PPG signal of a human in normal oxygen volume fraction (16% -21%) and extremely low-oxygen volume fraction (15.5% -16%) was determined to obtain the pattern recognition network of human physiological state. After testing, the recognition accuracy of the network could reach 92.8%. Using the confusion matrix and receiver operating characteristic curve analysis, the accuracy rate of training set, verification set, test set, and ensemble recognition of the confusion matrix reached 97.9%, 94.8%, 92.8%, and 96.3%, respectively. The area under the curve value is close to 1, the network classification performance is excellent, and the entire identification process could be completed within 4 s.

Details

Language :
Chinese
ISSN :
20959389
Volume :
41
Issue :
6
Database :
Directory of Open Access Journals
Journal :
工程科学学报
Publication Type :
Academic Journal
Accession number :
edsdoj.0b219fa5dcb3415897ba77b5455114ac
Document Type :
article
Full Text :
https://doi.org/10.13374/j.issn2095-9389.2019.06.014