Systematic review of automated sleep apnea detection based on physiological signal data using deep learning algorithm: a meta-analysis approach

被引:0
作者
Praveen Kumar Tyagi
Dheeraj Agarwal
机构
[1] Maulana Azad National Institute of Technology,Department of ECE
来源
Biomedical Engineering Letters | 2023年 / 13卷
关键词
CNN; DBN; Deep learning; GRU; LSTM; Sleep apnea;
D O I
暂无
中图分类号
学科分类号
摘要
Sleep apnea (SLA) is a respiratory-related sleep disorder that affects a major proportion of the population. The gold standard in sleep testing, polysomnography, is costly, inconvenient, and unpleasant, and it requires a skilled professional to score. Multiple researchers have suggested and developed automated scoring processes with less detectors and automated classification algorithms to resolve these problems. An automatic detection system will allow for a high diagnosis rate and the analysis of additional patients. Deep learning (DL) is achieving high priority due to the availability of databases and recently developed methods. As the most up-and-coming technique for classification and generative tasks, DL has shown its significant potential in 2-dimensional clinical image processing studies. However, physiological information collected as 1-dimensional data has yet to be effectively extracted from this new approach to achieve the needed medical goals. So, in this study, we review the most recent studies in the field of DL applied to physiological data based on pulse oxygen saturation, electrocardiogram, airflow, and sound signal. A total of 47 articles from different journals and publishing houses that were published between 2012 and 2022 were identified. The primary objective of this work is to perform a comprehensive analysis to analyze, classify, and compare the main characteristics of deep-learning algorithms applied in physiological data processing for SLA detection. Overall, our analysis provides comprehensive and detailed information for researchers looking to add to this field. The data input source, objective, DL network, training framework, and database references are the critical factors of the DL approach examined. These are the most critical variables that influence system performance. We categorized the relevant research studies in physiological sensor data analysis using the DL approach based on (1) Physiological sensor data aspects, like signal types, sampling frequency, and window size; and (2) DL model perspectives, such as learning structure and input data types.
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页码:293 / 312
页数:19
相关论文
共 146 条
[1]  
JeyaJothi ES(2022)A comprehensive review: computational models for obstructive sleep apnea detection in biomedical applications BioMed Res Int 2022 98-111
[2]  
Anitha J(2022)A review of automated diagnosis of ECG arrhythmia using deep learning methods AI-Enabled Smart Healthcare Biomed Signals. 78 1545-1552
[3]  
Rani S(2003)Obstructive sleep apnea-hypopnea syndrome Mayo Clinic Proc 12 1-20
[4]  
Tiwari B(2022)A review of automated sleep apnea detection using deep neural network Artif Intell Intern Things Smart Mater Energy Appl. 39 1043-1050
[5]  
Tyagi PK(2009)Energy based feature extraction for classification of sleep apnea syndrome Comput Biol Med 23 825-837
[6]  
Rathore N(2018)A review of obstructive sleep apnea detection approaches IEEE J Biomed Health Inf 19 4934-1542
[7]  
Parashar D(2019)A systematic review of detecting sleep apnea using deep learning Sensors 63 1532-2278
[8]  
Agrawal D(2015)An obstructive sleep apnea detection approach using a discriminative hidden Markov model from ECG signals IEEE Trans Biomed Eng 62 2269-124
[9]  
Olson EJ(2015)A novel algorithm for the automatic detection of sleep apnea from single-lead ECG IEEE Trans Biomed Eng 77 116-7785
[10]  
Moore WR(2016)An algorithm for sleep apnea detection from single-lead ECG using Hermite basis functions Comput Bio Med 36 7778-2957