Literature DB >> 34928786

Automated Scoring of Respiratory Events in Sleep With a Single Effort Belt and Deep Neural Networks.

Thijs E Nassi, Wolfgang Ganglberger, Haoqi Sun, Abigail A Bucklin, Siddharth Biswal, Michel J A M van Putten, Robert J Thomas, M Brandon Westover.   

Abstract

OBJECTIVE: Automatic detection and analysis of respiratory events in sleep using a single respiratoryeffort belt and deep learning.
METHODS: Using 9,656 polysomnography recordings from the Massachusetts General Hospital (MGH), we trained a neural network (WaveNet) to detect obstructive apnea, central apnea, hypopnea and respiratory-effort related arousals. Performance evaluation included event-based analysis and apnea-hypopnea index (AHI) stratification. The model was further evaluated on a public dataset, the Sleep-Heart-Health-Study-1, containing 8,455 polysomnographic recordings.
RESULTS: For binary apnea event detection in the MGH dataset, the neural network obtained a sensitivity of 68%, a specificity of 98%, a precision of 65%, a F1-score of 67%, and an area under the curve for the receiver operating characteristics curve and precision-recall curve of 0.93 and 0.71, respectively. AHI prediction resulted in a mean difference of 0.41 ± 7.8 and a r2 of 0.90. For the multiclass task, we obtained varying performances: 84% of all labeled central apneas were correctly classified, whereas this metric was 51% for obstructive apneas, 40% for respiratory effort related arousals and 23% for hypopneas.
CONCLUSION: Our fully automated method can detect respiratory events and assess the AHI accurately. Differentiation of event types is more difficult and may reflect in part the complexity of human respiratory output and some degree of arbitrariness in the criteria used during manual annotation. SIGNIFICANCE: The current gold standard of diagnosing sleep-disordered breathing, using polysomnography and manual analysis, is time-consuming, expensive, and only applicable in dedicated clinical environments. Automated analysis using a single effort belt signal overcomes these limitations.

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Year:  2022        PMID: 34928786      PMCID: PMC9119908          DOI: 10.1109/TBME.2021.3136753

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.756


  24 in total

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Authors:  James A Reichert; Daniel A Bloch; Elizabeth Cundiff; Bernhard A Votteri
Journal:  Sleep Med       Date:  2003-05       Impact factor: 3.492

2.  Automated Sleep Apnea Detection in Raw Respiratory Signals Using Long Short-Term Memory Neural Networks.

Authors:  Tom Van Steenkiste; Willemijn Groenendaal; Dirk Deschrijver; Tom Dhaene
Journal:  IEEE J Biomed Health Inform       Date:  2018-12-10       Impact factor: 5.772

3.  Obstructive sleep apnea and perioperative delirium among thoracic surgery intensive care unit patients: perspective on the STOP-BANG questionnaire and postoperative outcomes.

Authors:  Sha'Shonda L Revels; Brian H Cameron; Robert B Cameron
Journal:  J Thorac Dis       Date:  2019-05       Impact factor: 2.895

4.  Sleep staging from electrocardiography and respiration with deep learning.

Authors:  Haoqi Sun; Wolfgang Ganglberger; Ezhil Panneerselvam; Michael J Leone; Syed A Quadri; Balaji Goparaju; Ryan A Tesh; Oluwaseun Akeju; Robert J Thomas; M Brandon Westover
Journal:  Sleep       Date:  2020-07-13       Impact factor: 5.849

Review 5.  Economic implications of sleep disorders.

Authors:  Tracy L Skaer; David A Sclar
Journal:  Pharmacoeconomics       Date:  2010       Impact factor: 4.981

6.  Real-time apnea-hypopnea event detection during sleep by convolutional neural networks.

Authors:  Sang Ho Choi; Heenam Yoon; Hyun Seok Kim; Han Byul Kim; Hyun Bin Kwon; Sung Min Oh; Yu Jin Lee; Kwang Suk Park
Journal:  Comput Biol Med       Date:  2018-06-28       Impact factor: 4.589

7.  Obstructive sleep apnea as an independent predictor of postoperative delirium and pain: protocol for an observational study of a surgical cohort.

Authors:  Patricia Strutz; William Tzeng; Brianna Arrington; Vanessa Kronzer; Sherry McKinnon; Arbi Ben Abdallah; Simon Haroutounian; Michael S Avidan
Journal:  F1000Res       Date:  2018-03-15

Review 8.  A Systematic Review of Detecting Sleep Apnea Using Deep Learning.

Authors:  Sheikh Shanawaz Mostafa; Fábio Mendonça; Antonio G Ravelo-García; Fernando Morgado-Dias
Journal:  Sensors (Basel)       Date:  2019-11-12       Impact factor: 3.576

9.  Speech Signal and Facial Image Processing for Obstructive Sleep Apnea Assessment.

Authors:  Fernando Espinoza-Cuadros; Rubén Fernández-Pozo; Doroteo T Toledano; José D Alcázar-Ramírez; Eduardo López-Gonzalo; Luis A Hernández-Gómez
Journal:  Comput Math Methods Med       Date:  2015-11-17       Impact factor: 2.238

10.  Deep Recurrent Neural Networks for Automatic Detection of Sleep Apnea from Single Channel Respiration Signals.

Authors:  Hisham ElMoaqet; Mohammad Eid; Martin Glos; Mutaz Ryalat; Thomas Penzel
Journal:  Sensors (Basel)       Date:  2020-09-04       Impact factor: 3.576

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  1 in total

1.  Automated Detection of Sleep Apnea-Hypopnea Events Based on 60 GHz Frequency-Modulated Continuous-Wave Radar Using Convolutional Recurrent Neural Networks: A Preliminary Report of a Prospective Cohort Study.

Authors:  Jae Won Choi; Dong Hyun Kim; Dae Lim Koo; Yangmi Park; Hyunwoo Nam; Ji Hyun Lee; Hyo Jin Kim; Seung-No Hong; Gwangsoo Jang; Sungmook Lim; Baekhyun Kim
Journal:  Sensors (Basel)       Date:  2022-09-21       Impact factor: 3.847

  1 in total

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