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Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns

BACKGROUND: Hypoglossal nerve stimulator (HGNS) is a therapeutic option for moderate to severe obstructive sleep apnea (OSA). Improved patient selection criteria are needed to target those most likely to benefit. We hypothesized that the pattern of negative effort dependence (NED) on inspiratory flo...

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Autores principales: Lou, Becky, Rusk, Sam, Nygate, Yoav N., Quintero, Luis, Ishikawa, Oki, Shikowitz, Mark, Greenberg, Harly
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9136201/
https://www.ncbi.nlm.nih.gov/pubmed/35622197
http://dx.doi.org/10.1007/s11325-022-02641-y
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author Lou, Becky
Rusk, Sam
Nygate, Yoav N.
Quintero, Luis
Ishikawa, Oki
Shikowitz, Mark
Greenberg, Harly
author_facet Lou, Becky
Rusk, Sam
Nygate, Yoav N.
Quintero, Luis
Ishikawa, Oki
Shikowitz, Mark
Greenberg, Harly
author_sort Lou, Becky
collection PubMed
description BACKGROUND: Hypoglossal nerve stimulator (HGNS) is a therapeutic option for moderate to severe obstructive sleep apnea (OSA). Improved patient selection criteria are needed to target those most likely to benefit. We hypothesized that the pattern of negative effort dependence (NED) on inspiratory flow limited waveforms recorded during sleep, which has been correlated with the site of upper airway collapse, would contribute to the prediction of HGNS outcome. We developed a machine learning (ML) algorithm to identify NED patterns in pre-treatment sleep studies. We hypothesized that the predominant NED pattern would differ between HGNS responders and non-responders. METHODS: An ML algorithm to identify NED patterns on the inspiratory portion of the nasal pressure waveform was derived from 5 development set polysomnograms. The algorithm was applied to pre-treatment sleep studies of subjects who underwent HGNS implantation to determine the percentage of each NED pattern. HGNS response was defined by STAR trial criteria for success (apnea–hypopnea index (AHI) reduced by > 50% and < 20/h) as well as by a change in AHI and oxygenation metrics. The predominant NED pattern in HGNS responders and non-responders was determined. Other variables including demographics and oxygenation metrics were also assessed between responders and non-responders. RESULTS: Of 45 subjects, 4 were excluded due to technically inadequate polysomnograms. In the remaining 41 subjects, ML accurately distinguished three NED patterns (minimal, non-discontinuous, and discontinuous). The percentage of NED minimal breaths was significantly greater in responders compared with non-responders (p = 0.01) when the response was defined based on STAR trial criteria, change in AHI, and oxygenation metrics. CONCLUSION: ML can accurately identify NED patterns in pre-treatment sleep studies. There was a statistically significant difference in the predominant NED pattern between HGNS responders and non-responders with a greater NED minimal pattern in responders. Prospective studies incorporating NED patterns into predictive modeling of factors determining HGNS outcomes are needed. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s11325-022-02641-y.
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spelling pubmed-91362012022-06-02 Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns Lou, Becky Rusk, Sam Nygate, Yoav N. Quintero, Luis Ishikawa, Oki Shikowitz, Mark Greenberg, Harly Sleep Breath Sleep Breathing Physiology and Disorders • Original Article BACKGROUND: Hypoglossal nerve stimulator (HGNS) is a therapeutic option for moderate to severe obstructive sleep apnea (OSA). Improved patient selection criteria are needed to target those most likely to benefit. We hypothesized that the pattern of negative effort dependence (NED) on inspiratory flow limited waveforms recorded during sleep, which has been correlated with the site of upper airway collapse, would contribute to the prediction of HGNS outcome. We developed a machine learning (ML) algorithm to identify NED patterns in pre-treatment sleep studies. We hypothesized that the predominant NED pattern would differ between HGNS responders and non-responders. METHODS: An ML algorithm to identify NED patterns on the inspiratory portion of the nasal pressure waveform was derived from 5 development set polysomnograms. The algorithm was applied to pre-treatment sleep studies of subjects who underwent HGNS implantation to determine the percentage of each NED pattern. HGNS response was defined by STAR trial criteria for success (apnea–hypopnea index (AHI) reduced by > 50% and < 20/h) as well as by a change in AHI and oxygenation metrics. The predominant NED pattern in HGNS responders and non-responders was determined. Other variables including demographics and oxygenation metrics were also assessed between responders and non-responders. RESULTS: Of 45 subjects, 4 were excluded due to technically inadequate polysomnograms. In the remaining 41 subjects, ML accurately distinguished three NED patterns (minimal, non-discontinuous, and discontinuous). The percentage of NED minimal breaths was significantly greater in responders compared with non-responders (p = 0.01) when the response was defined based on STAR trial criteria, change in AHI, and oxygenation metrics. CONCLUSION: ML can accurately identify NED patterns in pre-treatment sleep studies. There was a statistically significant difference in the predominant NED pattern between HGNS responders and non-responders with a greater NED minimal pattern in responders. Prospective studies incorporating NED patterns into predictive modeling of factors determining HGNS outcomes are needed. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s11325-022-02641-y. Springer International Publishing 2022-05-27 2023 /pmc/articles/PMC9136201/ /pubmed/35622197 http://dx.doi.org/10.1007/s11325-022-02641-y Text en © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2022 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Sleep Breathing Physiology and Disorders • Original Article
Lou, Becky
Rusk, Sam
Nygate, Yoav N.
Quintero, Luis
Ishikawa, Oki
Shikowitz, Mark
Greenberg, Harly
Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
title Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
title_full Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
title_fullStr Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
title_full_unstemmed Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
title_short Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
title_sort association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns
topic Sleep Breathing Physiology and Disorders • Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9136201/
https://www.ncbi.nlm.nih.gov/pubmed/35622197
http://dx.doi.org/10.1007/s11325-022-02641-y
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