Literature DB >> 34344285

Understanding Sleep Apnea Physiology: A Potential Path to Improving Positive Airway Pressure Effectiveness.

Lucas M Donovan1,2, Vishesh K Kapur1.   

Abstract

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Year:  2021        PMID: 34344285      PMCID: PMC8521710          DOI: 10.1164/rccm.202106-1474ED

Source DB:  PubMed          Journal:  Am J Respir Crit Care Med        ISSN: 1073-449X            Impact factor:   30.528


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Poor adherence to positive airway pressure (PAP) remains a barrier to effective obstructive sleep apnea (OSA) treatment for millions of patients worldwide (1, 2). To overcome this barrier, we need a firm understanding of the factors that prevent adherence and how to address them. Prior work demonstrates several key drivers of nonadherence, including racial disparities, side effects, and poor self-efficacy (3–5). For self-efficacy, our understanding has guided successful and scalable behavioral interventions (1, 6). However, our understanding of nonadherence remains incomplete, and additional targets of future intervention remain. Recent interest has focused on the role of physiologic traits in mediating nonadherence. Rigorous work highlights that a number of distinct physiological traits contribute to OSA, with each trait varying considerably across individuals (7). These traits include loop gain, arousal threshold, pharyngeal collapsibility, and muscle compensation. Among these traits, the relationship between arousal threshold and PAP adherence has been studied in depth, with proxies of arousal threshold predicting adherence in some, but not all, cohorts (8–10). Recent work also suggests the role of elevated response of the pharyngeal dilator muscles (11). However, prior work did not fully account for each of these traits and their interactions or for changes in PAP adherence over time. In this issue of the Journal, Zinchuk and colleagues (pp. 703–712) present important findings that overcome these limitations and underscore the importance of physiologic traits in predicting PAP adherence (12). Greater understanding in this area may inform novel approaches to improve the effectiveness of PAP therapy. The researchers resourcefully analyzed physiologic traits on baseline polysomnograms acquired from the RICCADSA (Randomized Intervention with Continuous Positive Airway Pressure in CAD and OSA) study. Specifically, trait values for loop gain, arousal threshold, collapsibility, and muscle compensation were calculated across non-REM sleep. The association of median trait values to objective adherence data was then evaluated in participants who used autotitrating PAP for up to 2 years (n = 249). In adjusted analyses, the investigators found that lower arousal threshold, as well as high and low muscle compensation, was associated with lower adherence. A model that included baseline trait measures demonstrated utility in predicting poor adherence (defined as lowest quartile of adherence): accuracy = 69.8%, sensitivity = 38.7%, specificity = 80.2%, positive predictive value = 39.3%, and negative predictive value = 79.8%. Illustrating the clinical importance of baseline physiologic traits, the actual adherence between predicted “poor” and “good” adherers showed 2.0 and 3.2 hours/night difference at 1 month and 2 years, respectively. The authors considered several potentially relevant covariates related to PAP adherence in their modeling strategy. These covariates included demographics, polysomnogram findings, sleepiness, medical conditions, and psychiatric conditions. However, this study was limited. As a secondary analysis, it was not comprehensive in the assessment of important factors that may confound, modify, or mediate the relationship, including symptoms, side effects, psychological factors, socioeconomic status, and partner support. Furthermore, the composition of the sample, predominantly males with cardiovascular disease, limits the generalizability of the authors’ findings. These limitations highlight the need for prospective studies intentionally designed to evaluate the relationship between physiologic traits and PAP adherence in a broad population. Elucidating the relationship between physiologic traits and PAP adherence unlocks opportunities to improve PAP effectiveness through personalization of care. First, although behavioral interventions to support adherence are effective, they are often resource intensive with limited reach (1). Identification of individuals who are likely to be nonadherent can help prioritize early access to these treatments. Second, understanding the physiologic drivers of disease may allow tailored therapies that modify physiologic traits. For instance, hypnotics have inconsistently improved adherence in randomized trials (13). Perhaps targeting individuals with low arousal thresholds could more consistently lead to meaningful improvements in adherence and symptoms. Indeed, a recent post hoc analysis of a randomized trial of eszopiclone suggests that those with a low arousal threshold who use PAP >1 month may derive more benefit from the hypnotic than those with a high arousal threshold (9). Several existing therapies such as acetazolamide and supplemental oxygen also have efficacy in alleviating loop gain (14), which Zinchuk and colleagues found may be a barrier in longer-term adherence (12). An underexplored approach is customizing PAP technology and settings to harmonize with physiologic traits. Although existing modes and features such as pressure ramping, fixed-pressure PAP, autotitration, bilevel PAP, adaptive servo ventilation, and expiratory pressure relief are not known to improve adherence broadly in patients with OSA (1), perhaps existing or novel PAP modes could lead to improved outcomes in individuals with specific trait profiles. Future work will ultimately need to clarify the impact of trait identification and personalized management on patient-centered outcomes. As we innovate, we must also bear in mind the costs of complexity. The polysomnograms currently necessary for comprehensive trait identification are costly and often inaccessible, particularly for groups with existing barriers to adherence such as historically disadvantaged populations and those who live in rural areas (1, 3, 4). Developing automated approaches to measure traits with home testing would be an important step to mitigating this obstacle (15). Even then, additional unanticipated burdens to the health system from added complexity in decision-making and care pathways are likely. Ultimately, to reduce the burden of untreated OSA, it will be incumbent on us to integrate personalized strategies in a way that promotes equitable access to high-quality OSA care.
  15 in total

1.  Prevalence, Associated Clinical Features, and Impact on Continuous Positive Airway Pressure Use of a Low Respiratory Arousal Threshold Among Male United States Veterans With Obstructive Sleep Apnea.

Authors:  Andrey Zinchuk; Bradley A Edwards; Sangchoon Jeon; Brian B Koo; John Concato; Scott Sands; Andrew Wellman; Henry K Yaggi
Journal:  J Clin Sleep Med       Date:  2018-05-15       Impact factor: 4.062

2.  The effect of non-benzodiazepine sedative hypnotics on CPAP adherence in patients with OSA: a systematic review and meta-analysis.

Authors:  Donghao Wang; Yongkang Tang; Yanghang Chen; Sun Zhang; Danjie Ma; Yateng Luo; Shiwei Li; Xiaofen Su; Xinni Wang; Chunli Liu; Nuofu Zhang
Journal:  Sleep       Date:  2021-03-26       Impact factor: 5.849

Review 3.  Adherence to CPAP: What Should We Be Aiming For, and How Can We Get There?

Authors:  Jessie P Bakker; Terri E Weaver; Sairam Parthasarathy; Mark S Aloia
Journal:  Chest       Date:  2019-01-23       Impact factor: 9.410

4.  Measuring Loop Gain via Home Sleep Testing in Patients with Obstructive Sleep Apnea.

Authors:  Jeremy E Orr; Scott A Sands; Bradley A Edwards; Pamela N Deyoung; Naomi Deacon; Rachel Jen; Yanru Li; Robert L Owens; Atul Malhotra
Journal:  Am J Respir Crit Care Med       Date:  2018-05-15       Impact factor: 21.405

5.  Physiological Traits and Adherence to Obstructive Sleep Apnea Treatment in Patients with Stroke.

Authors:  Andrey V Zinchuk; Nancy S Redeker; Jen-Hwa Chu; Jiasheng Liang; Carl Stepnowsky; Cynthia A Brandt; Dawn M Bravata; Andrew Wellman; Scott A Sands; Henry K Yaggi
Journal:  Am J Respir Crit Care Med       Date:  2020-06-15       Impact factor: 21.405

6.  Quantifying the ventilatory control contribution to sleep apnoea using polysomnography.

Authors:  Philip I Terrill; Bradley A Edwards; Shamim Nemati; James P Butler; Robert L Owens; Danny J Eckert; David P White; Atul Malhotra; Andrew Wellman; Scott A Sands
Journal:  Eur Respir J       Date:  2014-10-16       Impact factor: 16.671

7.  Defining phenotypic causes of obstructive sleep apnea. Identification of novel therapeutic targets.

Authors:  Danny J Eckert; David P White; Amy S Jordan; Atul Malhotra; Andrew Wellman
Journal:  Am J Respir Crit Care Med       Date:  2013-10-15       Impact factor: 21.405

8.  Impact of low arousal threshold on treatment of obstructive sleep apnea in patients with post-traumatic stress disorder.

Authors:  Ali A El-Solh; Yolanda Lawson; Gregory E Wilding
Journal:  Sleep Breath       Date:  2020-07-10       Impact factor: 2.816

9.  Physiological Traits and Adherence to Sleep Apnea Therapy in Individuals with Coronary Artery Disease.

Authors:  Andrey V Zinchuk; Jen-Hwa Chu; Jiasheng Liang; Yeliz Celik; Sara Op de Beeck; Nancy S Redeker; Andrew Wellman; H Klar Yaggi; Yüksel Peker; Scott A Sands
Journal:  Am J Respir Crit Care Med       Date:  2021-09-15       Impact factor: 30.528

Review 10.  Disparities in Sleep Health and Potential Intervention Models: A Focused Review.

Authors:  Martha E Billings; Robyn T Cohen; Carol M Baldwin; Dayna A Johnson; Brian N Palen; Sairam Parthasarathy; Sanjay R Patel; Maureen Russell; Ignacio E Tapia; Ariel A Williamson; Sunil Sharma
Journal:  Chest       Date:  2020-09-30       Impact factor: 10.262

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