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  1. NSLHD Research
  2. Research
  3. Research Publications
Please use this identifier to cite or link to this item: https://nslhd.intersearch.com.au/nslhdjspui/handle/1/38026
Title: Treatment usage patterns of oral appliances for obstructive sleep apnea over the first 60 days: A cluster analysis
Authors: Sutherland, Kate ;Almeida, Fernanda R.;Kim, Taiyun;Brown, Elizabeth C.;Knapman, Fiona;Ngiam, Joachim ;Yang, Jean;Bilston, Lynne E.;Cistulli, Peter A. 
Affiliation: Royal North Shore Hospital
Department: Respiratory and Sleep Medicine 
Issue Date: Sep-2021
Publication information: 17(9):1785-1792
Journal: Journal of Clinical Sleep Medicine
Abstract: Study Objectives: Oral appliance(OA) therapy usage can be objectively measured through temperature-sensing data chips embeddedin the appliance. Initial reports of group data for short-term treatment usage suggest good nightly hours of usage. However, individual variability in treatment usage patterns has not been assessed. We aimed to identify OA treatment usage subtypes in the first 60 days and the earliest predictors of these usage patterns. Method(s): OSA patients were recruited for a study of OAtherapy with an embedded compliance chip (Denti Trac, Braebon, Canada).Fifty-eight participants with60days of download able treatment usage data (5-minute readings)were analyzed. Ahierarchical cluster analysis was used to group participants with similar usage patterns. A random forest classification model was used to identify the minimum number of days to predict usage subtype. Result(s): Three user groups were identified and named:"Consistent Users" (48.3%), "Inconsistent Users," (32.8%)and"Non-Users" (19.0%).Thefirst20daysprovided optimal data to predict the treatment usage group a patient would belong to at60days(90%accuracy). The strongest predictors of user group were download edusage data, average wear time, and number of days missed. Conclusion(s): Granular analysis of OA usage data suggests the existence of treatment user subtypes(Consistent, Inconsistent, and Non-Users). Our data suggest that 60-day usage patterns can be identified in the first 20 days of treatment using downloaded treatment usage data. Understanding initial treatment usage patterns provide an opportunity for early intervention to improve long-term usage and outcomes.Copyright © 2021 American Academy of Sleep Medicine. All rights reserved.<br />
URI: https://nslhd.intersearch.com.au/nslhdjspui/handle/1/38026
DOI: http://dx.doi.org/10.5664/jcsm.9288
URL: https://jcsm.aasm.org/doi/10.5664/jcsm.9288
Type: Article
AHT Subjects: Sleep aponea
Keywords: somnolence;treatment response;medication adherence monitoring system;*sleep apnea appliance;DentiTrac;adultapnea hypopnea index;article;body mass;cluster analysis;continuous positive airway pressure;controlled study;device removal;disease severity;Epworth sleepiness scale;Female;hierarchical clustering;Humans;major clinical study;Male;middle aged;obesity;patient compliance;polysomnography;random forest;secondary analysis;self report;sensitivity and specificity;*sleep disordered breathing/th [Therapy]
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