Published in:
Open Access
01-03-2020 | Sleep Apnea | Methods • Original Article
Detecting central sleep apnea in adult patients using WatchPAT—a multicenter validation study
Authors:
Giora Pillar, Murray Berall, Richard Berry, Tamar Etzioni, Noam Shrater, Dennis Hwang, Marai Ibrahim, Efrat Litman, Prasanth Manthena, Nira Koren-Morag, Anil Rama, Robert P. Schnall, Koby Sheffy, Rebecca Spiegel, Riva Tauman, Thomas Penzel
Published in:
Sleep and Breathing
|
Issue 1/2020
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Abstract
Study objectives
To assess the accuracy of WatchPAT (WP—Itamar-Medical, Caesarea, Israel) enhanced with a novel systolic upstroke analysis coupled with respiratory movement analysis derived from a dedicated snoring and body position (SBP) sensor, to enable automated algorithmic differentiation between central sleep apnea (CSA) and obstructive sleep apnea (OSA) compared with simultaneous in-lab sleep studies with polysomnography (PSG).
Methods
Eighty-four patients with suspected sleep-disordered breathing (SDB) underwent simultaneous WP and PSG studies in 11 sleep centers. PSG scoring was blinded to the automatically analyzed WP data.
Results
Overall WP apnea-hypopnea index (AHI; mean ± SD) was 25.2 ± 21.3 (range 0.2–101) versus PSG AHI 24.4 ± 21.2 (range 0–110) (p = 0.514), and correlation was 0.87 (p < 0.001). Using a threshold of AHI ≥ 15, the sensitivity and specificity of WP versus PSG for diagnosing sleep apnea were 85% and 70% respectively and agreement was 79% (kappa = 0.867). WP central AHI (AHIc) was 4.2 ± 7.7 (range 0–38) versus PSG AHIc 5.9 ± 11.8 (range 0–63) (p = 0.034), while correlation was 0.90 (p < 0.001). Using a threshold of AHI ≥ 15, the sensitivity and specificity of WP versus PSG for diagnosing CSA were 67% and 100% respectively with agreement of 95% (kappa = 0.774), and receiver operator characteristic (ROC) area under the curve of 0.866, (p < 0.01). Using a threshold of AHI ≥ 10 showed comparable overall sleep apnea and CSA diagnostic accuracies.
Conclusions
These findings show that WP can accurately detect overall AHI and effectively differentiate between CSA and OSA.