At a glance Commentary (200 words): Scientific Knowledge on the Subject: Differentiating central form obstructive sleep apnea is critical in guiding treatment. This differentiation is largely dependent on classifying apneas and hypopneas using an assessment of inspiratory effort. Together with flow, effort determines upper airway resistance. Non-invasive signals that are surrogates of inspiratory effort are sufficient to classify apneas. However, for hypopneas, upper airway resistance quantified using invasive esophageal manometry is the gold-standard, which is not well-tolerated and results in sleep disruption. As such, non-invasive surrogates of upper airway resistance are imperative to classify hypopneas, and thus, separate central from obstructive sleep apnea.
What This Study Adds to the Field:Our study shows that a probability of obstruction derived using a feature-engineered machine learning approach is a reliable and noninvasive surrogate of upper airway resistance and can successfully distinguish central from obstructive sleep apnea both on a breath-by-breath level and on a subject-level.Our probability of obstruction, which is derived within a matter of minutes, can determine the primary type of a subject's sleep apnea and aid in determining risks associated with untreated disorder and informing treatment approaches.