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. 2022:1384:185-204.
doi: 10.1007/978-3-031-06413-5_11.

Cardiopulmonary Coupling

Affiliations

Cardiopulmonary Coupling

Mi Lu et al. Adv Exp Med Biol. 2022.

Abstract

Cardiopulmonary coupling (CPC) is a technique that generates sleep spectrogram by calculating the cross-spectral power and coherence of heart rate variability and respiratory tidal volume fluctuations. There are several forms of CPC in the sleep spectrogram, which may provide information about normal sleep physiology and pathological sleep states. Since CPC can be calculated from any signal recording containing heart rate and respiration information, such as photoplethysmography (PPG) or blood pressure, it can be widely used in various applications, including wearables and non-contact devices. When derived from PPG, an automatic apnea-hypopnea index can be calculated from CPC-oximetry as PPG can be obtained from oximetry alone. CPC-based sleep profiling reveals the effects of stable and unstable sleep on sleep apnea, insomnia, cardiovascular regulation, and metabolic disorders. Here, we introduce, with examples, the current knowledge and understanding of the CPC technique, especially the physiological basis, analytical methods, and its clinical applications.

Keywords: Autonomic nervous system; Cardiopulmonary coupling; Heart rate variability; Insomnia; Sleep apnea; Sleep spectrogram.

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