Obstructive sleep apnea (OSA) is multi-faceted world-wide-distributed disorder exerting deep effects on the sleeping brain. In the latest years, strong efforts have been dedicated to finding novel measures assessing the real impact and severity of the pathology, traditionally trivialized by the simplistic apnea/hypopnea index. Due to the unavoidable connection between OSA and sleep, we reviewed the key aspects linking the breathing disorder with sleep pathophysiology, focusing on the role of cyclic alternating pattern (CAP). Sleep structure, reflecting the degree of apnea-induced sleep instability, may provide topical information to stratify OSA severity and foresee some of its dangerous consequences such as excessive daytime sleepiness and cognitive deterioration. Machine learning approaches may reinforce our understanding of this complex multi-level pathology, supporting patients' phenotypization and easing in a more tailored approach for sleep apnea.

The Contribution of Sleep Texture in the Characterization of Sleep Apnea / Mutti, Carlotta; Pollara, Irene; Abramo, Anna; Soglia, Margherita; Rapina, Clara; Mastrillo, Carmela; Alessandrini, Francesca; Rosenzweig, Ivana; Rausa, Francesco; Pizzarotti, Silvia; Salvatelli, Marcello Luigi; Balella, Giulia; Parrino, Liborio. - In: DIAGNOSTICS. - ISSN 2075-4418. - 13:13(2023). [10.3390/diagnostics13132217]

The Contribution of Sleep Texture in the Characterization of Sleep Apnea

Mutti, Carlotta;Pollara, Irene;Soglia, Margherita;Rausa, Francesco;Pizzarotti, Silvia;Salvatelli, Marcello Luigi;Balella, Giulia;Parrino, Liborio
2023-01-01

Abstract

Obstructive sleep apnea (OSA) is multi-faceted world-wide-distributed disorder exerting deep effects on the sleeping brain. In the latest years, strong efforts have been dedicated to finding novel measures assessing the real impact and severity of the pathology, traditionally trivialized by the simplistic apnea/hypopnea index. Due to the unavoidable connection between OSA and sleep, we reviewed the key aspects linking the breathing disorder with sleep pathophysiology, focusing on the role of cyclic alternating pattern (CAP). Sleep structure, reflecting the degree of apnea-induced sleep instability, may provide topical information to stratify OSA severity and foresee some of its dangerous consequences such as excessive daytime sleepiness and cognitive deterioration. Machine learning approaches may reinforce our understanding of this complex multi-level pathology, supporting patients' phenotypization and easing in a more tailored approach for sleep apnea.
2023
The Contribution of Sleep Texture in the Characterization of Sleep Apnea / Mutti, Carlotta; Pollara, Irene; Abramo, Anna; Soglia, Margherita; Rapina, Clara; Mastrillo, Carmela; Alessandrini, Francesca; Rosenzweig, Ivana; Rausa, Francesco; Pizzarotti, Silvia; Salvatelli, Marcello Luigi; Balella, Giulia; Parrino, Liborio. - In: DIAGNOSTICS. - ISSN 2075-4418. - 13:13(2023). [10.3390/diagnostics13132217]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/2994213
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