Faust et al., 2021 - Google Patents
Accurate detection of sleep apnea with long short-term memory network based on RR interval signalsFaust et al., 2021
View PDF- Document ID
- 3484662292974825112
- Author
- Faust O
- Barika R
- Shenfield A
- Ciaccio E
- Acharya U
- Publication year
- Publication venue
- Knowledge-Based Systems
External Links
Snippet
Sleep apnea is a common condition that is characterized by sleep-disordered breathing. Worldwide the number of apnea cases has increased and there has been a growing number of patients suffering from apnea complications. Unfortunately, many cases remain …
- 208000000927 Sleep Apnea Syndrome 0 title abstract description 55
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